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# Created by Greg Landrum and Anna Vulpetti, March 2009
from __future__ import print_function
from rdkit.ML.Cluster import Butina
from rdkit import DataStructs
import sys, cPickle

# sims is the list of similarity thresholds used to generate clusters
sims = [.9, .8, .7, .6]
smis = []
uniq = []
uFps = []

for fileN in sys.argv[1:]:
  inF = file(sys.argv[1], 'r')
  cols = cPickle.load(inF)
  fps = cPickle.load(inF)

  for row in fps:
    nm, smi, fp = row[:3]
    if smi not in smis:
      try:
        fpIdx = uFps.index(fp)
      except ValueError:
        fpIdx = len(uFps)
        uFps.append(fp)
      uniq.append([fp, nm, smi, 'FP_%d' % fpIdx] + row[3:])
      smis.append(smi)


def distFunc(a, b):
  return 1. - DataStructs.DiceSimilarity(a[0], b[0])


for sim in sims:
  clusters = Butina.ClusterData(uniq, len(uniq), 1. - sim, False, distFunc)
  print('Sim: %.2f, nClusters: %d' % (sim, len(clusters)), file=sys.stderr)
  for i, cluster in enumerate(clusters):
    for pt in cluster:
      uniq[pt].append(str(i + 1))
  cols.append('cluster_thresh_%d' % (int(100 * sim)))
print(' '.join(cols))
for row in uniq:
  print(' '.join(row[1:]))
