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Automated ligand-and structure-based protocol for in silico prediction of human serum albumin binding

机译:用于计算机模拟人血清白蛋白结合的自动化基于配体和结构的方案

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摘要

Plasma protein binding has a profound impact on the pharmacokinetic and pharmacodynamic properties of many drug candidates and is thus an integral component of drug discovery. Nevertheless, extant methods to examine small-molecule interactions with plasma protein have various limitations, thus creating a need for alternative methods. Herein we present a comprehensive and cross-validated in silico workflow for the prediction of small-molecule binding to Human Serum Albumin (HSA), the most ubiquitous plasma protein. This protocol reliably predicts small-molecule interactions with HSA, including a binding affinity calculation using multiple linear regression methods, binding site prediction using a naive-Bayes classifier, and a three-dimensional binding pose using induced fit docking. Furthermore, this workflow is implemented in a portable and automated format that can be downloaded and used by other end users, either as is or with customization.
机译:血浆蛋白结合对许多候选药物的药代动力学和药效学性质具有深远影响,因此是药物发现不可或缺的组成部分。然而,用于检查与血浆蛋白的小分子相互作用的现有方法具有各种局限性,因此产生了对替代方法的需求。本文中,我们介绍了一种全面且交叉验证的计算机模拟工作流程,用于预测与人血清白蛋白(HSA)(一种最普遍存在的血浆蛋白)的小分子结合。该协议可可靠地预测与HSA的小分子相互作用,包括使用多种线性回归方法的结合亲和力计算,使用朴素贝叶斯分类器的结合位点预测以及使用诱导拟合对接的三维结合姿势。此外,此工作流以可移植的自动化格式实现,可以由其他最终用户按原样或自定义下载和使用。

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