分子对接辅助机器学习识别潜在的肾细胞癌血管内皮生长因子受体抑制剂。

IF 2.8 4区 医学 Q2 ONCOLOGY Medical Oncology Pub Date : 2024-07-09 DOI:10.1007/s12032-024-02419-0
Vidya Sagar Jerra, Balajee Ramachandran, Shaik Shareef, Angel Carrillo-Bermejo, Rajamanikandan Sundararaj, Srinivasadesikan Venkatesan
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引用次数: 0

摘要

肾细胞癌是一种与血管内皮生长因子(VEGF)表达有关的高血管性肿瘤。血管内皮生长因子-2(VEGF-2)及其受体被确定为潜在的抗癌靶点,在生理学和病理学中发挥着至关重要的作用。通过阻断信号通路抑制血管生成被认为是一个有吸引力的靶点。本研究采用分子对接、分子动力学、机器学习算法分组数据和密度泛函理论(DFT)方法,利用针对 VEGFR-2 的药物再利用概念筛选了 150 种 FDA 批准的药物。在分子对接研究中,Pazopanib、Atogepant、Drosperinone、Revefenacin 和 Zanubrutinib 等化合物与血管内皮生长因子受体的结合能为 - 7.0 至 - 9.5 kcal/mol,在 500 ns 的分子动力学模拟中,这些化合物被观察到具有稳定性。MM/GBSA 分析表明,其值范围为 - 44.816 至 - 82.582 kcal/mol。利用机器学习方法发现,K = 10 的聚类通过高结合能和令人满意的 logP 值表现出相关性,使它们与不同聚类中的化合物区分开来。因此,已发现的化合物具有抑制 VEGFR-2 的潜力,本研究将作为实验验证这些化合物的基准。
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Molecular docking aided machine learning for the identification of potential VEGFR inhibitors against renal cell carcinoma.

Renal cell carcinoma is a highly vascular tumor associated with vascular endothelial growth factor (VEGF) expression. The Vascular Endothelial Growth Factor -2 (VEGF-2) and its receptor was identified as a potential anti-cancer target, and it plays a crucial role in physiology as well as pathology. Inhibition of angiogenesis via blocking the signaling pathway is considered an attractive target. In the present study, 150 FDA-approved drugs have been screened using the concept of drug repurposing against VEGFR-2 by employing the molecular docking, molecular dynamics, grouping data with Machine Learning algorithms, and density functional theory (DFT) approaches. The identified compounds such as Pazopanib, Atogepant, Drosperinone, Revefenacin and Zanubrutinib shown the binding energy - 7.0 to - 9.5 kcal/mol against VEGF receptor in the molecular docking studies and have been observed as stable in the molecular dynamic simulations performed for the period of 500 ns. The MM/GBSA analysis shows that the value ranging from - 44.816 to - 82.582 kcal/mol. Harnessing the machine learning approaches revealed that clustering with K = 10 exhibits the relevance through high binding energy and satisfactory logP values, setting them apart from compounds in distinct clusters. Therefore, the identified compounds are found to be potential to inhibit the VEGFR-2 and the present study will be a benchmark to validate the compounds experimentally.

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来源期刊
Medical Oncology
Medical Oncology 医学-肿瘤学
CiteScore
4.20
自引率
2.90%
发文量
259
审稿时长
1.4 months
期刊介绍: Medical Oncology (MO) communicates the results of clinical and experimental research in oncology and hematology, particularly experimental therapeutics within the fields of immunotherapy and chemotherapy. It also provides state-of-the-art reviews on clinical and experimental therapies. Topics covered include immunobiology, pathogenesis, and treatment of malignant tumors.
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