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  • 标题:Deep learning geometrical potential for high-accuracy ab initio protein structure prediction
  • 本地全文:下载
  • 作者:Yang Li ; Chengxin Zhang ; Dong-Jun Yu
  • 期刊名称:iScience
  • 印刷版ISSN:2589-0042
  • 出版年度:2022
  • 卷号:25
  • 期号:6
  • 页码:1-19
  • DOI:10.1016/j.isci.2022.104425
  • 语种:English
  • 出版社:Elsevier
  • 摘要:SummaryAb initioprotein structure prediction has been vastly boosted by the modeling of inter-residue contact/distance maps in recent years. We developed a new deep learning model, DeepPotential, which accurately predicts the distribution of a complementary set of geometric descriptors including a novel hydrogen-bonding potential defined by C-alpha atom coordinates. On 154 Free-Modeling/Hard targets from the CASP and CAMEO experiments, DeepPotential demonstrated significant advantage on both geometrical feature prediction and full-length structure construction, with Top-L/5 contact accuracy and TM-score of full-length models 4.1% and 6.7% higher than the best of other deep-learning restraint prediction approaches. Detail analyses showed that the major contributions to the TM-score/contact-map improvements come from the employment of multi-tasking network architecture and metagenome-based MSA collection assisted with confidence-based MSA selection, where hydrogen-bonding and inter-residue orientation predictions help improve hydrogen-bonding network and secondary structure packing. These results demonstrated new progress in the deep-learning restraint-guidedab initioprotein structure prediction.Graphical abstractDisplay OmittedHighlights•Multi-tasking network architecture for multiple inter-residue geometries•Novel deep learning model for improved hydrogen-bonding modeling•Rapid and high-accuracyAb initioprotein structure predictionBioinformatics; Protein; Structural biology
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