Pliushcheuskaya Palina, Künze Georg
Institute for Drug Discovery, Medical Faculty, University of Leipzig, Leipzig 04103, Germany.
Interdisciplinary Center for Bioinformatics, University of Leipzig, Leipzig 04107, Germany.
J Chem Inf Model. 2025 Jul 14;65(13):6949-6967. doi: 10.1021/acs.jcim.5c00336. Epub 2025 Jul 2.
Increasing structural and biophysical evidence suggests that many drug molecules bind to the protein-membrane interface region in membrane protein structures. An important starting point for drug discovery is the determination of a ligand's binding site; however, this information is missing for many membrane proteins, especially for their membrane-embedded parts. Therefore, we tested the performance of computational methods for ligand binding site prediction in the protein intramembrane region. We compiled data sets containing GPCR- and ion channel-ligand complexes and compared method performance relative to a soluble protein data set obtained from PDBBind. We tested state-of-the-art geometry-based (Fpocket, ConCavity), energy probe-based (FTSite), machine learning-based (P2Rank, GRaSP), and deep learning-based (PUResNet, DeepPocket, PUResNetV2.0) methods and evaluated them using the center-to-center distance (DCC) and discretized volume overlap (DVO) between the predicted binding site and the actual ligand position. The three best-ranking methods based on success rates on GPCRs were DeepPocket, PUResNetV2.0, and ConCavity, and for ion channels, these were DeepPocket, PUResNetV2.0, and FTSite. However, average DCC and DVO values were lower for all methods compared to the soluble protein data set, for which DVO and normalized DCC values ranked between 0.33 and 0.72 in their best case, respectively. In conclusion, this study provides an overview of the performance of state-of-the-art binding site prediction methods on their ability to identify pockets in the protein-membrane interface region. It also underscores the need for further method development in the prediction of protein-membrane ligand binding sites.
越来越多的结构和生物物理证据表明,许多药物分子与膜蛋白结构中的蛋白质-膜界面区域结合。药物发现的一个重要起点是确定配体的结合位点;然而,许多膜蛋白缺乏这一信息,尤其是它们嵌入膜的部分。因此,我们测试了计算方法在蛋白质膜内区域预测配体结合位点的性能。我们编制了包含GPCR和离子通道-配体复合物的数据集,并将方法性能与从PDBBind获得的可溶性蛋白质数据集进行比较。我们测试了基于几何的(Fpocket、ConCavity)、基于能量探针的(FTSite)、基于机器学习的(P2Rank、GRaSP)和基于深度学习的(PUResNet、DeepPocket、PUResNetV2.0)方法,并使用预测结合位点与实际配体位置之间的中心到中心距离(DCC)和离散化体积重叠(DVO)对它们进行评估。基于GPCR成功率的排名前三的方法是DeepPocket、PUResNetV2.0和ConCavity,对于离子通道,这些方法是DeepPocket、PUResNetV2.0和FTSite。然而,与可溶性蛋白质数据集相比,所有方法的平均DCC和DVO值都较低,可溶性蛋白质数据集在最佳情况下DVO和归一化DCC值分别在0.33和0.72之间。总之,本研究概述了当前最先进的结合位点预测方法在识别蛋白质-膜界面区域口袋方面的性能。它还强调了在预测蛋白质-膜配体结合位点方面进一步方法开发的必要性。