从序列到蛋白质结构和构象动力学与人工智能/机器学习。

IF 2.3 2区 物理与天体物理 Q3 CHEMISTRY, PHYSICAL
Structural Dynamics-Us Pub Date : 2025-06-24 eCollection Date: 2025-05-01 DOI:10.1063/4.0000765
Alexander M Ille, Emily Anas, Michael B Mathews, Stephen K Burley
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引用次数: 0

摘要

2024年诺贝尔化学奖的部分原因是使用AlphaFold2进行蛋白质结构预测,AlphaFold2是一种人工智能/机器学习(AI/ML)模型,经过大量序列和三维结构数据的训练。AlphaFold2和相关模型,包括RoseTTAFold和ESMFold,采用由注意机制驱动的专门神经网络架构来推断序列和结构之间的关系。在基本层面上,这些AI/ML模型基于一个长期存在的假设,即蛋白质的结构是由其氨基酸序列决定的。最近,AlphaFold2已被用于通过亚采样多序列比对来预测多种蛋白质构象。在此,我们概述了序列和结构之间的确定性关系,这是半个多世纪前对生物科学产生深远影响的假设。我们假设蛋白质构象动力学也至少部分由氨基酸序列决定,并且这种关系可以用于构建致力于预测蛋白质构象集成的AI/ML模型。因此,我们描述了一个概念模型架构,它可以结合序列数据和构象敏感的结构信息进行训练,这些信息主要来自核磁共振(NMR)光谱。尽管在这方面有一定的局限性,但核磁共振提供了丰富的结构非均质性,有利于构象集合预测。随着核磁共振和其他数据的不断积累,利用AI/ML进行蛋白质结构动力学的序列预测有可能成为整个生物科学领域的变革能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From sequence to protein structure and conformational dynamics with artificial intelligence/machine learning.

The 2024 Nobel Prize in Chemistry was awarded in part for de novo protein structure prediction using AlphaFold2, an artificial intelligence/machine learning (AI/ML) model trained on vast amounts of sequence and three-dimensional structure data. AlphaFold2 and related models, including RoseTTAFold and ESMFold, employ specialized neural network architectures driven by attention mechanisms to infer relationships between sequence and structure. At a fundamental level, these AI/ML models operate on the long-standing hypothesis that the structure of a protein is determined by its amino acid sequence. More recently, AlphaFold2 has been adapted for the prediction of multiple protein conformations by subsampling multiple sequence alignments. Herein, we provide an overview of the deterministic relationship between sequence and structure, which was hypothesized over half a century ago with profound implications for the biological sciences ever since. We postulate that protein conformational dynamics are also determined, at least in part, by amino acid sequence and that this relationship may be leveraged for construction of AI/ML models dedicated to predicting protein conformational ensembles. Accordingly, we describe a conceptual model architecture, which may be trained on sequence data in combination with conformationally sensitive structural information, coming primarily from nuclear magnetic resonance (NMR) spectroscopy. Notwithstanding certain limitations in this context, NMR offers abundant structural heterogeneity conducive to conformational ensemble prediction. As NMR and other data continue to accumulate, sequence-informed prediction of protein structural dynamics with AI/ML has the potential to emerge as a transformative capability across the biological sciences.

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来源期刊
Structural Dynamics-Us
Structural Dynamics-Us CHEMISTRY, PHYSICALPHYSICS, ATOMIC, MOLECU-PHYSICS, ATOMIC, MOLECULAR & CHEMICAL
CiteScore
5.50
自引率
3.60%
发文量
24
审稿时长
16 weeks
期刊介绍: Structural Dynamics focuses on the recent developments in experimental and theoretical methods and techniques that allow a visualization of the electronic and geometric structural changes in real time of chemical, biological, and condensed-matter systems. The community of scientists and engineers working on structural dynamics in such diverse systems often use similar instrumentation and methods. The journal welcomes articles dealing with fundamental problems of electronic and structural dynamics that are tackled by new methods, such as: Time-resolved X-ray and electron diffraction and scattering, Coherent diffractive imaging, Time-resolved X-ray spectroscopies (absorption, emission, resonant inelastic scattering, etc.), Time-resolved electron energy loss spectroscopy (EELS) and electron microscopy, Time-resolved photoelectron spectroscopies (UPS, XPS, ARPES, etc.), Multidimensional spectroscopies in the infrared, the visible and the ultraviolet, Nonlinear spectroscopies in the VUV, the soft and the hard X-ray domains, Theory and computational methods and algorithms for the analysis and description of structuraldynamics and their associated experimental signals. These new methods are enabled by new instrumentation, such as: X-ray free electron lasers, which provide flux, coherence, and time resolution, New sources of ultrashort electron pulses, New sources of ultrashort vacuum ultraviolet (VUV) to hard X-ray pulses, such as high-harmonic generation (HHG) sources or plasma-based sources, New sources of ultrashort infrared and terahertz (THz) radiation, New detectors for X-rays and electrons, New sample handling and delivery schemes, New computational capabilities.
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