view pairend_distro.py @ 0:796552c157de draft

planemo upload for repository https://github.com/ARTbio/tools-artbio/tree/master/tools/lumpy-sv commit d06124e8a097f3f665b4955281f40fe811eaee64
author artbio
date Mon, 24 Jul 2017 08:03:17 -0400
parents
children 1ed8619a5611
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#!/usr/bin/env python
#  (c) 2012 - Ryan M. Layer
#  Hall Laboratory
#  Quinlan Laboratory
#  Department of Computer Science
#  Department of Biochemistry and Molecular Genetics
#  Department of Public Health Sciences and Center for Public Health Genomics,
#  University of Virginia
#  rl6sf@virginia.edu

import sys
import numpy as np
from operator import itemgetter
from optparse import OptionParser

# some constants for sam/bam field ids
SAM_FLAG = 1
SAM_REFNAME = 2
SAM_MATE_REFNAME = 6
SAM_ISIZE = 8

parser = OptionParser()

parser.add_option("-r",
    "--read_length",
    type="int",
    dest="read_length",
    help="Read length")

parser.add_option("-X",
    dest="X",
    type="int",
    help="Number of stdevs from mean to extend")

parser.add_option("-N",
    dest="N",
    type="int",
    help="Number to sample")

parser.add_option("-o",
    dest="output_file",
    help="Output file")

parser.add_option("-m",
    dest="mads",
    type="int",
    default=10,
    help="Outlier cutoff in # of median absolute deviations (unscaled, upper only)")

def unscaled_upper_mad(xs):
    """Return a tuple consisting of the median of xs followed by the
    unscaled median absolute deviation of the values in xs that lie
    above the median.
    """
    med = np.median(xs)
    return med, np.median(xs[xs > med] - med)


(options, args) = parser.parse_args()

if not options.read_length:
    parser.error('Read length not given')

if not options.X:
    parser.error('X not given')

if not options.N:
    parser.error('N not given')

if not options.output_file:
    parser.error('Output file not given')


required = 97
restricted = 3484
flag_mask = required | restricted

L = []
c = 0

for l in sys.stdin:
    if c >= options.N:
        break

    A = l.rstrip().split('\t')
    flag = int(A[SAM_FLAG])
    refname = A[SAM_REFNAME]
    mate_refname = A[SAM_MATE_REFNAME]
    isize = int(A[SAM_ISIZE])

    want = mate_refname == "=" and flag & flag_mask == required and isize >= 0
    if want:
        c += 1
        L.append(isize)

# warn if very few elements in distribution
min_elements = 1000
if len(L) < min_elements:
    sys.stderr.write("Warning: only %s elements in distribution (min: %s)\n" % (len(L), min_elements))
    mean = "NA"
    stdev = "NA"

else:
    # Remove outliers
    L = np.array(L)
    L.sort()
    med, umad = unscaled_upper_mad(L)
    upper_cutoff = med + options.mads * umad
    L = L[L < upper_cutoff]
    new_len = len(L)
    removed = c - new_len
    sys.stderr.write("Removed %d outliers with isize >= %d\n" %
        (removed, upper_cutoff))
    c = new_len

    mean = np.mean(L)
    stdev = np.std(L)

    start = options.read_length
    end = int(mean + options.X*stdev)

    H = [0] * (end - start + 1)
    s = 0

    for x in L:
        if (x >= start) and (x <= end):
            j = int(x - start)
            H[j] = H[ int(x - start) ] + 1
            s += 1

    f = open(options.output_file, 'w')

    for i in range(end - start):
        o = str(i) + "\t" + str(float(H[i])/float(s)) + "\n"
        f.write(o)


    f.close()

print('mean:' + str(mean) + '\tstdev:' + str(stdev))