Discovering differential genome sequence activity with interpretable and efficient deep learning
Author(s)
Hammelman, Jennifer; Gifford, David K
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<jats:p>Discovering sequence features that differentially direct cells to alternate fates is key to understanding both cellular development and the consequences of disease related mutations. We introduce Expected Pattern Effect and Differential Expected Pattern Effect, two black-box methods that can interpret genome regulatory sequences for cell type-specific or condition specific patterns. We show that these methods identify relevant transcription factor motifs and spacings that are predictive of cell state-specific chromatin accessibility. Finally, we integrate these methods into framework that is readily accessible to non-experts and available for download as a binary or installed via PyPI or bioconda at <jats:ext-link xmlns:xlink="http://www.w3.org/1999/xlink" ext-link-type="uri" xlink:href="https://cgs.csail.mit.edu/deepaccess-package/" xlink:type="simple">https://cgs.csail.mit.edu/deepaccess-package/</jats:ext-link>.</jats:p>
Date issued
2021-08Department
Massachusetts Institute of Technology. Computational and Systems Biology Program; Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science; Massachusetts Institute of Technology. Department of Biological EngineeringJournal
PLOS Computational Biology
Publisher
Public Library of Science (PLoS)