登革病毒潜在抑制剂的机器学习和分子对接预测。

IF 3.8 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY Frontiers in Chemistry Pub Date : 2024-12-24 eCollection Date: 2024-01-01 DOI:10.3389/fchem.2024.1510029
George Hanson, Joseph Adams, Daveson I B Kepgang, Luke S Zondagh, Lewis Tem Bueh, Andy Asante, Soham A Shirolkar, Maureen Kisaakye, Hem Bondarwad, Olaitan I Awe
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引用次数: 0

摘要

导言:由于其媒介蚊子——埃及伊蚊和白纹伊蚊的广泛分布,登革热继续构成全球威胁。虽然有世卫组织批准的denvaxia疫苗以及Balapiravir和Celgosivir等抗病毒治疗方法,但耐药性、疗效降低和治疗费用高等挑战仍然存在。本研究旨在利用包括机器学习和分子对接技术在内的综合药物发现方法,识别登革热病毒(DENV)的新型潜在抑制剂。方法:利用PubChem (AID: 651640)中21250个生物活性化合物的数据集,以及使用PaDEL生成的1444个描述符,我们训练了各种模型,如支持向量机、随机森林、k近邻、逻辑回归和高斯Naïve贝叶斯。使用表现最好的模型预测活性化合物,然后使用AutoDock Vina进行分子对接。通过蛋白质-配体相互作用研究、分子动力学(MD)模拟和结合自由能计算,评估了选定化合物的详细相互作用、毒性、稳定性和构象变化。结果:我们采用Logistic回归算法实现了稳健的三数据集分割策略,准确率达到94%。该模型成功预测了18种已知的DENV抑制剂,其中11种被确定为活性,为进一步探索锌和EANPDB数据库中的2683种新化合物铺平了道路。随后进行了NS2B/NS3蛋白酶的分子对接研究,这是病毒复制所必需的酶。ZINC95485940, ZINC38628344, 2',4'-二羟基查尔酮和ZINC14441502分别表现出-8.1,-8.5,-8.6和-8.0 kcal/mol的高结合亲和力,在活性位点与His51, Ser135, Leu128, Pro132, Ser131, Tyr161和Asp75具有稳定的相互作用,这是参与抑制的关键残基。分子动力学模拟结合MMPBSA进一步阐明了其稳定性,使其成为有前景的药物开发候选者。结论:总的来说,这种结合了机器学习、分子对接和动力学模拟的综合方法,突出了计算工具在药物发现中的优势和实用性。这为快速鉴定和开发新型DENV抗病毒药物提供了一条有希望的途径。这些在计算机上的发现为未来的实验验证和旨在对抗DENV的体外研究提供了坚实的基础。
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Machine learning and molecular docking prediction of potential inhibitors against dengue virus.

Introduction: Dengue Fever continues to pose a global threat due to the widespread distribution of its vector mosquitoes, Aedes aegypti and Aedes albopictus. While the WHO-approved vaccine, Dengvaxia, and antiviral treatments like Balapiravir and Celgosivir are available, challenges such as drug resistance, reduced efficacy, and high treatment costs persist. This study aims to identify novel potential inhibitors of the Dengue virus (DENV) using an integrative drug discovery approach encompassing machine learning and molecular docking techniques.

Method: Utilizing a dataset of 21,250 bioactive compounds from PubChem (AID: 651640), alongside a total of 1,444 descriptors generated using PaDEL, we trained various models such as Support Vector Machine, Random Forest, k-nearest neighbors, Logistic Regression, and Gaussian Naïve Bayes. The top-performing model was used to predict active compounds, followed by molecular docking performed using AutoDock Vina. The detailed interactions, toxicity, stability, and conformational changes of selected compounds were assessed through protein-ligand interaction studies, molecular dynamics (MD) simulations, and binding free energy calculations.

Results: We implemented a robust three-dataset splitting strategy, employing the Logistic Regression algorithm, which achieved an accuracy of 94%. The model successfully predicted 18 known DENV inhibitors, with 11 identified as active, paving the way for further exploration of 2683 new compounds from the ZINC and EANPDB databases. Subsequent molecular docking studies were performed on the NS2B/NS3 protease, an enzyme essential in viral replication. ZINC95485940, ZINC38628344, 2',4'-dihydroxychalcone and ZINC14441502 demonstrated a high binding affinity of -8.1, -8.5, -8.6, and -8.0 kcal/mol, respectively, exhibiting stable interactions with His51, Ser135, Leu128, Pro132, Ser131, Tyr161, and Asp75 within the active site, which are critical residues involved in inhibition. Molecular dynamics simulations coupled with MMPBSA further elucidated the stability, making it a promising candidate for drug development.

Conclusion: Overall, this integrative approach, combining machine learning, molecular docking, and dynamics simulations, highlights the strength and utility of computational tools in drug discovery. It suggests a promising pathway for the rapid identification and development of novel antiviral drugs against DENV. These in silico findings provide a strong foundation for future experimental validations and in-vitro studies aimed at fighting DENV.

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来源期刊
Frontiers in Chemistry
Frontiers in Chemistry Chemistry-General Chemistry
CiteScore
8.50
自引率
3.60%
发文量
1540
审稿时长
12 weeks
期刊介绍: Frontiers in Chemistry is a high visiblity and quality journal, publishing rigorously peer-reviewed research across the chemical sciences. Field Chief Editor Steve Suib at the University of Connecticut is supported by an outstanding Editorial Board of international researchers. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to academics, industry leaders and the public worldwide. Chemistry is a branch of science that is linked to all other main fields of research. The omnipresence of Chemistry is apparent in our everyday lives from the electronic devices that we all use to communicate, to foods we eat, to our health and well-being, to the different forms of energy that we use. While there are many subtopics and specialties of Chemistry, the fundamental link in all these areas is how atoms, ions, and molecules come together and come apart in what some have come to call the “dance of life”. All specialty sections of Frontiers in Chemistry are open-access with the goal of publishing outstanding research publications, review articles, commentaries, and ideas about various aspects of Chemistry. The past forms of publication often have specific subdisciplines, most commonly of analytical, inorganic, organic and physical chemistries, but these days those lines and boxes are quite blurry and the silos of those disciplines appear to be eroding. Chemistry is important to both fundamental and applied areas of research and manufacturing, and indeed the outlines of academic versus industrial research are also often artificial. Collaborative research across all specialty areas of Chemistry is highly encouraged and supported as we move forward. These are exciting times and the field of Chemistry is an important and significant contributor to our collective knowledge.
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