利用深度学习和分子建模技术从头设计和虚拟筛选潜在的 Bcr-Abl 酪氨酸激酶抑制剂

А. М. Андрианов, К. В. Фурс, А. Д. Карпенко, Т. Д. Войтко, А. В. Тузиков, A. M. Andrianov, K. V. Furs, A. D. Karpenko, Timofey D. Vaitko, Corresponding Member, A. Tuzikov
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引用次数: 0

摘要

我们采用深度学习和分子建模技术等综合计算方法,对在慢性髓性白血病(CML)发病机制中起关键作用的Bcr-Abl酪氨酸激酶具有高潜在抑制活性的小分子化合物进行了全新设计和虚拟筛选。结果,根据计算数据,我们确定了 5 种化合物,它们与该酶的结合自由能值较低,与伊马替尼、尼洛替尼和泊纳替尼(临床上广泛用于治疗 CML 患者的抗癌药物)的结合自由能值相当。研究表明,这些化合物能够与 Bcr-Abl 酪氨酸激酶及其突变体 T315I 的 ATP 结合位点形成稳定的复合物,这一点通过分析其结合亲和力和分子间相互作用的能量稳定曲线得到了证实。根据所获得的数据,这些由深度学习神经网络生成的化合物被认为有望形成基本结构,用于开发治疗慢性骨髓性白血病患者的有效新药。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
De novo design and virtual screening of potential Bcr-Abl tyrosine kinase inhibitors using deep learning and molecular modeling technologies
De novo design and virtual screening of small-molecule compounds with a high potential inhibitory activity against the Bcr-Abl tyrosine kinase playing a key role in the pathogenesis of chronic myeloid leukemia (CML) were carried out by an integrated computational approach including technologies of deep learning and molecular modeling. As a result, according to the calculation data we identified 5 compounds exhibiting low values of binding free energy to the enzyme comparable with those predicted for imatinib, nilotinib and ponatinib, anticancer drugs widely used in the clinic to treat patients with CML. It was shown that these compounds are able to form stable complexes with the ATP-binding sites of the Bcr-Abl tyrosine kinase and its mutant form T315I, which is confirmed by the analysis of the profiles of binding affinity and intermolecular interactions responsible for their energy stabilization. Based on the obtained data, these compounds, which have been generated by the deep learning neural network, are assumed to form promising basic structures for development of new effective drugs for treatment of patients with CML.
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