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Protein remote homology detection and structural alignment using deep learning

Biology

Protein remote homology detection and structural alignment using deep learning

T. Hamamsy, J. T. Morton, et al.

Discover groundbreaking advancements in protein remote homology detection with TM-Vec and DeepBLAST, two innovative deep learning methods developed by Tymor Hamamsy and colleagues. These methods not only enhance the identification of remote homology but also outperform traditional structural alignment techniques using just sequence information.

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~3 min • Beginner • English
Abstract
Exploiting sequence-structure-function relationships in biotechnology requires improved methods for aligning proteins that have low sequence similarity to previously annotated proteins. We develop two deep learning methods to address this gap, TM-Vec and DeepBLAST. TM-Vec allows searching for structure-structure similarities in large sequence databases. It is trained to accurately predict TM-scores as a metric of structural similarity directly from sequence pairs without the need for intermediate computation or solution of structures. Once structurally similar proteins have been identified, DeepBLAST can structurally align proteins using only sequence information by identifying structurally homologous regions between proteins. It outperforms traditional sequence alignment methods and performs similarly to structure-based alignment methods. We show the merits of TM-Vec and DeepBLAST on a variety of datasets, including better identification of remotely homologous proteins compared with state-of-the-art sequence alignment and structure prediction methods.
Publisher
Nature Biotechnology
Published On
Jun 01, 2024
Authors
Tymor Hamamsy, James T. Morton, Robert Blackwell, Daniel Berenberg, Nicholas Carriero, Vladimir Gligorijevic, Charlie E. M. Strauss, Julia Koehler Leman, Kyunghyun Cho, Richard Bonneau
Tags
deep learning
protein homology
structural alignment
TM-Vec
DeepBLAST
sequence databases
protein structures
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