640 lines
24 KiB
Python
Executable file
640 lines
24 KiB
Python
Executable file
#!/usr/bin/env python3
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# -*- coding: utf-8 -*-
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'''
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Created on Tue Aug 6 12:56:03 2019
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@author: tanu
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'''
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#=======================================================================
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# Task: combining all dfs to a single one
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# Input: 8 dfs
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#1) <gene>.lower()'_complex_mcsm_norm.csv'
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#2) <gene>.lower()_foldx.csv'
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#3) <gene>.lower()_dssp.csv'
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#4) <gene>.lower()_kd.csv'
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#5) <gene>.lower()_rd.csv'
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#6) 'ns' + <gene>.lower()_snp_info.csv'
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#7) <gene>.lower()_af_or.csv'
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#8) <gene>.lower() _af_or_kinship.csv
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# combining order
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#Merge1 = 1 + 2
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#Merge2 = 3 + 4
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#Merge3 = Merge2 + 5
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#Merge4 = Merge1 + Merge3
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#Merge5 = 6 + 7
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#Merge6 = Merge5 + 8
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#Merge7 = Merge4 + Merge6
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# Output: single csv of all 8 dfs combined
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# useful link
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# https://stackoverflow.com/questions/23668427/pandas-three-way-joining-multiple-dataframes-on-columns
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#=======================================================================
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#%% load packages
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import sys, os
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import pandas as pd
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from pandas import DataFrame
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import numpy as np
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#from varname import nameof
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import argparse
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#=======================================================================
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#%% specify input and curr dir
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homedir = os.path.expanduser('~')
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# set working dir
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os.getcwd()
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os.chdir(homedir + '/git/LSHTM_analysis/scripts')
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os.getcwd()
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# FIXME: local imports
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#from combining import combine_dfs_with_checks
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from combining_FIXME import detect_common_cols
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from reference_dict import oneletter_aa_dict # CHECK DIR STRUC THERE!
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from reference_dict import low_3letter_dict # CHECK DIR STRUC THERE!
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#=======================================================================
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#%% command line args: case sensitive
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arg_parser = argparse.ArgumentParser()
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arg_parser.add_argument('-d', '--drug', help='drug name', default = '')
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arg_parser.add_argument('-g', '--gene', help='gene name', default = '')
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arg_parser.add_argument('--datadir', help = 'Data Directory. By default, it assmumes homedir + git/Data')
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arg_parser.add_argument('-i', '--input_dir', help = 'Input dir containing pdb files. By default, it assmumes homedir + <drug> + input')
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arg_parser.add_argument('-o', '--output_dir', help = 'Output dir for results. By default, it assmes homedir + <drug> + output')
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arg_parser.add_argument('--debug', action ='store_true', help = 'Debug Mode')
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args = arg_parser.parse_args()
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#=======================================================================
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#%% variable assignment: input and output
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#drug = 'pyrazinamide'
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#gene = 'pncA'
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drug = args.drug
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gene = args.gene
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datadir = args.datadir
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indir = args.input_dir
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outdir = args.output_dir
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gene_match = gene + '_p.'
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print('mut pattern for gene', gene, ':', gene_match)
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nssnp_match = gene_match +'[A-Za-z]{3}[0-9]+[A-Za-z]{3}'
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print('nsSNP for gene', gene, ':', nssnp_match)
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wt_regex = gene_match.lower()+'([A-Za-z]{3})'
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print('wt regex:', wt_regex)
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mut_regex = r'[0-9]+(\w{3})$'
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print('mt regex:', mut_regex)
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pos_regex = r'([0-9]+)'
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print('position regex:', pos_regex)
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#%%=======================================================================
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#==============
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# directories
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#==============
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if not datadir:
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datadir = homedir + '/git/Data/'
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if not indir:
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indir = datadir + drug + '/input/'
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if not outdir:
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outdir = datadir + drug + '/output/'
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#=======
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# input
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#=======
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#in_filename_mcsm = gene.lower() + '_complex_mcsm_norm.csv'
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in_filename_mcsm = gene.lower() + '_complex_mcsm_norm_SAM.csv' # gidb
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in_filename_foldx = gene.lower() + '_foldx.csv'
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in_filename_dssp = gene.lower() + '_dssp.csv'
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in_filename_kd = gene.lower() + '_kd.csv'
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in_filename_rd = gene.lower() + '_rd.csv'
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#in_filename_deepddg = gene.lower() + '_complex_ddg_results.txt' # change to decent filename and put it in the correct dir
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in_filename_snpinfo = 'ns' + gene.lower() + '_snp_info_f.csv' # gwas f info
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in_filename_afor = gene.lower() + '_af_or.csv'
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in_filename_afor_kin = gene.lower() + '_af_or_kinship.csv'
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infile_mcsm = outdir + in_filename_mcsm
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infile_foldx = outdir + in_filename_foldx
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infile_dssp = outdir + in_filename_dssp
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infile_kd = outdir + in_filename_kd
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infile_rd = outdir + in_filename_rd
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#infile_deepddg = outdir + in_filename_deepddg
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infile_snpinfo = outdir + '/' + in_filename_snpinfo
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infile_afor = outdir + '/' + in_filename_afor
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infile_afor_kin = outdir + '/' + in_filename_afor_kin
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print('\nInput path:', indir
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, '\nOutput path:', outdir, '\n'
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, '\nInput filename mcsm:', infile_mcsm
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, '\nInput filename foldx:', infile_foldx, '\n'
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, '\nInput filename dssp:', infile_dssp
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, '\nInput filename kd:', infile_kd
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, '\nInput filename rd', infile_rd
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# , '\nInput filename rd', infile_deepddg , '\n'
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, '\nInput filename snp info:', infile_snpinfo, '\n'
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, '\nInput filename af or:', infile_afor
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, '\nInput filename afor kinship:', infile_afor_kin
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, '\n============================================================')
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#=======
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# output
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#=======
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out_filename_comb = gene.lower() + '_all_params.csv'
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outfile_comb = outdir + '/' + out_filename_comb
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print('Output filename:', outfile_comb
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, '\n===================================================================')
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o_join = 'outer'
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l_join = 'left'
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r_join = 'right'
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i_join = 'inner'
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# end of variable assignment for input and output files
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#%%============================================================================
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print('==================================='
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, '\nFirst merge: mcsm + foldx'
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, '\n===================================')
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mcsm_df = pd.read_csv(infile_mcsm, sep = ',')
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#mcsm_df.columns = mcsm_df.columns.str.lower()
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foldx_df = pd.read_csv(infile_foldx , sep = ',')
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#mcsm_foldx_dfs = combine_dfs_with_checks(mcsm_df, foldx_df, my_join = o_join)
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merging_cols_m1 = detect_common_cols(mcsm_df, foldx_df)
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mcsm_foldx_dfs = pd.merge(mcsm_df, foldx_df, on = merging_cols_m1, how = o_join)
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ncols_m1 = len(mcsm_foldx_dfs.columns)
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print('\n\nResult of first merge:', mcsm_foldx_dfs.shape
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, '\n===================================================================')
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mcsm_foldx_dfs[merging_cols_m1].apply(len)
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mcsm_foldx_dfs[merging_cols_m1].apply(len) == len(mcsm_foldx_dfs)
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#%%============================================================================
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print('==================================='
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, '\nSecond merge: dssp + kd'
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, '\n===================================')
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dssp_df = pd.read_csv(infile_dssp, sep = ',')
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kd_df = pd.read_csv(infile_kd, sep = ',')
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rd_df = pd.read_csv(infile_rd, sep = ',')
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#dssp_kd_dfs = combine_dfs_with_checks(dssp_df, kd_df, my_join = o_join)
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merging_cols_m2 = detect_common_cols(dssp_df, kd_df)
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dssp_kd_dfs = pd.merge(dssp_df, kd_df, on = merging_cols_m2, how = o_join)
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print('\n\nResult of second merge:', dssp_kd_dfs.shape
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, '\n===================================================================')
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#%%============================================================================
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print('==================================='
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, '\nThird merge: second merge + rd_df'
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, '\ndssp_kd_dfs + rd_df'
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, '\n===================================')
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#dssp_kd_rd_dfs = combine_dfs_with_checks(dssp_kd_dfs, rd_df, my_join = o_join)
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merging_cols_m3 = detect_common_cols(dssp_df, kd_df)
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dssp_kd_rd_dfs = pd.merge(dssp_kd_dfs, rd_df, on = merging_cols_m3, how = o_join)
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ncols_m3 = len(dssp_kd_rd_dfs.columns)
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print('\n\nResult of Third merge:', dssp_kd_rd_dfs.shape
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, '\n===================================================================')
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dssp_kd_rd_dfs[merging_cols_m3].apply(len)
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dssp_kd_rd_dfs[merging_cols_m3].apply(len) == len(dssp_kd_rd_dfs)
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#%%============================================================================
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print('======================================='
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, '\nFourth merge: First merge + Third merge'
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, '\nmcsm_foldx_dfs + dssp_kd_rd_dfs'
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, '\n=======================================')
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#combined_df = combine_dfs_with_checks(mcsm_foldx_dfs, dssp_kd_rd_dfs, my_join = i_join)
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merging_cols_m4 = detect_common_cols(mcsm_foldx_dfs, dssp_kd_rd_dfs)
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combined_df = pd.merge(mcsm_foldx_dfs, dssp_kd_rd_dfs, on = merging_cols_m4, how = i_join)
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combined_df_expected_cols = ncols_m1 + ncols_m3 - len(merging_cols_m4)
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if len(combined_df) == len(mcsm_df) and len(combined_df.columns) == combined_df_expected_cols:
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print('PASS: successfully combined 5 dfs'
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, '\nNo. of rows combined_df:', len(combined_df)
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, '\nNo. of cols combined_df:', len(combined_df.columns))
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else:
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sys.exit('FAIL: check individual df merges')
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print('\nResult of Fourth merge:', combined_df.shape
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, '\n===================================================================')
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combined_df[merging_cols_m4].apply(len)
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combined_df[merging_cols_m4].apply(len) == len(combined_df)
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#%%============================================================================
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#deepddg_df = pd.read_csv(infile_deepddg, sep = ' ')
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#%%============================================================================
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# Output columns
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out_filename_stab_struc = gene.lower() + '_comb_stab_struc_params.csv'
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outfile_stab_struc = outdir + '/' + out_filename_stab_struc
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print('Output filename:', outfile_stab_struc
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, '\n===================================================================')
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# write csv
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print('Writing file: combined stability and structural parameters')
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combined_df.to_csv(outfile_stab_struc, index = False)
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print('\nFinished writing file:'
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, '\nNo. of rows:', combined_df.shape[0]
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, '\nNo. of cols:', combined_df.shape[1])
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#%%============================================================================
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# OR merges: TEDIOUSSSS!!!!
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#[ DELETE ]
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del(mcsm_df, foldx_df, mcsm_foldx_dfs, dssp_kd_dfs, dssp_kd_rd_dfs,rd_df, kd_df, infile_mcsm, infile_foldx, infile_dssp, infile_kd)
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del(merging_cols_m1, merging_cols_m2, merging_cols_m3, merging_cols_m4)
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del(in_filename_dssp, in_filename_foldx, in_filename_kd, in_filename_mcsm, in_filename_rd)
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#%%
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print('==================================='
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, '\nFifth merge: afor_df + afor_kin_df'
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, '\n===================================')
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# OR combining
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afor_df = pd.read_csv(infile_afor, sep = ',')
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#afor_df.columns = afor_df.columns.str.lower()
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afor_kin_df = pd.read_csv(infile_afor_kin, sep = ',')
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afor_kin_df.columns = afor_kin_df.columns.str.lower()
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merging_cols_m5 = detect_common_cols(afor_df, afor_kin_df)
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print('Dim of afor_df:', afor_df.shape
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, '\nDim of afor_kin_df:', afor_kin_df.shape)
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# finding if ALL afor_kin_df muts are present in afor_df
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# i.e all kinship muts should be PRESENT in mycalcs_present
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if len(afor_kin_df[afor_kin_df['mutation'].isin(afor_df['mutation'])]) == afor_kin_df.shape[0]:
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print('PASS: ALL', len(afor_kin_df), 'or_kinship muts are present in my or list')
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else:
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nf_muts = len(afor_kin_df[~afor_kin_df['mutation'].isin(afor_df['mutation'])])
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nf_muts_df = afor_kin_df[~afor_kin_df['mutation'].isin(afor_df['mutation'])]
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print('FAIL:', nf_muts, 'muts present in afor_kin_df NOT present in my or list'
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, '\nsee "nf_muts_df" created containing not found(nf) muts')
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sys.exit()
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# Now checking how many afor_df muts are NOT present in afor_kin_df
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common_muts = len(afor_df[afor_df['mutation'].isin(afor_kin_df['mutation'])])
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extra_muts_myor = afor_kin_df.shape[0] - common_muts
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print('=========================================='
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, '\nmy or calcs has', common_muts, 'present in af_or_kin_df'
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, '\n==========================================')
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print('Expected cals for merging with outer_join...')
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expected_rows = afor_df.shape[0] + extra_muts_myor
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expected_cols = afor_df.shape[1] + afor_kin_df.shape[1] - len(merging_cols_m5)
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afor_df['mutation']
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afor_kin_df['mutation']
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ors_df = pd.merge(afor_df, afor_kin_df, on = merging_cols_m5, how = o_join)
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if ors_df.shape[0] == expected_rows and ors_df.shape[1] == expected_cols:
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print('PASS but with duplicate muts: OR dfs successfully combined! PHEWWWW!'
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, '\nDuplicate muts present but with different \'ref\' and \'alt\' alleles')
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else:
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print('FAIL: could not combine OR dfs'
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, '\nCheck expected rows and cols calculation and join type')
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print('Dim of merged ors_df:', ors_df.shape)
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ors_df[merging_cols_m5].apply(len)
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ors_df[merging_cols_m5].apply(len) == len(ors_df)
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#%%============================================================================
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# formatting ors_df
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ors_df.columns
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# Dropping unncessary columns: already removed in ealier preprocessing
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cols_to_drop = ['n_miss']
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print('Dropping', len(cols_to_drop), 'columns:\n'
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, cols_to_drop)
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ors_df.drop(cols_to_drop, axis = 1, inplace = True)
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print('Reordering', ors_df.shape[1], 'columns'
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, '\n===============================================')
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cols = ors_df.columns
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column_order = ['mutation'
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, 'mutationinformation'
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, 'wild_type'
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, 'position'
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, 'mutant_type'
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, 'ref_allele'
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, 'alt_allele'
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, 'mut_info_f1'
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, 'mut_info_f2'
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, 'mut_type'
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, 'gene_id'
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, 'gene_name'
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, 'chromosome_number'
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, 'af'
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, 'af_kin'
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, 'est_chisq'
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, 'or_mychisq'
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, 'or_fisher'
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, 'or_logistic'
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, 'or_kin'
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, 'pval_chisq'
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, 'pval_fisher'
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, 'pval_logistic'
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, 'pwald_kin'
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, 'ci_low_fisher'
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, 'ci_hi_fisher'
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, 'ci_low_logistic'
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, 'ci_hi_logistic'
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, 'beta_logistic'
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, 'beta_kin'
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, 'se_logistic'
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, 'se_kin'
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, 'zval_logistic'
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, 'logl_h1_kin'
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, 'l_remle_kin']
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if ( (len(column_order) == ors_df.shape[1]) and (DataFrame(column_order).isin(ors_df.columns).all().all())):
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print('PASS: Column order generated for all:', len(column_order), 'columns'
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, '\nColumn names match, safe to reorder columns'
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, '\nApplying column order to df...' )
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ors_df_ordered = ors_df[column_order]
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else:
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print('FAIL: Mismatch in no. of cols to reorder'
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, '\nNo. of cols in df to reorder:', ors_df.shape[1]
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, '\nNo. of cols order generated for:', len(column_order))
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sys.exit()
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print('\nResult of Sixth merge:', ors_df_ordered.shape
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, '\n===================================================================')
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#%%
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ors_df_ordered.shape
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check = ors_df_ordered[['mutationinformation','mutation', 'wild_type', 'position', 'mutant_type']]
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# populating 'nan' info
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lookup_dict = dict()
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for k, v in low_3letter_dict.items():
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lookup_dict[k] = v['one_letter_code']
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#print(lookup_dict)
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wt = ors_df_ordered['mutation'].str.extract(wt_regex).squeeze()
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#print(wt)
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ors_df_ordered['wild_type'] = wt.map(lookup_dict)
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ors_df_ordered['position'] = ors_df_ordered['mutation'].str.extract(pos_regex)
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mt = ors_df_ordered['mutation'].str.extract(mut_regex).squeeze()
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ors_df_ordered['mutant_type'] = mt.map(lookup_dict)
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ors_df_ordered['mutationinformation'] = ors_df_ordered['wild_type'] + ors_df_ordered.position.map(str) + ors_df_ordered['mutant_type']
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check = ors_df_ordered[['mutationinformation','mutation', 'wild_type', 'position', 'mutant_type']]
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# populate mut_info_f1
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ors_df_ordered['mut_info_f1'].isna().sum()
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ors_df_ordered['mut_info_f1'] = ors_df_ordered['position'].astype(str) + ors_df_ordered['wild_type'] + '>' + ors_df_ordered['position'].astype(str) + ors_df_ordered['mutant_type']
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ors_df_ordered['mut_info_f1'].isna().sum()
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# populate mut_info_f2
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ors_df_ordered['mut_info_f2'] = ors_df_ordered['mutation'].str.replace(gene_match.lower(), 'p.', regex = True)
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|
|
# populate mut_type
|
|
ors_df_ordered['mut_type'].isna().sum()
|
|
#mut_type_word = ors_df_ordered['mut_type'].value_counts()
|
|
mut_type_word = 'missense' # FIXME, should be derived
|
|
ors_df_ordered['mut_type'].fillna(mut_type_word, inplace = True)
|
|
ors_df_ordered['mut_type'].isna().sum()
|
|
|
|
# populate gene_id
|
|
ors_df_ordered['gene_id'].isna().sum()
|
|
#gene_id_word = ors_df_ordered['gene_id'].value_counts()
|
|
gene_id_word = 'Rv2043c' # FIXME, should be derived
|
|
ors_df_ordered['gene_id'].fillna(gene_id_word, inplace = True)
|
|
ors_df_ordered['gene_id'].isna().sum()
|
|
|
|
# populate gene_name
|
|
ors_df_ordered['gene_name'].isna().sum()
|
|
ors_df_ordered['gene_name'].value_counts()
|
|
ors_df_ordered['gene_name'].fillna(gene, inplace = True)
|
|
ors_df_ordered['gene_name'].isna().sum()
|
|
|
|
# check numbers
|
|
ors_df_ordered['or_kin'].isna().sum()
|
|
# should be 0
|
|
ors_df_ordered['or_mychisq'].isna().sum()
|
|
|
|
#%%============================================================================
|
|
print('==================================='
|
|
, '\nSixth merge: Fourth + Fifth merge'
|
|
, '\ncombined_df + ors_df_ordered'
|
|
, '\n===================================')
|
|
|
|
#combined_df_all = combine_dfs_with_checks(combined_df, ors_df_ordered, my_join = i_join)
|
|
merging_cols_m6 = detect_common_cols(combined_df, ors_df_ordered)
|
|
|
|
# dtype problems
|
|
if len(merging_cols_m6) > 1 and 'position'in merging_cols_m6:
|
|
print('Removing \'position\' from merging_cols_m6 to make dtypes consistent'
|
|
, '\norig length of merging_cols_m6:', len(merging_cols_m6))
|
|
merging_cols_m6.remove('position')
|
|
print('\nlength after removing:', len(merging_cols_m6))
|
|
|
|
print('Dim of df1:', combined_df.shape
|
|
, '\nDim of df2:', ors_df_ordered.shape
|
|
, '\nNo. of merging_cols:', len(merging_cols_m6))
|
|
|
|
print('Checking mutations in the two dfs:'
|
|
, '\nmuts in df1 present in df2:'
|
|
, combined_df['mutationinformation'].isin(ors_df_ordered['mutationinformation']).sum()
|
|
, '\nmuts in df2 present in df1:'
|
|
, ors_df_ordered['mutationinformation'].isin(combined_df['mutationinformation']).sum())
|
|
|
|
#----------
|
|
# merge 6
|
|
#----------
|
|
combined_df_all = pd.merge(combined_df, ors_df_ordered, on = merging_cols_m6, how = o_join)
|
|
combined_df_all.shape
|
|
|
|
# sanity check for merge 6
|
|
outdf_expected_rows = len(combined_df) + extra_muts_myor
|
|
unique_muts = len(combined_df)
|
|
outdf_expected_cols = len(combined_df.columns) + len(ors_df_ordered.columns) - len(merging_cols_m6)
|
|
|
|
if combined_df_all.shape[0] == outdf_expected_rows and combined_df_all.shape[1] == outdf_expected_cols and combined_df_all['mutationinformation'].nunique() == unique_muts:
|
|
print('PASS: Df dimension match'
|
|
, '\ncombined_df_all with join type:', o_join
|
|
, '\n', combined_df_all.shape
|
|
, '\n===============================================================')
|
|
else:
|
|
print('FAIL: Df dimension mismatch'
|
|
, 'Cannot generate expected dim. See details of merge performed'
|
|
, '\ndf1 dim:', combined_df.shape
|
|
, '\ndf2 dim:', ors_df_ordered.shape
|
|
, '\nGot:', combined_df_all.shape
|
|
, '\nmuts in df1 but NOT in df2:'
|
|
, combined_df['mutationinformation'].isin(ors_df_ordered['mutationinformation']).sum()
|
|
, '\nmuts in df2 but NOT in df1:'
|
|
, ors_df['mutationinformation'].isin(combined_df['mutationinformation']).sum())
|
|
sys.exit()
|
|
|
|
# drop extra cols
|
|
all_cols = combined_df_all.columns
|
|
|
|
#pos_cols_check = combined_df_all[['position_x','position_y']]
|
|
c = combined_df_all[['position_x','position_y']].isna().sum()
|
|
pos_col_to_drop = c.index[c>0].to_list()
|
|
cols_to_drop = pos_col_to_drop + ['wild_type_kd']
|
|
|
|
print('Dropping', len(cols_to_drop), 'columns:\n', cols_to_drop)
|
|
combined_df_all.drop(cols_to_drop, axis = 1, inplace = True)
|
|
|
|
# rename position_x to position
|
|
pos_col_to_rename = c.index[c==0].to_list()
|
|
combined_df_all.shape
|
|
combined_df_all.rename(columns = { pos_col_to_rename[0]: 'position'}, inplace = True)
|
|
combined_df_all.shape
|
|
|
|
all_cols = combined_df_all.columns
|
|
|
|
#%% reorder cols to for convenience
|
|
first_cols = ['mutationinformation','mutation', 'wild_type', 'position', 'mutant_type']
|
|
last_cols = [col for col in combined_df_all.columns if col not in first_cols]
|
|
|
|
combined_df_all = combined_df_all[first_cols+last_cols]
|
|
|
|
#%% IMPORTANT: check if mutation related info is all populated after this merge
|
|
# select string colnames to ensure no NA exist there
|
|
string_cols = combined_df_all.columns[combined_df_all.applymap(lambda x: isinstance(x, str)).all(0)]
|
|
|
|
if (combined_df_all[string_cols].isna().sum(axis = 0)== 0).all():
|
|
print('PASS: All string cols are populated with no NAs')
|
|
else:
|
|
print('FAIL: NAs detected in string cols')
|
|
print(combined_df_all[string_cols].isna().sum(axis = 0))
|
|
sys.exit()
|
|
|
|
# relevant mut cols
|
|
check_mut_cols = merging_cols_m5 + merging_cols_m6
|
|
|
|
count_na_mut_cols = combined_df_all[check_mut_cols].isna().sum().reset_index().rename(columns = {'index': 'col_name', 0: 'na_count'})
|
|
print(check_mut_cols)
|
|
|
|
c2 = combined_df_all[check_mut_cols].isna().sum()
|
|
missing_info_cols = c2.index[c2>0].to_list()
|
|
|
|
if c2.sum()>0:
|
|
#na_muts_n = combined_df_all['mutation'].isna().sum()
|
|
na_muts_n = combined_df_all[missing_info_cols].isna().sum()
|
|
print(na_muts_n.values[0], 'mutations have missing \'mutation\' info.'
|
|
, '\nFetching these from reference dict...')
|
|
else:
|
|
print('No missing \'mutation\' has been detected!')
|
|
|
|
lookup_dict = dict()
|
|
for k, v in oneletter_aa_dict.items():
|
|
lookup_dict[k] = v['three_letter_code_lower']
|
|
print(lookup_dict)
|
|
wt_3let = combined_df_all['wild_type'].map(lookup_dict)
|
|
#print(wt_3let)
|
|
pos = combined_df_all['position'].astype(str)
|
|
#print(pos)
|
|
mt_3let = combined_df_all['mutant_type'].map(lookup_dict)
|
|
#print(mt_3let)
|
|
# override the 'mutation' column
|
|
combined_df_all['mutation'] = 'pnca_p.' + wt_3let + pos + mt_3let
|
|
print(combined_df_all['mutation'])
|
|
|
|
# check again
|
|
if combined_df_all[missing_info_cols].isna().sum().all() == 0:
|
|
print('PASS: No mutations have missing \'mutation\' info.')
|
|
else:
|
|
print('FAIL:', combined_df_all[missing_info_cols].isna().sum().values[0]
|
|
, '\nmutations have missing info STILL...')
|
|
sys.exit()
|
|
|
|
#%% check
|
|
foo = combined_df_all.drop_duplicates('mutationinformation')
|
|
foo2 = combined_df_all.drop_duplicates('mutation')
|
|
if foo.equals(foo2):
|
|
print('PASS: Dropping mutation or mutatationinformation has the same effect\n')
|
|
else:
|
|
print('FAIL: Still problems in merged data')
|
|
sys.exit()
|
|
|
|
#%%============================================================================
|
|
output_cols = combined_df_all.columns
|
|
|
|
#%% IMPORTANT result info
|
|
if combined_df_all['or_mychisq'].isna().sum() == len(combined_df) - len(afor_df):
|
|
print('PASS: No. of NA in or_mychisq matches expected length'
|
|
, '\nNo. of with NA in or_mychisq:', combined_df_all['or_mychisq'].isna().sum()
|
|
, '\nNo. of NA in or_kin:', combined_df_all['or_kin'].isna().sum())
|
|
else:
|
|
print('FAIL: No. of NA in or_mychisq does not match expected length')
|
|
|
|
|
|
if combined_df_all.shape[0] == outdf_expected_rows:
|
|
print('\nINFORMARIONAL ONLY: combined_df_all has duplicate muts present but with unique ref and alt allele'
|
|
, '\n=============================================================')
|
|
else:
|
|
print('combined_df_all has no duplicate muts present'
|
|
,'\n===============================================================')
|
|
|
|
print('\nDim of combined_data:', combined_df_all.shape
|
|
, '\nNo. of unique mutations:', combined_df_all['mutationinformation'].nunique())
|
|
|
|
|
|
#%%============================================================================
|
|
# write csv
|
|
print('Writing file: combined output of all params needed for plotting and ML')
|
|
combined_df_all.to_csv(outfile_comb, index = False)
|
|
print('\nFinished writing file:'
|
|
, '\nNo. of rows:', combined_df_all.shape[0]
|
|
, '\nNo. of cols:', combined_df_all.shape[1])
|
|
#=======================================================================
|
|
#%% incase you FIX the the function: combine_dfs_with_checks
|
|
#def main():
|
|
|
|
# print('Reading input files:')
|
|
#mcsm_df = pd.read_csv(infile_mcsm, sep = ',')
|
|
#mcsm_df.columns = mcsm_df.columns.str.lower()
|
|
|
|
#foldx_df = pd.read_csv(infile_foldx , sep = ',')
|
|
|
|
#dssp_df = pd.read_csv(infile_dssp, sep = ',')
|
|
#dssp_df.columns = dssp_df.columns.str.lower()
|
|
|
|
#kd_df = pd.read_csv(infile_kd, sep = ',')
|
|
#kd_df.columns = kd_df.columns.str.lower()
|
|
|
|
#rd_df = pd.read_csv(infile_kd, sep = ',')
|
|
|
|
|
|
|
|
#if __name__ == '__main__':
|
|
# main()
|
|
#=======================================================================
|
|
#%% end of script
|