Advanced computational approaches to understand protein aggregation

IF 2.9 Q2 BIOPHYSICS Biophysics reviews Pub Date : 2024-04-24 DOI:10.1063/5.0180691
Deepshikha Ghosh, Anushka Biswas, Mithun Radhakrishna
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Abstract

Protein aggregation is a widespread phenomenon implicated in debilitating diseases like Alzheimer's, Parkinson's, and cataracts, presenting complex hurdles for the field of molecular biology. In this review, we explore the evolving realm of computational methods and bioinformatics tools that have revolutionized our comprehension of protein aggregation. Beginning with a discussion of the multifaceted challenges associated with understanding this process and emphasizing the critical need for precise predictive tools, we highlight how computational techniques have become indispensable for understanding protein aggregation. We focus on molecular simulations, notably molecular dynamics (MD) simulations, spanning from atomistic to coarse-grained levels, which have emerged as pivotal tools in unraveling the complex dynamics governing protein aggregation in diseases such as cataracts, Alzheimer's, and Parkinson's. MD simulations provide microscopic insights into protein interactions and the subtleties of aggregation pathways, with advanced techniques like replica exchange molecular dynamics, Metadynamics (MetaD), and umbrella sampling enhancing our understanding by probing intricate energy landscapes and transition states. We delve into specific applications of MD simulations, elucidating the chaperone mechanism underlying cataract formation using Markov state modeling and the intricate pathways and interactions driving the toxic aggregate formation in Alzheimer's and Parkinson's disease. Transitioning we highlight how computational techniques, including bioinformatics, sequence analysis, structural data, machine learning algorithms, and artificial intelligence have become indispensable for predicting protein aggregation propensity and locating aggregation-prone regions within protein sequences. Throughout our exploration, we underscore the symbiotic relationship between computational approaches and empirical data, which has paved the way for potential therapeutic strategies against protein aggregation-related diseases. In conclusion, this review offers a comprehensive overview of advanced computational methodologies and bioinformatics tools that have catalyzed breakthroughs in unraveling the molecular basis of protein aggregation, with significant implications for clinical interventions, standing at the intersection of computational biology and experimental research.
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了解蛋白质聚集的先进计算方法
蛋白质聚集是一种普遍现象,与阿尔茨海默氏症、帕金森氏症和白内障等使人衰弱的疾病有关,给分子生物学领域带来了复杂的障碍。在这篇综述中,我们将探讨不断发展的计算方法和生物信息学工具,它们彻底改变了我们对蛋白质聚集的理解。首先,我们讨论了与理解这一过程相关的多方面挑战,并强调了对精确预测工具的迫切需求。我们的重点是分子模拟,特别是分子动力学(MD)模拟,从原子到粗粒度水平,这些模拟已成为揭示白内障、阿尔茨海默氏症和帕金森氏症等疾病中蛋白质聚集的复杂动力学的关键工具。MD 模拟能从微观角度揭示蛋白质相互作用和聚集途径的微妙之处,而复制交换分子动力学、元动力学(MetaD)和伞状采样等先进技术则能通过探测复杂的能谱和过渡态加深我们的理解。我们深入探讨了 MD 模拟的具体应用,利用马尔可夫状态建模阐明了白内障形成的伴侣机制,以及阿尔茨海默氏症和帕金森氏症毒性聚集体形成的复杂路径和相互作用。接下来,我们着重介绍了计算技术,包括生物信息学、序列分析、结构数据、机器学习算法和人工智能,是如何成为预测蛋白质聚集倾向和定位蛋白质序列中易聚集区域不可或缺的技术。在整个探索过程中,我们强调了计算方法与经验数据之间的共生关系,这为针对蛋白质聚集相关疾病的潜在治疗策略铺平了道路。总之,本综述全面概述了先进的计算方法和生物信息学工具,这些方法和工具在揭示蛋白质聚集的分子基础方面取得了突破性进展,对临床干预具有重要意义,是计算生物学和实验研究的交叉点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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3.60
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