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Empirical Scoring Functions for Structure-Based Virtual Screening: Applications, Critical Aspects, and Challenges

机译:基于结构的虚拟筛选的经验评分函数:应用程序,关键方面和挑战

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摘要

Structure-based virtual screening (VS) is a widely used approach that employs the knowledge of the three-dimensional structure of the target of interest in the design of new lead compounds from large-scale molecular docking experiments. Through the prediction of the binding mode and affinity of a small molecule within the binding site of the target of interest, it is possible to understand important properties related to the binding process. Empirical scoring functions are widely used for pose and affinity prediction. Although pose prediction is performed with satisfactory accuracy, the correct prediction of binding affinity is still a challenging task and crucial for the success of structure-based VS experiments. There are several efforts in distinct fronts to develop even more sophisticated and accurate models for filtering and ranking large libraries of compounds. This paper will cover some recent successful applications and methodological advances, including strategies to explore the ligand entropy and solvent effects, training with sophisticated machine-learning techniques, and the use of quantum mechanics. Particular emphasis will be given to the discussion of critical aspects and further directions for the development of more accurate empirical scoring functions.
机译:基于结构的虚拟筛选(VS)是一种广泛使用的方法,该方法利用目标分子的三维结构知识来设计大规模分子对接实验中的新先导化合物。通过预测目标靶标结合位点内小分子的结合方式和亲和力,可以了解与结合过程有关的重要特性。经验计分功能广泛用于姿势和亲和力预测。尽管姿势预测以令人满意的精度执行,但是结合亲和力的正确预测仍然是一项艰巨的任务,对于基于结构的VS实验的成功至关重要。在不同的领域中进行了数项努力,以开发甚至更复杂,更准确的模型来过滤和排序大型化合物库。本文将介绍一些近期成功的应用和方法学进展,包括探索配体熵和溶剂效应的策略,使用复杂的机器学习技术进行培训以及使用量子力学的策略。将特别着重于关键方面的讨论和进一步的方向,以开发更准确的经验评分函数。

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