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PromID: human promoter prediction by deep learning

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arxiv 1810.01414 v1 pith:TNNTJBT4 submitted 2018-10-02 q-bio.GN cs.LGstat.ML

PromID: human promoter prediction by deep learning

classification q-bio.GN cs.LGstat.ML
keywords promotermodelssequencesdeephumanidentificationlearningbest
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Computational identification of promoters is notoriously difficult as human genes often have unique promoter sequences that provide regulation of transcription and interaction with transcription initiation complex. While there are many attempts to develop computational promoter identification methods, we have no reliable tool to analyze long genomic sequences. In this work we further develop our deep learning approach that was relatively successful to discriminate short promoter and non-promoter sequences. Instead of focusing on the classification accuracy, in this work we predict the exact positions of the TSS inside the genomic sequences testing every possible location. We studied human promoters to find effective regions for discrimination and built corresponding deep learning models. These models use adaptively constructed negative set which iteratively improves the models discriminative ability. The developed promoter identification models significantly outperform the previously developed promoter prediction programs by considerably reducing the number of false positive predictions. The best model we have built has recall 0.76, precision 0.77 and MCC 0.76, while the next best tool FPROM achieved precision 0.48 and MCC 0.60 for the recall of 0.75. Our method is available at http://www.cbrc.kaust.edu.sa/PromID/.

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