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通过基于机器学习的虚拟筛选、分子对接和生物分子模拟研究鉴定新型NLRP3抑制剂作为癫痫的治疗选择。

Identification of novel NLRP3 inhibitors as therapeutic options for epilepsy by machine learning-based virtual screening, molecular docking and biomolecular simulation studies.

作者信息

Zulfat Maryam, Hakami Mohammed Ageeli, Hazazi Ali, Mahmood Arif, Khalid Asaad, Alqurashi Roaya S, Abdalla Ashraf N, Hu Junjian, Wadood Abdul, Huang Xiaoyun

机构信息

Department of Biochemistry, Computational Medicinal Chemistry Laboratory, Abdul Wali Khan University, Mardan, Pakistan.

Department of Clinical Laboratory Sciences, College of Applied Medical Sciences, Shaqra University, Al-Quwayiyah-19257, Riyadh, Saudi Arabia.

出版信息

Heliyon. 2024 Jul 9;10(15):e34410. doi: 10.1016/j.heliyon.2024.e34410. eCollection 2024 Aug 15.

Abstract

The NOD-Like Receptor Protein-3 (NLRP3) inflammasome is a key therapeutic target for the treatment of epilepsy and has been reported to regulate inflammation in several neurological diseases. In this study, a machine learning-based virtual screening strategy has investigated candidate active compounds that inhibit the NLRP3 inflammasome. As machine learning-based virtual screening has the potential to accurately predict protein-ligand binding and reduce false positives outcomes compared to traditional virtual screening. Briefly, classification models were created using Support Vector Machine (SVM), Random Forest (RF), and K-Nearest Neighbor (KNN) machine learning methods. To determine the most crucial features of a molecule's activity, feature selection was carried out. By utilizing 10-fold cross-validation, the created models were analyzed. Among the generated models, the RF model obtained the best results as compared to others. Therefore, the RF model was used as a screening tool against the large chemical databases. Molecular operating environment (MOE) and PyRx software's were applied for molecular docking. Also, using the Amber Tools program, molecular dynamics (MD) simulation of potent inhibitors was carried out. The results showed that the KNN, SVM, and RF accuracy was 0.911 %, 0.906 %, and 0.946 %, respectively. Moreover, the model has shown sensitivity of 0.82 %, 0.78 %, and 0.86 % and specificity of 0.95 %, 0.96 %, and 0.98 % respectively. By applying the model to the ZINC and South African databases, we identified 98 and 39 compounds, respectively, potentially possessing -NLRP3 activity. Also, a molecular docking analysis produced ten ZINC and seven South African compounds that has comparable binding affinities to the reference drug. Moreover, MD analysis of the two complexes revealed that the two compounds (ZINC000009601348 and SANC00225) form stable complexes with varying amounts of binding energy. The in-silico studies indicate that both compounds most likely display their inhibitory effect by inhibiting the NLRP3 protein.

摘要

核苷酸结合寡聚化结构域样受体蛋白3(NLRP3)炎性小体是治疗癫痫的关键治疗靶点,据报道它在几种神经疾病中调节炎症。在本研究中,一种基于机器学习的虚拟筛选策略研究了抑制NLRP3炎性小体的候选活性化合物。由于与传统虚拟筛选相比,基于机器学习的虚拟筛选有潜力准确预测蛋白质-配体结合并减少假阳性结果。简而言之,使用支持向量机(SVM)、随机森林(RF)和K近邻(KNN)机器学习方法创建分类模型。为了确定分子活性的最关键特征,进行了特征选择。通过利用10折交叉验证,对创建的模型进行分析。在生成的模型中,RF模型与其他模型相比获得了最佳结果。因此,RF模型被用作针对大型化学数据库的筛选工具。应用分子操作环境(MOE)和PyRx软件进行分子对接。此外,使用Amber Tools程序对强效抑制剂进行分子动力学(MD)模拟。结果表明,KNN、SVM和RF的准确率分别为0.911%、0.906%和0.946%。此外,该模型的灵敏度分别为0.82%、0.78%和0.86%,特异性分别为0.95%、0.96%和0.98%。通过将该模型应用于ZINC和南非数据库,我们分别鉴定出98种和39种可能具有NLRP3活性的化合物。此外,分子对接分析产生了10种ZINC化合物和7种南非化合物,它们与参考药物具有相当的结合亲和力。此外,对这两种复合物的MD分析表明,这两种化合物(ZINC000009601348和SANC00225)形成了具有不同结合能的稳定复合物。计算机模拟研究表明,这两种化合物最有可能通过抑制NLRP3蛋白发挥其抑制作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9258/11336274/a8b6fdfbbf58/gr1.jpg

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