def handleReferenceTrack(self, genome, tracks, track_names, clusterMethod, extra_option ): reftrack_names = [] #for use in creating the heatmap (as the column names) refTracks = [] options = [] #for the case using refTracks, options contains feature for every refTrack, chosen by user. print 'params' keys = sorted(self.params.keys()) for key in keys: print key, self.params[key] numreferencetracks = self.params.get('numreferencetracks') refTracks = [self.params['reftrack' + str(i+1)] for i in range(int(numreferencetracks))] if numreferencetracks else None refFeatures = [self.params.get('ref'+str(i)+'feature') for i in range(int(numreferencetracks))] if numreferencetracks else None yesNo = [self.params.get('yes_no'+str(i)) for i in range(int(numreferencetracks))] if numreferencetracks else None howMany = [self.params.get('how_many'+str(i)) if self.params.get('how_many'+str(i)) else '0' for i in range(int(numreferencetracks))] if numreferencetracks else None upFlank = [ [self.params.get(str(i)+'_'+str(v)+'up')for v in range(int(howMany[i]))] for i in range(int(numreferencetracks))] if numreferencetracks else None downFlank =[ [self.params.get(str(i)+'_'+str(v)+'down') for v in range(int(howMany[i]))] for i in range(int(numreferencetracks))] if numreferencetracks else None distanceType = self.params.get("distanceType") #from distanceType select tag kmeans_alg = self.params.get("kmeans_alg") regSpec, binSpec = self.getRegAndBinSpec() ClusteringExecution.executeReferenceTrack(genome, tracks, track_names, clusterMethod, extra_option, distanceType, kmeans_alg, self.jobFile, regSpec, binSpec, numreferencetracks, refTracks, refFeatures, yesNo, howMany, upFlank, downFlank)
def handleSelfFeature(self, genome, tracks, track_names, clusterMethod, extra_option): if self.params.has_key("self_feature") : feature = self.params.get("self_feature") distanceType = self.params.get("distanceType") #from distanceType select tag kmeans_alg = self.params.get("kmeans_alg") jobFile = self.jobFile regSpec, binSpec = self.getRegAndBinSpec() return ClusteringExecution.executeSelfFeature(genome, tracks, track_names, clusterMethod, extra_option, feature, distanceType, kmeans_alg, jobFile, regSpec, binSpec) else : print 'A feature must be selected in order to build the feature vecotr for tracks.'