Current progress and open challenges for applying deep learning across the biosciences

Nicolae Sapoval(Rice University), Amirali Aghazadeh(University of California, Berkeley), Michael Nute(Rice University), Dinler A. Antunes(University of Houston), Advait Balaji(Rice University), Richard G. Baraniuk(Rice University), CJ Barberan(Rice University), Ruth Dannenfelser(Rice University), Chen Dun(Rice University), Mohammadamin Edrisi(Rice University), R. A. Leo Elworth(Rice University), Bryce Kille(Rice University), Anastasios Kyrillidis(Rice University), Luay Nakhleh(Rice University), C. Wolfe(Rice University), Zhi Yan(Rice University), Vicky Yao(Rice University), Todd J. Treangen(Rice University)
Nature Communications
April 1, 2022
Cited by 371Open Access
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Abstract

Deep Learning (DL) has recently enabled unprecedented advances in one of the grand challenges in computational biology: the half-century-old problem of protein structure prediction. In this paper we discuss recent advances, limitations, and future perspectives of DL on five broad areas: protein structure prediction, protein function prediction, genome engineering, systems biology and data integration, and phylogenetic inference. We discuss each application area and cover the main bottlenecks of DL approaches, such as training data, problem scope, and the ability to leverage existing DL architectures in new contexts. To conclude, we provide a summary of the subject-specific and general challenges for DL across the biosciences.


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