类药物分子的部分原子电荷自动分配:快速背包方法。

IF 1.5 4区 生物学 Q4 BIOCHEMICAL RESEARCH METHODS
Algorithms for Molecular Biology Pub Date : 2019-02-05 eCollection Date: 2019-01-01 DOI:10.1186/s13015-019-0138-7
Martin S Engler, Bertrand Caron, Lourens Veen, Daan P Geerke, Alan E Mark, Gunnar W Klau
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引用次数: 8

摘要

计算药物设计的一个关键因素是一致性和可靠性,用它可以描述各种分子之间的分子间相互作用。本文提出了一种基于已知分布的高效、可靠、自动分配原子部分电荷的方法。我们正式引入了分子电荷分配问题,其任务是从给定查询分子的每个原子的一组候选电荷中选择一个电荷。在先前参数化的分子数据库中,电荷伴随着一个分数,这个分数取决于它们在相似邻域(化学环境)中观察到的频率。其目的是分配电荷,使总电荷等于在误差范围内的已知目标电荷,同时使电荷分数的总和最大化。我们证明了这个问题是一个变体的多项选择背包问题,因此是弱NP完全的。我们提出了基于整数线性规划和伪多项式时间动态规划算法的解决方案。我们证明,对未包含在数据库中的新分子获得的结果与执行显式电荷计算获得的结果相当,同时将确定分子部分电荷的时间从数小时甚至数天减少到一秒以下。我们的软件是公开的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated partial atomic charge assignment for drug-like molecules: a fast knapsack approach.

Automated partial atomic charge assignment for drug-like molecules: a fast knapsack approach.

Automated partial atomic charge assignment for drug-like molecules: a fast knapsack approach.

Automated partial atomic charge assignment for drug-like molecules: a fast knapsack approach.

A key factor in computational drug design is the consistency and reliability with which intermolecular interactions between a wide variety of molecules can be described. Here we present a procedure to efficiently, reliably and automatically assign partial atomic charges to atoms based on known distributions. We formally introduce the molecular charge assignment problem, where the task is to select a charge from a set of candidate charges for every atom of a given query molecule. Charges are accompanied by a score that depends on their observed frequency in similar neighbourhoods (chemical environments) in a database of previously parameterised molecules. The aim is to assign the charges such that the total charge equals a known target charge within a margin of error while maximizing the sum of the charge scores. We show that the problem is a variant of the well-studied multiple-choice knapsack problem and thus weakly NP -complete. We propose solutions based on Integer Linear Programming and a pseudo-polynomial time Dynamic Programming algorithm. We demonstrate that the results obtained for novel molecules not included in the database are comparable to the ones obtained performing explicit charge calculations while decreasing the time to determine partial charges for a molecule from hours or even days to below a second. Our software is openly available.

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来源期刊
Algorithms for Molecular Biology
Algorithms for Molecular Biology 生物-生化研究方法
CiteScore
2.40
自引率
10.00%
发文量
16
审稿时长
>12 weeks
期刊介绍: Algorithms for Molecular Biology publishes articles on novel algorithms for biological sequence and structure analysis, phylogeny reconstruction, and combinatorial algorithms and machine learning. Areas of interest include but are not limited to: algorithms for RNA and protein structure analysis, gene prediction and genome analysis, comparative sequence analysis and alignment, phylogeny, gene expression, machine learning, and combinatorial algorithms. Where appropriate, manuscripts should describe applications to real-world data. However, pure algorithm papers are also welcome if future applications to biological data are to be expected, or if they address complexity or approximation issues of novel computational problems in molecular biology. Articles about novel software tools will be considered for publication if they contain some algorithmically interesting aspects.
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