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bioRxiv (Cold Spring Harbor Laboratory)
Base-resolution models of transcription factor binding reveal soft motif syntax
August 2019 • Žiga Avsec, Melanie Weilert, Avanti Shrikumar, Sabrina Krueger, Amr M. Alexandari, Khyati Dalal, Robin Fropf, Charles E. McAnany, Julien Gagneur, Ans…
Summary The arrangement of transcription factor (TF) binding motifs (syntax) is an important part of the cis-regulatory code, yet remains elusive. We introduce a deep learning model, BPNet, that uses DNA sequence to predict base-resolution ChIP-nexus binding profiles of pluripotency TFs. We develop interpretation tools to learn predictive motif representations and identify soft syntax rules for cooperative TF binding interactions. Strikingly, Nanog preferentially binds with helical periodicity, and TFs often coope…
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