def __init__(self, df, X, featuresName, ages, args): super(MetabolomicsRegExpRunner, self).__init__(args=args) self.df = df self.X = X self.featuresName = featuresName self.args = args self.ages = ages self.labelNames = MetabolomicsUtils.getLabelNames() self.YList = MetabolomicsUtils.createLabelList(df, self.labelNames) self.boundsList = MetabolomicsUtils.getBounds() self.resultsDir = PathDefaults.getOutputDir() + "metabolomics/"
import numpy from exp.metabolomics.MetabolomicsUtils import MetabolomicsUtils X, X2, df = MetabolomicsUtils.loadData() #Just figure out the boundaries of the levels numpy.set_printoptions(threshold=3000) labelNames = ["IGF1.val", "Cortisol.val", "Testosterone.val"] labelNames2 = ["Ind.IGF1.1", "Ind.IGF1.2", "Ind.IGF1.3"] YList = MetabolomicsUtils.createLabelList(df, labelNames) YList2 = MetabolomicsUtils.createLabelList(df, labelNames2) Y, inds = YList[0] Y1 = numpy.array(df.rx(labelNames2[0])).ravel()[inds] Y2 = numpy.array(df.rx(labelNames2[1])).ravel()[inds] Y3 = numpy.array(df.rx(labelNames2[2])).ravel()[inds] inds = numpy.argsort(Y) YY = numpy.c_[Y[inds], Y1[inds]] YY = numpy.c_[YY, Y2[inds]] YY = numpy.c_[YY, Y3[inds]] print(YY) labelNames2 = ["Ind.Cortisol.1", "Ind.Cortisol.2", "Ind.Cortisol.3"] YList2 = MetabolomicsUtils.createLabelList(df, labelNames2) Y, inds = YList[1] Y1 = numpy.array(df.rx(labelNames2[0])).ravel()[inds] Y2 = numpy.array(df.rx(labelNames2[1])).ravel()[inds] Y3 = numpy.array(df.rx(labelNames2[2])).ravel()[inds]