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FitScore:一种快速的基于机器学习的 3D 虚拟筛选富集评分方法。

FitScore: a fast machine learning-based score for 3D virtual screening enrichment.

机构信息

Pfizer, Inc., 10777 Science Center Drive, San Diego, CA, 92121, USA.

出版信息

J Comput Aided Mol Des. 2024 Aug 16;38(1):29. doi: 10.1007/s10822-024-00570-4.

Abstract

Enhancing virtual screening enrichment has become an urgent problem in computational chemistry, driven by increasingly large databases of commercially available compounds, without a commensurate drop in in vitro screening costs. Docking these large databases is possible with cloud-scale computing. However, rapid docking necessitates compromises in scoring, often leading to poor enrichment and an abundance of false positives in docking results. This work describes a new scoring function composed of two parts - a knowledge-based component that predicts the probability of a particular atom type being in a particular receptor environment, and a tunable weight matrix that converts the probability predictions into a dimensionless score suitable for virtual screening enrichment. This score, the FitScore, represents the compatibility between the ligand and the binding site and is capable of a high degree of enrichment across standardized docking test sets.

摘要

提高虚拟筛选的富集度已经成为计算化学中的一个紧迫问题,这是由于市售化合物的数据库越来越大,而体外筛选的成本并没有相应降低。通过云计算可以对这些大型数据库进行对接。然而,快速对接需要在评分方面做出妥协,这往往导致富集效果不佳,对接结果中出现大量假阳性。这项工作描述了一种新的评分函数,它由两部分组成 - 一个基于知识的组件,用于预测特定原子类型处于特定受体环境中的概率,以及一个可调权重矩阵,用于将概率预测转换为适合虚拟筛选富集的无量纲分数。这个分数,即 FitScore,代表配体和结合位点之间的兼容性,并且能够在标准化对接测试集中实现高度的富集。

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