From CASP13 to the Nobel Prize: DeepMind's AlphaFold Journey in Revolutionizing Protein Structure Prediction and Beyond.

IF 2 4区 生物学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Jad Abbass
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Abstract

Four years ago, at the 14th Critical Assessment of Structure Prediction (CASP14), John Moult made a historic announcement that the long-standing challenge of Protein Structure Prediction- a problem that had confounded scientists for over five decades-had been "solved" for single protein chains. Supporting this groundbreaking statement was a plot depicting the median Global Distance Test (GDT) across 87 out of 92 domains, where AlphaFold2, developed by DeepMind, achieved an unprecedented score of 92.4. The bar chart not only underscored AlphaFold2' s remarkable performance-standing out prominently among other methods-but also revealed a level of accuracy that exceeded all prior expectations. In the years since this breakthrough, DeepMind's team has made significant strides. The AlphaFold Database now hosts approximately 214 million structures for various model organisms, covering nearly the entire genome. Research continues to explore multiple facets of protein science, including the prediction of multi-chain protein complex structures and the impact of missense mutations on protein function. The open availability of this extensive database and the suite of AlphaFold2 algorithms has catalysed remarkable advancements in protein biology and bioinformatics. This review will begin by revisiting DeepMind's early efforts in CASP13, detailing the architecture and the remarkable progress that led to their breakthrough of AlphaFold2 in CASP14 (2020). It will then delve into two main areas: (1) AlphaFold's contributions to the scientific community across various fields over the past four years, and (2) the latest improvements, enhancements, and achievements by DeepMind, including AlphaFold3 and the Nobel Prize in Chemistry.

从CASP13到诺贝尔奖:DeepMind的AlphaFold之旅在革命性的蛋白质结构预测及超越。
四年前,在第14届结构预测关键评估(CASP14)上,约翰·莫特(John Moult)宣布了一个历史性的消息,即蛋白质结构预测的长期挑战——一个困扰科学家50多年的问题——已经“解决”了单个蛋白质链。支持这一突破性声明的是一张图,该图描绘了92个领域中87个领域的全球距离测试(GDT)中值,其中由DeepMind开发的AlphaFold2获得了前所未有的92.4分。这张柱状图不仅突出了AlphaFold2的出色表现——在其他方法中脱颖而出——而且还揭示了超出所有先前预期的准确性。在取得这一突破后的几年里,DeepMind团队取得了重大进展。AlphaFold数据库现在拥有大约2.14亿个各种模式生物的结构,几乎覆盖了整个基因组。研究继续探索蛋白质科学的多个方面,包括多链蛋白质复合物结构的预测和错义突变对蛋白质功能的影响。这个广泛的数据库和AlphaFold2算法套件的开放可用性催化了蛋白质生物学和生物信息学的显着进步。本文将从回顾DeepMind在CASP13中的早期工作开始,详细介绍导致他们在CASP14(2020)中突破AlphaFold2的架构和显著进展。然后,它将深入研究两个主要领域:(1)AlphaFold在过去四年中对科学界各个领域的贡献;(2)DeepMind的最新改进、增强和成就,包括AlphaFold3和诺贝尔化学奖。
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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来源期刊
Current protein & peptide science
Current protein & peptide science 生物-生化与分子生物学
CiteScore
5.20
自引率
0.00%
发文量
73
审稿时长
6 months
期刊介绍: Current Protein & Peptide Science publishes full-length/mini review articles on specific aspects involving proteins, peptides, and interactions between the enzymes, the binding interactions of hormones and their receptors; the properties of transcription factors and other molecules that regulate gene expression; the reactions leading to the immune response; the process of signal transduction; the structure and function of proteins involved in the cytoskeleton and molecular motors; the properties of membrane channels and transporters; and the generation and storage of metabolic energy. In addition, reviews of experimental studies of protein folding and design are given special emphasis. Manuscripts submitted to Current Protein and Peptide Science should cover a field by discussing research from the leading laboratories in a field and should pose questions for future studies. Original papers, research articles and letter articles/short communications are not considered for publication in Current Protein & Peptide Science.
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