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Deconvolving sequence features that discriminate between overlapping regulatory annotations

Akshay Kakumanu, Silvia Velasco, Esteban Mazzoni, Shaun Mahony
doi: https://doi.org/10.1101/100511
Akshay Kakumanu
1Center for Eukaryotic Gene Regulation, Department of Biochemistry & Molecular Biology, Penn State University, Pennsylvania, USA
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Silvia Velasco
2Department of Biology, New York University, 100 Washington Square East, New York, NY 10003, USA
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Esteban Mazzoni
2Department of Biology, New York University, 100 Washington Square East, New York, NY 10003, USA
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Shaun Mahony
1Center for Eukaryotic Gene Regulation, Department of Biochemistry & Molecular Biology, Penn State University, Pennsylvania, USA
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  • For correspondence: mahony@psu.edu
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Abstract

Genomic loci with regulatory potential can be identified and annotated with various properties. For example, genomic sites may be annotated as being bound by a given transcription factor (TF) in one or more cell types. The same sites may be further labeled as being proximal or distal to known promoters. Given such a collection of labeled sites, it is natural to ask what sequence features are associated with each annotation label. However, discovering such label-specific sequence features is often confounded by overlaps between annotation labels; e.g. if regulatory sites specific to a given cell type are also more likely to be promoter-proximal, it is difficult to assess whether motifs identified in that set of sites are associated with the cell type or associated with promoters. In order to meet this challenge, we developed SeqUnwinder, a principled approach to deconvolving interpretable discriminative sequence features associated with overlapping annotation labels. We demonstrate the novel analysis abilities of SeqUnwinder using three examples. Firstly, we show SeqUnwinder’s ability to unravel sequence features associated with the dynamic binding behavior of TFs during motor neuron programming from features associated with chromatin state in the initial embryonic stem cells. Secondly, we characterize distinct sequence properties of multi-condition and cell-specific TF binding sites after controlling for uneven associations with promoter proximity. Finally, we demonstrate the scalability of SeqUnwinder to discover cell-specific sequence features from over one hundred thousand genomic loci that display DNase I hypersensitivity in one or more ENCODE cell lines.

Availability https://github.com/seqcode/sequnwinder

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted May 09, 2017.
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Deconvolving sequence features that discriminate between overlapping regulatory annotations
Akshay Kakumanu, Silvia Velasco, Esteban Mazzoni, Shaun Mahony
bioRxiv 100511; doi: https://doi.org/10.1101/100511
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Deconvolving sequence features that discriminate between overlapping regulatory annotations
Akshay Kakumanu, Silvia Velasco, Esteban Mazzoni, Shaun Mahony
bioRxiv 100511; doi: https://doi.org/10.1101/100511

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