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基于分子动力学的量子化学突变方法提高与蛋白质突变相关的药物敏感性变化预测能力。

Improvement in predicting drug sensitivity changes associated with protein mutations using a molecular dynamics based alchemical mutation method.

机构信息

Graduate School of Medicine, Kyoto University, 53 Shogoin-Kawaharacho, Sakyo-ku, Kyoto, Japan.

Medical Sciences Innovation Hub Program, RIKEN, 1-7-22, Suehiro-cho, Tsurumi-ku, Yokohama, Kanagawa, Japan.

出版信息

Sci Rep. 2020 Feb 7;10(1):2161. doi: 10.1038/s41598-020-58877-9.

Abstract

While molecular-targeted drugs have demonstrated strong therapeutic efficacy against diverse diseases such as cancer and infection, the appearance of drug resistance associated with genetic variations in individual patients or pathogens has severely limited their clinical efficacy. Therefore, precision medicine approaches based on the personal genomic background provide promising strategies to enhance the effectiveness of molecular-targeted therapies. However, identifying drug resistance mutations in individuals by combining DNA sequencing and in vitro analyses is generally time consuming and costly. In contrast, in silico computation of protein-drug binding free energies allows for the rapid prediction of drug sensitivity changes associated with specific genetic mutations. Although conventional alchemical free energy computation methods have been used to quantify mutation-induced drug sensitivity changes in some protein targets, these methods are often adversely affected by free energy convergence. In this paper, we demonstrate significant improvements in prediction performance and free energy convergence by employing an alchemical mutation protocol, MutationFEP, which directly estimates binding free energy differences associated with protein mutations in three types of a protein and drug system. The superior performance of MutationFEP appears to be attributable to its more-moderate perturbation scheme. Therefore, this study provides a deeper level of insight into computer-assisted precision medicine.

摘要

虽然分子靶向药物在癌症和感染等多种疾病的治疗中显示出强大的疗效,但由于个体患者或病原体的遗传变异导致的药物耐药性的出现,严重限制了它们的临床疗效。因此,基于个体基因组背景的精准医学方法为提高分子靶向治疗的效果提供了有前景的策略。然而,通过 DNA 测序和体外分析相结合来识别个体中的药物耐药性突变通常既耗时又昂贵。相比之下,通过计算蛋白质-药物结合自由能来计算药物敏感性的变化可以快速预测与特定基因突变相关的药物敏感性变化。尽管传统的基于热力学的自由能计算方法已被用于量化一些蛋白质靶标中突变诱导的药物敏感性变化,但这些方法往往受到自由能收敛的不利影响。在本文中,我们通过采用一种名为 MutationFEP 的直接估计三种蛋白质和药物系统中与蛋白质突变相关的结合自由能差异的基于热力学的自由能计算方法,展示了在预测性能和自由能收敛方面的显著改进。MutationFEP 的优越性能似乎归因于其更温和的扰动方案。因此,本研究为计算机辅助精准医学提供了更深入的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6807/7005789/ed24385f3b62/41598_2020_58877_Fig1_HTML.jpg

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