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
K Taki,M. E. O’Neill,Alexander Pritzel,Н. В. Антропова,Andrew Senior,Tim Green,Augustin Žídek,Russ Bates,Sam Blackwell,Jason Yim,Olaf Ronneberger,Sebastian W. Bodenstein,Michał Zieliński,Alex Bridgland,Anna Potapenko,Andrew Cowie,Kathryn Tunyasuvunakool,Rishub Jain,Ellen Clancy,Pushmeet Kohli
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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