AmoebaContact and GDFold as a pipeline for rapid de novo protein structure prediction

被引:0
作者
Wenzhi Mao
Wenze Ding
Yaoguang Xing
Haipeng Gong
机构
[1] Tsinghua University,MOE Key Laboratory of Bioinformatics, School of Life Sciences
[2] Tsinghua University,Beijing Advanced Innovation Center for Structural Biology
来源
Nature Machine Intelligence | 2020年 / 2卷
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摘要
Predicting the structures of proteins from amino acid sequences is of great importance. Recently, the accuracy of de novo protein structure prediction has been substantially improved when assisted by information about the contact between residues, which is also predictable from the sequence. Here, we present a novel pipeline for rapid protein structure prediction, which consists of a residue contact predictor, AmoebaContact, and a contact-assisted folder, GDFold. Unlike mainstream contact predictors that utilize simple, regularized neural networks, AmoebaContact adopts a set of network architectures that are optimized for contact prediction through automatic searching, and it predicts contacts at a series of cutoffs. Unlike conventional contact-assisted folders that only use top-scored contact pairs, GDFold considers all residue pairs from the prediction results of AmoebaContact in a differentiable loss function and optimizes atom coordinates using the gradient descent algorithm. The combination of AmoebaContact and GDFold allows quick modelling of the protein structure with acceptable model quality.
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页码:25 / 33
页数:8
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