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Beyond static structures: protein dynamic conformations modeling in the post-AlphaFold era

Xinyue Cui, Lingyu Ge, Xia Chen, Zhipeng Lv, Suhui Wang, Xiaogen Zhou, Guijun Zhang

2025Briefings in Bioinformatics42 citationsDOIOpen Access PDF

Abstract

The emergence of deep learning, particularly AlphaFold, has revolutionized static protein structure prediction, marking a transformative milestone in structural biology. However, protein function is not solely determined by static three-dimensional structures but is fundamentally governed by dynamic transitions between multiple conformational states. This shift from static to multi-state representations is crucial for understanding the mechanistic basis of protein function and regulation. This review outlines the fundamental concepts of protein dynamic conformations, surveys recent computational advances in modeling these dynamics in the post-AlphaFold era, and highlights key challenges, including data limitations, methodological constraints, and evaluation metrics. We also discuss potential strategies to address these challenges and explore future research directions to deepen our understanding of protein dynamics and their functional implications. This work aims to provide insights and perspectives to facilitate the ongoing development of protein conformation studies in the era of artificial intelligence-driven structural biology.

Topics & Concepts

Transformative learningComputer scienceProtein functionFunction (biology)MilestoneProtein structureProtein dynamicsData scienceArtificial intelligenceChemistryBiologySociologyEvolutionary biologyHistoryArchaeologyBiochemistryPedagogyGeneProtein Structure and DynamicsMass Spectrometry Techniques and ApplicationsMachine Learning in Bioinformatics
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