结构、动力学、复合体和函数:从经典计算到人工智能

IF 6.1 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Current opinion in structural biology Pub Date : 2024-05-13 DOI:10.1016/j.sbi.2024.102835
Elena Frasnetti , Andrea Magni , Matteo Castelli , Stefano A. Serapian , Elisabetta Moroni , Giorgio Colombo
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引用次数: 0

摘要

计算方法可以提供对药物结合、蛋白质复合物组装和生物功能过程调控的分子识别过程的详细了解。经典的模拟方法可以跨越此类过程通常涉及的各种长度和时间尺度。最近,自动学习和人工智能方法已显示出扩展基于物理的方法的潜力,为复杂蛋白质结构的建模甚至设计提供了可能。原子模拟与人工智能方法之间的协同作用是一个新兴的前沿领域,对结构生物学的发展具有巨大的潜力。在此,我们将探讨这些方法的各种实例和框架,提供精选的实例和应用,说明它们对基本生物分子问题的影响。
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Structures, dynamics, complexes, and functions: From classic computation to artificial intelligence

Computational approaches can provide highly detailed insight into the molecular recognition processes that underlie drug binding, the assembly of protein complexes, and the regulation of biological functional processes. Classical simulation methods can bridge a wide range of length- and time-scales typically involved in such processes. Lately, automated learning and artificial intelligence methods have shown the potential to expand the reach of physics-based approaches, ushering in the possibility to model and even design complex protein architectures. The synergy between atomistic simulations and AI methods is an emerging frontier with a huge potential for advances in structural biology. Herein, we explore various examples and frameworks for these approaches, providing select instances and applications that illustrate their impact on fundamental biomolecular problems.

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来源期刊
Current opinion in structural biology
Current opinion in structural biology 生物-生化与分子生物学
CiteScore
12.20
自引率
2.90%
发文量
179
审稿时长
6-12 weeks
期刊介绍: Current Opinion in Structural Biology (COSB) aims to stimulate scientifically grounded, interdisciplinary, multi-scale debate and exchange of ideas. It contains polished, concise and timely reviews and opinions, with particular emphasis on those articles published in the past two years. In addition to describing recent trends, the authors are encouraged to give their subjective opinion of the topics discussed. In COSB, we help the reader by providing in a systematic manner: 1. The views of experts on current advances in their field in a clear and readable form. 2. Evaluations of the most interesting papers, annotated by experts, from the great wealth of original publications. [...] The subject of Structural Biology is divided into twelve themed sections, each of which is reviewed once a year. Each issue contains two sections, and the amount of space devoted to each section is related to its importance. -Folding and Binding- Nucleic acids and their protein complexes- Macromolecular Machines- Theory and Simulation- Sequences and Topology- New constructs and expression of proteins- Membranes- Engineering and Design- Carbohydrate-protein interactions and glycosylation- Biophysical and molecular biological methods- Multi-protein assemblies in signalling- Catalysis and Regulation
期刊最新文献
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