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Integrative approaches for predicting in vivo effects of chemicals from their structural descriptors and the results of short-term biological assays

机译:通过结构描述符和短期生物学测定结果预测化学物质在体内的作用的综合方法

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摘要

Cheminformatics approaches such as Quantitative Structure Activity Relationship (QSAR) modeling have been used traditionally for predicting chemical toxicity. In recent years, high throughput biological assays have been increasingly employed to elucidate mechanisms of chemical toxicity and predict toxic effects of chemicals in vivo. The data generated in such assays can be considered as biological descriptors of chemicals that can be combined with molecular descriptors and employed in QSAR modeling to improve the accuracy of toxicity prediction. In this review, we discuss several approaches for integrating chemical and biological data for predicting biological effects of chemicals in vivo and compare their performance across several data sets. We conclude that while no method consistently shows superior performance, the integrative approaches rank consistently among the best yet offer enriched interpretation of models over those built with either chemical or biological data alone. We discuss the outlook for such interdisciplinary methods and offer recommendations to further improve the accuracy and interpretability of computational models that predict chemical toxicity.
机译:传统上,化学定量方法(例如定量结构活性关系(QSAR)建模)已用于预测化学毒性。近年来,高通量生物学测定法已被越来越多地用于阐明化学毒性的机理并预测化学物质在体内的毒性作用。在这种测定中产生的数据可以被认为是化学物质的生物学描述物,可以与分子描述物结合起来并用于QSAR建模中,以提高毒性预测的准确性。在这篇综述中,我们讨论了整合化学和生物学数据以预测化学物质在体内的生物学效应的几种方法,并比较了它们在多个数据集中的性能。我们得出的结论是,尽管没有方法能够始终如一地显示出优异的性能,但与仅使用化学或生物学数据构建的方法相比,集成方法始终是最好的方法之一,但却能提供丰富的模型解释。我们讨论了这种跨学科方法的前景,并提供了建议,以进一步提高预测化学毒性的计算模型的准确性和可解释性。

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