利用深度学习方法发现电压门控离子通道药物。

IF 5.3 2区 医学 Q1 PHYSIOLOGY
Physiology Pub Date : 2025-01-01 Epub Date: 2024-08-27 DOI:10.1152/physiol.00029.2024
Diego Lopez-Mateos, Brandon John Harris, Adriana Hernández-González, Kush Narang, Vladimir Yarov-Yarovoy
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引用次数: 0

摘要

电压门控离子通道(VGIC)在调节可兴奋细胞的电活动中起着关键作用,是治疗心律失常和神经性疼痛等多种疾病的关键药物靶点。尽管其意义重大,但在 VGIC 药物开发过程中,实现目标选择性等挑战依然存在。深度学习(尤其是扩散模型)领域的最新进展使人们能够完全根据临床相关蛋白质的结构,为其计算设计蛋白质结合剂。这些进展与 VGIC 实验结构数据的激增不谋而合,为计算设计工作提供了丰富的基础。本综述探讨了利用深度学习和扩散方法进行计算蛋白质设计的最新进展,重点是这些方法在设计调节 VGIC 活性的蛋白质结合剂中的应用。我们讨论了这些方法在计算设计针对 VGIC 不同区域(包括孔结构域、电压感应结构域以及与辅助亚基的接口)的蛋白质结合剂方面的潜在用途。我们全面概述了不同的设计方案,讨论了关键的结构考虑因素,并探讨了开发 VGIC 靶向蛋白结合剂的实际挑战。通过探索这些创新的计算方法,我们旨在为开发新的策略提供一个框架,这些策略将大大推动 VGIC 药理学的发展,并促进有效、安全疗法的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing Deep Learning Methods for Voltage-Gated Ion Channel Drug Discovery.

Voltage-gated ion channels (VGICs) are pivotal in regulating electrical activity in excitable cells and are critical pharmaceutical targets for treating many diseases including cardiac arrhythmia and neuropathic pain. Despite their significance, challenges such as achieving target selectivity persist in VGIC drug development. Recent progress in deep learning, particularly diffusion models, has enabled the computational design of protein binders for any clinically relevant protein based solely on its structure. These developments coincide with a surge in experimental structural data for VGICs, providing a rich foundation for computational design efforts. This review explores the recent advancements in computational protein design using deep learning and diffusion methods, focusing on their application in designing protein binders to modulate VGIC activity. We discuss the potential use of these methods to computationally design protein binders targeting different regions of VGICs, including the pore domain, voltage-sensing domains, and interface with auxiliary subunits. We provide a comprehensive overview of the different design scenarios, discuss key structural considerations, and address the practical challenges in developing VGIC-targeting protein binders. By exploring these innovative computational methods, we aim to provide a framework for developing novel strategies that could significantly advance VGIC pharmacology and lead to the discovery of effective and safe therapeutics.

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来源期刊
Physiology
Physiology 医学-生理学
CiteScore
14.50
自引率
0.00%
发文量
37
期刊介绍: Physiology journal features meticulously crafted review articles penned by esteemed leaders in their respective fields. These articles undergo rigorous peer review and showcase the forefront of cutting-edge advances across various domains of physiology. Our Editorial Board, comprised of distinguished leaders in the broad spectrum of physiology, convenes annually to deliberate and recommend pioneering topics for review articles, as well as select the most suitable scientists to author these articles. Join us in exploring the forefront of physiological research and innovation.
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