| ''' |
| Utility functions for analysis after running pyHXExpress |
| Includes some functionality that requires pyHDX |
| (my github fork has modifications to allow for replicate data) |
| |
| ''' |
|
|
| import os |
| import importlib |
| import sys |
|
|
| |
| |
|
|
| import hxex_updating as hxex |
| import numpy as np, pandas as pd |
| import config as config |
| from datetime import datetime |
|
|
| pd.set_option('display.max_columns',None) |
|
|
| now = datetime.now() |
| date = now.strftime("%d%b%Y") |
|
|
| def hxex_reload(): |
| importlib.reload(hxex) |
| importlib.reload(config) |
| hxex.config = config |
|
|
| hxex_reload() |
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| |
| |
| |
| |
|
|
| import proplot as pplt |
| from scipy.optimize import lsq_linear |
| from pathlib import Path |
| import yaml |
| from Bio import SeqIO |
| from collections import defaultdict |
|
|
| from pyhdx.models import Coverage |
| from pyhdx.plot import peptide_coverage |
| from pyhdx.batch_processing import StateParser |
| from pyhdx.fitting import fit_d_uptake |
| from pyhdx.config import cfg |
| from pyhdx import read_dynamx, HDXMeasurement |
| from pyhdx.fitting import fit_rates_half_time_interpolate, fit_rates_weighted_average, fit_gibbs_global |
| from pyhdx.process import filter_peptides, apply_control, correct_d_uptake |
| from dask.distributed import Client |
| from pyhdx.plot import dG_scatter_figure |
| import pyhdx.plot |
|
|
| from collections import defaultdict |
|
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|
|
| def combine_batch_data(dirs): |
| |
| metadf_comb = pd.DataFrame() |
| datafits_comb = pd.DataFrame() |
| fitparams_comb = pd.DataFrame() |
|
|
| metadf_prefix = "metadf_asrun_" |
| datafits_prefix = "data_fits_asrun" |
| fitparams_prefix = "fitparamsAll_asrun_" |
|
|
| for dir in dirs: |
| csvfiles = [ f for f in os.listdir(dir) if f[-4:]=='.csv' ] |
| mf = [ m for m in csvfiles if m[:len(metadf_prefix)]==metadf_prefix] |
| df = [ d for d in csvfiles if d[:len(datafits_prefix)]==datafits_prefix] |
| ff = [ f for f in csvfiles if f[:len(fitparams_prefix)]==fitparams_prefix] |
|
|
| for f in mf: |
| md = pd.read_csv(os.path.join(dir,f)) |
| md['original_file'] = f |
| metadf_comb = pd.concat([metadf_comb,md]) |
| for f in df: |
| dd = pd.read_csv(os.path.join(dir,f)) |
| dd['original_file'] = f |
| datafits_comb = pd.concat([datafits_comb,dd]) |
| for f in ff: |
| fd = pd.read_csv(os.path.join(dir,f)).drop('Index',axis=1) |
| fd['original_file'] = f |
| fitparams_comb = pd.concat([fitparams_comb,fd],ignore_index= True) |
| |
|
|
| metadf_comb = metadf_comb.set_index('Index').sort_values('Index') |
| datafits_comb = datafits_comb.sort_values('data_id').reset_index(drop=True) |
| fitparams_comb = fitparams_comb.sort_values(['data_id','time_idx','charge','rep','ncurves','nboot']).reset_index(drop=True) |
|
|
| return metadf_comb, datafits_comb, fitparams_comb |
|
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|
|
| def convert_to_uptakedf(datafit,proj=None): |
| |
| |
| |
| |
|
|
| TD_time = 1e6 |
| test = datafit.copy() |
|
|
| test[['start','end']] = test['peptide_range'].str.split('-',expand=True).astype('int') |
|
|
| try: |
| test['fracDeut_1'] = test['Dabs_1']/test['max_namides'] |
| except: pass |
| try: |
| test['fracDeut_2'] = test['Dabs_2']/test['max_namides'] |
| except: test['fracDeut_2'] = np.nan |
| |
| test.loc[test['pop_1'] == 1.0, ['centroid_2','Dabs_2','Dabs_std_2','pop_2','pop_std_2','fracDeut_2']] = np.nan |
|
|
| pops = test.fit_pops.max() |
| testpop = {} |
| testpop[1] = test.copy() |
| testpop[1]['Protein State']=testpop[1].apply(lambda row: row['sample']+'_pop1',axis=1) |
| testpop[1]['Theor Uptake #D'] = testpop[1]['Dabs_1'] |
| testpop[1]['Conf Interval (#D)'] = testpop[1]['Dabs_std_1'] |
| testpop[1]['pop'] = testpop[1]['pop_1'] |
| testpop[1]['pop_std'] = testpop[1]['pop_std_1'] |
| for pop in range(2,pops+1): |
| testpop[pop] = testpop[1].copy() |
| testpop[pop]['Protein State']=testpop[pop].apply(lambda row: row['sample']+'_pop'+str(pop),axis=1) |
| testpop[pop].loc[testpop[pop]['fit_pops']==pop,['Theor Uptake #D']] = testpop[pop]['Dabs_'+str(pop)] |
| testpop[pop].loc[testpop[pop]['fit_pops']==pop,['Conf Interval (#D)']] = testpop[pop]['Dabs_std_'+str(pop)] |
| testpop[pop].loc[testpop[pop]['fit_pops']==pop,['pop']] = testpop[pop]['pop_'+str(pop)] |
| testpop[pop].loc[testpop[pop]['fit_pops']==pop,['pop_std']] = testpop[pop]['pop_std_'+str(pop)] |
|
|
| uptakedf = pd.DataFrame() |
| for pop in range(1,pops+1): |
| uptakedf = pd.concat([uptakedf,testpop[pop]]) |
|
|
| uptakedf['#D'] = uptakedf['Theor Uptake #D'] * uptakedf['UN_TD_corr'] |
| uptakedf['%D'] = uptakedf['Theor Uptake #D'] / uptakedf['max_namides'] * 100.0 |
| uptakedf['Deut Time (sec)'] = uptakedf['time'] |
| uptakedf.loc[uptakedf['time']==TD_time,['Deut Time (sec)']] = 'MAX' |
| uptakedf['Sequence'] = uptakedf['peptide'] |
| uptakedf['Peptide Mass'] = uptakedf['centroid'] |
| uptakedf['maxD'] = uptakedf['max_namides'] |
| uptakedf = uptakedf.drop(columns=['start','end']) |
| uptakedf['Start'] = uptakedf['start_seq'] |
| uptakedf['End'] = uptakedf['end_seq'] |
| if not proj: |
| proj = test['sample'].unique()[0] |
| uptakedf['Protein'] = proj |
|
|
| |
| uptakedf = uptakedf[uptakedf['UN_TD_corr']<1.05] |
| |
| return uptakedf |
|
|
|
|
|
|
| def hdexa_to_pyhdx(data,d_percentage=0.85,protein='protein'): |
| |
| |
| |
| drop_first=2 |
|
|
| def _time_to_sec(tp,tpunit): |
| return tp * np.power(60.0,'smh'.find(tpunit[0])) |
| if '# Deut' in data.columns: |
| data = data.rename(columns={"# Deut":"#D"}) |
| data['#D'] = data['#D'].fillna(0.0) |
| data['#D'] = data['#D'].astype(float) |
| if 'Deut %' in data.columns: |
| data = data.rename(columns={"Deut %":"%D"}) |
| data['%D'] = data['%D'].fillna(0.0) |
| data['%D'] = data['%D'].astype(float) |
| if 'Deut Time' in data.columns: |
| data.loc[data['Deut Time'] == 'FD','Deut Time'] = '1e6s' |
| data['time unit'] = data['Deut Time'].str[-1] |
| data['Deut Time (sec)'] = data['Deut Time'].str[:-1].astype(float) |
| data['Deut Time (sec)'] = data.apply(lambda x: _time_to_sec(tp=x['Deut Time (sec)'],tpunit=x['time unit']),axis=1) |
| data.loc[data['Deut Time (sec)'] == 1e6,'Deut Time (sec)'] = 'MAX' |
| if 'Protein' not in data.columns: |
| data['Protein'] = protein |
|
|
|
|
| pyhdx_cols = ['start', 'end' ,'stop' ,'sequence', 'state', 'exposure' ,'uptake' ,'maxuptake', |
| 'fd_uptake' ,'fd_uptake_sd' ,'nd_uptake' ,'nd_uptake_sd' ,'rfu', 'protein', |
| 'modification', 'fragment', 'mhp' ,'center' ,'center_sd' ,'uptake_sd' ,'rt', |
| 'rt_sd' ,'rfu_sd' ,'_sequence' ,'_start' ,'_stop' ,'ex_residues', |
| 'uptake_corrected'] |
| data = data.rename(columns={ |
| "Protein State":"state", |
| "Protein":"protein", |
| "Start":"start", |
| "End":"end", |
| "Sequence":"_sequence", |
| "Peptide Mass":"mhp", |
| "RT (min)":"rt", |
| "Deut Time (sec)":"exposure", |
| "maxD":"maxuptake", |
| "Theor Uptake #D":"uptake_corrected", |
| "#D":"uptake", |
| "%D":"rfu", |
| "Conf Interval (#D)":"rfu_sd", |
| "#Rep":"rep", |
| "Confidence":"quality", |
| "Stddev":"center_sd", |
| |
| }) |
|
|
| missing = list(set(pyhdx_cols)-set(data.columns)) |
| for mcol in missing: |
| data[mcol] = np.nan |
| if mcol == "rfu_sd": data[mcol] = 0.05 |
|
|
| data['rfu']=data['rfu']/100. |
| data.loc[data['exposure']=="0",'rfu_sd']=0.0 |
| data['stop']=data['end']+1 |
| data['sequence']=data["_sequence"].copy() |
| data['sequence']=[s.replace("P", "p") for s in data["sequence"]] |
| |
| n_term = np.array([len(seq) - len(seq[drop_first:].lstrip("p")) for seq in data["sequence"]]) |
| c_term = np.array([len(seq) - len(seq.rstrip("p")) for seq in data["sequence"]]) |
| data["sequence"] = ["x" * nt + s[nt:] for nt, s in zip(n_term, data["sequence"])] |
| data["_start"] = data["start"] + n_term |
| data["_stop"] = data["stop"] - c_term |
| ex_residues = (np.array([len(s) - s.count("x") - s.count("p") for s in data["sequence"]])* d_percentage) |
| data["ex_residues"] = ex_residues |
| data["uptake_sd"]=data["center_sd"] |
| data["nd_uptake"]=0.0 |
| data["nd_uptake_sd"]=0.0 |
| data["modification"]=float("nan") |
| data["fragment"]=float("nan") |
| |
| |
| |
| |
| states = data["state"].unique() |
| data["fd_uptake"]="novalue" |
| data["fd_uptake_sd"]="novalue" |
|
|
| for state in states: |
| peps = data[data["state"]==state]["_sequence"].unique() |
| for pep in peps: |
| try: |
| fd_up = data[(data["_sequence"]==pep) & (data["exposure"]=="MAX")& (data["state"]==state)]['uptake'].iat[0] |
| fd_up_sd = data[(data["_sequence"]==pep) & (data["exposure"]=="MAX")& (data["state"]==state)]['center_sd'].iat[0] |
| except: |
| fd_up = data[(data["_sequence"]==pep) & (data["state"]==state)]['maxuptake'].iat[0] |
| fd_up_sd = data[(data["_sequence"]==pep) & (data["state"]==state)]['maxuptake'].iat[0] |
| data.loc[data["_sequence"]==pep, "fd_uptake"]=fd_up |
| data.loc[data["_sequence"]==pep, "fd_uptake_sd"]=fd_up_sd |
| data["center"]=data["mhp"]+data["uptake"] |
| data["rt_sd"]=0.05 |
|
|
| data['uptake_corrected_orig'] = data['uptake_corrected'] |
| data['uptake_corrected'] = data["rfu"]*data['maxuptake'] |
|
|
| |
| data = data[data["exposure"] != "MAX"] |
| data = data[data["fd_uptake"] != 0] |
| data = data[~data["uptake"].isna()] |
| data["exposure"]=data["exposure"].astype(float) |
|
|
| new_columns = [col for col in pyhdx_cols if col in data.columns] + [col for col in data.columns if col not in pyhdx_cols] |
| return data[new_columns] |
|
|
|
|
| def prepare_kwargs(fit_result): |
| """Prepare plot kwargs for fit result""" |
| d = { |
| "y": fit_result.d_uptake.mean(axis=0), |
| "fadedata": np.percentile(fit_result.d_uptake, (5, 95), axis=0), |
| "shadedata": np.percentile(fit_result.d_uptake, (25, 75), axis=0), |
| } |
| return d |
|
|
|
|
| |
| def plot_bar(ax, x, z, cmap, norm, height=1,**kwargs): |
| """makes a linear bar plot on supplied axis with values z and corresponding x values x""" |
|
|
| if isinstance(z, pd.Series): |
| z = z.to_numpy() |
| elif isinstance(z, pd.DataFrame): |
| assert len(z.columns) == 1, "Can only plot dataframes with 1 column" |
| z = z.to_numpy().squeeze() |
|
|
| img = np.expand_dims(z, 0) |
| |
| collection = ax.pcolormesh( |
| pplt.edges(x), |
| np.array([0, height]), |
| img, |
| cmap=cmap, |
| vmin=norm.vmin, |
| vmax=norm.vmax, |
| **kwargs, |
| ) |
| ax.format(yticks=[]) |
|
|
| return collection |
|
|
| from pyhdx.plot import peptide_coverage |
|
|
| def plot_coverage(hdxm,states=None,times=None,savepath=None,peprange=None): |
| |
| use_hdxm = hdxm.copy() |
| if states is None: |
| states = list(use_hdxm.keys()) |
| if times is None: |
| times = sorted(use_hdxm[states[0]].timepoints) |
|
|
| fig, axes = pplt.subplots(nrows=len(states),ncols=len(times), axwidth="200mm", sharey=False, refaspect=2,) |
|
|
| for j,mutant in enumerate(states): |
| for i, use_time in enumerate(times): |
| time_idx = np.where(hdxm[mutant].timepoints == use_time)[0][0] |
| filtdf = use_hdxm[mutant][time_idx].data |
| if peprange: filtdf = filter_range(filtdf,peprange) |
| peptide_coverage(axes[j,i], filtdf, cbar=True,linewidth=0.1) |
| t = axes[j,i].set_title(f'{mutant} Peptides t = {int(use_time)}s') |
| l = axes[j,i].set_xlabel('Residue number') |
| |
| if savepath: |
| fig.savefig(savepath,format='pdf',dpi=600) |
| |
| return |
|
|
|
|
| def plot_rfu_residue(hdxm,states=None,times=None,colors=None,savepath=None,legendcols=5): |
| |
| if colors is None: |
| colors="#000000 #66C2A5 #56B4E9 #7570B3 #E7298A".split() |
| if states is None: |
| states = list(hdxm.keys()) |
| if times is None: |
| times = sorted(hdxm[states[0]].timepoints) |
| |
| z_value ={'50':0.674,'68':1.0,'sd':1.0,'80':1.282,'90':1.645,'95':1.96,'98':2.326,'99':2.576} |
| |
| nset = 3 |
| |
| nrows = len(times)*nset |
| nfigs = nrows |
| array=[] |
| for i in range(1,nfigs+1): |
| array += [[i,i]] |
| hratios = [10,1,1]*len(times) |
|
|
| fig, axes = pplt.subplots(array, axheight="30mm",axwidth="180mm", |
| wspace=(0), hspace=([0.7,0.3,3.0]*(len(times)-1)+[0.7,0.3]), |
| sharex=False, sharey=False, hratios=hratios) |
| |
| vmin = 0 |
| vmax = 20 |
| kwargs = dict(levels=pplt.arange(0, vmax*3, 1),) |
| res_kwargs = dict(levels=pplt.arange(0, vmax, 1),) |
|
|
|
|
| for i, use_time in enumerate(times): |
|
|
| for j,mutant in enumerate(states): |
| time_idx = np.where(hdxm[mutant].timepoints == use_time)[0][0] |
| norm = 1 |
| x_res = hdxm[mutant][time_idx].r_number |
| center = hdxm[mutant][time_idx].rfu_residues* 1/norm |
| |
| high50 = center + z_value['50']*hdxm[mutant][time_idx].rfu_residues_sd |
| |
| low50 = center - z_value['50']*hdxm[mutant][time_idx].rfu_residues_sd |
|
|
| |
| axes[i*nset].line(x_res,center, shadedata=(low50,high50),label=str(mutant), color=colors[j%len(colors)]) |
| axes[i*nset].format(xlabel="",xtickrange=(-1,-1)) |
| axes[i*nset].format(title=str(use_time)+'s',titleloc= 'lower right',) |
| |
| redundancy = hdxm[states[0]].coverage.X.sum(axis=0).astype(float) |
| resolution = np.repeat(hdxm[states[0]].coverage.block_length, hdxm[states[0]].coverage.block_length) |
| resolution = resolution.astype(float) |
| resolution[redundancy == 0] = np.nan |
| redundancy[redundancy == 0] = np.nan |
| red = plot_bar(axes[i*nset+1],hdxm[states[0]].coverage.r_number,redundancy, |
| 'blues',pplt.Norm("linear", vmin=vmin, vmax=vmax*3),height=1.0,**kwargs) |
| axes[i*nset+1].format(xtickrange=(-2,-1)) |
| res = plot_bar(axes[i*nset+2],hdxm[states[0]].coverage.r_number,resolution, |
| 'fire',pplt.Norm("linear", vmin=vmin, vmax=vmax),height=1.0,**res_kwargs) |
|
|
| axes[i*nset].format(ylabel="D-uptake") |
| axes[i*nset+1].set_ylabel("red.",rotation=0,) |
| axes[i*nset+1].yaxis.set_label_coords(-.02,-.05) |
| axes[i*nset+1].format(xtickloc='none') |
| axes[i*nset+2].set_ylabel("res.",rotation=0,) |
| axes[i*nset+2].yaxis.set_label_coords(-.02,-.05) |
|
|
| |
| |
| fig.colorbar(red, label="Redundancy (peptides including replicates)",width=0.1,loc='b',length=0.5,col=1,ticks=np.arange(0, vmax*3+1, 5)) |
| fig.colorbar(res, label="Resolution (residues)",width=0.1,loc='b',length=0.5,col=2) |
| |
| axes[0].legend(loc="t", ncols=legendcols) |
| axes.format(ylim=(0,1.1),) |
| axes.format(xlim=(0,180)) |
|
|
| axes[i*nset+2].format(xlabel="Residue number") |
|
|
| |
| if savepath: |
| fig.savefig(savepath,format='pdf',dpi=600) |
|
|
| return |
|
|
| def filter_range(hdxm,peprange): |
| df = hdxm.copy() |
| peprange = [peprange] if not isinstance(peprange,list) else peprange |
| df = df[(df['start'] <= peprange[-1]) & (peprange[0] <= df['end'])] |
| return df |
|
|