利用AlphaFold揭示hERG通道构象的国家机密。

IF 6.4 1区 生物学 Q1 BIOLOGY
eLife Pub Date : 2025-07-14 DOI:10.7554/eLife.104901
Khoa Ngo, Pei-Chi Yang, Vladimir Yarov-Yarovoy, Colleen E Clancy, Igor Vorobyov
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引用次数: 0

摘要

为了设计安全、选择性和有效的新疗法,必须对药物靶点的结构和功能有深入的了解。跨膜离子通道蛋白的离散构象状态是目前最难解决的问题之一。一个例子是KV11.1 (hERG),它包括初级心脏复极电流Ikr。hERG是一种臭名昭著的药物抗靶点,所有有前途的药物都被筛选以确定心律失常的潜力。药物与hERG失活状态的相互作用与心律失常风险升高有关,并且药物可能在通道关闭期间被困住。虽然先前的研究已经应用AlphaFold来预测替代的蛋白质构象,但我们表明,包含精心选择的结构模板可以引导这些预测走向不同的功能状态。通过与实验数据的比较,这种有针对性的建模方法得到了验证,包括提出的状态依赖的结构特征、分子对接的药物相互作用以及分子动力学模拟的离子传导特性。值得注意的是,AlphaFold不仅预测了阻止离子传导的hERG通道的失活机制,还揭示了在失活过程中观察到的药物结合增强的新分子特征,从而更深入地了解了hERG通道的功能和药理学。此外,利用alphafold衍生状态通过显著提高与实验药物亲和力的一致性来增强计算筛选,这是hERG作为关键药物安全靶点的重要进展,传统的单状态模型错过了关键的状态依赖效应。通过绘制封闭、开放和失活状态下的蛋白残基相互作用网络,我们确定了驱动状态转变的关键残基,这些状态转变已被先前的诱变研究证实。这种创新的方法为将基于深度学习的蛋白质结构预测与实验验证相结合树立了新的标杆。它还提供了一种广泛适用的方法,使用AlphaFold来预测离散的蛋白质构象,调和不同的数据,并揭示新的结构-功能关系,最终推进药物安全性筛选并使设计更安全的治疗方法成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing AlphaFold to reveal hERG channel conformational state secrets.

To design safe, selective, and effective new therapies, there must be a deep understanding of the structure and function of the drug target. One of the most difficult problems to solve has been the resolution of discrete conformational states of transmembrane ion channel proteins. An example is KV11.1 (hERG), comprising the primary cardiac repolarizing current, Ikr. hERG is a notorious drug anti-target against which all promising drugs are screened to determine potential for arrhythmia. Drug interactions with the hERG inactivated state are linked to elevated arrhythmia risk, and drugs may become trapped during channel closure. While prior studies have applied AlphaFold to predict alternative protein conformations, we show that the inclusion of carefully chosen structural templates can guide these predictions toward distinct functional states. This targeted modeling approach is validated through comparisons with experimental data, including proposed state-dependent structural features, drug interactions from molecular docking, and ion conduction properties from molecular dynamics simulations. Remarkably, AlphaFold not only predicts inactivation mechanisms of the hERG channel that prevent ion conduction but also uncovers novel molecular features explaining enhanced drug binding observed during inactivation, offering a deeper understanding of hERG channel function and pharmacology. Furthermore, leveraging AlphaFold-derived states enhances computational screening by significantly improving agreement with experimental drug affinities, an important advance for hERG as a key drug safety target where traditional single-state models miss critical state-dependent effects. By mapping protein residue interaction networks across closed, open, and inactivated states, we identified critical residues driving state transitions validated by prior mutagenesis studies. This innovative methodology sets a new benchmark for integrating deep learning-based protein structure prediction with experimental validation. It also offers a broadly applicable approach using AlphaFold to predict discrete protein conformations, reconcile disparate data, and uncover novel structure-function relationships, ultimately advancing drug safety screening and enabling the design of safer therapeutics.

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来源期刊
eLife
eLife BIOLOGY-
CiteScore
12.90
自引率
3.90%
发文量
3122
审稿时长
17 weeks
期刊介绍: eLife is a distinguished, not-for-profit, peer-reviewed open access scientific journal that specializes in the fields of biomedical and life sciences. eLife is known for its selective publication process, which includes a variety of article types such as: Research Articles: Detailed reports of original research findings. Short Reports: Concise presentations of significant findings that do not warrant a full-length research article. Tools and Resources: Descriptions of new tools, technologies, or resources that facilitate scientific research. Research Advances: Brief reports on significant scientific advancements that have immediate implications for the field. Scientific Correspondence: Short communications that comment on or provide additional information related to published articles. Review Articles: Comprehensive overviews of a specific topic or field within the life sciences.
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