Novel Neural Network Approach to Predict Drug-Target Interactions Based on Drug Side Effects and Genome-Wide Association Studies.

IF 1.1 4区 生物学 Q4 GENETICS & HEREDITY
Human Heredity Pub Date : 2018-01-01 Epub Date: 2018-10-22 DOI:10.1159/000492574
Jeanette Prinz, Mohamad Koohi-Moghadam, Hongzhe Sun, Jean-Pierre A Kocher, Junwen Wang
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引用次数: 2

Abstract

Aims: We propose a novel machine learning approach to expand the knowledge about drug-target interactions. Our method may help to develop effective, less harmful treatment strategies and to enable the detection of novel indications for existing drugs.

Methods: We developed a novel machine learning strategy to predict drug-target interactions based on drug side effects and traits from genome-wide association studies. We integrated data from the databases SIDER and GWASdb and utilized them in a unique way by a neural network approach.

Results: We validate our method using drug-target interactions from the STITCH database. In addition, we compare the chemical similarity of the predicted target to known targets of the drug under consideration and present literature-based evidence for predicted interactions. We find drug combination warnings for drugs we predict to target the same protein, hinting to synergistic effects aggravating harmful events. This substantiates the translational value of our approach, because we are able to detect drugs that should be taken together with care due to common mechanisms of action.

Conclusion: Taken together, we conclude that our approach is able to generate a novel and clinically applicable insight into the molecular determinants of drug action.

基于药物副作用和全基因组关联研究预测药物-靶标相互作用的新型神经网络方法。
目的:我们提出了一种新的机器学习方法来扩展药物-靶标相互作用的知识。我们的方法可能有助于开发有效的,危害较小的治疗策略,并使现有药物的新适应症检测成为可能。方法:我们开发了一种新的机器学习策略,基于药物副作用和全基因组关联研究的特征来预测药物-靶标相互作用。我们整合了来自SIDER和GWASdb数据库的数据,并通过神经网络方法以独特的方式利用它们。结果:我们使用STITCH数据库中的药物-靶标相互作用验证了我们的方法。此外,我们比较了预测靶点与所考虑药物的已知靶点的化学相似性,并提出了基于文献的预测相互作用的证据。我们发现药物联合警告,我们预测药物靶向相同的蛋白质,暗示协同作用加重有害事件。这证实了我们的方法的转化价值,因为我们能够检测到由于共同的作用机制而应该一起服用的药物。结论:综上所述,我们得出的结论是,我们的方法能够对药物作用的分子决定因素产生新的和临床适用的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Human Heredity
Human Heredity 生物-遗传学
CiteScore
2.50
自引率
0.00%
发文量
12
审稿时长
>12 weeks
期刊介绍: Gathering original research reports and short communications from all over the world, ''Human Heredity'' is devoted to methodological and applied research on the genetics of human populations, association and linkage analysis, genetic mechanisms of disease, and new methods for statistical genetics, for example, analysis of rare variants and results from next generation sequencing. The value of this information to many branches of medicine is shown by the number of citations the journal receives in fields ranging from immunology and hematology to epidemiology and public health planning, and the fact that at least 50% of all ''Human Heredity'' papers are still cited more than 8 years after publication (according to ISI Journal Citation Reports). Special issues on methodological topics (such as ‘Consanguinity and Genomics’ in 2014; ‘Analyzing Rare Variants in Complex Diseases’ in 2012) or reviews of advances in particular fields (‘Genetic Diversity in European Populations: Evolutionary Evidence and Medical Implications’ in 2014; ‘Genes and the Environment in Obesity’ in 2013) are published every year. Renowned experts in the field are invited to contribute to these special issues.
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