同色
计算机科学
水准点(测量)
模板
连接器
接口(物质)
生物系统
化学
化学计量学
模式识别(心理学)
算法
人工智能
生物
并行计算
生物化学
最大气泡压力法
操作系统
气泡
有机化学
基因
蛋白质亚单位
程序设计语言
地理
大地测量学
作者
Richard Evans,M. E. O’Neill,Alexander Pritzel,Н. В. Антропова,Andrew Senior,Tim Green,Augustin Žídek,Russ Bates,Sam Blackwell,Jason Yim,Olaf Ronneberger,Sebastian Bodenstein,Michał Zieliński,Alex Bridgland,Anna Potapenko,Andrew Cowie,Kathryn Tunyasuvunakool,Rishub Jain,Ellen Clancy,Pushmeet Kohli,John Jumper,Demis Hassabis
标识
DOI:10.1101/2021.10.04.463034
摘要
While the vast majority of well-structured single protein chains can now be predicted to high accuracy due to the recent AlphaFold [1] model, the prediction of multi-chain protein complexes remains a challenge in many cases. In this work, we demonstrate that an AlphaFold model trained specifically for multimeric inputs of known stoichiometry, which we call AlphaFold-Multimer, significantly increases accuracy of predicted multimeric interfaces over input-adapted single-chain AlphaFold while maintaining high intra-chain accuracy. On a benchmark dataset of 17 heterodimer proteins without templates (introduced in [2]) we achieve at least medium accuracy (DockQ [3] ≥ 0.49) on 13 targets and high accuracy (DockQ ≥ 0.8) on 7 targets, compared to 9 targets of at least medium accuracy and 4 of high accuracy for the previous state of the art system (an AlphaFold-based system from [2]). We also predict structures for a large dataset of 4,446 recent protein complexes, from which we score all non-redundant interfaces with low template identity. For heteromeric interfaces we successfully predict the interface (DockQ ≥ 0.23) in 70% of cases, and produce high accuracy predictions (DockQ ≥ 0.8) in 26% of cases, an improvement of +27 and +14 percentage points over the flexible linker modification of AlphaFold [4] respectively. For homomeric inter-faces we successfully predict the interface in 72% of cases, and produce high accuracy predictions in 36% of cases, an improvement of +8 and +7 percentage points respectively.
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