da Silva Gabriel Monteiro, Cui Jennifer Y, Dalgarno David C, Lisi George P, Rubenstein Brenda M
ArXiv. 2023 Jul 26:arXiv:2307.14470v1.
This paper presents a novel approach for predicting the relative populations of protein conformations using AlphaFold 2, an AI-powered method that has revolutionized biology by enabling the accurate prediction of protein structures. While AlphaFold 2 has shown exceptional accuracy and speed, it is designed to predict proteins' single ground state conformations and is limited in its ability to predict fold switching and the effects of mutations on conformational landscapes. Here, we demonstrate how AlphaFold 2 can directly predict the relative populations of different conformations of proteins and even accurately predict changes in those populations induced by mutations by subsampling multiple sequence alignments. We tested our method against NMR experiments on two proteins with drastically different amounts of available sequence data, Abl1 kinase and the granulocyte-macrophage colony-stimulating factor, and predicted changes in their relative state populations with accuracies in excess of 80%. Our method offers a fast and cost-effective way to predict protein conformations and their relative populations at even single point mutation resolution, making it a useful tool for pharmacology, analyzing NMR data, and studying the effects of evolution.
本文提出了一种使用AlphaFold 2预测蛋白质构象相对丰度的新方法,AlphaFold 2是一种人工智能驱动的方法,通过实现蛋白质结构的准确预测,彻底改变了生物学。虽然AlphaFold 2已展现出卓越的准确性和速度,但它旨在预测蛋白质的单一基态构象,在预测折叠转换以及突变对构象景观的影响方面能力有限。在此,我们展示了AlphaFold 2如何通过对多个序列比对进行二次抽样,直接预测蛋白质不同构象的相对丰度,甚至准确预测由突变引起的这些丰度变化。我们针对具有截然不同的可用序列数据量的两种蛋白质——Abl1激酶和粒细胞巨噬细胞集落刺激因子,利用核磁共振实验对我们的方法进行了测试,并以超过80%的准确率预测了它们相对状态丰度的变化。我们的方法提供了一种快速且经济高效的方式,甚至能以单点突变分辨率预测蛋白质构象及其相对丰度,使其成为药理学、分析核磁共振数据以及研究进化影响的有用工具。