Iterative Modeling via Structural Diffusion (IMSD): Exploring Fold-Switching Pathways in Metamorphic Proteins Using AlphaFold2-Based Generative Diffusion Model UFConf.

IF 2.8 4区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Dmitrii A Luzik, Nikolai R Skrynnikov
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引用次数: 0

Abstract

Metamorphic proteins (MPs) can fold into two or more distinct spatial structures. Increasing interest in MPs has spurred the search for computational tools to predict proteins fold-switching potential and model their refolding pathways. Here we address this problem by using the recently reported generative diffusion predictor UFConf, based on the AlphaFold2 network. We have developed a new UFConf-driven algorithm dubbed IMSD (iterative modeling via structural diffusion) to model the MP's path from one conformational state to another. In brief, we begin with the experimental structure of state A, perturb it through the "noising" process, and infer a number of models (replicas) through the reverse diffusion or "denoising" process. From this set of models, we choose the one that is closest to the alternative structure B; then we use it as a starting point to perform another round of noising/denoising and thus generate the next batch of replicas. Repeating this process in an iterative fashion, we have been able to map the entire path from state A to state B for metamorphic proteins GA98, SA1 V90T, and the C-terminal domain of RfaH. The obtained representation of the fold-switching pathways in these MPs is consistent with the dual-funnel energy landscape observed in the previous modeling studies and shows good agreement with the available experimental data. The new UFConf-based IMSD protocol can be viewed as a part of the emerging generation of modeling tools aiming to model protein dynamics by means of deep learning technology.

基于结构扩散(IMSD)的迭代建模:利用基于alphafold2的生成扩散模型UFConf探索变形蛋白的折叠切换途径。
变形蛋白(MPs)可以折叠成两个或更多不同的空间结构。对MPs的兴趣日益增加,促使人们寻找计算工具来预测蛋白质的折叠开关电位和模拟它们的再折叠途径。在这里,我们通过使用最近报道的基于AlphaFold2网络的生成扩散预测器UFConf来解决这个问题。我们开发了一种新的ufconf驱动算法,称为IMSD(通过结构扩散的迭代建模)来模拟MP从一个构象状态到另一个构象状态的路径。简而言之,我们从状态A的实验结构开始,通过“去噪”过程对其进行扰动,并通过反向扩散或“去噪”过程推断出一些模型(复制品)。从这组模型中,我们选择最接近备选结构B的模型;然后我们使用它作为起点,执行另一轮的噪声/去噪,从而生成下一批副本。以迭代的方式重复这一过程,我们已经能够绘制出变质蛋白GA98、SA1 V90T和RfaH的c端结构域从状态A到状态B的整个路径。得到的这些MPs中折叠切换路径的表示与先前建模研究中观察到的双漏斗能量景观一致,并且与现有的实验数据吻合良好。新的基于ufconf的IMSD协议可以被视为新兴一代建模工具的一部分,旨在通过深度学习技术对蛋白质动力学进行建模。
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来源期刊
Proteins-Structure Function and Bioinformatics
Proteins-Structure Function and Bioinformatics 生物-生化与分子生物学
CiteScore
5.90
自引率
3.40%
发文量
172
审稿时长
3 months
期刊介绍: PROTEINS : Structure, Function, and Bioinformatics publishes original reports of significant experimental and analytic research in all areas of protein research: structure, function, computation, genetics, and design. The journal encourages reports that present new experimental or computational approaches for interpreting and understanding data from biophysical chemistry, structural studies of proteins and macromolecular assemblies, alterations of protein structure and function engineered through techniques of molecular biology and genetics, functional analyses under physiologic conditions, as well as the interactions of proteins with receptors, nucleic acids, or other specific ligands or substrates. Research in protein and peptide biochemistry directed toward synthesizing or characterizing molecules that simulate aspects of the activity of proteins, or that act as inhibitors of protein function, is also within the scope of PROTEINS. In addition to full-length reports, short communications (usually not more than 4 printed pages) and prediction reports are welcome. Reviews are typically by invitation; authors are encouraged to submit proposed topics for consideration.
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