probabilistic.snk 6.7 KB
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rule compareExpectedKmerProfileToTrueProfile:
    input:
        trueCounts = 'data/output/'+config['input_folder']+'/methodAnalysis/{id}/{kmer}/correctCounts.json',
        expectedCounts = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/expected_counts.json',
        groundTruthFile = 'data/input/' + config['ground_truth']
    output:
        differences = 'data/output/'+config['input_folder']+'/methodAnalysis/{id}/{kmer}/differences_expected.txt'
    params:
        inputFileID = lambda wildcards: wildcards.id
    conda:
        '../envs/biopythonworkbench.yaml'
    script:
        '../scripts/compareKmerCounts_expected.py'

rule calcPriorProbabilities:
    input:
        likelihoods = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/likelihoods.json'
    output:
        priorFilePath = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/prior.txt'
    params:
        k = lambda wildcards: wildcards.kmer,
        dps = config['dps'],
        cpus = '1',
        mem = '1G',
        gpus = '0',
        walltime = '00:05:00'
    conda:
        '../envs/biopythonworkbench.yaml'
    log:
        'logs/'+config['input_folder']+'/probabilistic/kmers/{kmer}/{id}/calcPrior.log'
    script:
        '../scripts/calcPriorProbabilities.py'


rule calcProbabilities:
    input:
        likelihoods = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/likelihoods.json',
        prior = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/prior.txt'
    output:
        probabilities = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/scores.probabilistic_gen.tsv'
    params:
        dps = config['dps'],
        cpus = '1',
        mem = '4G',
        gpus = '0',
        walltime = '00:05:00'
    conda:
        '../envs/biopythonworkbench.yaml'
    log:
        'logs/'+config['input_folder']+'/probabilistic/kmers/{kmer}/{id}/probabilities.log'
    script:
        '../scripts/calcSpaTypeProbabilities.py'




def extractTsvValue(filePath,line,nolabels=False):
    with open(filePath,'r') as infile:
        lines = infile.read().splitlines();
        return lines[line].split('\t')[0] if nolabels else lines[line].split('\t')[1]


rule calcLikelihoods:
    input:
        expected = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/expected_counts.json',
        observed = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/alignment.counts.json',
        kmerError = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/kmer_error.txt',
        kmerCoverageEstimate = determineKmerCoverageEstimateFile()
    output:
        likelihoods = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/likelihoods_cov.json',
        unexpectedLikelihoods = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/unexpected_likelihoods_cov.json'
        #diffs = 'data/auxiliary/kmers/{kmer}/{id}/kmer_diff.tsv'
    log:
        'logs/'+config['input_folder']+'/probabilistic/kmers/{kmer}/{id}/likelihoods_cov.log'
    benchmark:
        'benchmarks/'+config['input_folder']+'/probabilistic/kmers/{kmer}/{id}/calcLikelihoodsCoverageBasedModel.txt'
    params:
        e = (lambda wildcards,input : extractTsvValue(input.kmerError,0)),
        deviationCutoff = (lambda wildcards,input : round(config['deviationCutoff']*extractCoverageEstimateFile(input.kmerCoverageEstimate,config))),
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        itersetType = config['itersetType'],
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        #cluster exectuion
        cpus = '1',
        mem = '4G',
        gpus = '0',
        walltime = '01:30:00'
    singularity:
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        'docker://phspo/ckmertools:iterationset-tests'
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    shell:
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        'c_kmertools --e {input.expected} --c {params.cpus} --m 0 --o {input.observed} --kmererror {params.e} --d {params.deviationCutoff} --target {output.likelihoods} --unexpected {output.unexpectedLikelihoods} --log {log} --itersetType {params.itersetType}'
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rule calcLikelihoods_Generative:
    input:
        counts = 'data/auxiliary/kmers/{kmer}/spaSequences.counts.json',
        observed = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/alignment.counts.json',
        baseError = 'data/auxiliary/'+config['input_folder']+'/{id}/base_error_estimate.txt'
    output:
        likelihoods = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/likelihoods.json'
    params:
        cpus = '1',
        mem = '3G',
        gpus = '0',
        walltime = '24:00:00',
        #cluster execution
        k = lambda wildcards: wildcards.kmer,
        e = lambda wildcards,input : extractTsvValue(input.baseError,0,True)
    singularity:
        'docker://phspo/ckmertools:latest'
    log:
        'logs/'+config['input_folder']+'/probabilistic/kmers/{kmer}/{id}/likelihoods.log'
    benchmark:
        'benchmarks/'+config['input_folder']+'/probabilistic/kmers/{kmer}/{id}/calcLikelihoodsGenerativeModel.txt'
    shell:
        'c_kmertools --p {input.counts} --m 1 --c {params.cpus} --o {input.observed} --baseerror {params.e} --k {params.k} --target {output.likelihoods} --log {log}'

rule estimateErrorRates:
    input:
        read1 = 'data/auxiliary/'+config['input_folder']+'/{id}'+'.qc'+config['input_read_1_ending'],
        read2 = 'data/auxiliary/'+config['input_folder']+'/{id}'+'.qc'+config['input_read_2_ending']
    output:
        baseError = 'data/auxiliary/'+config['input_folder']+'/{id}/base_error_estimate.txt'
    log:
        'logs/'+config['input_folder']+'/kmers/{id}/estimateErrorRates.log'
    params:
        # cluster execution
        cpus = '1',
        mem = '32G',
        gpus = '0',
        walltime = '00:30:00'
    conda:
        '../envs/biopythonworkbench.yaml'
    script:
        '../scripts/estimateErrorRates.py'

'''
rule calcAverageCoverage:
    input:
        alignment = 'data/auxiliary/{id}/alignment.sorted.bam'
    output:
        'data/auxiliary/{id}/averageCoverage.depth'
    conda:
        '../envs/main.yaml'
    shell:
        'samtools mpileup -B -d 10000 -q0 -Q0 -r maskref {input.alignment}  > {output}'
'''

####DEBUG RULES#####
rule calcKmerStats:
    input:
        expected = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/expected_counts.json',
        observed = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/alignment.counts.json',
        error = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/error_estimate.txt',
        coverage_estimate = determineKmerCoverageEstimateFile()
    output:
        stats = 'data/auxiliary/'+config['input_folder']+'/kmers/{kmer}/{id}/stats.tsv'
    params:
        id = lambda wildcards: wildcards.id,
        k = lambda wildcards: wildcards.kmer
    conda:
        '../envs/biopythonworkbench.yaml'
    log:
        'logs/'+config['input_folder']+'/probabilistic/kmers/{kmer}/{id}/probabilities.log'
    script:
        '../scripts/calcKmerStats.py'