过度生产和选择,还是通过构型空间优化确定最佳分子描述子子集?生态毒理学终点预测的应用。

IF 2.8 4区 医学 Q3 CHEMISTRY, MEDICINAL
Luis A García-González, Yovani Marrero-Ponce, Carlos A Brizuela, César R García-Jacas
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引用次数: 2

摘要

在药物发现过程中,预测化合物可能的生物活性(或性质)是一项基本且具有挑战性的任务。当前的计算方法旨在通过使用深度学习(DL)方法来提高其预测准确性。然而,非基于深度学习的方法用于中小型化学数据集已被证明是最适合的。该方法首先计算分子描述符的初始域,然后应用不同的特征选择算法,最后建立一个或多个预测模型。在这里,我们证明了这种传统方法可能会遗漏相关信息,因为它假设MDs的初始范围包含了各自学习任务的所有相关方面。我们认为这种限制主要是因为在计算MDs的算法中使用的参数的约束区间,这些参数定义了描述符配置空间(DCS)。我们建议在开放CDS方法中放宽这些限制,以便最初可以考虑更大的MDs范围。我们将MDs的生成建模为一个多准则优化问题,并使用标准遗传算法的变体来解决它。适应度函数作为一种新的分量,通过Choquet积分对四个准则进行聚合计算。实验结果表明,所提出的方法通过改进大多数基准化学数据集中最先进的方法产生了有意义的DCS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Overproduce and select, or determine optimal molecular descriptor subset via configuration space optimization? Application to the prediction of ecotoxicological endpoints.

Overproduce and select, or determine optimal molecular descriptor subset via configuration space optimization? Application to the prediction of ecotoxicological endpoints.

Predicting the likely biological activity (or property) of compounds is a fundamental and challenging task in the drug discovery process. Current computational methodologies aim to improve their predictive accuracies by using deep learning (DL) approaches. However, non-DL based approaches for small- and medium-sized chemical datasets have demonstrated to be most suitable for. In this approach, an initial universe of molecular descriptors (MDs) is first calculated, then different feature selection algorithms are applied, and finally, one or several predictive models are built. Herein we demonstrate that this traditional approach may miss relevant information by assuming that the initial universe of MDs codifies all relevant aspects for the respective learning task. We argue that this limitation is mainly because of the constrained intervals of the parameters used in the algorithms that compute MDs, parameters that define the Descriptor Configuration Space (DCS). We propose to relax these constraints in an open CDS approach, so that a larger universe of MDs can be initially considered. We model the generation of MDs as a multicriteria optimization problem and tackle it with a variant of the standard genetic algorithm. As a novel component, the fitness function is computed by aggregating four criteria via the Choquet integral. Experimental results show that the proposed approach generates a meaningful DCS by improving state-of-the-art approaches in most of the benchmarking chemical datasets accounted for.

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来源期刊
Molecular Informatics
Molecular Informatics CHEMISTRY, MEDICINAL-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
7.30
自引率
2.80%
发文量
70
审稿时长
3 months
期刊介绍: Molecular Informatics is a peer-reviewed, international forum for publication of high-quality, interdisciplinary research on all molecular aspects of bio/cheminformatics and computer-assisted molecular design. Molecular Informatics succeeded QSAR & Combinatorial Science in 2010. Molecular Informatics presents methodological innovations that will lead to a deeper understanding of ligand-receptor interactions, macromolecular complexes, molecular networks, design concepts and processes that demonstrate how ideas and design concepts lead to molecules with a desired structure or function, preferably including experimental validation. The journal''s scope includes but is not limited to the fields of drug discovery and chemical biology, protein and nucleic acid engineering and design, the design of nanomolecular structures, strategies for modeling of macromolecular assemblies, molecular networks and systems, pharmaco- and chemogenomics, computer-assisted screening strategies, as well as novel technologies for the de novo design of biologically active molecules. As a unique feature Molecular Informatics publishes so-called "Methods Corner" review-type articles which feature important technological concepts and advances within the scope of the journal.
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