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/**
* Author: Mark Larkin
*
* Copyright (c) 2007 Des Higgins, Julie Thompson and Toby Gibson.
*/
/**
* @author Mark Larkin, Conway Institute, UCD. mark.larkin@ucd.ie
* Changes:
*
* Mark: 23-01-2007: There was a problem with running an alignment with only
* one sequence in it. I needed to make a change to the multiSeqAlign function.
****************************************************************************/
#ifdef HAVE_CONFIG_H
#include "config.h"
#endif
#include "MSA.h"
#include "MyersMillerProfileAlign.h"
//#include "../phylogeneticTree/ClusterTree.h"
#include "../general/debuglogObject.h"
namespace clustalw
{
/**
*
* @param alnPtr
* @param distMat
* @param iStart
* @param phylipName
* @return
*/
int MSA::multiSeqAlign(Alignment* alnPtr, DistMatrix* distMat, vector<int>* seqWeight, AlignmentSteps* progSteps, int iStart)
{
if(!progSteps)
{
return 0;
}
int* aligned;
vector<int> group;
int ix;
int* maxid;
int max = 0, sum = 0;
vector<int> treeWeight;
int i = 0, j = 0, set = 0, iseq = 0;
int entries = 0;
int score = 0;
int _numSteps = 0;
utilityObject->info("Start of Multiple Alignment\n");
int _numSeqs = alnPtr->getNumSeqs();
vector<int> newOutputIndex(_numSeqs);
alnPtr->addSeqWeight(seqWeight);
ProfileAlignAlgorithm* alignAlgorithm = new MyersMillerProfileAlign;
_numSteps = progSteps->getNumSteps();
// for each sequence, find the most closely related sequence
maxid = new int[_numSeqs + 1];
for (i = 1; i <= _numSeqs; i++)
{
maxid[i] = -1;
for (j = 1; j <= _numSeqs; j++)
if (j != i && maxid[i] < (*distMat)(i, j))
{
maxid[i] = static_cast<int>((*distMat)(i, j));
}
}
// group the sequences according to their relative divergence
if (iStart == 0)
{
// start the multiple alignments.........
utilityObject->info("Aligning...");
// first pass, align closely related sequences first....
ix = 0;
aligned = new int[_numSeqs + 1];
for (i = 0; i <= _numSeqs; i++)
{
aligned[i] = 0;
}
const vector<vector<int> >* ptrToSets = progSteps->getSteps();
for (set = 1; set <= _numSteps; ++set)
{
entries = 0;
for (i = 1; i <= _numSeqs; i++)
{
if (((*ptrToSets)[set][i] != 0) &&
(maxid[i] > userParameters->getDivergenceCutoff()))
{
entries++;
if (aligned[i] == 0)
{
if (userParameters->getOutputOrder() == INPUT)
{
++ix;
newOutputIndex[i - 1] = i;
}
else
{
if(ix >= (int)newOutputIndex.size())
{
cerr << "ERROR: size = " << newOutputIndex.size()
<< "ix = " << ix << "\n";
exit(1);
}
else
{
newOutputIndex[ix] = i;
++ix;
}
}
aligned[i] = 1;
}
}
}
if (entries > 0)
{
#if DEBUGFULL
if(logObject && DEBUGLOG)
{
logObject->logMsg("Doing profile align");
}
#endif
score = alignAlgorithm->profileAlign(alnPtr, distMat, progSteps->getStep(set),
aligned);
}
else
{
score = 0;
}
// negative score means fatal error... exit now!
if (score < 0)
{
return (-1);
}
if(userParameters->getDisplayInfo())
{
if ((entries > 0) && (score > 0))
{
utilityObject->info("Group %d: Sequences:%4d Score:%d",
set, entries, score);
}
else
{
utilityObject->info("Group %d: Delayed", set);
}
}
}
}
else
{
aligned = new int[_numSeqs + 1];
ix = 0;
for (i = 1; i <= iStart + 1; i++)
{
aligned[i] = 1;
++ix;
newOutputIndex[i - 1] = i;
}
for (i = iStart + 2; i <= _numSeqs; i++)
{
aligned[i] = 0;
}
}
// second pass - align remaining, more divergent sequences.....
// if not all sequences were aligned, for each unaligned sequence,
// find it's closest pair amongst the aligned sequences.
group.resize(_numSeqs + 1);
treeWeight.resize(_numSeqs);
for (i = 0; i < _numSeqs; i++)
{
treeWeight[i] = (*seqWeight)[i];
}
// if we haven't aligned any sequences, in the first pass - align the
// two most closely related sequences now
if (ix == 0)
{
max = -1;
iseq = 0;
for (i = 1; i <= _numSeqs; i++)
{
for (j = i + 1; j <= _numSeqs; j++)
{
if (max < (*distMat)(i, j))
{
max = static_cast<int>((*distMat)(i, j)); // Mark change 17-5-07
iseq = i;
}
}
}
aligned[iseq] = 1;
if (userParameters->getOutputOrder() == INPUT)
{
++ix;
newOutputIndex[iseq - 1] = iseq;
}
else
{
newOutputIndex[ix] = iseq;
++ix;
}
}
while (ix < _numSeqs)
{
for (i = 1; i <= _numSeqs; i++)
{
if (aligned[i] == 0)
{
maxid[i] = - 1;
for (j = 1; j <= _numSeqs; j++)
if ((maxid[i] < (*distMat)(i, j)) && (aligned[j] != 0))
{
maxid[i] = static_cast<int>((*distMat)(i, j));// Mark change 17-5-07
}
}
}
// find the most closely related sequence to those already aligned
max = - 1;
iseq = 0;
for (i = 1; i <= _numSeqs; i++)
{
if ((aligned[i] == 0) && (maxid[i] > max))
{
max = maxid[i];
iseq = i;
}
}
// align this sequence to the existing alignment
// weight sequences with percent identity with profile
// OR...., multiply sequence weights from tree by percent identity with new sequence
if (userParameters->getNoWeights() == false)
{
for (j = 0; j < _numSeqs; j++)
if (aligned[j + 1] != 0)
{
(*seqWeight)[j] = static_cast<int>(treeWeight[j] * (*distMat)(j + 1, iseq));
}
// Normalise the weights, such that the sum of the weights = INT_SCALE_FACTOR
sum = 0;
for (j = 0; j < _numSeqs; j++)
{
if (aligned[j + 1] != 0)
{
sum += (*seqWeight)[j];
}
}
if (sum == 0)
{
for (j = 0; j < _numSeqs; j++)
{
(*seqWeight)[j] = 1;
}
sum = j;
}
for (j = 0; j < _numSeqs; j++)
{
if (aligned[j + 1] != 0)
{
(*seqWeight)[j] = ((*seqWeight)[j] * INT_SCALE_FACTOR) / sum;
if ((*seqWeight)[j] < 1)
{
(*seqWeight)[j] = 1;
}
}
}
}
entries = 0;
for (j = 1; j <= _numSeqs; j++)
{
if (aligned[j] != 0)
{
group[j] = 1;
entries++;
}
else if (iseq == j)
{
group[j] = 2;
entries++;
}
}
alnPtr->addSeqWeight(seqWeight);
aligned[iseq] = 1;
score = alignAlgorithm->profileAlign(alnPtr, distMat, &group, aligned);
if (userParameters->getOutputOrder() == INPUT)
{
++ix;
newOutputIndex[iseq - 1] = iseq;
}
else
{
newOutputIndex[ix] = iseq;
++ix;
}
}
alnPtr->addOutputIndex(&newOutputIndex);
if(userParameters->getDisplayInfo())
{
int alignmentScore = alnPtr->alignScore(); // ?? check, FS, 2009-05-18
}
delete alignAlgorithm;
delete [] aligned;
delete [] maxid;
return (_numSeqs);
}
/**
*
* @param alnPtr
* @param distMat
* @param iStart
* @param phylipName
* @return
*/
int MSA::seqsAlignToProfile(Alignment* alnPtr, DistMatrix* distMat, vector<int>* seqWeight, int iStart,
string phylipName)
{
int *aligned;
vector<int> treeWeight;
vector<int> group;
int ix;
int *maxid;
int max = 0;
int i = 0, j = 0, iseq = 0;
int sum = 0, entries = 0;
int score = 0;
int _numSeqs = alnPtr->getNumSeqs();
utilityObject->info("Start of Multiple Alignment\n");
ProfileAlignAlgorithm* alignAlgorithm = new MyersMillerProfileAlign;
// calculate sequence weights according to branch lengths of the tree -
// weights in global variable seq_weight normalised to sum to 100
vector<int> newOutputIndex(_numSeqs);
//groupTree.calcSeqWeights(0, _numSeqs, &seqWeight);
treeWeight.resize(_numSeqs);
for (i = 0; i < _numSeqs; i++)
{
treeWeight[i] = (*seqWeight)[i];
}
// for each sequence, find the most closely related sequence
maxid = new int[_numSeqs + 1];
for (i = 1; i <= _numSeqs; i++)
{
maxid[i] = - 1;
for (j = 1; j <= _numSeqs; j++)
{
if (maxid[i] < (*distMat)(i, j))
{
maxid[i] = static_cast<int>((*distMat)(i, j)); // Mark change 17-5-07
}
}
}
aligned = new int[_numSeqs + 1];
ix = 0;
for (i = 1; i <= iStart + 1; i++)
{
aligned[i] = 1;
++ix;
newOutputIndex[i - 1] = i;
}
for (i = iStart + 2; i <= _numSeqs; i++)
{
aligned[i] = 0;
}
// for each unaligned sequence, find it's closest pair amongst the
// aligned sequences.
group.resize(_numSeqs + 1);
while (ix < _numSeqs)
{
if (ix > 0)
{
for (i = 1; i <= _numSeqs; i++)
{
if (aligned[i] == 0)
{
maxid[i] = - 1;
for (j = 1; j <= _numSeqs; j++)
{
if ((maxid[i] < (*distMat)(i, j)) && (aligned[j] != 0))
{
maxid[i] = static_cast<int>((*distMat)(i, j));
}
}
}
}
}
// find the most closely related sequence to those already aligned
max = -1;
for (i = 1; i <= _numSeqs; i++)
{
if ((aligned[i] == 0) && (maxid[i] > max))
{
max = maxid[i];
iseq = i;
}
}
// align this sequence to the existing alignment
entries = 0;
for (j = 1; j <= _numSeqs; j++)
{
if (aligned[j] != 0)
{
group[j] = 1;
entries++;
}
else if (iseq == j)
{
group[j] = 2;
entries++;
}
}
aligned[iseq] = 1;
// multiply sequence weights from tree by percent
// identity with new sequence
for (j = 0; j < _numSeqs; j++)
{
(*seqWeight)[j] = static_cast<int>(treeWeight[j] * (*distMat)(j + 1, iseq));
}
//
// Normalise the weights, such that the sum of the weights = INT_SCALE_FACTOR
//
sum = 0;
for (j = 0; j < _numSeqs; j++)
{
if (group[j + 1] == 1)
{
sum += (*seqWeight)[j];
}
}
if (sum == 0)
{
for (j = 0; j < _numSeqs; j++)
{
(*seqWeight)[j] = 1;
}
sum = j;
}
for (j = 0; j < _numSeqs; j++)
{
(*seqWeight)[j] = ((*seqWeight)[j] * INT_SCALE_FACTOR) / sum;
if ((*seqWeight)[j] < 1)
{
(*seqWeight)[j] = 1;
}
}
// Add the seqWeights to the Alignment object!!!!
alnPtr->addSeqWeight(seqWeight);
score = alignAlgorithm->profileAlign(alnPtr, distMat, &group, aligned);
utilityObject->info("Sequence:%d Score:%d", iseq, score);
if (userParameters->getOutputOrder() == INPUT)
{
++ix;
newOutputIndex[iseq - 1] = iseq;
}
else
{
newOutputIndex[ix] = iseq;
++ix;
}
}
delete [] aligned;
delete [] maxid;
delete alignAlgorithm;
alnPtr->addOutputIndex(&newOutputIndex);
if(userParameters->getDisplayInfo())
{
alnPtr->alignScore();
}
return (_numSeqs);
}
/**
*
* @param alnPtr
* @param distMat
* @return
*/
int MSA::calcPairwiseForProfileAlign(Alignment* alnPtr, DistMatrix* distMat)
{
//Tree groupTree;
int i, j, temp;
int entries;
int* aligned;
vector<int> group;
vector<int> seqWeight;
float dscore;
int score;
int _numSeqs = alnPtr->getNumSeqs();
seqWeight.resize(_numSeqs);
ProfileAlignAlgorithm* alignAlg = new MyersMillerProfileAlign;
utilityObject->info("Start of Initial Alignment");
/* calculate sequence weights according to branch lengths of the tree -
* weights in global variable seq_weight normalised to sum to INT_SCALE_FACTOR */
temp = INT_SCALE_FACTOR / _numSeqs;
for (i = 0; i < _numSeqs; i++)
{
seqWeight[i] = temp;
}
userParameters->setDistanceTree(false);
/* do the initial alignment......... */
group.resize(_numSeqs + 1);
for (i = 1; i <= alnPtr->getProfile1NumSeqs(); ++i)
{
group[i] = 1;
}
for (i = alnPtr->getProfile1NumSeqs() + 1; i <= _numSeqs; ++i)
{
group[i] = 2;
}
entries = _numSeqs;
aligned = new int[_numSeqs + 1];
for (i = 1; i <= _numSeqs; i++)
{
aligned[i] = 1;
}
alnPtr->addSeqWeight(&seqWeight);
score = alignAlg->profileAlign(alnPtr, distMat, &group, aligned);
utilityObject->info("Sequences:%d Score:%d", entries, score);
delete [] aligned;
for (i = 1; i <= _numSeqs; i++)
{
for (j = i + 1; j <= _numSeqs; j++)
{
dscore = alnPtr->countid(i, j);
(*distMat)(i, j) = ((double)100.0 - (double)dscore) / (double)100.0;
(*distMat)(j, i) = (*distMat)(i, j);
}
}
delete alignAlg;
return (_numSeqs);
}
/**
*
* @param alnPtr
* @param distMat
* @param p1TreeName
* @param p2TreeName
* @return
*/
int MSA::doProfileAlign(Alignment* alnPtr, DistMatrix* distMat, vector<int>* prof1Weight, vector<int>* prof2Weight)
{
//Tree groupTree1, groupTree2;
int i, j, sum, entries;
int score;
int *aligned;
vector<int> group;
int *maxid;
//vector<int> prof1Weight, prof2Weight;
int _profile1NumSeqs = alnPtr->getProfile1NumSeqs();
int _numSeqs = alnPtr->getNumSeqs();
vector<int> _seqWeight, _outputIndex;
utilityObject->info("Start of Multiple Alignment\n");
_seqWeight.resize(_numSeqs + 1);
_outputIndex.resize(_numSeqs);
ProfileAlignAlgorithm* alignAlgorithm = new MyersMillerProfileAlign;
// weight sequences with max percent identity with other profile
maxid = new int[_numSeqs + 1];
for (i = 0; i < _profile1NumSeqs; i++)
{
maxid[i] = 0;
for (j = _profile1NumSeqs + 1; j <= _numSeqs; j++)
{
if (maxid[i] < (*distMat)(i + 1, j))
{
maxid[i] = static_cast<int>((*distMat)(i + 1, j)); // Mark change 17-5-07
}
}
_seqWeight[i] = maxid[i] * (*prof1Weight)[i];
}
for (i = _profile1NumSeqs; i < _numSeqs; i++)
{
maxid[i] = - 1;
for (j = 1; j <= _profile1NumSeqs; j++)
{
if (maxid[i] < (*distMat)(i + 1, j))
{
maxid[i] = static_cast<int>((*distMat)(i + 1, j));// Mark change 17-5-07
}
}
_seqWeight[i] = maxid[i] * (*prof2Weight)[i];
}
//
// Normalise the weights, such that the sum of the weights = INT_SCALE_FACTOR
//
sum = 0;
for (j = 0; j < _numSeqs; j++)
{
sum += _seqWeight[j];
}
if (sum == 0)
{
for (j = 0; j < _numSeqs; j++)
{
_seqWeight[j] = 1;
}
sum = j;
}
for (j = 0; j < _numSeqs; j++)
{
_seqWeight[j] = (_seqWeight[j] * INT_SCALE_FACTOR) / sum;
if (_seqWeight[j] < 1)
{
_seqWeight[j] = 1;
}
}
// do the alignment......... /
utilityObject->info("Aligning...");
group.resize(_numSeqs + 1);
for (i = 1; i <= _profile1NumSeqs; ++i)
{
group[i] = 1;
}
for (i = _profile1NumSeqs + 1; i <= _numSeqs; ++i)
{
group[i] = 2;
}
entries = _numSeqs;
aligned = new int[_numSeqs + 1];
for (i = 1; i <= _numSeqs; i++)
{
aligned[i] = 1;
}
alnPtr->addSeqWeight(&_seqWeight);
score = alignAlgorithm->profileAlign(alnPtr, distMat, &group, aligned);
utilityObject->info("Sequences:%d Score:%d", entries, score);
for (i = 1; i <= _numSeqs; i++)
{
_outputIndex[i - 1] = i;
}
alnPtr->addOutputIndex(&_outputIndex);
delete alignAlgorithm;
delete [] aligned;
delete [] maxid;
return (_numSeqs);
return 1;
}
}
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