Deep neural networks identify sequence context features predictive of transcription factor binding

2021 
Transcription factors bind DNA by recognizing specific sequence motifs, which are typically 6–12 bp long. A motif can occur many thousands of times in the human genome, but only a subset of those sites are actually bound. Here we present a machine-learning framework leveraging existing convolutional neural network architectures and model interpretation techniques to identify and interpret sequence context features most important for predicting whether a particular motif instance will be bound. We apply our framework to predict binding at motifs for 38 transcription factors in a lymphoblastoid cell line, score the importance of context sequences at base-pair resolution and characterize context features most predictive of binding. We find that the choice of training data heavily influences classification accuracy and the relative importance of features such as open chromatin. Overall, our framework enables novel insights into features predictive of transcription factor binding and is likely to inform future deep learning applications to interpret non-coding genetic variants. The transcription process of DNA is highly complex and while short DNA sequence motifs recognized by transcription factors are well known, less is known about the context in the DNA sequence that determines whether a transcription factor will actually bind its motif. Zheng and colleagues present a method that uses convolutional neural networks to identify sequence features that help predict whether transcribing proteins can bind to their target sequences in DNA.
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