Dimitri Giovanna Maria, Lió Pietro
Computer Laboratory, University of Cambridge, 15 JJ Thomson Avenue, Cambridge, UK.
Computer Laboratory, University of Cambridge, 15 JJ Thomson Avenue, Cambridge, UK.
Comput Biol Chem. 2017 Jun;68:204-210. doi: 10.1016/j.compbiolchem.2017.03.008. Epub 2017 Mar 30.
Identification of underlying mechanisms behind drugs side effects is of extreme interest and importance in drugs discovery today. Therefore machine learning methodology, linking such different multi features aspects and able to make predictions, are crucial for understanding side effects.
In this paper we present DrugClust, a machine learning algorithm for drugs side effects prediction. DrugClust pipeline works as follows: first drugs are clustered with respect to their features and then side effects predictions are made, according to Bayesian scores. Biological validation of resulting clusters can be done via enrichment analysis, another functionality implemented in the methodology. This last tool is of extreme interest for drug discovery, given that it can be used as a validation of the clusters obtained, as well as for the study of new possible interactions between certain side effects and nontargeted pathways.
Results were evaluated on a 5-folds cross validations procedure, and extensive comparisons were made with available datasets in the field: Zhang et al. (2015), Liu et al. (2012) and Mizutani et al. (2012). Results are promising and show better performances in most of the cases with respect to the available literature.
DrugClust is an R package freely available at: https://cran.r-project.org/web/packages/DrugClust/index.html.
在当今的药物研发中,识别药物副作用背后的潜在机制极具意义和重要性。因此,将不同多特征方面联系起来并能够进行预测的机器学习方法,对于理解副作用至关重要。
在本文中,我们提出了DrugClust,一种用于药物副作用预测的机器学习算法。DrugClust流程如下:首先根据药物特征进行聚类,然后根据贝叶斯分数进行副作用预测。可以通过富集分析对所得聚类进行生物学验证,这是该方法中实现的另一项功能。鉴于该工具可用于验证所得聚类,以及研究某些副作用与非靶向途径之间新的可能相互作用,因此它对药物研发极具意义。
在五折交叉验证过程中对结果进行了评估,并与该领域现有的数据集(Zhang等人,2015年;Liu等人,2012年;Mizutani等人,2012年)进行了广泛比较。结果很有前景,在大多数情况下相对于现有文献表现更好。
DrugClust是一个R包,可在以下网址免费获取:https://cran.r-project.org/web/packages/DrugClust/index.html。