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基于药物的生物学、化学和表型特性,使用机器学习模型预测药物的神经不良药物反应。

Predicting neurological Adverse Drug Reactions based on biological, chemical and phenotypic properties of drugs using machine learning models.

机构信息

Department of Bioscience and Biotechnology, Banasthali University, Tonk, Rajasthan, India.

Bioinformatics Programme, Centre for Biological Sciences, Central University of South Bihar, BIT Campus, Patna, Bihar, India.

出版信息

Sci Rep. 2017 Apr 13;7(1):872. doi: 10.1038/s41598-017-00908-z.

DOI:10.1038/s41598-017-00908-z
PMID:28408735
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5429831/
Abstract

Adverse drug reactions (ADRs) have become one of the primary reasons for the failure of drugs and a leading cause of deaths. Owing to the severe effects of ADRs, there is an urgent need for the generation of effective models which can accurately predict ADRs during early stages of drug development based on integration of various features of drugs. In the current study, we have focused on neurological ADRs and have used various properties of drugs that include biological properties (targets, transporters and enzymes), chemical properties (substructure fingerprints), phenotypic properties (side effects (SE) and therapeutic indications) and a combinations of the two and three levels of features. We employed relief-based feature selection technique to identify relevant properties and used machine learning approach to generated learned model systems which would predict neurological ADRs prior to preclinical testing. Additionally, in order to explain the efficiency and applicability of the models, we tested them to predict the ADRs for already existing anti-Alzheimer drugs and uncharacterized drugs, respectively in side effect resource (SIDER) database. The generated models were highly accurate and our results showed that the models based on chemical (accuracy 93.20%), phenotypic (accuracy 92.41%) and combination of three properties (accuracy 94.18%) were highly accurate while the models based on biological properties (accuracy 82.11%) were highly informative.

摘要

药物不良反应(ADRs)已成为药物失败的主要原因之一,也是导致死亡的主要原因之一。由于 ADR 的严重影响,迫切需要生成有效的模型,以便能够在药物开发的早期阶段基于药物的各种特征的整合来准确预测 ADR。在本研究中,我们专注于神经 ADR,并使用了药物的各种特性,包括生物特性(靶点、转运蛋白和酶)、化学特性(子结构指纹)、表型特性(副作用(SE)和治疗指示)以及两者和三个层次的特性的组合。我们采用基于缓解的特征选择技术来识别相关特性,并使用机器学习方法来生成学习模型系统,以便在临床前测试之前预测神经 ADR。此外,为了说明模型的效率和适用性,我们分别在副作用资源(SIDER)数据库中对已经存在的抗阿尔茨海默病药物和未表征药物的 ADR 进行了测试。生成的模型具有很高的准确性,我们的结果表明,基于化学(准确性为 93.20%)、表型(准确性为 92.41%)和三种特性组合(准确性为 94.18%)的模型具有很高的准确性,而基于生物特性(准确性为 82.11%)的模型则具有很高的信息性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/260e/5429831/5cbdd6d9709b/41598_2017_908_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/260e/5429831/5cbdd6d9709b/41598_2017_908_Fig1_HTML.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/260e/5429831/5cbdd6d9709b/41598_2017_908_Fig1_HTML.jpg

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