Deep learning-guided design of dynamic proteins.

IF 44.7 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Science Pub Date : 2025-05-22 DOI:10.1126/science.adr7094
Amy B Guo, Deniz Akpinaroglu, Christina A Stephens, Michael Grabe, Colin A Smith, Mark J S Kelly, Tanja Kortemme
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引用次数: 0

Abstract

Deep learning has advanced the design of static protein structures, but the controlled conformational changes that are hallmarks of natural signaling proteins have remained inaccessible to de novo design. Here, we describe a general deep learning-guided approach for de novo design of dynamic changes between intradomain geometries of proteins, similar to switch mechanisms prevalent in nature, with atomic-level precision. We solve four structures that validate the designed conformations, demonstrate modulation of the conformational landscape by orthosteric ligands and allosteric mutations, and show that physics-based simulations are in agreement with deep-learning predictions and experimental data. Our approach demonstrates that new modes of motion can now be realized through de novo design and provides a framework for constructing biology-inspired, tunable, and controllable protein signaling behavior de novo.

基于深度学习的动态蛋白质设计。
深度学习促进了静态蛋白质结构的设计,但作为天然信号蛋白标志的受控构象变化仍然无法实现从头设计。在这里,我们描述了一种通用的深度学习指导方法,用于蛋白质结构域内几何形状之间动态变化的从头设计,类似于自然界中普遍存在的开关机制,具有原子级精度。我们解决了四个验证设计构象的结构,证明了正构配体和变构突变对构象景观的调节,并表明基于物理的模拟与深度学习预测和实验数据一致。我们的方法表明,新的运动模式现在可以通过从头设计来实现,并为从头构建生物学启发的、可调的和可控的蛋白质信号行为提供了一个框架。
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来源期刊
Science
Science 综合性期刊-综合性期刊
CiteScore
61.10
自引率
0.90%
发文量
0
审稿时长
2.1 months
期刊介绍: Science is a leading outlet for scientific news, commentary, and cutting-edge research. Through its print and online incarnations, Science reaches an estimated worldwide readership of more than one million. Science’s authorship is global too, and its articles consistently rank among the world's most cited research. Science serves as a forum for discussion of important issues related to the advancement of science by publishing material on which a consensus has been reached as well as including the presentation of minority or conflicting points of view. Accordingly, all articles published in Science—including editorials, news and comment, and book reviews—are signed and reflect the individual views of the authors and not official points of view adopted by AAAS or the institutions with which the authors are affiliated. Science seeks to publish those papers that are most influential in their fields or across fields and that will significantly advance scientific understanding. Selected papers should present novel and broadly important data, syntheses, or concepts. They should merit recognition by the wider scientific community and general public provided by publication in Science, beyond that provided by specialty journals. Science welcomes submissions from all fields of science and from any source. The editors are committed to the prompt evaluation and publication of submitted papers while upholding high standards that support reproducibility of published research. Science is published weekly; selected papers are published online ahead of print.
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