File: srst2.py

package info (click to toggle)
srst2 0.2.0-6
  • links: PTS, VCS
  • area: main
  • in suites: buster
  • size: 8,668 kB
  • sloc: python: 3,119; sh: 50; makefile: 28
file content (1774 lines) | stat: -rwxr-xr-x 71,838 bytes parent folder | download | duplicates (7)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
774
775
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
937
938
939
940
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
962
963
964
965
966
967
968
969
970
971
972
973
974
975
976
977
978
979
980
981
982
983
984
985
986
987
988
989
990
991
992
993
994
995
996
997
998
999
1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014
1015
1016
1017
1018
1019
1020
1021
1022
1023
1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
1034
1035
1036
1037
1038
1039
1040
1041
1042
1043
1044
1045
1046
1047
1048
1049
1050
1051
1052
1053
1054
1055
1056
1057
1058
1059
1060
1061
1062
1063
1064
1065
1066
1067
1068
1069
1070
1071
1072
1073
1074
1075
1076
1077
1078
1079
1080
1081
1082
1083
1084
1085
1086
1087
1088
1089
1090
1091
1092
1093
1094
1095
1096
1097
1098
1099
1100
1101
1102
1103
1104
1105
1106
1107
1108
1109
1110
1111
1112
1113
1114
1115
1116
1117
1118
1119
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
1160
1161
1162
1163
1164
1165
1166
1167
1168
1169
1170
1171
1172
1173
1174
1175
1176
1177
1178
1179
1180
1181
1182
1183
1184
1185
1186
1187
1188
1189
1190
1191
1192
1193
1194
1195
1196
1197
1198
1199
1200
1201
1202
1203
1204
1205
1206
1207
1208
1209
1210
1211
1212
1213
1214
1215
1216
1217
1218
1219
1220
1221
1222
1223
1224
1225
1226
1227
1228
1229
1230
1231
1232
1233
1234
1235
1236
1237
1238
1239
1240
1241
1242
1243
1244
1245
1246
1247
1248
1249
1250
1251
1252
1253
1254
1255
1256
1257
1258
1259
1260
1261
1262
1263
1264
1265
1266
1267
1268
1269
1270
1271
1272
1273
1274
1275
1276
1277
1278
1279
1280
1281
1282
1283
1284
1285
1286
1287
1288
1289
1290
1291
1292
1293
1294
1295
1296
1297
1298
1299
1300
1301
1302
1303
1304
1305
1306
1307
1308
1309
1310
1311
1312
1313
1314
1315
1316
1317
1318
1319
1320
1321
1322
1323
1324
1325
1326
1327
1328
1329
1330
1331
1332
1333
1334
1335
1336
1337
1338
1339
1340
1341
1342
1343
1344
1345
1346
1347
1348
1349
1350
1351
1352
1353
1354
1355
1356
1357
1358
1359
1360
1361
1362
1363
1364
1365
1366
1367
1368
1369
1370
1371
1372
1373
1374
1375
1376
1377
1378
1379
1380
1381
1382
1383
1384
1385
1386
1387
1388
1389
1390
1391
1392
1393
1394
1395
1396
1397
1398
1399
1400
1401
1402
1403
1404
1405
1406
1407
1408
1409
1410
1411
1412
1413
1414
1415
1416
1417
1418
1419
1420
1421
1422
1423
1424
1425
1426
1427
1428
1429
1430
1431
1432
1433
1434
1435
1436
1437
1438
1439
1440
1441
1442
1443
1444
1445
1446
1447
1448
1449
1450
1451
1452
1453
1454
1455
1456
1457
1458
1459
1460
1461
1462
1463
1464
1465
1466
1467
1468
1469
1470
1471
1472
1473
1474
1475
1476
1477
1478
1479
1480
1481
1482
1483
1484
1485
1486
1487
1488
1489
1490
1491
1492
1493
1494
1495
1496
1497
1498
1499
1500
1501
1502
1503
1504
1505
1506
1507
1508
1509
1510
1511
1512
1513
1514
1515
1516
1517
1518
1519
1520
1521
1522
1523
1524
1525
1526
1527
1528
1529
1530
1531
1532
1533
1534
1535
1536
1537
1538
1539
1540
1541
1542
1543
1544
1545
1546
1547
1548
1549
1550
1551
1552
1553
1554
1555
1556
1557
1558
1559
1560
1561
1562
1563
1564
1565
1566
1567
1568
1569
1570
1571
1572
1573
1574
1575
1576
1577
1578
1579
1580
1581
1582
1583
1584
1585
1586
1587
1588
1589
1590
1591
1592
1593
1594
1595
1596
1597
1598
1599
1600
1601
1602
1603
1604
1605
1606
1607
1608
1609
1610
1611
1612
1613
1614
1615
1616
1617
1618
1619
1620
1621
1622
1623
1624
1625
1626
1627
1628
1629
1630
1631
1632
1633
1634
1635
1636
1637
1638
1639
1640
1641
1642
1643
1644
1645
1646
1647
1648
1649
1650
1651
1652
1653
1654
1655
1656
1657
1658
1659
1660
1661
1662
1663
1664
1665
1666
1667
1668
1669
1670
1671
1672
1673
1674
1675
1676
1677
1678
1679
1680
1681
1682
1683
1684
1685
1686
1687
1688
1689
1690
1691
1692
1693
1694
1695
1696
1697
1698
1699
1700
1701
1702
1703
1704
1705
1706
1707
1708
1709
1710
1711
1712
1713
1714
1715
1716
1717
1718
1719
1720
1721
1722
1723
1724
1725
1726
1727
1728
1729
1730
1731
1732
1733
1734
1735
1736
1737
1738
1739
1740
1741
1742
1743
1744
1745
1746
1747
1748
1749
1750
1751
1752
1753
1754
1755
1756
1757
1758
1759
1760
1761
1762
1763
1764
1765
1766
1767
1768
1769
1770
1771
1772
1773
1774
#!/usr/bin/env python

# SRST2 - Short Read Sequence Typer (v2)
# Python Version 2.7.5
#
# Authors - Michael Inouye (minouye@unimelb.edu.au), Harriet Dashnow (h.dashnow@gmail.com),
#	Kathryn Holt (kholt@unimelb.edu.au), Bernie Pope (bjpope@unimelb.edu.au)
#
# see LICENSE.txt for the license
#
# Dependencies:
#	bowtie2	   http://bowtie-bio.sourceforge.net/bowtie2/index.shtml version 2.1.0 or greater
#	SAMtools   http://samtools.sourceforge.net Version: 0.1.18 or greater (note optimal results are obtained with 0.1.18 rather than later versions)
#	SciPy	http://www.scipy.org/install.html
#
# Git repository: https://github.com/katholt/srst2/
# README: https://github.com/katholt/srst2/blob/master/README.md
# Questions or feature requests: https://github.com/katholt/srst2/issues
# Paper: http://genomemedicine.com/content/6/11/90


from argparse import (ArgumentParser, FileType)
import logging
from subprocess import call, check_output, CalledProcessError, STDOUT
import os, sys, re, collections, operator
import subprocess
from scipy.stats import binom, linregress
from math import log
from itertools import groupby
from operator import itemgetter
from collections import OrderedDict
try:
	from version import srst2_version
except:
	srst2_version = "version unknown"

edge_a = edge_z = 2


def parse_args():
	"Parse the input arguments, use '-h' for help."

	parser = ArgumentParser(description='SRST2 - Short Read Sequence Typer (v2)')

	# version number of srst2, print and then exit
	parser.add_argument('--version', action='version', version='%(prog)s ' + srst2_version)

	# Read inputs
	parser.add_argument(
		'--input_se', nargs='+',type=str, required=False,
		help='Single end read file(s) for analysing (may be gzipped)')
	parser.add_argument(
		'--input_pe', nargs='+', type=str, required=False,
		help='Paired end read files for analysing (may be gzipped)')
	parser.add_argument('--merge_paired', action="store_true", required=False, help='Switch on if all the input read sets belong to a single sample, and you want to merge their data to get a single result')
	parser.add_argument(
		'--forward', type=str, required=False, default="_1",
			help='Designator for forward reads (only used if NOT in MiSeq format sample_S1_L001_R1_001.fastq.gz; otherwise default is _1, i.e. expect forward reads as sample_1.fastq.gz)')
	parser.add_argument(
		'--reverse', type=str, required=False, default="_2",
			help='Designator for reverse reads (only used if NOT in MiSeq format sample_S1_L001_R2_001.fastq.gz; otherwise default is _2, i.e. expect forward reads as sample_2.fastq.gz')
	parser.add_argument('--read_type', type=str, choices=['q', 'qseq', 'f'], default='q',
		help='Read file type (for bowtie2; default is q=fastq; other options: qseq=solexa, f=fasta).')

	# MLST parameters
	parser.add_argument('--mlst_db', type=str, required=False, nargs=1, help='Fasta file of MLST alleles (optional)')
	parser.add_argument('--mlst_delimiter', type=str, required=False,
		help='Character(s) separating gene name from allele number in MLST database (default "-", as in arcc-1)', default="-")
	parser.add_argument('--mlst_definitions', type=str, required=False,
		help='ST definitions for MLST scheme (required if mlst_db supplied and you want to calculate STs)')
	parser.add_argument('--mlst_max_mismatch', type=str, required=False, default = "10",
		help='Maximum number of mismatches per read for MLST allele calling (default 10)')

	# Gene database parameters
	parser.add_argument('--gene_db', type=str, required=False, nargs='+', help='Fasta file/s for gene databases (optional)')
	parser.add_argument('--no_gene_details', action="store_false", required=False, help='Switch OFF verbose reporting of gene typing')
	parser.add_argument('--gene_max_mismatch', type=str, required=False, default = "10",
		help='Maximum number of mismatches per read for gene detection and allele calling (default 10)')

	# Cutoffs for scoring/heuristics
	parser.add_argument('--min_coverage', type=float, required=False, help='Minimum %%coverage cutoff for gene reporting (default 90)',default=90)
	parser.add_argument('--max_divergence', type=float, required=False, help='Maximum %%divergence cutoff for gene reporting (default 10)',default=10)
	parser.add_argument('--min_depth', type=float, required=False, help='Minimum mean depth to flag as dubious allele call (default 5)',default=5)
	parser.add_argument('--min_edge_depth', type=float, required=False, help='Minimum edge depth to flag as dubious allele call (default 2)',default=2)
	parser.add_argument('--prob_err', type=float, help='Probability of sequencing error (default 0.01)',default=0.01)
	parser.add_argument('--truncation_score_tolerance', type=float, help='%% increase in score allowed to choose non-truncated allele',default=0.15)

	# Mapping parameters for bowtie2
	parser.add_argument('--stop_after', type=str, required=False, help='Stop mapping after this number of reads have been mapped (otherwise map all)')
	parser.add_argument('--other', type=str, help='Other arguments to pass to bowtie2 (must be escaped, e.g. "\--no-mixed".', required=False)

	# Filtering parameters for initial SAM file
	parser.add_argument('--max_unaligned_overlap', type=int, default=10, help='Read discarded from alignment if either of its ends has unaligned '+\
			'overlap with the reference that is longer than this value (default 10)')

	# Samtools parameters
	parser.add_argument('--mapq', type=int, default=1, help='Samtools -q parameter (default 1)')
	parser.add_argument('--baseq', type=int, default=20, help='Samtools -Q parameter (default 20)')
	parser.add_argument('--samtools_args', type=str, help='Other arguments to pass to samtools mpileup (must be escaped, e.g. "\-A").', required=False)

	# Reporting options
	parser.add_argument('--output', type=str, required=True, help='Prefix for srst2 output files')
	parser.add_argument('--log', action="store_true", required=False, help='Switch ON logging to file (otherwise log to stdout)')
	parser.add_argument('--save_scores', action="store_true", required=False, help='Switch ON verbose reporting of all scores')
	parser.add_argument('--report_new_consensus', action="store_true", required=False, help='If a matching alleles is not found, report the consensus allele. Note, only SNP differences are considered, not indels.')
	parser.add_argument('--report_all_consensus', action="store_true", required=False, help='Report the consensus allele for the most likely allele. Note, only SNP differences are considered, not indels.')

	# Run options
	parser.add_argument('--use_existing_bowtie2_sam', action="store_true", required=False,
		help='Use existing SAM file generated by Bowtie2 if available, otherwise they will be generated') # to facilitate testing of filtering Bowtie2 output
	parser.add_argument('--use_existing_pileup', action="store_true", required=False,
		help='Use existing pileups if available, otherwise they will be generated') # to facilitate testing of rescoring from pileups
	parser.add_argument('--use_existing_scores', action="store_true", required=False,
		help='Use existing scores files if available, otherwise they will be generated') # to facilitate testing of reporting from scores
	parser.add_argument('--keep_interim_alignment', action="store_true", required=False, default=False,
		help='Keep interim files (sam & unsorted bam), otherwise they will be deleted after sorted bam is created') # to facilitate testing of sam processing
	parser.add_argument('--threads', type=int, required=False, default=1,
		help='Use multiple threads in Bowtie and Samtools')
#	parser.add_argument('--keep_final_alignment', action="store_true", required=False, default=False,
#		help='Keep interim files (sam & unsorted bam), otherwise they will be deleted after sorted bam is created') # to facilitate testing of sam processing

	# Compile previous output files
	parser.add_argument('--prev_output', nargs='+', type=str, required=False,
		help='SRST2 results files to compile (any new results from this run will also be incorporated)')

	return parser.parse_args()


# Exception to raise if the command we try to run fails for some reason
class CommandError(Exception):
	pass

def run_command(command, **kwargs):
	'Execute a shell command and check the exit status and any O/S exceptions'
	command_str = ' '.join(command)
	logging.info('Running: {}'.format(command_str))
	try:
		exit_status = call(command, **kwargs)
	except OSError as e:
		message = "Command '{}' failed due to O/S error: {}".format(command_str, str(e))
		raise CommandError({"message": message})
	if exit_status != 0:
		message = "Command '{}' failed with non-zero exit status: {}".format(command_str, exit_status)
		raise CommandError({"message": message})


def bowtie_index(fasta_files):
	'Build a bowtie2 index from the given input fasta(s)'
	check_bowtie_version()
	for fasta in fasta_files:
		built_index = fasta + '.1.bt2'
		if os.path.exists(built_index):
			logging.info('Index for {} is already built...'.format(fasta))
		else:
			logging.info('Building bowtie2 index for {}...'.format(fasta))
			run_command([get_bowtie_execs()[1], fasta, fasta])

def get_clips_cigar(cigar):
	## remove padding first if present;
	## maybe padding is never present at the edges, but it is easier to just remove
	cigar = re.sub(r'\d+P','',cigar.strip())
	x = re.search(r'^(?P<length>\d+)(?P<type>[SH])',cigar)
	if x:
		left_clip = x.groupdict()
		left_clip["length"] = int(left_clip["length"])
	else:
		left_clip = dict(length=0,type=None)

	x = re.search(r'(?P<type>[SH])(?P<length>\d+)$',cigar)
	if x:
		right_clip = x.groupdict()
		right_clip["length"] = int(right_clip["length"])
	else:
		right_clip = dict(length=0,type=None)

	return (left_clip,right_clip)

def get_end_shift_cigar(cigar):
	"""Return change in coordinate on the reference of the read end due to indels in CIGAR string"""
	shift = 0
	for edit_op in re.findall(r'(\d+)([ID])',cigar):
		shift += int(edit_op[0])*(-1 if edit_op[1] == 'I' else 1)
	return shift

def get_unaligned_read_end_lengths_sam(fields,ref_len):
	"""From SAM file line, compute clipped read length within reference"""
	left_res = 0
	right_res = 0
	if len(fields) >= 10:
		## get (clipped) start position
		ali_clipped_start = int(fields[3])
		cigar = fields[5]
		## get number and types of clipped bases on the left and right
		left_clip, right_clip = get_clips_cigar(cigar)
		left_res = min(ali_clipped_start,left_clip["length"])
		seq_start = ali_clipped_start
		if left_clip["type"] and left_clip["type"] == "S":
			seq_start -= left_clip["length"]
		## get (hard-clipped) end position as start + len(seq)
		seq_hard_clipped_end = seq_start + len(fields[9]) + get_end_shift_cigar(cigar)
		## seq end = hard end + right hard clip
		seq_end = seq_hard_clipped_end
		if right_clip["type"] and right_clip["type"] == "H":
			seq_end += right_clip["length"]
		## aligned end = hard end - right soft clip
		ali_clipped_end = seq_hard_clipped_end
		if right_clip["type"] and right_clip["type"] == "S":
			ali_clipped_end -= right_clip["length"]
		## right result = min(ref_len,right read end) - right aligned end
		right_res = min(ref_len,seq_end) - ali_clipped_end
	return (left_res,right_res)

def get_ref_length_sam(line,ref_lens):
	"""Get reference length from @ LN tag and insert into dict"""
	if line.startswith('@SQ\t'):
		ref_search = re.search(r'\tSN:(\S+)\b',line)
		if ref_search:
			ref_name = ref_search.group(1)
			assert ref_name, "Empty reference name in {}".format(line)
			len_search = re.search(r'\tLN:(\d+)\b',line)
			assert len_search,"Could not find length tag in {}".format(line)
			ref_len = int(len_search.group(1))
			if ref_name in ref_lens:
				logging.warning("Reference name is found second time in line {}".format(line))
			ref_lens[ref_name] = ref_len


def modify_bowtie_sam(raw_bowtie_sam,max_mismatch,max_unaligned_overlap):
	# fix sam flags for comprehensive pileup and filter out spurious alignments
	ref_lens = {}
	with open(raw_bowtie_sam) as sam, open(raw_bowtie_sam + '.mod', 'w') as sam_mod:
		for line in sam:
			if not line.startswith('@'):
				fields = line.split('\t')
				left_unali,right_unali = get_unaligned_read_end_lengths_sam(fields,ref_lens[fields[2].strip()])
				if left_unali > max_unaligned_overlap or right_unali > max_unaligned_overlap:
					#logging.debug("Excluding read from SAM file due to too long unaligned end overlapping the reference: {}".format(line))
					continue
				flag = int(fields[1])
				flag = (flag - 256) if (flag & 256) else flag
				m = re.search("NM:i:(\d+)\s",line)
				if m != None:
					num_mismatch = m.group(1)
					if int(num_mismatch) <= int(max_mismatch):
						sam_mod.write('\t'.join([fields[0], str(flag)] + fields[2:]))
				else:
					logging.info('Excluding read from SAM file due to missing NM (num mismatches) field: ' + fields[0])
					num_mismatch = 0
			else:
				get_ref_length_sam(line,ref_lens)
				sam_mod.write(line)

	return(raw_bowtie_sam,raw_bowtie_sam + '.mod')


def parse_fai(fai_file,db_type,delimiter):
	'Get sequence lengths for reference alleles - important for scoring'
	'Get gene names also, required if no MLST definitions provided'
	size = {}
	gene_clusters = [] # for gene DBs, this is cluster ID
	allele_symbols = []
	gene_cluster_symbols = {} # key = cluster ID, value = gene symbol (for gene DBs)
	unique_allele_symbols = True
	unique_gene_symbols = True
	delimiter_check = [] # list of names that may violate the MLST delimiter supplied
	with open(fai_file) as fai:
		for line in fai:
			fields = line.split('\t')
			name = fields[0] # full allele name
			size[name] = int(fields[1]) # store length
			if db_type!="mlst":
				allele_info = name.split()[0].split("__")
				if len(allele_info) > 2:
					gene_cluster = allele_info[0] # ID number for the cluster
					cluster_symbol = allele_info[1] # gene name for the cluster
					name = allele_info[2] # specific allele name
					if gene_cluster in gene_cluster_symbols:
						if gene_cluster_symbols[gene_cluster] != cluster_symbol:
							unique_gene_symbols = False # already seen this cluster symbol
							logging.info( "Non-unique:" +  gene_cluster + ", " + cluster_symbol)
					else:
						gene_cluster_symbols[gene_cluster] = cluster_symbol
				else:
					# treat as unclustered database, use whole header
					gene_cluster = cluster_symbol = name.split()[0] # no spaces allowed
					gene_cluster_symbols[gene_cluster] = cluster_symbol
			else:
				gene_cluster = name.split(delimiter)[0] # accept gene clusters raw for mlst
				# check if the delimiter makes sense
				parts = name.split(delimiter)
				if len(parts) != 2:
					delimiter_check.append(name)
				else:
					try:
						x = int(parts[1])
					except:
						delimiter_check.append(name)

			# check if we have seen this allele name before
			if name in allele_symbols:
				unique_allele_symbols = False # already seen this allele name
			allele_symbols.append(name)

			# record gene (cluster):
			if gene_cluster not in gene_clusters:
				gene_clusters.append(gene_cluster)

	if len(delimiter_check) > 0:
		print "Warning! MLST delimiter is " + delimiter + " but these genes may violate the pattern and cause problems:"
		print ",".join(delimiter_check)

	return size, gene_clusters, unique_gene_symbols, unique_allele_symbols, gene_cluster_symbols


def read_pileup_data(pileup_file, size, prob_err, consensus_file = ""):
	with open(pileup_file) as pileup:
		prob_success = 1 - prob_err	# Set by user, default is prob_err = 0.01
		hash_alignment = {}
		hash_max_depth = {}
		hash_edge_depth = {}
		avg_depth_allele = {}
		next_to_del_depth_allele = {}
		coverage_allele = {}
		mismatch_allele = {}
		indel_allele = {}
		missing_allele = {}
		size_allele = {}

		# Split all lines in the pileup by whitespace
		pileup_split = ( x.split() for x in pileup )
		# Group the split lines based on the first field (allele)
		for allele, lines in groupby(pileup_split, itemgetter(0)):

			# Reset variables for new allele
			allele_line = 1 # Keep track of line for this allele
			exp_nuc_num = 0 # Expected position in ref allele
			max_depth = 1
			allele_size = size[allele]
			total_depth = 0
			depth_a = depth_z = 0
			position_depths = [0] * allele_size # store depths in case required for penalties; then we don't need to track total_missing_bases
			hash_alignment[allele] = []
			total_missing_bases = 0
			total_mismatch = 0
			ins_poscount = 0
			del_poscount = 0
			next_to_del_depth = 99999
			consensus_seq = ""

			for fields in lines:
				# Parse this line and store details required for scoring
				nuc_num = int(fields[1]) # Actual position in ref allele
				exp_nuc_num += 1
				allele_line += 1
				nuc = fields[2]
				nuc_depth = int(fields[3])
				position_depths[nuc_num-1] = nuc_depth
				if len(fields) <= 5:
					aligned_bases = ''
				else:
					aligned_bases = fields[4]

				# Missing bases (pileup skips basepairs)
				if nuc_num > exp_nuc_num:
					total_missing_bases += abs(exp_nuc_num - nuc_num)
				exp_nuc_num = nuc_num
				if nuc_depth == 0:
					total_missing_bases += 1

				# Calculate depths for this position
				if nuc_num <= edge_a:
					depth_a += nuc_depth
				if abs(nuc_num - allele_size) < edge_z:
					depth_z += nuc_depth
				if nuc_depth > max_depth:
					hash_max_depth[allele] = nuc_depth
					max_depth = nuc_depth

				total_depth = total_depth + nuc_depth

				# Parse aligned bases list for this position in the pileup
				num_match = 0
				ins_readcount = 0
				del_readcount = 0
				nuc_counts = {}

				i = 0
				while i < len(aligned_bases):

					if aligned_bases[i] == "^":
						# Signifies start of a read, next char is mapping quality (skip it)
						i += 2
						continue

					if aligned_bases[i] == "+":
						i += int(aligned_bases[i+1]) + 2 # skip to next read
						ins_readcount += 1
						continue

					if aligned_bases[i] == "-":
						i += int(aligned_bases[i+1]) + 2 # skip to next read
						continue

					if aligned_bases[i] == "*":
						i += 1 # skip to next read
						del_readcount += 1
						continue

					if aligned_bases[i] == "." or aligned_bases[i] == ",":
						num_match += 1
						i += 1
						continue

					elif aligned_bases[i].upper() in "ATCG":
						this_nuc = aligned_bases[i].upper()
						if this_nuc not in nuc_counts:
							nuc_counts[this_nuc] = 0
						nuc_counts[this_nuc] += 1

					i += 1

				# Save the most common nucleotide at this position
				consensus_nuc = nuc # by default use reference nucleotide
				max_freq = num_match # Number of bases matching the reference
				for nucleotide in nuc_counts:
					if nuc_counts[nucleotide] > max_freq:
						consensus_nuc = nucleotide
						max_freq = nuc_counts[nucleotide]
				consensus_seq += (consensus_nuc)

				# Calculate details of this position for scoring and reporting

				# mismatches and indels
				num_mismatch = nuc_depth - num_match
				if num_mismatch > num_match:
					total_mismatch += 1 # record as mismatch (could be a snp or deletion)
				if del_readcount > num_match:
					del_poscount += 1
				if ins_readcount > nuc_depth / 2:
					ins_poscount += 1

				# Hash for later processing
				hash_alignment[allele].append((num_match, num_mismatch, prob_success)) # snp or deletion
				if ins_readcount > 0:
					hash_alignment[allele].append((nuc_depth - ins_readcount, ins_readcount, prob_success)) # penalize for any insertion calls at this position

			# Determine the consensus sequence if required
			if consensus_file != "":
				if consensus_file.split(".")[-2] == "new_consensus_alleles":
					consensus_type = "variant"
				elif consensus_file.split(".")[-2] == "all_consensus_alleles":
					consensus_type = "consensus"
				with open(consensus_file, "a") as consensus_outfile:
					consensus_outfile.write(">{0}.{1} {2}\n".format(allele, consensus_type, pileup_file.split(".")[1].split("__")[1]))
					outstring = consensus_seq + "\n"
					consensus_outfile.write(outstring)

			# Finished reading pileup for this allele

			# Check for missing bases at the end of the allele
			if nuc_num < allele_size:
				total_missing_bases += abs(allele_size - nuc_num)
				# determine penalty based on coverage of last 2 bases
				penalty = float(position_depths[nuc_num-1] + position_depths[nuc_num-2])/2
				m = min(position_depths[nuc_num-1],position_depths[nuc_num-2])
				hash_alignment[allele].append((0, penalty, prob_success))
				if next_to_del_depth > m:
					next_to_del_depth = m # keep track of lowest near-del depth for reporting

			# Calculate allele summary stats and save
			avg_depth = round(total_depth / float(allele_line),3)
			avg_a = depth_a / float(edge_a)   # Avg depth at 5' end, num basepairs determined by edge_a
			avg_z = depth_z / float(edge_z)	# 3'
			hash_max_depth[allele] = max_depth
			hash_edge_depth[allele] = (avg_a, avg_z)
			min_penalty = max(5, int(avg_depth))
			coverage_allele[allele] = 100*(allele_size - total_missing_bases - del_poscount)/float(allele_size) # includes in-read deletions
			mismatch_allele[allele] = total_mismatch - del_poscount # snps only
			indel_allele[allele] = del_poscount + ins_poscount # insertions or deletions
			missing_allele[allele] = total_missing_bases # truncated bases
			size_allele[allele] = allele_size

			# Penalize truncations or large deletions (i.e. positions not covered in pileup)
			j = 0
			while j < (len(position_depths)-2):
				# note end-of-seq truncations are dealt with above)
				if position_depths[j]==0 and position_depths[j+1]!=0:
					penalty = float(position_depths[j+1]+position_depths[j+2])/2 # mean of next 2 bases
					hash_alignment[allele].append((0, penalty, prob_success))
					m = min(position_depths[nuc_num-1],position_depths[nuc_num-2])
					if next_to_del_depth > m:
						next_to_del_depth = m # keep track of lowest near-del depth for reporting
				j += 1

			# Store depth info for reporting
			avg_depth_allele[allele] = avg_depth
			if next_to_del_depth == 99999:
				next_to_del_depth = "NA"
			next_to_del_depth_allele[allele] = next_to_del_depth

	return hash_alignment, hash_max_depth, hash_edge_depth, avg_depth_allele, coverage_allele, mismatch_allele, indel_allele, missing_allele, size_allele, next_to_del_depth_allele


def score_alleles(args, mapping_files_pre, hash_alignment, hash_max_depth, hash_edge_depth,
		avg_depth_allele, coverage_allele, mismatch_allele, indel_allele, missing_allele,
		size_allele, next_to_del_depth_allele, run_type,unique_gene_symbols, unique_allele_symbols):
	# sort into hash for each gene locus
	depth_by_gene = group_allele_dict_by_gene(dict( (allele,val) for (allele,val) in avg_depth_allele.items() \
			if (run_type == "mlst") or (coverage_allele[allele] > args.min_coverage) ),
			run_type,args,
			unique_gene_symbols,unique_allele_symbols)
	stat_depth_by_gene = dict(
			(gene,max(alleles.values())) for (gene,alleles) in depth_by_gene.items()
			)
	allele_to_gene = dict_of_dicts_inverted_ind(depth_by_gene)

	if args.save_scores:
		scores_output = file(mapping_files_pre + '.scores', 'w')
		scores_output.write("Allele\tScore\tAvg_depth\tEdge1_depth\tEdge2_depth\tPercent_coverage\tSize\tMismatches\tIndels\tTruncated_bases\tDepthNeighbouringTruncation\tmaxMAF\tLeastConfident_Rate\tLeastConfident_Mismatches\tLeastConfident_Depth\tLeastConfident_Pvalue\n")

	scores = {} # key = allele, value = score
	mix_rates = {} # key = allele, value = highest minor allele frequency, 0 -> 0.5

	for allele in hash_alignment:
		#stat_depth_allele = avg_depth_allele[allele]
		if (run_type == "mlst") or (coverage_allele[allele] > args.min_coverage):
			gene = allele_to_gene[allele]
			pvals = []
			min_pval = 1.0
			min_pval_data = (999,999) # (mismatch, depth) for position with lowest p-value
			mix_rate = 0 # highest minor allele frequency 0 -> 0.5
			for nuc_info in hash_alignment[allele]:
				if nuc_info is not None:
					match, mismatch, prob_success = nuc_info
					max_depth = hash_max_depth[allele]
					if match > 0 or mismatch > 0:
						# One-tailed test - prob to get that many or fewer matches
						p_value = binom.cdf(match,match+mismatch,prob_success)
						# Weight pvalue by (depth/max_depth)
						weight = (match + mismatch) / float(max_depth)
						p_value *= weight
						if p_value < min_pval:
							min_pval = p_value
							min_pval_data = (mismatch,match + mismatch)
						if p_value > 0:
							p_value = -log(p_value, 10)
						else:
							p_value = 1000
						pvals.append(p_value)
						mismatch_prop = float(match)/float(match+mismatch)
						if min(mismatch_prop, 1-mismatch_prop) > mix_rate:
							mix_rate = min(mismatch_prop, 1-mismatch_prop)
			# Fit linear model to observed Pval distribution vs expected Pval distribution (QQ plot)
			pvals.sort(reverse=True)
			len_obs_pvals = len(pvals)
			exp_pvals = range(1, len_obs_pvals + 1)
			exp_pvals2 = [-log(float(ep) / (len_obs_pvals + 1), 10) for ep in exp_pvals]

			# Slope is score
			slope, _intercept, _r_value, _p_value, _std_err = linregress(exp_pvals2, pvals)

			# Store all scores for later processing
			scores[allele] = slope
			mix_rates[allele] = mix_rate

			# print scores for each allele, if requested
			if args.save_scores:
				if allele in hash_edge_depth:
					start_depth, end_depth = hash_edge_depth[allele]
					edge_depth_str = str(start_depth) + '\t' + str(end_depth)
				else:
					edge_depth_str = "NA\tNA"
				this_depth = avg_depth_allele.get(allele, "NA")
				this_coverage = coverage_allele.get(allele, "NA")
				this_mismatch = mismatch_allele.get(allele, "NA")
				this_indel = indel_allele.get(allele, "NA")
				this_missing = missing_allele.get(allele, "NA")
				this_size = size_allele.get(allele, "NA")
				this_next_to_del_depth = next_to_del_depth_allele.get(allele, "NA")
				scores_output.write('\t'.join([allele, str(slope), str(this_depth), edge_depth_str,
						str(this_coverage), str(this_size), str(this_mismatch), str(this_indel), str(this_missing), str(this_next_to_del_depth), str(mix_rate), str(float(min_pval_data[0])/min_pval_data[1]),str(min_pval_data[0]),str(min_pval_data[1]),str(min_pval)]) + '\n')

	if args.save_scores:
		scores_output.close()

	return(scores,mix_rates)

# Check that an acceptable version of a command is installed
# Exits the program if it can't be found.
# - command_list is the command to run to determine the version.
# - version_identifier is the unique string we look for in the stdout of the program.
# - command_name is the name of the command to show in error messages.
# - required_version is the version number to show in error messages.
def check_command_version(command_list, version_identifier, command_name, required_version):
	try:
		command_stdout = check_output(command_list, stderr=STDOUT)
	except OSError as e:
		logging.error("Failed command: {}".format(' '.join(command_list)))
		logging.error(str(e))
		logging.error("Could not determine the version of {}.".format(command_name))
		logging.error("Do you have {} installed in your PATH?".format(command_name))
		exit(-1)
	except CalledProcessError as e:
		# some programs such as samtools return a non-zero exit status
		# when you ask for the version (sigh). We ignore it here.
		command_stdout = e.output

	if version_identifier not in command_stdout:
		logging.error("Incorrect version of {} installed.".format(command_name))
		logging.error("{} version {} is required by SRST2.".format(command_name, required_version))
		exit(-1)


# allow multiple specific versions that have been specifically tested
def check_bowtie_version():
	return check_command_versions([get_bowtie_execs()[0], '--version'], 'version ', 'bowtie',
								  ['2.1.0','2.2.3','2.2.4','2.2.5','2.2.6','2.2.7','2.2.8','2.2.9'])

def check_samtools_version():
	return check_command_versions([get_samtools_exec()], 'Version: ', 'samtools',
								  ['0.1.18','0.1.19','1.0','1.1','1.2','1.3','(0.1.18 is '
																			 'recommended)'])

def check_command_versions(command_list, version_prefix, command_name, required_versions):
	try:
		command_stdout = check_output(command_list, stderr=STDOUT)
	except OSError as e:
		logging.error("Failed command: {}".format(' '.join(command_list)))
		logging.error(str(e))
		logging.error("Could not determine the version of {}.".format(command_name))
		logging.error("Do you have {} installed in your PATH?".format(command_name))
		exit(-1)
	except CalledProcessError as e:
		# some programs such as samtools return a non-zero exit status
		# when you ask for the version (sigh). We ignore it here.
		command_stdout = e.output

	for v in required_versions:
		if version_prefix + v in command_stdout:
			return v

	logging.error("Incorrect version of {} installed.".format(command_name))
	logging.error("{} versions compatible with SRST2 are ".format(command_name) + ", ".join(required_versions))
	exit(-1)

def get_bowtie_execs():
	'Return the "best" bowtie2 executables'

	exec_from_environment = os.environ.get('SRST2_BOWTIE2')
	if exec_from_environment and os.path.isfile(exec_from_environment):
		bowtie2_exec = exec_from_environment
	else:
		bowtie2_exec = None

	exec_from_environment = os.environ.get('SRST2_BOWTIE2_BUILD')
	if exec_from_environment and os.path.isfile(exec_from_environment):
		bowtie2_build_exec = exec_from_environment
	elif bowtie2_exec and os.path.isfile(bowtie2_exec+'-build'):
		bowtie2_build_exec = bowtie2_exec+'-build'
	else:
		bowtie2_build_exec = 'bowtie2-build'

	if bowtie2_exec is None:
		bowtie2_exec = 'bowtie2'

	return (bowtie2_exec, bowtie2_build_exec)

def run_bowtie(mapping_files_pre,sample_name,fastqs,args,db_name,db_full_path):

	logging.info("Starting mapping with bowtie2")

	check_bowtie_version()
	check_samtools_version()

	command = [get_bowtie_execs()[0]]

	if len(fastqs)==1:
		# single end
		command += ['-U', fastqs[0]]
	elif len(fastqs)==2:
		# paired end
		command += ['-1', fastqs[0], '-2', fastqs[1]]

	sam = mapping_files_pre + ".sam"
	logging.info('Output prefix set to: ' + mapping_files_pre)

	command += ['-S', sam,
				'-' + args.read_type,	# add a dash to the front of the option
				'--very-sensitive-local',
				'--no-unal',
				'-a',					 # Search for and report all alignments
				'-x', db_full_path			   # The index to be aligned to
			   ]
	if args.threads > 1:
		command += ['--threads', str(args.threads)]

	if args.stop_after:
		try:
			command += ['-u',str(int(args.stop_after))]
		except ValueError:
			print "WARNING. You asked to stop after mapping '" + args.stop_after + "' reads. I don't understand this, and will map all reads. Please speficy an integer with --stop_after or leave this as default to map 1 million reads."

	if args.other:
		x = args.other
		x = x.replace('\\','')
		command += x.split()

	if args.use_existing_bowtie2_sam and os.path.exists(sam):
		logging.info(' Using existing Bowtie2 SAM in ' + sam)

	else:
		logging.info('Aligning reads to index {} using bowtie2...'.format(db_full_path))

		run_command(command)

	return(sam)

def get_samtools_exec():
	'Return the "best" samtools executable'

	exec_from_environment = os.environ.get('SRST2_SAMTOOLS')
	if exec_from_environment and os.path.isfile(exec_from_environment):
		return exec_from_environment
	else:
		return 'samtools'

def get_pileup(args, mapping_files_pre, raw_bowtie_sam, bowtie_sam_mod, fasta, pileup_file):
	# Analyse output with SAMtools
	samtools_exec = get_samtools_exec()
	samtools_v1 = check_samtools_version().split('.')[0] == '1'  # Usage changed in version 1.0
	logging.info('Processing Bowtie2 output with SAMtools...')
	logging.info('Generate and sort BAM file...')
	out_file_bam = mapping_files_pre + ".unsorted.bam"
	view_command = [samtools_exec, 'view']
	if args.threads > 1 and samtools_v1:
		view_command += ['-@', str(args.threads)]
	view_command += ['-b', '-o', out_file_bam, '-q', str(args.mapq), '-S', bowtie_sam_mod]
	run_command(view_command)
	out_file_bam_sorted = mapping_files_pre + ".sorted"
	sort_command = [samtools_exec, 'sort']
	if samtools_v1:
		if args.threads > 1:
			sort_command += ['-@', str(args.threads)]
		temp = mapping_files_pre + ".sort_temp"
		sort_command += ['-o', out_file_bam_sorted + '.bam', '-O', 'bam', '-T', temp, out_file_bam]
	else:  # samtools 0.x
		sort_command += [out_file_bam, out_file_bam_sorted]
	run_command(sort_command)

	# Delete interim files (sam, modified sam, unsorted bam) unless otherwise specified.
	# Note users may also want to delete final sorted bam and pileup on completion to save space.
	if not args.keep_interim_alignment:
		logging.info('Deleting sam and bam files that are not longer needed...')
		del_filenames = [raw_bowtie_sam, bowtie_sam_mod, out_file_bam]
		for f in del_filenames:
			logging.info('Deleting ' + f)
			os.remove(f)

	logging.info('Generate pileup...')
	with open(pileup_file, 'w') as sam_pileup:
		mpileup_command = [samtools_exec, 'mpileup', '-L', '1000', '-f', fasta,
					 '-Q', str(args.baseq), '-q', str(args.mapq), '-B', out_file_bam_sorted + '.bam']
		if args.samtools_args:
			x = args.samtools_args
			x = x.replace('\\','')
			mpileup_command += x.split()
		run_command(mpileup_command, stdout=sam_pileup)

def calculate_ST(allele_scores, ST_db, gene_names, sample_name, mlst_delimiter, avg_depth_allele, mix_rates):
	allele_numbers = [] # clean allele calls for determing ST. order is taken from gene names, as in ST definitions file
	alleles_with_flags = [] # flagged alleles for printing (* if mismatches, ? if depth issues)
	mismatch_flags = [] # allele/diffs
	uncertainty_flags = [] #allele/uncertainty
#	st_flags = [] # (* if mismatches, ? if depth issues)
	depths = [] # depths for each typed locus
	mafs = [] # minor allele freqencies for each typed locus

	# get allele numbers & info
	for gene in gene_names:
		if gene in allele_scores:
			(allele,diffs,depth_problem,divergence) = allele_scores[gene]
			allele_number = allele.split(mlst_delimiter)[-1]
			depths.append(avg_depth_allele[allele])
			mix_rate = mix_rates[allele]
			mafs.append(mix_rate)
		else:
			allele_number = "-"
			diffs = ""
			depth_problem = ""
			mix_rate = ""
		allele_numbers.append(allele_number)

		allele_with_flags = allele_number
		if diffs != "":
			if diffs != "trun":
				allele_with_flags+="*" # trun indicates only that a truncated form had lower score, which isn't a mismatch
			mismatch_flags.append(allele+"/"+diffs)
		if depth_problem != "":
			allele_with_flags+="?"
			uncertainty_flags.append(allele+"/"+depth_problem)
		alleles_with_flags.append(allele_with_flags)

	# calculate ST (no flags)
	if ST_db:
		allele_string = " ".join(allele_numbers) # for determining ST
		try:
			clean_st = ST_db[allele_string]
		except KeyError:
			print "This combination of alleles was not found in the sequence type database:",
			print sample_name,
			for gene in allele_scores:
				(allele,diffs,depth_problems,divergence) = allele_scores[gene]
				print allele,
			print
			clean_st = "NF"
	else:
		clean_st = "ND"

	# add flags for reporting
	st = clean_st
	if len(mismatch_flags) > 0:
		for m in mismatch_flags:
			if m.split("/")[1] != "trun":
				st = clean_st + "*" # trun indicates only that a truncated form had lower score, which isn't a mismatch
	else:
		mismatch_flags = ['0'] # record no mismatches
	if len(uncertainty_flags) > 0:
		st += "?"
	else:
		uncertainty_flags = ['-']

	# mean depth across loci
	if len(depths) > 0:
		mean_depth = float(sum(depths))/len(depths)
	else:
		mean_depth = 0

	# maximum maf across locus
	if len(mafs) > 0:
		max_maf = max(mafs)
	else:
		max_maf = 0

	return (st,clean_st,alleles_with_flags,mismatch_flags,uncertainty_flags,mean_depth,max_maf)

def parse_ST_database(ST_filename,gene_names_from_fai):
	# Read ST definitions
	ST_db = {} # key = allele string, value = ST
	gene_names = []
	num_gene_cols_expected = len(gene_names_from_fai)
	print "Attempting to read " + str(num_gene_cols_expected) + " loci from ST database " + ST_filename
	with open(ST_filename) as f:
		count = 0
		for line in f:
			count += 1
			line_split = line.rstrip().split("\t")
			if count == 1: # Header
				gene_names = line_split[1:min(num_gene_cols_expected+1,len(line_split))]
				for g in gene_names_from_fai:
					if g not in gene_names:
						print "Warning: gene " + g + " in database file isn't among the columns in the ST definitions: " + ",".join(gene_names)
						print " Any sequences with this gene identifer from the database will not be included in typing."
						if len(line_split) == num_gene_cols_expected+1:
							gene_names.pop() # we read too many columns
							num_gene_cols_expected -= 1
				for g in gene_names:
					if g not in gene_names_from_fai:
						print "Warning: gene " + g + " in ST definitions file isn't among those in the database " + ",".join(gene_names_from_fai)
						print " This will result in all STs being called as unknown (but allele calls will be accurate for other loci)."
			else:
				ST = line_split[0]
				if ST not in ST_db.values():
					ST_string = " ".join(line_split[1:num_gene_cols_expected+1])
					ST_db[ST_string] = ST
				else:
					print "Warning: this ST is not unique in the ST definitions file: " + ST
		print "Read ST database " + ST_filename + " successfully"
		return (ST_db, gene_names)

def get_allele_name_from_db(allele,run_type,args,unique_allele_symbols=False,unique_cluster_symbols=False):

	if run_type != "mlst":
		# header format: >[cluster]___[gene]___[allele]___[uniqueID] [info]
		allele_parts = allele.split()
		allele_detail = allele_parts.pop(0)
		allele_info = allele_detail.split("__")

		if len(allele_info)>3:
			cluster_id = allele_info[0] # ID number for the cluster
			gene_name = allele_info[1] # gene name/symbol for the cluster
			allele_name = allele_info[2] # specific allele name
			seqid = allele_info[3] # unique identifier for this seq
		else:
			cluster_id = gene_name = allele_name = seqid = allele

		if not unique_allele_symbols:
			allele_name += "_" + seqid

	else:
		gene_name = allele.split(args.mlst_delimiter)
		allele_name = gene_name[1]
		gene_name = gene_name[0]
		seqid = None
		cluster_id = None
	return gene_name, allele_name, cluster_id, seqid

def create_allele_pileup(allele_name, all_pileup_file):
	output_components = all_pileup_file.split("/")
	if len(output_components) > 1:
		all_pileup_file_name = os.path.basename(all_pileup_file)
		all_pileup_file_dir = os.path.dirname(all_pileup_file)
		outpileup = all_pileup_file_dir + '/' + allele_name + "." + all_pileup_file_name
	else:
		outpileup = allele_name + "." + all_pileup_file
	with open(outpileup, 'w') as allele_pileup:
		with open(all_pileup_file) as all_pileup:
			for line in all_pileup:
				if line.split()[0] == allele_name:
					allele_pileup.write(line)
	return outpileup


def group_allele_dict_by_gene(by_allele,run_type,args,unique_cluster_symbols=False, unique_allele_symbols=False):
	# sort into hash for each gene locus
	by_gene = collections.defaultdict(dict) # key1 = gene, key2 = allele, value = original value

	if run_type=="mlst":
		component_ind = 0 # gene_name
	else:
		component_ind = 2 # cluster_id
	for allele in by_allele:
		gene_name = get_allele_name_from_db(allele,run_type,args,unique_allele_symbols,unique_cluster_symbols)[component_ind]
		by_gene[gene_name][allele] = by_allele[allele]
	return dict(by_gene)


def dict_of_dicts_inverted_ind(dd):
	res = dict()
	for (key,val) in dd.items():
		res.update(dict((key2,key) for key2 in val))
	return res

def parse_scores(run_type,args,scores, hash_edge_depth,
					avg_depth_allele, coverage_allele, mismatch_allele, indel_allele,
					missing_allele, size_allele, next_to_del_depth_allele,
					unique_cluster_symbols,unique_allele_symbols, pileup_file):

	# sort into hash for each gene locus
	scores_by_gene = group_allele_dict_by_gene(dict( (allele,val) for (allele,val) in scores.items() \
			if coverage_allele[allele] > args.min_coverage ),
			run_type,args,
			unique_cluster_symbols,unique_allele_symbols)

	# determine best allele for each gene locus/cluster
	results = {} # key = gene, value = (allele,diffs,depth)

	for gene in scores_by_gene:

		gene_hash = scores_by_gene[gene]
		scores_sorted = sorted(gene_hash.iteritems(),key=operator.itemgetter(1)) # sort by score
		(top_allele,top_score) = scores_sorted[0]

		# check if depth is adequate for confident call
		adequate_depth = False
		depth_problem = ""
		if hash_edge_depth[top_allele][0] > args.min_edge_depth and hash_edge_depth[top_allele][1] > args.min_edge_depth:
			if next_to_del_depth_allele[top_allele] != "NA":
				if float(next_to_del_depth_allele[top_allele]) > args.min_edge_depth:
					if avg_depth_allele[top_allele] > args.min_depth:
						adequate_depth = True
					else:
						depth_problem="depth"+str(avg_depth_allele[top_allele])
				else:
					depth_problem = "del"+str(next_to_del_depth_allele[top_allele])
			elif avg_depth_allele[top_allele] > args.min_depth:
				adequate_depth = True
			else:
				depth_problem="depth"+str(avg_depth_allele[top_allele])
		else:
			depth_problem = "edge"+str(min(hash_edge_depth[top_allele][0],hash_edge_depth[top_allele][1]))

		# check if there are confident differences against this allele
		differences = ""
		if mismatch_allele[top_allele] > 0:
			differences += str(mismatch_allele[top_allele])+"snp"
		if indel_allele[top_allele] > 0:
			differences += str(indel_allele[top_allele])+"indel"
		if missing_allele[top_allele] > 0:
			differences += str(missing_allele[top_allele])+"holes"

		divergence = float(mismatch_allele[top_allele]) / float( size_allele[top_allele] - missing_allele[top_allele] )

		# check for truncated
		if differences != "" or not adequate_depth:
			# if there are SNPs or not enough depth to trust the result, no need to screen next best match
			results[gene] = (top_allele, differences, depth_problem, divergence)
		else:
			# looks good but this could be a truncated version of the real allele; check for longer versions
			truncation_override = False
			if len(scores_sorted) > 1:
				(next_best_allele,next_best_score) = scores_sorted[1]
				if size_allele[next_best_allele] > size_allele[top_allele]:
					# next best is longer, top allele could be a truncation?
					if (mismatch_allele[next_best_allele] + indel_allele[next_best_allele] + missing_allele[next_best_allele]) == 0:
						# next best also has no mismatches
						if (next_best_score - top_score)/top_score < args.truncation_score_tolerance:
							# next best has score within 10% of this one
							truncation_override = True
			if truncation_override:
				results[gene] = (next_best_allele, "trun", "", divergence) # no diffs but report this call is based on truncation test
				final_allele_reported = next_best_allele
			else:
				results[gene] = (top_allele, "", "",divergence) # no caveats to report

		# Check if there are any potential new alleles
		if depth_problem == "" and divergence > 0:
			new_allele = True
			# Get the consensus for this new allele and write it to file
			if args.report_new_consensus or args.report_all_consensus:
				new_alleles_filename = args.output + ".new_consensus_alleles.fasta"
				allele_pileup_file = create_allele_pileup(results[gene][0], pileup_file)
				read_pileup_data(allele_pileup_file, size_allele, args.prob_err, consensus_file = new_alleles_filename)
		if args.report_all_consensus:
			new_alleles_filename = args.output + ".all_consensus_alleles.fasta"
			allele_pileup_file = create_allele_pileup(results[gene][0], pileup_file)
			read_pileup_data(allele_pileup_file, size_allele, args.prob_err, consensus_file = new_alleles_filename)

	return results # (allele, diffs, depth_problem, divergence)


def get_readFile_components(full_file_path):
	(file_path,file_name) = os.path.split(full_file_path)
	m1 = re.match("(.*).gz",file_name)
	ext = ""
	if m1 != None:
		# gzipped
		ext = ".gz"
		file_name = m1.groups()[0]
	(file_name_before_ext,ext2) = os.path.splitext(file_name)
	full_ext = ext2+ext
	return(file_path,file_name_before_ext,full_ext)

def read_file_sets(args):

	fileSets = {} # key = id, value = list of files for that sample
	num_single_readsets = 0
	num_paired_readsets = 0

	if args.input_se:
		# single end
		for fastq in args.input_se:
			(file_path,file_name_before_ext,full_ext) = get_readFile_components(fastq)
			m=re.match("(.*)(_S.*)(_L.*)(_R.*)(_.*)", file_name_before_ext)
			if m==None:
				fileSets[file_name_before_ext] = [fastq]
			else:
				fileSets[m.groups()[0]] = [fastq] # Illumina names
			num_single_readsets += 1

	elif args.input_pe:
		# paired end
		forward_reads = {} # key = sample, value = full path to file
		reverse_reads = {} # key = sample, value = full path to file
		num_paired_readsets = 0
		num_single_readsets = 0
		for fastq in args.input_pe:
			(file_path,file_name_before_ext,full_ext) = get_readFile_components(fastq)
			# try to match to MiSeq format:
			m=re.match("(.*)(_S.*)(_L.*)(_R.*)(_.*)", file_name_before_ext)
			if m==None:
				# not default Illumina file naming format, expect simple/ENA format
				m=re.match("(.*)("+args.forward+")$",file_name_before_ext)
				if m!=None:
					# store as forward read
					(baseName,read) = m.groups()
					forward_reads[baseName] = fastq
				else:
					m=re.match("(.*)("+args.reverse+")$",file_name_before_ext)
					if m!=None:
					# store as reverse read
						(baseName,read) = m.groups()
						reverse_reads[baseName] = fastq
					else:
						logging.info("Could not determine forward/reverse read status for input file " + fastq)
			else:
				# matches default Illumina file naming format, e.g. m.groups() = ('samplename', '_S1', '_L001', '_R1', '_001')
				baseName, read  = m.groups()[0], m.groups()[3]
				if read == "_R1":
					forward_reads[baseName] = fastq
				elif read == "_R2":
					reverse_reads[baseName] = fastq
				else:
					logging.info( "Could not determine forward/reverse read status for input file " + fastq )
					logging.info( "  this file appears to match the MiSeq file naming convention (samplename_S1_L001_[R1]_001), but we were expecting [R1] or [R2] to designate read as forward or reverse?" )
					fileSets[file_name_before_ext] = fastq
					num_single_readsets += 1
		# store in pairs
		for sample in forward_reads:
			if sample in reverse_reads:
				fileSets[sample] = [forward_reads[sample],reverse_reads[sample]] # store pair
				num_paired_readsets += 1
			else:
				fileSets[sample] = [forward_reads[sample]] # no reverse found
				num_single_readsets += 1
				logging.info('Warning, could not find pair for read:' + forward_reads[sample])
		for sample in reverse_reads:
			if sample not in fileSets:
				fileSets[sample] = reverse_reads[sample] # no forward found
				num_single_readsets += 1
				logging.info('Warning, could not find pair for read:' + reverse_reads[sample])

	if num_paired_readsets > 0:
		logging.info('Total paired readsets found:' + str(num_paired_readsets))
	if num_single_readsets > 0:
		logging.info('Total single reads found:' + str(num_single_readsets))

	return fileSets

def read_results_from_file(infile):

	if os.stat(infile).st_size == 0:
		logging.info("WARNING: Results file provided is empty: " + infile)
		return False, False, False

	results_info = infile.split("__")
	if len(results_info) > 1:

		if re.search("compiledResults",infile)!=None:
			dbtype = "compiled"
			dbname = results_info[0] # output identifier
		else:
			dbtype = results_info[1] # mlst or genes
			dbname = results_info[2] # database

		logging.info("Processing " + dbtype + " results from file " + infile)

		if dbtype == "genes":
			results = collections.defaultdict(dict) # key1 = sample, key2 = gene, value = allele
			with open(infile) as f:
				header = []
				for line in f:
					line_split = line.rstrip().split("\t")
					if len(header) == 0:
						header = line_split
					else:
						sample = line_split[0]
						for i in range(1,len(line_split)):
							gene = header[i] # cluster_id
							results[sample][gene] = line_split[i]

		elif dbtype == "mlst":
			results = {} # key = sample, value = MLST string
			with open(infile) as f:
				header = 0
				for line in f:
					if header > 0:
						results[line.split("\t")[0]] = line.rstrip()
						if "maxMAF" not in header:
							results[line.split("\t")[0]] += "\tNC" # empty column for maxMAF
					else:
						header = line.rstrip()
						results[line.split("\t")[0]] = line.rstrip() # store header line too (index "Sample")
						if "maxMAF" not in header:
							results[line.split("\t")[0]] += "\tmaxMAF" # add column for maxMAF

		elif dbtype == "compiled":
			results = collections.defaultdict(dict) # key1 = sample, key2 = gene, value = allele
			with open(infile) as f:
				header = []
				mlst_cols = 0 # INDEX of the last mlst column
				n_cols = 0
				for line in f:
					line_split = line.rstrip().split("\t")
					if len(header) == 0:
						header = line_split
						n_cols = len(header)
						if n_cols > 1:
							if header[1] == "ST":
								# there is mlst data reported
								mlst_cols = 2 # first locus column
								while header[mlst_cols] != "depth":
									mlst_cols += 1
								results["Sample"]["mlst"] = "\t".join(line_split[0:(mlst_cols+1)])
								results["Sample"]["mlst"] += "\tmaxMAF" # add to mlst header even if not encountered in this file, as it may be in others
								if header[mlst_cols+1] == "maxMAF":
									mlst_cols += 1 # record maxMAF column within MLST data, if present
							else:
								# no mlst data reported
								dbtype = "genes"
								logging.info("No MLST data in compiled results file " + infile)
						else:
							# no mlst data reported
							dbtype = "genes"
							logging.info("No MLST data in compiled results file " + infile)

					else:
						sample = line_split[0]
						if mlst_cols > 0:
							results[sample]["mlst"] = "\t".join(line_split[0:(mlst_cols+1)])
							if "maxMAF" not in header:
								results[sample]["mlst"] += "\t" # add to mlst section even if not encountered in this file, as it may be in others
						if n_cols > mlst_cols:
							# read genes component
							for i in range(mlst_cols+1,n_cols):
								# note i=1 if mlst_cols==0, ie we are reading all
								gene = header[i]
								if len(line_split) > i:
									results[sample][gene] = line_split[i]
								else:
									results[sample][gene] = "-"
		else:
			results = False
			dbtype = False
			dbname = False
			logging.info("Couldn't decide what to do with file results file provided: " + infile)

	else:
		results = False
		dbtype = False
		dbname = False
		logging.info("Couldn't decide what to do with file results file provided: " + infile)

	return results, dbtype, dbname

def read_scores_file(scores_file):
	hash_edge_depth = {}
	avg_depth_allele = {}
	coverage_allele = {}
	mismatch_allele = {}
	indel_allele = {}
	missing_allele = {}
	size_allele = {}
	next_to_del_depth_allele = {}
	mix_rates = {}
	scores = {}

	f = file(scores_file,"r")

	for line in f:
		line_split = line.rstrip().split("\t")
		allele = line_split[0]
		if allele != "Allele": # skip header row
			scores[allele] = float(line_split[1])
			mix_rates[allele] = float(line_split[11])
			avg_depth_allele[allele] = float(line_split[2])
			hash_edge_depth[allele] = (float(line_split[3]),float(line_split[4]))
			coverage_allele[allele] = float(line_split[5])
			size_allele[allele] = int(line_split[6])
			mismatch_allele[allele] = int(line_split[7])
			indel_allele[allele] = int(line_split[8])
			missing_allele[allele] = int(line_split[9])
			next_to_del_depth = line_split[10]
			next_to_del_depth_allele[allele] = line_split[10]

	return hash_edge_depth, avg_depth_allele, coverage_allele, mismatch_allele, indel_allele, \
			missing_allele, size_allele, next_to_del_depth_allele, scores, mix_rates

def run_srst2(args, fileSets, dbs, run_type):

	db_reports = [] # list of db-specific output files to return
	db_results_list = [] # list of results hashes, one per db

	for fasta in dbs:
		db_reports, db_results_list = process_fasta_db(args, fileSets, run_type, db_reports,
													   db_results_list, fasta)

	return db_reports, db_results_list

def samtools_index(fasta_file):
	check_samtools_version()
	fai_file = fasta_file + '.fai'
	if not os.path.exists(fai_file):
		run_command([get_samtools_exec(), 'faidx', fasta_file])
	return fai_file

def process_fasta_db(args, fileSets, run_type, db_reports, db_results_list, fasta):

	logging.info('Processing database ' + fasta)

	db_path, db_name = os.path.split(fasta) # database
	(db_name,db_ext) = os.path.splitext(db_name)
	db_results = "__".join([args.output,run_type,db_name,"results.txt"])
	db_report = file(db_results,"w")
	db_reports.append(db_results)

	# Get sequence lengths and gene names
	#  lengths are needed for MLST heuristic to distinguish alleles from their truncated forms
	#  gene names read from here are needed for non-MLST dbs
	fai_file = samtools_index(fasta)
	size, gene_names, unique_gene_symbols, unique_allele_symbols, cluster_symbols = \
		parse_fai(fai_file,run_type,args.mlst_delimiter)

	# Prepare for MLST reporting
	ST_db = False
	if run_type == "mlst":
		results = {} # key = sample, value = ST string for printing
		if args.mlst_definitions:
			# store MLST profiles, replace gene names (we want the order as they appear in this file)
			ST_db, gene_names = parse_ST_database(args.mlst_definitions,gene_names)
		db_report.write("\t".join(["Sample","ST"]+gene_names+["mismatches","uncertainty","depth","maxMAF"]) + "\n")
		results["Sample"] = "\t".join(["Sample","ST"]+gene_names+["mismatches","uncertainty","depth","maxMAF"])

	else:
		# store final results for later tabulation
		results = collections.defaultdict(dict) #key1 = sample, key2 = gene, value = allele

	gene_list = [] # start with empty gene list; will add genes from each genedb test

	# determine maximum mismatches per read to use for pileup
	if run_type == "mlst":
		max_mismatch = args.mlst_max_mismatch
	else:
		max_mismatch = args.gene_max_mismatch

	# Align and score each read set against this DB
	for sample_name in fileSets:
		logging.info('Processing sample ' + sample_name)
		fastq_inputs = fileSets[sample_name] # reads

		try:
			# try mapping and scoring this fileset against the current database
			# update the gene_list list and results dict with data from this strain
			# __mlst__ will be printed during this routine if this is a mlst run
			# __fullgenes__ will be printed during this routine if requested and this is a gene_db run
			gene_list, results = \
				map_fileSet_to_db(args, sample_name, fastq_inputs, db_name, fasta,size,gene_names,
								  unique_gene_symbols, unique_allele_symbols, run_type,ST_db,
								  results,gene_list, db_report, cluster_symbols, max_mismatch)

		# if we get an error from one of the commands we called
		# log the error message, record as failed, and continue onto the next fasta db
		except CommandError as e:
			logging.error(e.message)
			# record results as unknown, so we know that we did attempt to analyse this readset
			if run_type == "mlst":
				st_result_string = "\t".join( [sample_name,"failed"] + ["-"] * (len(gene_names) + 4)) # record missing results
				db_report.write( st_result_string + "\n")
				logging.info(" " + st_result_string)
				results[sample_name] = st_result_string
			else:
				logging.info(" failed gene detection")
				results[sample_name]["failed"] = True # so we know that we tried this strain

	if run_type != "mlst":
		# tabulate results across samples for this gene db (i.e. __genes__ file)
		logging.info('Tabulating results for database {} ...'.format(fasta))
		gene_list.sort()
		db_report.write("\t".join(["Sample"]+gene_list)+"\n") # report header row
		for sample_name in fileSets:
			db_report.write(sample_name)
			if sample_name in results:
				# print results
				if "failed" not in results[sample_name]:
					for cluster_id in gene_list:
						if cluster_id in results[sample_name]:
							db_report.write("\t"+results[sample_name][cluster_id]) # print full allele name
						else:
							db_report.write("\t-") # no hits for this gene cluster
				else:
					# no data on this, as the sample failed mapping
					for cluster_id in gene_list:
						db_report.write("\t-f") #
						results[sample_name][cluster_id] = "-f" # record as unknown as this strain failed
			else:
				# no data on this because genes were not found (but no mapping errors)
				for cluster_id in gene_list:
					db_report.write("\t-?") #
					results[sample_name][cluster_id] = "-" # record as absent
			db_report.write("\n")

	# Finished with this database
	logging.info('Finished processing for database {} ...'.format(fasta))
	db_report.close()
	db_results_list.append(results)

	return db_reports, db_results_list

def map_fileSet_to_db(args, sample_name, fastq_inputs, db_name, fasta, size, gene_names,
					  unique_gene_symbols, unique_allele_symbols, run_type, ST_db, results,
					  gene_list, db_report, cluster_symbols, max_mismatch):

	mapping_files_pre = args.output + '__' + sample_name + '.' + db_name
	pileup_file = mapping_files_pre + '.pileup'
	scores_file = mapping_files_pre + '.scores'

	# Get or read scores

	if args.use_existing_scores and os.path.exists(scores_file):

		logging.info(' Using existing scores in ' + scores_file)

		# read in scores and info from existing scores file
		hash_edge_depth, avg_depth_allele, coverage_allele, \
				mismatch_allele, indel_allele, missing_allele, size_allele, \
				next_to_del_depth_allele, scores, mix_rates = read_scores_file(scores_file)

	else:

		# Get or read pileup

		if args.use_existing_pileup and os.path.exists(pileup_file):
			logging.info(' Using existing pileup in ' + pileup_file)

		else:

			# run bowtie against this db
			bowtie_sam = run_bowtie(mapping_files_pre,sample_name,fastq_inputs,args,db_name,fasta)

			# Modify Bowtie's SAM formatted output so that we get secondary
			# alignments in downstream pileup
			(raw_bowtie_sam,bowtie_sam_mod) = modify_bowtie_sam(bowtie_sam,max_mismatch,\
					max_unaligned_overlap=args.max_unaligned_overlap)

			# generate pileup from sam (via sorted bam)
			get_pileup(args, mapping_files_pre, raw_bowtie_sam, bowtie_sam_mod, fasta, pileup_file)

		# Get scores

		# Process the pileup and extract info for scoring and reporting on each allele
		logging.info(' Processing SAMtools pileup...')
		hash_alignment, hash_max_depth, hash_edge_depth, avg_depth_allele, coverage_allele, \
				mismatch_allele, indel_allele, missing_allele, size_allele, next_to_del_depth_allele= \
				read_pileup_data(pileup_file, size, args.prob_err)

		# Generate scores for all alleles (prints these and associated info if verbose)
		#   result = dict, with key=allele, value=score
		logging.info(' Scoring alleles...')
		scores, mix_rates = score_alleles(args, mapping_files_pre, hash_alignment, hash_max_depth, hash_edge_depth, \
				avg_depth_allele, coverage_allele, mismatch_allele, indel_allele, missing_allele, \
				size_allele, next_to_del_depth_allele, run_type,unique_gene_symbols, unique_allele_symbols)

	# GET BEST SCORE for each gene/cluster
	#  result = dict, with key = gene, value = (allele,diffs,depth_problem)
	#			for MLST DBs, key = gene = locus, allele = gene-number
	#			for gene DBs, key = gene = cluster ID, allele = cluster__gene__allele__id
	#  for gene DBs, only those alleles passing the coverage cutoff are returned

	allele_scores = parse_scores(run_type, args, scores, \
			hash_edge_depth, avg_depth_allele, coverage_allele, mismatch_allele, \
			indel_allele, missing_allele, size_allele, next_to_del_depth_allele,
			unique_gene_symbols, unique_allele_symbols, pileup_file)

	# REPORT/RECORD RESULTS

	# Report MLST results to __mlst__ file
	if run_type == "mlst" and len(allele_scores) > 0:

		# Calculate ST and get info for reporting
		(st,clean_st,alleles_with_flags,mismatch_flags,uncertainty_flags,mean_depth,max_maf) = \
				calculate_ST(allele_scores, ST_db, gene_names, sample_name, args.mlst_delimiter, avg_depth_allele, mix_rates)

		# Print to MLST report, log and save the result
		st_result_string = "\t".join([sample_name,st]+alleles_with_flags+[";".join(mismatch_flags),";".join(uncertainty_flags),str(mean_depth),str(max_maf)])
		db_report.write( st_result_string + "\n")
		logging.info(" " + st_result_string)
		results[sample_name] = st_result_string

		# Make sure scores are printed if there was uncertainty in the call
		scores_output_file = mapping_files_pre + '.scores'
		if uncertainty_flags != ["-"] and not args.save_scores and not os.path.exists(scores_output_file):
			# print full score set
			logging.info("Printing all MLST scores to " + scores_output_file)
			scores_output = file(scores_output_file, 'w')
			scores_output.write("Allele\tScore\tAvg_depth\tEdge1_depth\tEdge2_depth\tPercent_coverage\tSize\tMismatches\tIndels\tTruncated_bases\tDepthNeighbouringTruncation\tMmaxMAF\n")
			for allele in scores.keys():
				score = scores[allele]
				scores_output.write('\t'.join([allele, str(score), str(avg_depth_allele[allele]), \
					str(hash_edge_depth[allele][0]), str(hash_edge_depth[allele][1]), \
					str(coverage_allele[allele]), str(size_allele[allele]), str(mismatch_allele[allele]), \
					str(indel_allele[allele]), str(missing_allele[allele]), str(next_to_del_depth_allele[allele]), str(round(mix_rates[allele],3))]) + '\n')
			scores_output.close()

	# Record gene results for later processing and optionally print detailed gene results to __fullgenes__ file
	elif run_type == "genes" and len(allele_scores) > 0:
		if args.no_gene_details:
			full_results = "__".join([args.output,"fullgenes",db_name,"results.txt"])
			logging.info("Printing verbose gene detection results to " + full_results)
			if os.path.exists(full_results):
				f = file(full_results,"a")
			else:
				f = file(full_results,"w") # create and write header
				f.write("\t".join(["Sample","DB","gene","allele","coverage","depth","diffs","uncertainty","divergence","length", "maxMAF","clusterid","seqid","annotation"])+"\n")
		for gene in allele_scores:
			(allele,diffs,depth_problem,divergence) = allele_scores[gene] # gene = top scoring alleles for each cluster
			gene_name, allele_name, cluster_id, seqid = \
				get_allele_name_from_db(allele,run_type,args,unique_allele_symbols,unique_gene_symbols)

			# store for gene result table only if divergence passes minimum threshold:
			if divergence*100 <= float(args.max_divergence):
				column_header = cluster_symbols[cluster_id]
				results[sample_name][column_header] = allele_name
				if diffs != "":
					results[sample_name][column_header] += "*"
				if depth_problem != "":
					results[sample_name][column_header] += "?"
				if column_header not in gene_list:
					gene_list.append(column_header)

			# write details to full genes report
			if args.no_gene_details:

				# get annotation info
				header_string = subprocess.check_output(["grep",allele,fasta])
				try:
					header = header_string.read().rstrip().split()
					header.pop(0) # remove allele name
					if len(header) > 0:
						annotation = " ".join(header) # put back the spaces
					else:
						annotation = ""

				except:
					annotation = ""

				f.write("\t".join([sample_name,db_name,gene_name,allele_name,str(round(coverage_allele[allele],3)),str(avg_depth_allele[allele]),diffs,depth_problem,str(round(divergence*100,3)),str(size_allele[allele]),str(round(mix_rates[allele],3)),cluster_id,seqid,annotation])+"\n")

		# log the gene detection result
		logging.info(" " + str(len(allele_scores)) + " genes identified in " + sample_name)

	# Finished with this read set
	logging.info(' Finished processing for read set {} ...'.format(sample_name))

	return gene_list, results

def compile_results(args,mlst_results,db_results,compiled_output_file):

	o = file(compiled_output_file,"w")

	# get list of all samples and genes present in these datasets
	sample_list = [] # each entry is a sample present in at least one db
	gene_list = []
	mlst_cols = 0
	mlst_header_string = ""
	blank_mlst_section = ""

	mlst_results_master = {} # compilation of all MLST results
	db_results_master = collections.defaultdict(dict) # compilation of all gene results
	st_counts = {} # key = ST, value = count

	if len(mlst_results) > 0:

		for mlst_result in mlst_results:

			# check length of the mlst string
			if "Sample" in mlst_result:
				test_string = mlst_result["Sample"]
				if mlst_cols == 0:
					mlst_header_string = test_string
			else:
				test_string = mlst_result[mlst_result.keys()[0]] # no header line?
			test_string_split = test_string.split("\t")
			this_mlst_cols = len(test_string_split)
			if (mlst_cols == 0) or (mlst_cols == this_mlst_cols):
				mlst_cols = this_mlst_cols
				blank_mlst_section = "\t?" * (mlst_cols-1) # blank MLST string in case some samples missing
				# use this data
				for sample in mlst_result:
					mlst_results_master[sample] = mlst_result[sample]
					if sample not in sample_list:
						sample_list.append(sample)
			elif mlst_cols != this_mlst_cols:
				# don't process this data further
				logging.info("Problem reconciling MLST data from two files, first MLST results encountered had " + str(mlst_cols) + " columns, this one has " + str(this_mlst_cols) + " columns?")
				if args.mlst_db:
					logging.info("Compiled report will contain only the MLST data from this run, not previous outputs")
				else:
					logging.info("Compiled report will contain only the data from the first MLST result set provided")

	if len(db_results) > 0:
		for results in db_results:
			for sample in results:
				if sample not in sample_list:
					sample_list.append(sample)
				for gene in results[sample]:
					if gene != "failed":
						db_results_master[sample][gene] = results[sample][gene]
						if gene not in gene_list:
							gene_list.append(gene)

	if "Sample" in sample_list:
		sample_list.remove("Sample")
	sample_list.sort()
	gene_list.sort()

	# print header
	header_elements = []
	if len(mlst_results) > 0:
		header_elements.append(mlst_header_string)
	else:
		header_elements.append("Sample")
	if (gene_list) > 0:
		header_elements += gene_list
	o.write("\t".join(header_elements)+"\n")

	# print results for all samples
	for sample in sample_list:

		sample_info = [] # first entry is mlst string OR sample name, rest are genes

		# print mlst if provided, otherwise just print sample name
		if len(mlst_results_master) > 0:
			if sample in mlst_results_master:
				st_data_split = mlst_results_master[sample].split("\t")
				if len(st_data_split) > 1:
					this_st = st_data_split[1]
					sample_info.append(mlst_results_master[sample])
				else:
					sample_info.append(sample+blank_mlst_section)
					this_st = "unknown" # something wrong with the string
			else:
				sample_info.append(sample+blank_mlst_section)
				this_st = "unknown"
			# record the MLST result
			if this_st in st_counts:
				st_counts[this_st] += 1
			else:
				st_counts[this_st] = 1
		else:
			sample_info.append(sample)

		# get gene info if provided
		if sample in db_results_master:
			for gene in gene_list:
				if gene in db_results_master[sample]:
					sample_info.append(db_results_master[sample][gene])
				else:
					sample_info.append("-")
		else:
			for gene in gene_list:
				sample_info.append("?") # record no gene data on this strain

		o.write("\t".join(sample_info)+"\n")

	o.close()

	logging.info("Compiled data on " + str(len(sample_list)) + " samples printed to: " + compiled_output_file)

	# log ST counts
	if len(mlst_results_master) > 0:
		logging.info("Detected " + str(len(st_counts.keys())) + " STs: ")
		sts = st_counts.keys()
		sts.sort()
		for st in sts:
			logging.info("ST" + st + "\t" + str(st_counts[st]))

	return True


def main():
	args = parse_args()

	# Check output directory
	output_components = args.output.split("/")
	if len(output_components) > 1:
		output_dir = "/".join(output_components[:-1])
		if not os.path.exists(output_dir):
			try:
				os.makedirs(output_dir)
				print "Created directory " + output_dir + " for output"
			except:
				print "Error. Specified output as " + args.output + " however the directory " + output_dir + " does not exist and our attempt to create one failed."

	if args.log is True:
		logfile = args.output + ".log"
	else:
		logfile = None
	logging.basicConfig(
		filename=logfile,
		level=logging.DEBUG,
		filemode='w',
		format='%(asctime)s %(message)s',
		datefmt='%m/%d/%Y %H:%M:%S')
	logging.info('program started')
	logging.info('command line: {0}'.format(' '.join(sys.argv)))

	# Delete consensus file if it already exists (so can use append file in functions)
	if args.report_new_consensus or args.report_all_consensus:
		new_alleles_filename = args.output + ".consensus_alleles.fasta"
		if os.path.exists(new_alleles_filename):
			os.remove(new_alleles_filename)

	# vars to store results
	mlst_results_hashes = [] # dict (sample->MLST result string) for each MLST output files created/read
	gene_result_hashes = [] # dict (sample->gene->result) for each gene typing output files created/read

	# parse list of file sets to analyse
	fileSets = read_file_sets(args) # get list of files to process

	if args.merge_paired:
		mate1 = [] # list of forward read files
		mate2 = [] # list of reverse read files
		for prefix in fileSets:
			reads = fileSets[prefix] # forward, reverse as list
			mate1.append(reads[0])
			mate2.append(reads[1])
		fileSets.clear() # remove all individual read sets
		fileSets["combined"] = [",".join(mate1),",".join(mate2)] # all input reads belong to same strain, ie single file set
		logging.info('Assuming all reads belong to single strain. A single combined result will be returned.')

	# run MLST scoring
	if fileSets and args.mlst_db:

		if not args.mlst_definitions:

			# print warning to screen to alert user, may want to stop and restart
			print "Warning, MLST allele sequences were provided without ST definitions:"
			print " allele sequences: " + str(args.mlst_db)
			print " these will be mapped and scored, but STs can not be calculated"

			# log
			logging.info("Warning, MLST allele sequences were provided without ST definitions:")
			logging.info(" allele sequences: " + str(args.mlst_db))
			logging.info(" these will be mapped and scored, but STs can not be calculated")

		bowtie_index(args.mlst_db) # index the MLST database

		# score file sets against MLST database
		mlst_report, mlst_results = run_srst2(args, fileSets, args.mlst_db, "mlst")

		logging.info('MLST output printed to ' + mlst_report[0])

		#mlst_reports_files += mlst_report
		mlst_results_hashes += mlst_results

	# run gene detection
	if fileSets and args.gene_db:

		bowtie_index(args.gene_db) # index the gene databases

		db_reports, db_results = run_srst2(args,fileSets,args.gene_db,"genes")

		for outfile in db_reports:
			logging.info('Gene detection output printed to ' + outfile)

		gene_result_hashes += db_results

	# process prior results files
	if args.prev_output:

		unique_results_files = list(OrderedDict.fromkeys(args.prev_output))

		for results_file in unique_results_files:

			results, dbtype, dbname = read_results_from_file(results_file)

			if dbtype == "mlst":
				mlst_results_hashes.append(results)

			elif dbtype == "genes":
				gene_result_hashes.append(results)

			elif dbtype == "compiled":
				# store mlst in its own db
				mlst_results = {}
				for sample in results:
					if "mlst" in results[sample]:
						mlst_results[sample] = results[sample]["mlst"]
						del results[sample]["mlst"]
				mlst_results_hashes.append(mlst_results)
				gene_result_hashes.append(results)

	# compile results if multiple databases or datasets provided
	if ( (len(gene_result_hashes) + len(mlst_results_hashes)) > 1 ):
		compiled_output_file = args.output + "__compiledResults.txt"
		compile_results(args,mlst_results_hashes,gene_result_hashes,compiled_output_file)

	elif args.prev_output:
		logging.info('One previous output file was provided, but there is no other data to compile with.')

	logging.info('SRST2 has finished.')


if __name__ == '__main__':
	main()