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Discovering epistatic feature interactions from neural network models of regulatory DNA sequences
Peyton Greenside, Tyler Shimko, Polly Fordyce, Anshul Kundaje
doi: https://doi.org/10.1101/302711
Peyton Greenside
Stanford University
Tyler Shimko
Stanford University
Polly Fordyce
Stanford University
Anshul Kundaje
Stanford University
Article usage
Posted April 17, 2018.
Discovering epistatic feature interactions from neural network models of regulatory DNA sequences
Peyton Greenside, Tyler Shimko, Polly Fordyce, Anshul Kundaje
bioRxiv 302711; doi: https://doi.org/10.1101/302711
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