Authors
Babak Alipanahi, Andrew Delong, Matthew T Weirauch, Brendan J Frey
Publication date
2015/8
Journal
Nature biotechnology
Volume
33
Issue
8
Pages
831-838
Publisher
Nature Publishing Group
Description
Knowing the sequence specificities of DNA-and RNA-binding proteins is essential for developing models of the regulatory processes in biological systems and for identifying causal disease variants. Here we show that sequence specificities can be ascertained from experimental data with'deep learning'techniques, which offer a scalable, flexible and unified computational approach for pattern discovery. Using a diverse array of experimental data and evaluation metrics, we find that deep learning outperforms other state-of-the-art methods, even when training on in vitro data and testing on in vivo data. We call this approach DeepBind and have built a stand-alone software tool that is fully automatic and handles millions of sequences per experiment. Specificities determined by DeepBind are readily visualized as a weighted ensemble of position weight matrices or as a'mutation map'that indicates how variations affect …
Total citations
2015201620172018201920202021202220232024894245357434399455420368205
Scholar articles