Mahmoudi Ali, Butler Alexandra E, Banach Maciej, Jamialahmadi Tannaz, Sahebkar Amirhossein
Student Research Committee, Faculty of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran; Department of Medical Biotechnology and Nanotechnology, Faculty of Medicine, Mashhad University of Medical Sciences, Iran.
Research Department, Royal College of Surgeons in Ireland Bahrain, Adliya, Bahrain.
Curr Probl Cardiol. 2023 Jun;48(6):101660. doi: 10.1016/j.cpcardiol.2023.101660. Epub 2023 Feb 24.
The leading cause of atherosclerotic cardiovascular disease (ASCVD) is elevated low-density lipoprotein cholesterol (LDL-C). Proprotein convertase subtilisin/kexin type 9 (PCSK9) attaches to the domain of LDL receptor (LDLR), diminishing LDL-C influx and LDLR cell surface presentation in hepatocytes, resulting in higher circulating LDL-C levels. PCSK9 dysfunction has been linked to lower levels of plasma LDLC and a decreased risk of coronary heart disease (CHD). Herein, using virtual screening tools, we aimed to identify a potent small-molecule PCSK9 inhibitor in compounds that are currently being studied in clinical trials. We first performed chemical absorption, distribution, metabolism, excretion, and toxicity (ADMET) filtering of 9800 clinical trial compounds obtained from the ZINC 15 database using Lipinski's rule of 5 and achieved 3853 compounds. Two-dimensional (2D) quantitative structure-activity relationship (QSAR) was initiated by computing molecular descriptors and selecting important descriptors of 23 PCSK9 inhibitors. Multivariate calibration was performed with the partial least square regression (PLS) method with 18 compounds for training to design the QSAR model and 5 compounds for the test set to assess the model. The best latent variables (LV) (LV=6) with the lowest value of Root-Mean-Square Error of Cross-Validation (RMSECV) of 0.48 and leave-one-out cross-validation correlation coefficient (RCV) = 0.83 were obtained for the QSAR model. The low RMSEC (0.21) with high R²cal (0.966) indicates the probability of fit between the experimental data and the calibration model. Using QSAR analysis of 3853 compounds, 2635 had a pIC<1 and were considered for pharmacophore screening. The PHASE module (a complete package for pharmacophore modeling) designed the pharmacophore hypothesis through multiple ligands. The top 14 compounds (pIC>1) were defined as active, whereas 9 (pIC<1) were considered as an inactive set. Three five-point pharmacophore hypotheses achieved the highest score: DHHRR1, DHHRR2, and DHRRR1. The highest and best model with survival scores (5.365) was DHHRR1, comprising 1 hydrogen donor (D), 2 hydrophobic groups (H), and 2 rings of aromatic (R) features. We selected the molecules with a higher 1.5 fitness score (257 compounds) in pharmacophore screening (DHHRR1) for molecular docking screening. Molecular docking indicates that ZINC000051951669, with a binding affinity: of -13.2 kcal/mol and 2 H-bonds, has the highest binding to the PCSK9 protein. ZINC000011726230 with energy binding: -11.4 kcal/mol and 3 H-bonds, ZINC000068248147 with binding affinity: -10.7 kcal/mol and 1 H-bond, ZINC000029134440 with a binding affinity: -10.6 kcal/mol and 4 H-bonds were ranked next, respectively. To conclude, the archived molecules identified as inhibitory PCSK9 candidates, and especially ZINC000051951669 may therefore significantly inhibit PCSK9 and should be considered in the newly designed trials.
动脉粥样硬化性心血管疾病(ASCVD)的主要原因是低密度脂蛋白胆固醇(LDL-C)升高。前蛋白转化酶枯草溶菌素/kexin 9型(PCSK9)附着于低密度脂蛋白受体(LDLR)结构域,减少肝细胞中LDL-C内流和LDLR细胞表面表达,导致循环LDL-C水平升高。PCSK9功能障碍与较低的血浆LDL-C水平及冠心病(CHD)风险降低有关。在此,我们使用虚拟筛选工具,旨在从目前正在临床试验中研究的化合物中鉴定出一种有效的小分子PCSK9抑制剂。我们首先使用Lipinski的五规则对从ZINC 15数据库获得的9800种临床试验化合物进行化学吸收、分布、代谢、排泄和毒性(ADMET)筛选,得到3853种化合物。通过计算分子描述符并选择23种PCSK9抑制剂的重要描述符,启动二维(2D)定量构效关系(QSAR)研究。使用偏最小二乘回归(PLS)方法对18种化合物进行训练以设计QSAR模型,并使用5种化合物作为测试集来评估该模型。QSAR模型获得了最佳潜在变量(LV)(LV = 6),交叉验证均方根误差(RMSECV)最低值为0.48,留一法交叉验证相关系数(RCV)= 0.83。低RMSEC(0.21)和高R²cal(0.966)表明实验数据与校准模型之间拟合的可能性。通过对3853种化合物进行QSAR分析,2635种化合物的pIC<1,并被考虑用于药效团筛选。PHASE模块(药效团建模的完整软件包)通过多个配体设计药效团假设。前14种化合物(pIC>1)被定义为活性化合物,而9种(pIC<1)被视为非活性化合物。三种五点药效团假设得分最高:DHHRR1、DHHRR2和DHRRR1。得分最高且最佳的具有生存得分(5.365)的模型是DHHRR1,包含1个氢键供体(D)、2个疏水基团(H)和2个芳香环(R)特征。我们在药效团筛选(DHHRR1)中选择了适应性得分较高(1.5)的分子(257种化合物)进行分子对接筛选。分子对接表明,结合亲和力为-13.2 kcal/mol且有2个氢键的ZINC000051951669与PCSK9蛋白的结合力最强。结合能为-11.4 kcal/mol且有3个氢键的ZINC000011726230、结合亲和力为-10.7 kcal/mol且有1个氢键的ZINC000068248147、结合亲和力为-10.6 kcal/mol且有4个氢键的ZINC000029134440分别位列其后。总之,所鉴定的存档分子被确定为PCSK9抑制候选物,尤其是ZINC000051951669可能因此显著抑制PCSK9,应在新设计的试验中予以考虑。