Molecular Modeling Lab (MML), Department of Pharmaceutical Sciences and Drug Research, Punjabi University, Patiala, Punjab, India.
J Biomol Struct Dyn. 2022 Oct;40(17):7975-7990. doi: 10.1080/07391102.2021.1905552. Epub 2021 Mar 26.
Cytochrome P4501B1 is a ubiquitous family protein that is majorly overexpressed in tumors and is responsible for biotransformation-based inactivation of anti-cancer drugs. This inactivation marks the cause of resistance to chemotherapeutics. In the present study, integrated approaches were utilized to identify selective CYP1B1 inhibitors. To achieve this objective, we initially developed different machine learning models corresponding to two isoforms of the CYP1 family i.e. CYP1A1 and CYP1B1. Subsequently, small molecule databases including ChemBridge, Maybridge, and natural compound library were screened from the selected models of CYP1B1 and CYP1A1. The obtained CYP1B1 inhibitors were further subjected to molecular docking and ADMET analysis. The selectivity of the obtained hits for CYP1B1 over the other isoforms was also judged with molecular docking analysis. Finally, two hits were found to be the most stable which retained key interactions within the active site of CYP1B1 after the molecular dynamics simulations. Novel compound with CYP-D9 and CYP-14 IDs were found to be the most selective CYP1B1 inhibitors which may address the issue of resistance. Moreover, these compounds can be considered as safe agents for further cell-based and animal model studies. Communicated by Ramaswamy H. Sarma.
细胞色素 P4501B1 是一种普遍存在的家族蛋白,主要在肿瘤中过度表达,负责基于生物转化的抗癌药物失活。这种失活标志着对化疗药物产生耐药性的原因。在本研究中,采用了综合方法来鉴定选择性 CYP1B1 抑制剂。为了实现这一目标,我们最初为 CYP1 家族的两种同工酶 CYP1A1 和 CYP1B1 开发了不同的机器学习模型。随后,从小分子数据库中筛选出 ChemBridge、Maybridge 和天然化合物库,这些数据库是从 CYP1B1 和 CYP1A1 的选定模型中筛选出来的。获得的 CYP1B1 抑制剂进一步进行了分子对接和 ADMET 分析。通过分子对接分析还判断了获得的抑制剂对 CYP1B1 的选择性,而不是对其他同工酶的选择性。最后,发现两个命中物在分子动力学模拟后在 CYP1B1 的活性部位内保留了关键相互作用,是最稳定的。具有 CYP-D9 和 CYP-14 ID 的新型化合物被发现是最具选择性的 CYP1B1 抑制剂,可能解决耐药性问题。此外,这些化合物可以被认为是进一步进行细胞和动物模型研究的安全剂。由 Ramaswamy H. Sarma 传达。