构象集合
功能(生物学)
蛋白质功能
蛋白质结构
计算机科学
计算生物学
化学
生物
生物化学
进化生物学
基因
作者
Davide Sala,Felipe Engelberger,Hassane S. Mchaourab,Jens Meiler
标识
DOI:10.1016/j.sbi.2023.102645
摘要
Many proteins exert their function by switching among different structures. Knowing the conformational ensembles affiliated with these states is critical to elucidate key mechanistic aspects that govern protein function. While experimental determination efforts are still bottlenecked by cost, time, and technical challenges, the machine-learning technology AlphaFold showed near experimental accuracy in predicting the three-dimensional structure of monomeric proteins. However, an AlphaFold ensemble of models usually represents a single conformational state with minimal structural heterogeneity. Consequently, several pipelines have been proposed to either expand the structural breadth of an ensemble or bias the prediction toward a desired conformational state. Here, we analyze how those pipelines work, what they can and cannot predict, and future directions.
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