Deep learning in structural bioinformatics: current applications and future perspectives

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Abstract

In this review article, we explore the transformative impact of deep learning (DL) on structural bioinformatics, emphasizing its pivotal role in a scientific revolution driven by extensive data, accessible toolkits and robust computing resources. As big data continue to advance, DL is poised to become an integral component in healthcare and biology, revolutionizing analytical processes. Our comprehensive review provides detailed insights into DL, featuring specific demonstrations of its notable applications in bioinformatics. We address challenges tailored for DL, spotlight recent successes in structural bioinformatics and present a clear exposition of DL - from basic shallow neural networks to advanced models such as convolution, recurrent, artificial and transformer neural networks. This paper discusses the emerging use of DL for understanding biomolecular structures, anticipating ongoing developments and applications in the realm of structural bioinformatics.

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APA

Kumar, N., & Srivastava, R. (2024, May 1). Deep learning in structural bioinformatics: current applications and future perspectives. Briefings in Bioinformatics. Oxford University Press. https://doi.org/10.1093/bib/bbae042

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