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# Copyright (C) University of Tennessee Health Science Center, Memphis, TN.
#
# This program is free software: you can redistribute it and/or modify it
# under the terms of the GNU Affero General Public License
# as published by the Free Software Foundation, either version 3 of the
# License, or (at your option) any later version.
#
# This program is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.
# See the GNU Affero General Public License for more details.
#
# This program is available from Source Forge: at GeneNetwork Project
# (sourceforge.net/projects/genenetwork/).
#
# Contact Drs. Robert W. Williams and Xiaodong Zhou (2010)
# at rwilliams@uthsc.edu and xzhou15@uthsc.edu
#
#
#
# This module is used by GeneNetwork project (www.genenetwork.org)
#
# Created by GeneNetwork Core Team 2010/08/10
#
# Last updated by GeneNetwork Core Team 2010/10/20
import os
import string
import piddle as pid
import cPickle
from base import webqtlConfig
from base.webqtlTrait import webqtlTrait
from dbFunction import webqtlDatabaseFunction
from utility import webqtlUtil
from utility import Plot
import slink
# XZ, 09/09/2008: After adding several traits to collection, click "QTL Heatmap" button,
# XZ, 09/09/2008: This class will generate what you see.
#########################################
# QTL heatmap Page
#########################################
class Heatmap:
def __init__(self, fd=None, searchResult=None, colorScheme=None, userPrivilege=None, userName=None):
cursor = webqtlDatabaseFunction.getCursor()
if (not cursor):
return
targetDescriptionChecked = fd.formdata.getvalue('targetDescriptionCheck', '')
clusterChecked = fd.formdata.getvalue('clusterCheck', '')
sessionfile = fd.formdata.getvalue("session")
genotype = fd.genotype
strainlist = fd.strainlist
ppolar = fd.ppolar
mpolar = fd.mpolar
traitList = []
traitDataList = []
for item in searchResult:
thisTrait = webqtlTrait(fullname=item, cursor=cursor)
thisTrait.retrieveInfo()
thisTrait.retrieveData(fd.strainlist)
traitList.append(thisTrait)
traitDataList.append(thisTrait.exportData(fd.strainlist))
self.buildCanvas(colorScheme=colorScheme, targetDescriptionChecked=targetDescriptionChecked, clusterChecked=clusterChecked, sessionfile=sessionfile, genotype=genotype, strainlist=strainlist, ppolar=ppolar, mpolar=mpolar, traitList=traitList, traitDataList=traitDataList, userPrivilege=userPrivilege, userName=userName)
def buildCanvas(self, colorScheme='', targetDescriptionChecked='', clusterChecked='', sessionfile='', genotype=None, strainlist=None, ppolar=None, mpolar=None, traitList=None, traitDataList=None, userPrivilege=None, userName=None):
labelFont = pid.Font(ttf="tahoma",size=14,bold=0)
topHeight = 0
NNN = len(traitList)
#XZ: It's necessory to define canvas here
canvas = pid.PILCanvas(size=(80+NNN*20,880))
names = map(webqtlTrait.displayName, traitList)
#XZ, 7/29/2009: create trait display and find max strWidth
strWidth = 0
for j in range(len(names)):
thisTrait = traitList[j]
if targetDescriptionChecked:
if thisTrait.db.type == 'ProbeSet':
if thisTrait.probe_target_description:
names[j] += ' [%s at Chr %s @ %2.3fMB, %s]' % (thisTrait.symbol, thisTrait.chr, thisTrait.mb, thisTrait.probe_target_description)
else:
names[j] += ' [%s at Chr %s @ %2.3fMB]' % (thisTrait.symbol, thisTrait.chr, thisTrait.mb)
elif thisTrait.db.type == 'Geno':
names[j] += ' [Chr %s @ %2.3fMB]' % (thisTrait.chr, thisTrait.mb)
elif thisTrait.db.type == 'Publish':
if thisTrait.confidential:
if webqtlUtil.hasAccessToConfidentialPhenotypeTrait(privilege=userPrivilege, userName=userName, authorized_users=thisTrait.authorized_users):
if thisTrait.post_publication_abbreviation:
names[j] += ' [%s]' % (thisTrait.post_publication_abbreviation)
else:
if thisTrait.pre_publication_abbreviation:
names[j] += ' [%s]' % (thisTrait.pre_publication_abbreviation)
else:
if thisTrait.post_publication_abbreviation:
names[j] += ' [%s]' % (thisTrait.post_publication_abbreviation)
else:
pass
i = canvas.stringWidth(names[j], font=labelFont)
if i > strWidth:
strWidth = i
width = NNN*20
xoffset = 40
yoffset = 40
cellHeight = 3
nLoci = reduce(lambda x,y: x+y, map(lambda x: len(x),genotype),0)
if nLoci > 2000:
cellHeight = 1
elif nLoci > 1000:
cellHeight = 2
elif nLoci < 200:
cellHeight = 10
else:
pass
pos = range(NNN)
neworder = []
BWs = Plot.BWSpectrum()
colors100 = Plot.colorSpectrum()
colors = Plot.colorSpectrum(130)
finecolors = Plot.colorSpectrum(250)
colors100.reverse()
colors.reverse()
finecolors.reverse()
scaleFont=pid.Font(ttf="tahoma",size=10,bold=0)
if not clusterChecked: #XZ: this part is for original order
for i in range(len(names)):
neworder.append((xoffset+20*(i+1), i))
canvas = pid.PILCanvas(size=(80+NNN*20+240,80+ topHeight +5+5+strWidth+nLoci*cellHeight+80+20*cellHeight))
self.drawTraitNameBottom(canvas,names,yoffset,neworder,strWidth,topHeight,labelFont)
else: #XZ: this part is to cluster traits
topHeight = 400
canvas = pid.PILCanvas(size=(80+NNN*20+240,80+ topHeight +5+5+strWidth+nLoci*cellHeight+80+20*cellHeight))
corArray = [([0] * (NNN))[:] for i in range(NNN)]
nnCorr = len(strainlist)
#XZ, 08/04/2009: I commented out pearsonArray, spearmanArray
for i, thisTrait in enumerate(traitList):
names1 = [thisTrait.db.name, thisTrait.name, thisTrait.cellid]
for j, thisTrait2 in enumerate(traitList):
names2 = [thisTrait2.db.name, thisTrait2.name, thisTrait2.cellid]
if j < i:
corr,nOverlap = webqtlUtil.calCorrelation(traitDataList[i], traitDataList[j],nnCorr)
if (1-corr) < 0:
distance = 0.0
else:
distance = 1-corr
corArray[i][j] = distance
corArray[j][i] = distance
elif j == i:
corArray[i][j] = 0.0
else:
pass
#XZ, 7/29/2009: The parameter d has info of cluster (group member and distance). The format of d is tricky. Print it out to see it's format.
d = slink.slink(corArray)
#XZ, 7/29/2009: Attention: The 'neworder' is changed by the 'draw' function
#XZ, 7/30/2009: Only toppos[1][0] and top[1][1] are used later. Then what toppos[0] is used for?
toppos = self.draw(canvas,names,d,xoffset,yoffset,neworder,topHeight)
self.drawTraitNameTop(canvas,names,yoffset,neworder,strWidth,topHeight,labelFont)
#XZ, 7/29/2009: draw the top vertical line
canvas.drawLine(toppos[1][0],toppos[1][1],toppos[1][0],yoffset)
#XZ: draw string 'distance = 1-r'
canvas.drawString('distance = 1-r',neworder[-1][0] + 50, topHeight*3/4,font=labelFont,angle=90)
#draw Scale
scaleFont=pid.Font(ttf="tahoma",size=10,bold=0)
x = neworder[-1][0]
canvas.drawLine(x+5, topHeight+yoffset, x+5, yoffset, color=pid.black)
y = 0
while y <=2:
canvas.drawLine(x+5, topHeight*y/2.0+yoffset, x+10, topHeight*y/2.0+yoffset)
canvas.drawString('%2.1f' % (2-y), x+12, topHeight*y/2.0+yoffset, font=scaleFont)
y += 0.5
chrname = 0
chrnameFont=pid.Font(ttf="tahoma",size=24,bold=0)
Ncol = 0
nearestMarkers = self.getNearestMarker(traitList, genotype)
# import cPickle
if sessionfile:
fp = open(os.path.join(webqtlConfig.TMPDIR, sessionfile + '.session'), 'rb')
permData = cPickle.load(fp)
fp.close()
else:
permData = {}
areas = []
#XZ, 7/31/2009: This for loop is to generate the heatmap
#XZ: draw trait by trait instead of marker by marker
for order in neworder:
#startHeight = 40+400+5+5+strWidth
startHeight = topHeight + 40+5+5+strWidth
startWidth = order[0]-5
if Ncol and Ncol % 5 == 0:
drawStartPixel = 8
else:
drawStartPixel = 9
tempVal = traitDataList[order[1]]
_vals = []
_strains = []
for i in range(len(strainlist)):
if tempVal[i] != None:
_strains.append(strainlist[i])
_vals.append(tempVal[i])
qtlresult = genotype.regression(strains = _strains, trait = _vals)
if sessionfile:
LRSArray = permData[str(traitList[order[1]])]
else:
LRSArray = genotype.permutation(strains = _strains, trait = _vals, nperm = 1000)
permData[str(traitList[order[1]])] = LRSArray
sugLRS = LRSArray[369]
sigLRS = LRSArray[949]
prechr = 0
chrstart = 0
nearest = nearestMarkers[order[1]]
midpoint = []
for item in qtlresult:
if item.lrs > webqtlConfig.MAXLRS:
adjustlrs = webqtlConfig.MAXLRS
else:
adjustlrs = item.lrs
if item.locus.chr != prechr:
if prechr:
canvas.drawRect(startWidth-drawStartPixel, startHeight, startWidth+10, startHeight+3,edgeColor=pid.white, edgeWidth=0, fillColor=pid.white)
startHeight+= 3
if not chrname:
canvas.drawString(prechr,xoffset-20,(chrstart+startHeight)/2,font = chrnameFont,color=pid.dimgray)
prechr = item.locus.chr
chrstart = startHeight
if colorScheme == '0':
if adjustlrs <= sugLRS:
colorIndex = int(65*adjustlrs/sugLRS)
else:
colorIndex = int(65 + 35*(adjustlrs-sugLRS)/(sigLRS-sugLRS))
if colorIndex > 99:
colorIndex = 99
colorIndex = colors100[colorIndex]
elif colorScheme == '1':
sugLRS = LRSArray[369]/2.0
if adjustlrs <= sugLRS:
colorIndex = BWs[20+int(50*adjustlrs/sugLRS)]
else:
if item.additive > 0:
colorIndex = int(80 + 50*(adjustlrs-sugLRS)/(sigLRS-sugLRS))
else:
colorIndex = int(50 - 50*(adjustlrs-sugLRS)/(sigLRS-sugLRS))
if colorIndex > 129:
colorIndex = 129
if colorIndex < 0:
colorIndex = 0
colorIndex = colors[colorIndex]
elif colorScheme == '2':
if item.additive > 0:
colorIndex = int(150 + 100*(adjustlrs/sigLRS))
else:
colorIndex = int(100 - 100*(adjustlrs/sigLRS))
if colorIndex > 249:
colorIndex = 249
if colorIndex < 0:
colorIndex = 0
colorIndex = finecolors[colorIndex]
else:
colorIndex = pid.white
if startHeight > 1:
canvas.drawRect(startWidth-drawStartPixel, startHeight, startWidth+10, startHeight+cellHeight,edgeColor=colorIndex, edgeWidth=0, fillColor=colorIndex)
else:
canvas.drawLine(startWidth-drawStartPixel, startHeight, startWidth+10, startHeight, Color=colorIndex)
if item.locus.name == nearest:
midpoint = [startWidth,startHeight-5]
startHeight+=cellHeight
#XZ, map link to trait name and band
COORDS = "%d,%d,%d,%d" %(startWidth-drawStartPixel,topHeight+40,startWidth+10,startHeight)
HREF = "javascript:showDatabase2('%s','%s','%s');" % (traitList[order[1]].db.name, traitList[order[1]].name, traitList[order[1]].cellid)
area = (COORDS, HREF, '%s' % names[order[1]])
areas.append(area)
if midpoint:
traitPixel = ((midpoint[0],midpoint[1]),(midpoint[0]-6,midpoint[1]+12),(midpoint[0]+6,midpoint[1]+12))
canvas.drawPolygon(traitPixel,edgeColor=pid.black,fillColor=pid.orange,closed=1)
if not chrname:
canvas.drawString(prechr,xoffset-20,(chrstart+startHeight)/2,font = chrnameFont,color=pid.dimgray)
chrname = 1
Ncol += 1
#draw Spectrum
startSpect = neworder[-1][0] + 30
startHeight = topHeight + 40+5+5+strWidth
if colorScheme == '0':
for i in range(100):
canvas.drawLine(startSpect+i,startHeight+20,startSpect+i,startHeight+40,color=colors100[i])
scaleFont=pid.Font(ttf="tahoma",size=10,bold=0)
canvas.drawLine(startSpect,startHeight+45,startSpect,startHeight+39,color=pid.black)
canvas.drawString('LRS = 0',startSpect,startHeight+55,font=scaleFont)
canvas.drawLine(startSpect+64,startHeight+45,startSpect+64,startHeight+39,color=pid.black)
canvas.drawString('Suggestive LRS',startSpect+64,startHeight+55,font=scaleFont)
canvas.drawLine(startSpect+99,startHeight+45,startSpect+99,startHeight+39,color=pid.black)
canvas.drawString('Significant LRS',startSpect+105,startHeight+40,font=scaleFont)
elif colorScheme == '1':
for i in range(50):
canvas.drawLine(startSpect+i,startHeight,startSpect+i,startHeight+40,color=BWs[20+i])
for i in range(50,100):
canvas.drawLine(startSpect+i,startHeight,startSpect+i,startHeight+20,color=colors[100-i])
canvas.drawLine(startSpect+i,startHeight+20,startSpect+i,startHeight+40,color=colors[30+i])
canvas.drawLine(startSpect,startHeight+45,startSpect,startHeight+39,color=pid.black)
canvas.drawString('LRS = 0',startSpect,startHeight+60,font=scaleFont)
canvas.drawLine(startSpect+50,startHeight+45,startSpect+50,startHeight+39,color=pid.black)
canvas.drawString('0.5*Suggestive LRS',startSpect+50,startHeight+ 60,font=scaleFont)
canvas.drawLine(startSpect+99,startHeight+45,startSpect+99,startHeight+39,color=pid.black)
canvas.drawString('Significant LRS',startSpect+105,startHeight+50,font=scaleFont)
textFont=pid.Font(ttf="verdana",size=18,bold=0)
canvas.drawString('%s +' % ppolar,startSpect+120,startHeight+ 35,font=textFont,color=pid.red)
canvas.drawString('%s +' % mpolar,startSpect+120,startHeight+ 15,font=textFont,color=pid.blue)
elif colorScheme == '2':
for i in range(100):
canvas.drawLine(startSpect+i,startHeight,startSpect+i,startHeight+20,color=finecolors[100-i])
canvas.drawLine(startSpect+i,startHeight+20,startSpect+i,startHeight+40,color=finecolors[150+i])
canvas.drawLine(startSpect,startHeight+45,startSpect,startHeight+39,color=pid.black)
canvas.drawString('LRS = 0',startSpect,startHeight+60,font=scaleFont)
canvas.drawLine(startSpect+99,startHeight+45,startSpect+99,startHeight+39,color=pid.black)
canvas.drawString('Significant LRS',startSpect+105,startHeight+50,font=scaleFont)
textFont=pid.Font(ttf="verdana",size=18,bold=0)
canvas.drawString('%s +' % ppolar,startSpect+120,startHeight+ 35,font=textFont,color=pid.red)
canvas.drawString('%s +' % mpolar,startSpect+120,startHeight+ 15,font=textFont,color=pid.blue)
filename= webqtlUtil.genRandStr("Heatmap_")
canvas.save(webqtlConfig.IMGDIR+filename, format='png')
if not sessionfile:
sessionfile = webqtlUtil.generate_session()
webqtlUtil.dump_session(permData, os.path.join(webqtlConfig.TMPDIR, sessionfile +'.session'))
self.filename=filename
self.areas=areas
self.sessionfile=sessionfile
def getResult(self):
return self.filename, self.areas, self.sessionfile
#XZ, 7/31/2009: This function put the order of traits into parameter neworder,
#XZ: return the position of the top vertical line of the hierarchical tree, draw the hierarchical tree.
def draw(self,canvas,names,d,xoffset,yoffset,neworder,topHeight):
maxDistance = topHeight
fontoffset = 4 #XZ, 7/31/2009: used only for drawing tree
if type(d[0]) == type(1) and type(d[1]) == type(1):
neworder.append((xoffset+20,d[0]))
neworder.append((xoffset+40,d[1]))
height = d[2]*maxDistance/2
canvas.drawLine(xoffset+20-fontoffset,maxDistance+yoffset,xoffset+20-fontoffset,maxDistance-height+yoffset)
canvas.drawLine(xoffset+40-fontoffset,maxDistance+yoffset,xoffset+40-fontoffset,maxDistance-height+yoffset)
canvas.drawLine(xoffset+40-fontoffset,maxDistance+yoffset-height,xoffset+20-fontoffset,maxDistance-height+yoffset)
return (40,(xoffset+30-fontoffset,maxDistance-height+yoffset))
elif type(d[0]) == type(1):
neworder.append((xoffset+20,d[0]))
d2 = self.draw(canvas,names,d[1],xoffset+20,yoffset,neworder,topHeight)
height = d[2]*maxDistance/2
canvas.drawLine(xoffset+20-fontoffset,maxDistance+yoffset,xoffset+20-fontoffset,maxDistance-height+yoffset)
canvas.drawLine(d2[1][0],d2[1][1],d2[1][0],maxDistance-height+yoffset)
canvas.drawLine(d2[1][0],maxDistance-height+yoffset,xoffset+20-fontoffset,maxDistance-height+yoffset)
return (20+d2[0],((d2[1][0]+xoffset+20-fontoffset)/2,maxDistance-height+yoffset))
elif type(d[1]) == type(1):
d1 = self.draw(canvas,names,d[0],xoffset,yoffset,neworder,topHeight)
neworder.append((xoffset+d1[0]+20,d[1]))
height = d[2]*maxDistance/2
canvas.drawLine(xoffset+d1[0]+20-fontoffset,maxDistance+yoffset,xoffset+d1[0]+20-fontoffset,maxDistance-height+yoffset)
canvas.drawLine(d1[1][0],d1[1][1],d1[1][0],maxDistance-height+yoffset)
canvas.drawLine(d1[1][0],maxDistance-height+yoffset,xoffset+d1[0]+20-fontoffset,maxDistance-height+yoffset)
return (d1[0]+20,((d1[1][0]+xoffset+d1[0]+20-fontoffset)/2,maxDistance-height+yoffset))
else:
d1 = self.draw(canvas,names,d[0],xoffset,yoffset,neworder,topHeight)
d2 = self.draw(canvas,names,d[1],xoffset+d1[0],yoffset,neworder,topHeight)
height = d[2]*maxDistance/2
canvas.drawLine(d2[1][0],d2[1][1],d2[1][0],maxDistance-height+yoffset)
canvas.drawLine(d1[1][0],d1[1][1],d1[1][0],maxDistance-height+yoffset)
canvas.drawLine(d1[1][0],maxDistance-height+yoffset,d2[1][0],maxDistance-height+yoffset)
return (d1[0]+d2[0],((d1[1][0]+d2[1][0])/2,maxDistance-height+yoffset))
#XZ, 7/31/2009: dras trait names
def drawTraitNameBottom (self,canvas,names,yoffset,neworder,strWidth,topHeight,labelFont):
maxDistance = topHeight
for oneOrder in neworder:
canvas.drawString(names[oneOrder[1]],oneOrder[0]-5,maxDistance+yoffset+5+strWidth-canvas.stringWidth(names[oneOrder[1]],font=labelFont),font=labelFont,color=pid.black,angle=270)
def drawTraitNameTop (self,canvas,names,yoffset,neworder,strWidth,topHeight,labelFont):
maxDistance = topHeight
for oneOrder in neworder:
canvas.drawString(names[oneOrder[1]],oneOrder[0]-5,maxDistance+yoffset+5,font=labelFont,color=pid.black,angle=270)
def getNearestMarker(self, traitList, genotype):
out = []
if not genotype.Mbmap:
return [None]* len(traitList)
for item in traitList:
try:
nearest = None
for _chr in genotype:
if _chr.name != item.chr:
continue
distance = 1e30
for _locus in _chr:
if abs(_locus.Mb-item.mb) < distance:
distance = abs(_locus.Mb-item.mb)
nearest = _locus.name
out.append(nearest)
except:
out.append(None)
return out
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