Attend and Predict: Understanding Gene Regulation by Selective Attention on Chromatin
August 01, 2017 ยท Declared Dead ยท ๐ bioRxiv
"No code URL or promise found in abstract"
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Authors
Ritambhara Singh, Jack Lanchantin, Arshdeep Sekhon, Yanjun Qi
arXiv ID
1708.00339
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
cs.NE
Citations
88
Venue
bioRxiv
Last Checked
4 months ago
Abstract
The past decade has seen a revolution in genomic technologies that enable a flood of genome-wide profiling of chromatin marks. Recent literature tried to understand gene regulation by predicting gene expression from large-scale chromatin measurements. Two fundamental challenges exist for such learning tasks: (1) genome-wide chromatin signals are spatially structured, high-dimensional and highly modular; and (2) the core aim is to understand what are the relevant factors and how they work together? Previous studies either failed to model complex dependencies among input signals or relied on separate feature analysis to explain the decisions. This paper presents an attention-based deep learning approach; we call AttentiveChrome, that uses a unified architecture to model and to interpret dependencies among chromatin factors for controlling gene regulation. AttentiveChrome uses a hierarchy of multiple Long short-term memory (LSTM) modules to encode the input signals and to model how various chromatin marks cooperate automatically. AttentiveChrome trains two levels of attention jointly with the target prediction, enabling it to attend differentially to relevant marks and to locate important positions per mark. We evaluate the model across 56 different cell types (tasks) in human. Not only is the proposed architecture more accurate, but its attention scores also provide a better interpretation than state-of-the-art feature visualization methods such as saliency map. Code and data are shared at www.deepchrome.org
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