import sys
try:
import wx
WX_VERSION = int(wx.version()[0])
hasWx = True
except Exception as e:
hasWx = False
WX_VERSION = 0
print "EXCEPTION:", str(e)
if hasWx:
import wx.xrc
from wx.lib.buttons import GenBitmapTextButton
#Imports depending on version:
if WX_VERSION == 2:
from wx.lib.pubsub import Publisher as pub
if WX_VERSION == 3:
from wx.lib.pubsub import pub
pub.subscribe
if WX_VERSION == 4:
from wx.lib.pubsub import pub
pub.subscribe
import wx.adv
import os
import time
import ntpath
import math
import random
import numpy
import scipy.stats
import datetime
import base
import pytransit
import pytransit.transit_tools as transit_tools
import pytransit.tnseq_tools as tnseq_tools
import pytransit.norm_tools as norm_tools
import pytransit.stat_tools as stat_tools
############# GUI ELEMENTS ##################
short_name = "resampling"
long_name = "Resampling (Permutation test)"
short_desc = "Resampling test of conditional essentiality between two conditions"
long_desc = """Method for determining conditional essentiality based on resampling (i.e. permutation test). Identifies significant changes in mean read-counts for each gene after normalization."""
transposons = ["himar1", "tn5"]
columns = ["Orf","Name","Desc","Sites","Mean Ctrl","Mean Exp","log2FC", "Sum Ctrl", "Sum Exp", "Delta Mean","p-value","Adj. p-value"]
[docs]class ResamplingAnalysis(base.TransitAnalysis):
def __init__(self):
base.TransitAnalysis.__init__(self, short_name, long_name, short_desc, long_desc, transposons, ResamplingMethod, ResamplingGUI, [ResamplingFile])
############# FILE ##################
[docs]class ResamplingFile(base.TransitFile):
def __init__(self):
base.TransitFile.__init__(self, "#Resampling", columns)
[docs] def displayHistogram(self, displayFrame, event):
gene = displayFrame.grid.GetCellValue(displayFrame.row, 0)
filepath = os.path.join(ntpath.dirname(displayFrame.path), transit_tools.fetch_name(displayFrame.path))
filename = os.path.join(filepath, gene+".png")
if os.path.exists(filename):
imgWindow = pytransit.fileDisplay.ImgFrame(None, filename)
imgWindow.Show()
else:
transit_tools.ShowError(MSG="Error Displaying File. Histogram image not found. Make sure results were obtained with the histogram option turned on.")
print "Error Displaying File. Histogram image does not exist."
############# GUI ##################
[docs]class ResamplingGUI(base.AnalysisGUI):
[docs] def definePanel(self, wxobj):
self.wxobj = wxobj
resamplingPanel = wx.Panel( self.wxobj.optionsWindow, wx.ID_ANY, wx.DefaultPosition, wx.DefaultSize, wx.TAB_TRAVERSAL )
resamplingSizer = wx.BoxSizer( wx.VERTICAL )
resamplingLabel = wx.StaticText( resamplingPanel, wx.ID_ANY, u"resampling Options", wx.DefaultPosition, (160,-1), 0 )
resamplingLabel.SetFont( wx.Font( 10, wx.DEFAULT, wx.NORMAL, wx.BOLD) )
resamplingSizer.Add( resamplingLabel, 0, wx.ALL|wx.ALIGN_CENTER_HORIZONTAL, 5 )
resamplingTopSizer = wx.BoxSizer( wx.HORIZONTAL )
resamplingTopSizer2 = wx.BoxSizer( wx.HORIZONTAL )
resamplingLabelSizer = wx.BoxSizer( wx.VERTICAL )
mainSizer1 = wx.BoxSizer( wx.VERTICAL )
#(, , Sizer) = self.defineChoiceBox(resamplingPanel, u"", u"", "")
#mainSizer1.Add(Sizer, 1, wx.ALIGN_CENTER_HORIZONTAL|wx.EXPAND, 5 )
# Samples
(resamplingSampleLabel, self.wxobj.resamplingSampleText, sampleSizer) = self.defineTextBox(resamplingPanel, u"Samples:", u"10000", "Number of samples to take when estimating the resampling histogram. More samples give more accurate estimates of the p-values at the cost of computation time.")
mainSizer1.Add(sampleSizer, 1, wx.ALIGN_CENTER_HORIZONTAL|wx.EXPAND, 5 )
# Pseudocount
(resamplingPseudocountLabel, self.wxobj.resamplingPseudocountText, pseudoSizer) = self.defineTextBox(resamplingPanel, u"Pseudocount:", u"0.0", "Adds pseudo-counts to the each data-point. Useful to dampen the effects of small counts which may lead to deceptively high log-FC.")
mainSizer1.Add(pseudoSizer, 1, wx.ALIGN_CENTER_HORIZONTAL|wx.EXPAND, 5 )
# Norm
resamplingNormChoiceChoices = [ u"TTR", u"nzmean", u"totreads", u'zinfnb', u'quantile', u"betageom", u"nonorm" ]
(resamplingNormLabel, self.wxobj.resamplingNormChoice, normSizer) = self.defineChoiceBox(resamplingPanel, u"Normalization: ", resamplingNormChoiceChoices, "Choice of normalization method. The default choice, 'TTR', normalizes datasets to have the same expected count (while not being sensative to outliers). Read documentation for a description other methods. ")
mainSizer1.Add(normSizer, 1, wx.ALIGN_CENTER_HORIZONTAL|wx.EXPAND, 5 )
resamplingSizer.Add( mainSizer1, 1, wx.EXPAND, 5 )
# LOESS Check
(self.wxobj.resamplingLoessCheck, loessCheckSizer) = self.defineCheckBox(resamplingPanel, labelText="Correct for Genome Positional Bias", widgetCheck=False, widgetSize=(-1,-1), tooltipText="Check to correct read-counts for possible regional biase using LOESS. Clicking on the button below will plot a preview, which is helpful to visualize the possible bias in the counts.")
resamplingSizer.Add( loessCheckSizer, 0, wx.EXPAND, 5 )
# LOESS Button
self.wxobj.resamplingLoessPrev = wx.Button( resamplingPanel, wx.ID_ANY, u"Preview LOESS fit", wx.DefaultPosition, wx.DefaultSize, 0 )
resamplingSizer.Add( self.wxobj.resamplingLoessPrev, 0, wx.ALL|wx.CENTER, 5 )
# Adaptive Check
(self.wxobj.resamplingAdaptiveCheckBox, adaptiveSizer) = self.defineCheckBox(resamplingPanel, labelText="Adaptive Resampling (Faster)", widgetCheck=False, widgetSize=(-1,-1), tooltipText="Dynamically stops permutations early if it is unlikely the ORF will be significant given the results so far. Improves performance, though p-value calculations for genes that are not differentially essential will be less accurate.")
resamplingSizer.Add( adaptiveSizer, 0, wx.EXPAND, 5 )
# Histogram Check
(self.wxobj.resamplingHistogramCheckBox, histSizer) = self.defineCheckBox(resamplingPanel, labelText="Generate Resampling Histograms", widgetCheck=False, widgetSize=(-1,-1), tooltipText="Creates .png images with the resampling histogram for each of the ORFs. Histogram images are created in a folder with the same name as the output file.")
resamplingSizer.Add(histSizer, 0, wx.EXPAND, 5 )
# Zeros Check
(self.wxobj.resamplingZeroCheckBox, zeroSizer) = self.defineCheckBox(resamplingPanel, labelText="Include sites with all zeros", widgetCheck=True, widgetSize=(-1,-1), tooltipText="Includes sites that are empty (zero) accross all datasets. Unchecking this may be useful for tn5 datasets, where all nucleotides are possible insertion sites and will have a large number of empty sites (significantly slowing down computation and affecting estimates).")
resamplingSizer.Add(zeroSizer, 0, wx.EXPAND, 5 )
resamplingButton = wx.Button( resamplingPanel, wx.ID_ANY, u"Run resampling", wx.DefaultPosition, wx.DefaultSize, 0 )
resamplingSizer.Add( resamplingButton, 0, wx.ALL|wx.ALIGN_CENTER_HORIZONTAL, 5 )
resamplingPanel.SetSizer( resamplingSizer )
resamplingPanel.Layout()
resamplingSizer.Fit( resamplingPanel )
#Connect events
resamplingButton.Bind( wx.EVT_BUTTON, self.wxobj.RunMethod )
self.wxobj.resamplingLoessPrev.Bind(wx.EVT_BUTTON, self.wxobj.LoessPrevFunc)
self.panel = resamplingPanel
########## CLASS #######################
[docs]class ResamplingMethod(base.DualConditionMethod):
"""
resampling
"""
def __init__(self,
ctrldata,
expdata,
annotation_path,
output_file,
normalization="TTR",
samples=10000,
adaptive=False,
doHistogram=False,
includeZeros=False,
pseudocount=0.0,
replicates="Sum",
LOESS=False,
ignoreCodon=True,
NTerminus=0.0,
CTerminus=0.0, wxobj=None):
base.DualConditionMethod.__init__(self, short_name, long_name, short_desc, long_desc, ctrldata, expdata, annotation_path, output_file, normalization=normalization, replicates=replicates, LOESS=LOESS, NTerminus=NTerminus, CTerminus=CTerminus, wxobj=wxobj)
self.samples = samples
self.adaptive = adaptive
self.doHistogram = doHistogram
self.includeZeros = includeZeros
self.pseudocount = pseudocount
[docs] @classmethod
def fromGUI(self, wxobj):
""" """
#Get Annotation file
annotationPath = wxobj.annotation
if not transit_tools.validate_annotation(annotationPath):
return None
#Get selected files
ctrldata = wxobj.ctrlSelected()
expdata = wxobj.expSelected()
if not transit_tools.validate_both_datasets(ctrldata, expdata):
return None
#Validate transposon types
if not transit_tools.validate_transposons_used(ctrldata+expdata, transposons):
return None
#Read the parameters from the wxPython widgets
ignoreCodon = True
samples = int(wxobj.resamplingSampleText.GetValue())
normalization = wxobj.resamplingNormChoice.GetString(wxobj.resamplingNormChoice.GetCurrentSelection())
replicates="Sum"
adaptive = wxobj.resamplingAdaptiveCheckBox.GetValue()
doHistogram = wxobj.resamplingHistogramCheckBox.GetValue()
includeZeros = wxobj.resamplingZeroCheckBox.GetValue()
pseudocount = float(wxobj.resamplingPseudocountText.GetValue())
NTerminus = float(wxobj.globalNTerminusText.GetValue())
CTerminus = float(wxobj.globalCTerminusText.GetValue())
LOESS = wxobj.resamplingLoessCheck.GetValue()
#Get output path
defaultFileName = "resampling_output_s%d_pc%1.2f" % (samples, pseudocount)
if adaptive: defaultFileName+= "_adaptive"
if includeZeros: defaultFileName+= "_iz"
defaultFileName+=".dat"
defaultDir = os.getcwd()
output_path = wxobj.SaveFile(defaultDir, defaultFileName)
if not output_path: return None
output_file = open(output_path, "w")
return self(ctrldata,
expdata,
annotationPath,
output_file,
normalization,
samples,
adaptive,
doHistogram,
includeZeros,
pseudocount,
replicates,
LOESS,
ignoreCodon,
NTerminus,
CTerminus, wxobj)
[docs] @classmethod
def fromargs(self, rawargs):
(args, kwargs) = transit_tools.cleanargs(rawargs)
ctrldata = args[0].split(",")
expdata = args[1].split(",")
annotationPath = args[2]
output_path = args[3]
output_file = open(output_path, "w")
normalization = kwargs.get("n", "TTR")
samples = int(kwargs.get("s", 10000))
adaptive = kwargs.get("a", False)
doHistogram = kwargs.get("h", False)
replicates = kwargs.get("r", "Sum")
includeZeros = kwargs.get("iz", False)
pseudocount = float(kwargs.get("pc", 0.00))
LOESS = kwargs.get("l", False)
ignoreCodon = True
NTerminus = float(kwargs.get("iN", 0.00))
CTerminus = float(kwargs.get("iC", 0.00))
return self(ctrldata,
expdata,
annotationPath,
output_file,
normalization,
samples,
adaptive,
doHistogram,
includeZeros,
pseudocount,
replicates,
LOESS,
ignoreCodon,
NTerminus,
CTerminus)
[docs] def Run(self):
#if not self.wxobj:
# # Force matplotlib to use good backend for png.
# import matplotlib.pyplot as plt
#elif "matplotlib.pyplot" not in sys.modules:
try:
import matplotlib.pyplot as plt
except:
print "Error: cannot do histograms"
self.doHistogram = False
self.transit_message("Starting resampling Method")
start_time = time.time()
if self.doHistogram:
histPath = os.path.join(os.path.dirname(self.output.name), transit_tools.fetch_name(self.output.name)+"_histograms")
if not os.path.isdir(histPath):
os.makedirs(histPath)
else:
histPath = ""
Kctrl = len(self.ctrldata)
Kexp = len(self.expdata)
#Get orf data
self.transit_message("Getting Data")
(data, position) = transit_tools.get_validated_data(self.ctrldata+self.expdata, wxobj=self.wxobj)
(K,N) = data.shape
if self.normalization != "nonorm":
self.transit_message("Normalizing using: %s" % self.normalization)
(data, factors) = norm_tools.normalize_data(data, self.normalization, self.ctrldata+self.expdata, self.annotation_path)
if self.LOESS:
self.transit_message("Performing LOESS Correction")
for j in range(K):
data[j] = stat_tools.loess_correction(position, data[j])
G = tnseq_tools.Genes(self.ctrldata + self.expdata, self.annotation_path, ignoreCodon=self.ignoreCodon, nterm=self.NTerminus, cterm=self.CTerminus, data=data, position=position)
#G = tnseq_tools.Genes(self.ctrldata+self.expdata, self.annotation_path, norm=self.normalization, ignoreCodon=self.ignoreCodon, nterm=self.NTerminus, cterm=self.CTerminus)
#Resampling
data = []
N = len(G)
count = 0
self.progress_range(N)
for gene in G:
count+=1
if gene.k == 0 or gene.n == 0:
(test_obs, mean1, mean2, log2FC, pval_ltail, pval_utail, pval_2tail, testlist, data1, data2) = (0, 0, 0, 0, 1.00, 1.00, 1.00, [], [0], [0])
else:
if not self.includeZeros:
ii = numpy.sum(gene.reads,0) > 0
else:
ii = numpy.ones(gene.n) == 1
data1 = gene.reads[:Kctrl,ii].flatten()+self.pseudocount
data2 = gene.reads[Kctrl:,ii].flatten()+self.pseudocount
(test_obs, mean1, mean2, log2FC, pval_ltail, pval_utail, pval_2tail, testlist) = stat_tools.resampling(data1, data2, S=self.samples, testFunc=stat_tools.F_mean_diff_flat, adaptive=self.adaptive)
if self.doHistogram:
import matplotlib.pyplot as plt
if testlist:
n, bins, patches = plt.hist(testlist, density=1, facecolor='c', alpha=0.75, bins=100)
else:
n, bins, patches = plt.hist([0,0], density=1, facecolor='c', alpha=0.75, bins=100)
plt.xlabel('Delta Mean')
plt.ylabel('Probability')
plt.title('%s - Histogram of Delta Mean' % gene.orf)
plt.axvline(test_obs, color='r', linestyle='dashed', linewidth=3)
plt.grid(True)
genePath = os.path.join(histPath, gene.orf +".png")
if not os.path.exists(histPath):
os.makedirs(histPath)
plt.savefig(genePath)
plt.clf()
sum1 = numpy.sum(data1)
sum2 = numpy.sum(data2)
data.append([gene.orf, gene.name, gene.desc, gene.n, mean1, mean2, sum1, sum2, test_obs, log2FC, pval_2tail])
# Update progress
text = "Running Resampling Method... %5.1f%%" % (100.0*count/N)
self.progress_update(text, count)
#
self.transit_message("") # Printing empty line to flush stdout
self.transit_message("Performing Benjamini-Hochberg Correction")
data.sort()
qval = stat_tools.BH_fdr_correction([row[-1] for row in data])
self.output.write("#Resampling\n")
if self.wxobj:
members = sorted([attr for attr in dir(self) if not callable(getattr(self,attr)) and not attr.startswith("__")])
memberstr = ""
for m in members:
memberstr += "%s = %s, " % (m, getattr(self, m))
self.output.write("#GUI with: norm=%s, samples=%s, pseudocounts=%1.2f, adaptive=%s, histogram=%s, includeZeros=%s, output=%s\n" % (self.normalization, self.samples, self.pseudocount, self.adaptive, self.doHistogram, self.includeZeros, self.output.name.encode('utf-8')))
else:
self.output.write("#Console: python %s\n" % " ".join(sys.argv))
self.output.write("#Control Data: %s\n" % (",".join(self.ctrldata).encode('utf-8')))
self.output.write("#Experimental Data: %s\n" % (",".join(self.expdata).encode('utf-8')))
self.output.write("#Annotation path: %s\n" % (self.annotation_path.encode('utf-8')))
self.output.write("#Time: %s\n" % (time.time() - start_time))
self.output.write("#%s\n" % "\t".join(columns))
for i,row in enumerate(data):
(orf, name, desc, n, mean1, mean2, sum1, sum2, test_obs, log2FC, pval_2tail) = row
self.output.write("%s\t%s\t%s\t%d\t%1.1f\t%1.1f\t%1.2f\t%1.1f\t%1.2f\t%1.1f\t%1.5f\t%1.5f\n" % (orf, name, desc, n, mean1, mean2, log2FC, sum1, sum2, test_obs, pval_2tail, qval[i]))
self.output.close()
self.transit_message("Adding File: %s" % (self.output.name))
self.add_file(filetype="Resampling")
self.finish()
self.transit_message("Finished resampling Method")
[docs] @classmethod
def usage_string(self):
return """python %s resampling <comma-separated .wig control files> <comma-separated .wig experimental files> <annotation .prot_table or GFF3> <output file> [Optional Arguments]
Optional Arguments:
-s <integer> := Number of samples. Default: -s 10000
-n <string> := Normalization method. Default: -n TTR
-h := Output histogram of the permutations for each gene. Default: Turned Off.
-a := Perform adaptive resampling. Default: Turned Off.
-iz := Include rows with zero accross conditions.
-pc := Pseudocounts to be added at each site.
-l := Perform LOESS Correction; Helps remove possible genomic position bias. Default: Turned Off.
-iN <float> := Ignore TAs occuring at given fraction of the N terminus. Default: -iN 0.0
-iC <float> := Ignore TAs occuring at given fraction of the C terminus. Default: -iC 0.0
""" % (sys.argv[0])
if __name__ == "__main__":
(args, kwargs) = transit_tools.cleanargs(sys.argv)
#TODO: Figure out issue with inputs (transit requires initial method name, running as script does not !!!!)
G = ResamplingMethod.fromargs(sys.argv[1:])
G.console_message("Printing the member variables:")
G.print_members()
print ""
print "Running:"
G.Run()