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Using random forest and decision tree models for a new vehicle prediction approach in computational toxicology

机译:在计算毒理学中使用随机森林和决策树模型作为新的车辆预测方法

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摘要

Drug vehicles are chemical carriers that provide beneficial aid to the drugs they bear. Taking advantage of their favourable properties can potentially allow the safer use of drugs that are considered highly toxic. A means for vehicle selection without experimental trial would therefore be of benefit in saving time and money for the industry. Although machine learning is increasingly used in predictive toxicology, to our knowledge there is no reported work in using machine learning techniques to model drug-vehicle relationships for vehicle selection to minimise toxicity. In this paper we demonstrate the use of data mining and machine learning techniques to process, extract and build models based on classifiers (decision trees and random forests) that allow us to predict which vehicle would be most suited to reduce a drug's toxicity. Using data acquired from the National Institute of Health's (NIH) Developmental Therapeutics Program (DTP) we propose a methodology using an area under a curve (AUC) approach that allows us to distinguish which vehicle provides the best toxicity profile for a drug and build classification models based on this knowledge. Our results show that we can achieve prediction accuracies of 80 % using random forest models whilst the decision tree models produce accuracies in the 70 % region. We consider our methodology widely applicable within the scientific domain and beyond for comprehensively building classification models for the comparison of functional relationships between two variables.
机译:毒品媒介物是化学载体,可为所携带的毒品提供有益的帮助。利用它们的有利特性,可以潜在地安全使用被认为具有剧毒的药物。因此,无需进行试验就可以选择车辆的方法将有利于为该行业节省时间和金钱。尽管机器学习已越来越多地用于预测毒理学,但据我们所知,尚无关于使用机器学习技术对药物与车辆之间的关系进行建模以进行媒介选择以最大程度降低毒性的报道。在本文中,我们演示了使用数据挖掘和机器学习技术基于分类器(决策树和随机森林)来处理,提取和构建模型,这些分类器使我们能够预测哪种媒介最适合降低药物毒性。利用从美国国立卫生研究院(NIH)的发展治疗计划(DTP)获得的数据,我们提出了一种使用曲线下面积(AUC)方法的方法,该方法可让我们区分哪种媒介物为药物提供了最佳的毒性特征并进行分类基于此知识的模型。我们的结果表明,使用随机森林模型可以达到80%的预测准确性,而决策树模型可以在70%的区域中产生准确性。我们认为我们的方法论在科学领域内以及广泛地适用于广泛建立分类模型以比较两个变量之间的功能关系。

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