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Param.py
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Param.py
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__doc__="""
pliu 20150511
python module for all parameters, input arguments
"""
class Param:
IDR_THRESHOLD = 0.05
N_PEAK = 300000
PEAK_TYPE = '-savr'
EXCLUSION_ZONE = '-500:85' ## Anshul recommend -500:85
TRAINING_GENE_MIN_LEN = 1003
TRAINING_MIN_MAPPABILITY = 0.8
FLANKING_WIDTH = 500 ## in nt, flanking region around TSS and TES
INFORMATIVE_DATA_MAX_P_VALUE = 0.01 ## external data set is informative if
## p-value is not more than this value
def __init__(self):
self.argdict = None
## has to be in the same naming convention as prsem-calculate-expression
self.num_threads = None
self.chipseq_target_read_files = None
self.chipseq_control_read_files = None
self.chipseq_read_files_multi_targets = None
self.chipseq_bed_files_multi_targets = None
self.cap_stacked_chipseq_reads = None
self.n_max_stacked_chipseq_reads = None
self.bowtie_path = None
self.chipseq_peak_file = None
self.mappability_bigwig_file = None
self.partition_model = None
self.gibbs_burnin = None
self.gibbs_number_of_samples = None
self.gibbs_sampling_gap = None
self.quiet = False
## arguments
self.ref_fasta = None
self.ref_name = None
self.sample_name = None
self.stat_name = None
self.imd_name = None
## path and pRSEM scripts
self.temp_dir = None ## dir to save RSEM/pRSEM intermediate files
self.prsem_scr_dir = None ## pRSEM scripts dir
self.prsem_rlib_dir = None ## place to install pRSEM required R libraries
## genome reference: training set isoforms
self.fall_exon_crd = None
self.fall_tr_crd = None ## tr info + mappability
self.ftraining_tr_crd = None ## training set tr
## ChIP-seq
self.chipseqexperiment_target = None ## reference to ChIP-seq experiment
self.chipseqexperiment_control = None ## reference to ChIP-seq experiment
self.chipseq_rscript = None ## full name of process-chipseq.R
self.filterSam2Bed = None ## full name of filterSam2Bed binary
self.spp_tgz = None
self.spp_script = None
self.idr_scr_dir = None
self.idr_script = None
self.fgenome_table = None
self.fidr_chipseq_peaks = None
self.fall_chipseq_peaks = None
self.fchipseq_peaks = None ## full name of user supplied ChIP-seq peak
## file, otherwise is fidr_chipseq_peaks
self.chipseq_target_fraglen = None ## spp-estimated fragment length
self.fsppout_target = None ## full name of SPP output
## this implementation needs to be refined since
## the var is define in both Param and ChIPSeqExp
self.fchipseq_target_signals = None
self.fchipseq_control_signals = None
## transcripts and RNA-seq
self.transcripts = None ## reference to all transcripts to be quantified
self.genes = None ## reference to all genes to be quantified
self.rnaseq_rscript = None ## fullname of R script for dealing RNA-seq
self.fti = None ## RSEM's reference .ti file
self.bigwigsummary_bin = None ## bigWigSummary binary
self.fall_tr_features = None ## file for all isoforms' features
self.fall_tr_prior = None ## file for all isoforms' priors
self.fisoforms_results = None ## file for RSEM .isoforms.results
self.fpvalLL = None ## file for p-value on if informative
## and for log-likelihood
self.fall_pvalLL = None ## file to store all the p-val and log-likelihood
## for multiple external data sets
self.targetid2fchipseq_alignment = {}
self.finfo_multi_targets = None
self.flgt_model_multi_targets = None
## for testing procedure
self.targetids = []
def __str__(self):
ss = [ "%-33s %s\n" % (key, val) for (key, val) in self.argdict.items()] + \
[ "%-33s %s\n" % ('RSEM_temp_dir', self.temp_dir ) ] + \
[ "%-33s %s\n" % ('pRSEM_scr_dir', self.prsem_scr_dir) ]
return ''.join(ss)
@classmethod
def initFromCommandLineArguments(cls, argdict):
import os
prm = cls()
prm.argdict = argdict
for (key, val) in argdict.items():
setattr(prm, key, val)
if prm.imd_name is not None:
prm.temp_dir = os.path.split(prm.imd_name)[0] + '/'
prm.prsem_scr_dir = os.path.dirname(os.path.realpath(__file__)) + '/'
prm.prsem_rlib_dir = prm.prsem_scr_dir + 'RLib/'
if not os.path.exists(prm.prsem_rlib_dir):
os.mkdir(prm.prsem_rlib_dir)
## genome reference: pRSEM training set isoforms
prm.fall_exon_crd = prm.ref_name + '_prsem.all_exon_crd'
prm.fall_tr_crd = prm.ref_name + '_prsem.all_tr_crd'
prm.ftraining_tr_crd = prm.ref_name + '_prsem.training_tr_crd'
## ChIP-seq
prm.chipseq_rscript = prm.prsem_scr_dir + 'process-chipseq.R'
prm.filterSam2Bed = prm.prsem_scr_dir + 'filterSam2Bed'
prm.spp_tgz = prm.prsem_scr_dir + 'phantompeakqualtools/spp_1.10.1.tar.gz'
prm.spp_script = prm.prsem_scr_dir + 'phantompeakqualtools/run_spp.R'
prm.idr_scr_dir = prm.prsem_scr_dir + 'idrCode/'
prm.idr_script = prm.idr_scr_dir + 'batch-consistency-analysis.r'
prm.fgenome_table = prm.ref_name + '.chrlist'
if prm.temp_dir is not None:
prm.fsppout_target = prm.temp_dir + 'target_phantom.tab'
prm.fchipseq_target_signals = prm.temp_dir + 'target.tagAlign.gz'
prm.fchipseq_control_signals = prm.temp_dir + 'control.tagAlign.gz'
prm.fidr_chipseq_peaks = "%s/%s" % (prm.temp_dir,
'idr_target_vs_control.regionPeak.gz')
## have to name it this way due to run_spp.R's wired naming convention
## this names depens on the next two names
prm.fall_chipseq_peaks = "%s/%s" % (prm.temp_dir,
'target.tagAlign_VS_control.tagAlign.regionPeak.gz')
if prm.chipseq_peak_file is not None:
prm.fchipseq_peaks = prm.chipseq_peak_file
else:
prm.fchipseq_peaks = prm.fidr_chipseq_peaks
## transcripts and RNA-seq
prm.rnaseq_rscript = prm.prsem_scr_dir + 'process-rnaseq.R'
prm.fti = prm.ref_name + '.ti'
prm.ffasta = prm.ref_name + '.transcripts.fa'
prm.bigwigsummary_bin = prm.prsem_scr_dir + 'bigWigSummary'
#prm.fall_exon_crd = prm.imd_name + '_prsem.all_exon_crd'
#prm.fall_tr_crd = prm.imd_name + '_prsem.all_tr_crd'
#prm.ftraining_tr_crd = prm.imd_name + '_prsem.training_tr_crd'
if prm.sample_name is not None: ## for calc-expr
prm.fall_tr_gc = prm.imd_name + '_prsem.all_tr_gc'
prm.fall_tr_features = prm.stat_name + '_prsem.all_tr_features'
prm.fall_tr_prior = prm.stat_name + '_prsem.all_tr_prior'
prm.fpvalLL = prm.stat_name + '_prsem.pval_LL'
prm.fisoforms_results = prm.sample_name + '.isoforms.results'
prm.fall_pvalLL = prm.sample_name + '.all.pval_LL'
## for multiple external data sets
prm.finfo_multi_targets = prm.temp_dir + 'multi_targets.info'
prm.flgt_model_multi_targets = prm.stat_name + '_prsem.lgt_mdl.RData'
return prm
def initFromCommandLineArguments(argdict):
return Param.initFromCommandLineArguments(argdict)