#!/usr/bin/env python3 # -*- coding: utf-8 -*- import sys import numpy as np from sklearn import manifold import matplotlib.pyplot as plt from mpl_toolkits.mplot3d import Axes3D from matplotlib import cm import argparse def rand_jitter(arr): stdev = arr.max() / 100. return arr + np.random.randn(len(arr)) * stdev * 2 def read_file(fname, separator): distances = np.genfromtxt(fname, delimiter=separator) if np.isnan(distances[0][len(distances[0])-1]):#separator after the last element in row distances = np.array([row[:-1] for row in distances]) return distances def compute_mds(distance_matrix, dim): seed = np.random.RandomState(seed=3) mds = manifold.MDS(n_components=int(dim), metric=True, max_iter=3000, eps=1e-9, random_state=seed, dissimilarity="precomputed") embed = mds.fit(distance_matrix).embedding_ return embed def compute_variances(embed): variances = [] for i in range(len(embed[0])): variances.append(np.var(embed[:,i])) percent_variances = [sum(variances[:i+1])/sum(variances) for i in range(len(variances))] return percent_variances def plot(coordinates, dimensions, jitter=0, outname=""): fig = plt.figure() if dimensions < 3: ax = fig.add_subplot(111) else: ax = fig.add_subplot(111, projection='3d') add_jitter = lambda tab : rand_jitter(tab) if jitter==1 else tab x_dim = len(coordinates[0]) y_dim = len(coordinates) ax.scatter(*[add_jitter(coordinates[:, i]) for i in range(x_dim)], alpha=0.5) plt.title('Phenotypes distances') plt.tight_layout() plt.axis('tight') if outname == "": plt.show() else: plt.savefig(outname+".pdf") def main(filename,dimensions=3, outname="", jitter=0, separator='\t'): distances = read_file(filename, separator) embed = compute_mds(distances, dimensions) variances_perc = compute_variances(embed) for i,vc in enumerate(variances_perc): print(i+1,"dimension:",vc) dimensions = int(dimensions) if dimensions == 1: embed = np.array([np.insert(e, 0, 0, axis=0) for e in embed]) plot(embed, dimensions) if __name__ == '__main__': parser = argparse.ArgumentParser() parser.add_argument('--in', dest='input', required=True, help='input file with dissimilarity matrix') parser.add_argument('--out', dest='output', required=False, help='output file name without extension') parser.add_argument('--dim', required=False, help='number of dimensions of the new space') parser.add_argument('--sep', required=False, help='separator of the source file') parser.add_argument('--j', required=False, help='for j=1 random jitter is added to the plot') args = parser.parse_args() set_value = lambda value, default : default if value == None else value main(args.input, set_value(args.dim, 3), set_value(args.output, ""), set_value(args.j, 0), set_value(args.sep, "\t"))