IF 4.5 Q1 MICROBIOLOGY
mLife Pub Date : 2024-12-26 eCollection Date: 2024-12-01 DOI:10.1002/mlf2.12157
Bingxin Zhou, Yang Tan, Yutong Hu, Lirong Zheng, Bozitao Zhong, Liang Hong
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引用次数: 0

摘要

深度学习的进步极大地帮助了蛋白质工程解决工业生产、医疗保健和环境可持续性方面的挑战。本文综述了从深度学习的角度研究蛋白质理解和工程中的常见问题。它提供了对蛋白质序列和结构的表示方法的全面讨论,以及支持预训练和监督学习任务的通用编码管道。我们总结了最先进的蛋白质语言模型,几何深度学习技术,以及从多模态生物数据中学习的不同方法的组合。此外,我们概述了用于训练和评估深度学习模型的常见下游任务和相关基准数据集,重点是满足蛋白质工程应用的特定需求,例如识别突变位点和预测候选虚拟筛选的特性。这篇综述为生物学家提供了最新的工具来协助他们的工程项目,同时为计算机科学家提供了一个清晰而全面的指导,通过标准化问题的表述和整合数据资源来开发更强大的解决方案。未来的研究可以预见到生物学和计算机科学社区的更深层次的融合,释放深度学习在蛋白质工程中的全部潜力,推动新的科学突破。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Protein engineering in the deep learning era.

Advances in deep learning have significantly aided protein engineering in addressing challenges in industrial production, healthcare, and environmental sustainability. This review frames frequently researched problems in protein understanding and engineering from the perspective of deep learning. It provides a thorough discussion of representation methods for protein sequences and structures, along with general encoding pipelines that support both pre-training and supervised learning tasks. We summarize state-of-the-art protein language models, geometric deep learning techniques, and the combination of distinct approaches to learning from multi-modal biological data. Additionally, we outline common downstream tasks and relevant benchmark datasets for training and evaluating deep learning models, focusing on satisfying the particular needs of protein engineering applications, such as identifying mutation sites and predicting properties for candidates' virtual screening. This review offers biologists the latest tools for assisting their engineering projects while providing a clear and comprehensive guide for computer scientists to develop more powerful solutions by standardizing problem formulation and consolidating data resources. Future research can foresee a deeper integration of the communities of biology and computer science, unleashing the full potential of deep learning in protein engineering and driving new scientific breakthroughs.

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CiteScore
2.30
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