Zheng Wenjun, Wen Han
Department of Physics, State University of New York at Buffalo, Buffalo, New York, USA.
Proteins. 2021 Mar 19. doi: 10.1002/prot.26075.
As a key cellular sensor, the TRPV1 channel undergoes a gating transition from a closed state to an open state in response to many physical and chemical stimuli. This transition is regulated by small-molecule ligands including lipids and various agonists/antagonists, but the underlying molecular mechanisms remain obscure. Thanks to recent revolution in cryo-electron microscopy, a growing list of new structures of TRPV1 and other TRPV channels have been solved in complex with various ligands including lipids. Toward elucidating how ligand binding correlates with TRPV1 gating, we have performed extensive molecular dynamics simulations (with cumulative time of 20 μs), starting from high-resolution structures of TRPV1 in both the closed and open states. By comparing between the open and closed state ensembles, we have identified state-dependent binding sites for small-molecule ligands in general and lipids in particular. We further use machine learning to predict top ligand-binding sites as important features to classify the closed vs open states. The predicted binding sites are thoroughly validated by matching homologous sites in all structures of TRPV channels bound to lipids and other ligands, and with previous functional/mutational studies of ligand binding in TRPV1. Taken together, this study has integrated rich structural, dynamic, and functional data to inform future design of small-molecular drugs targeting TRPV1.
作为一种关键的细胞传感器,TRPV1通道会响应多种物理和化学刺激,经历从关闭状态到开放状态的门控转变。这种转变受包括脂质和各种激动剂/拮抗剂在内的小分子配体调节,但其潜在的分子机制仍不清楚。得益于最近低温电子显微镜技术的革新,越来越多TRPV1及其他TRPV通道与包括脂质在内的各种配体复合物的新结构已被解析。为了阐明配体结合与TRPV1门控之间的关系,我们从TRPV1关闭和开放状态的高分辨率结构出发,进行了广泛的分子动力学模拟(累计时间达20微秒)。通过比较开放和关闭状态的系综,我们确定了小分子配体尤其是脂质的状态依赖性结合位点。我们进一步使用机器学习来预测顶级配体结合位点,将其作为区分关闭和开放状态的重要特征。通过与所有与脂质及其他配体结合的TRPV通道结构中的同源位点匹配,以及与之前TRPV1中配体结合的功能/突变研究进行比对,对预测的结合位点进行了全面验证。综上所述,本研究整合了丰富的结构、动力学和功能数据,为未来靶向TRPV1的小分子药物设计提供了依据。