Diffusion models in protein structure and docking

IF 16.8 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Wiley Interdisciplinary Reviews: Computational Molecular Science Pub Date : 2024-04-05 DOI:10.1002/wcms.1711
Jason Yim, Hannes Stärk, Gabriele Corso, Bowen Jing, Regina Barzilay, Tommi S. Jaakkola
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Abstract

Generative AI is rapidly transforming the frontier of research in computational structural biology. Indeed, recent successes have substantially advanced protein design and drug discovery. One of the key methodologies underlying these advances is diffusion models (DM). Diffusion models originated in computer vision, rapidly taking over image generation and offering superior quality and performance. These models were subsequently extended and modified for uses in other areas including computational structural biology. DMs are well equipped to model high dimensional, geometric data while exploiting key strengths of deep learning. In structural biology, for example, they have achieved state-of-the-art results on protein 3D structure generation and small molecule docking. This review covers the basics of diffusion models, associated modeling choices regarding molecular representations, generation capabilities, prevailing heuristics, as well as key limitations and forthcoming refinements. We also provide best practices around evaluation procedures to help establish rigorous benchmarking and evaluation. The review is intended to provide a fresh view into the state-of-the-art as well as highlight its potentials and current challenges of recent generative techniques in computational structural biology.

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蛋白质结构和对接中的扩散模型
生成式人工智能正在迅速改变计算结构生物学研究的前沿领域。事实上,最近的成功大大推进了蛋白质设计和药物发现。扩散模型(DM)是支撑这些进步的关键方法之一。扩散模型起源于计算机视觉,迅速取代了图像生成,并提供了卓越的质量和性能。这些模型随后被扩展和修改,用于包括计算结构生物学在内的其他领域。扩散模型可以很好地利用深度学习的关键优势,为高维几何数据建模。例如,在结构生物学领域,它们在蛋白质三维结构生成和小分子对接方面取得了最先进的成果。这篇综述涵盖了扩散模型的基本原理、与分子表征相关的建模选择、生成能力、流行的启发式方法,以及关键的局限性和即将出现的改进。我们还提供了有关评估程序的最佳实践,以帮助建立严格的基准和评估。这篇综述的目的是提供对最先进技术的新看法,并强调计算结构生物学中最新生成技术的潜力和当前挑战:
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来源期刊
Wiley Interdisciplinary Reviews: Computational Molecular Science
Wiley Interdisciplinary Reviews: Computational Molecular Science CHEMISTRY, MULTIDISCIPLINARY-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
28.90
自引率
1.80%
发文量
52
审稿时长
6-12 weeks
期刊介绍: Computational molecular sciences harness the power of rigorous chemical and physical theories, employing computer-based modeling, specialized hardware, software development, algorithm design, and database management to explore and illuminate every facet of molecular sciences. These interdisciplinary approaches form a bridge between chemistry, biology, and materials sciences, establishing connections with adjacent application-driven fields in both chemistry and biology. WIREs Computational Molecular Science stands as a platform to comprehensively review and spotlight research from these dynamic and interconnected fields.
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