Abstract

BackgroundEarly and accurate identification of potential adverse drug reactions (ADRs) for combined medication is vital for public health. Existing methods either rely on expensive wet-lab experiments or detecting existing associations from related records. Thus, they inevitably suffer under-reporting, delays in reporting, and inability to detect ADRs for new and rare drugs. The current application of machine learning methods is severely impeded by the lack of proper drug representation and credible negative samples. Therefore, a method to represent drugs properly and to select credible negative samples becomes vital in applying machine learning methods to this problem.ResultsIn this work, we propose a machine learning method to predict ADRs of combined medication from pharmacologic databases by building up highly-credible negative samples (HCNS-ADR). Specifically, we fuse heterogeneous information from different databases and represent each drug as a multi-dimensional vector according to its chemical substructures, target proteins, substituents, and related pathways first. Then, a drug-pair vector is obtained by appending the vector of one drug to the other. Next, we construct a drug-disease-gene network and devise a scoring method to measure the interaction probability of every drug pair via network analysis. Drug pairs with lower interaction probability are preferentially selected as negative samples. Following that, the validated positive samples and the selected credible negative samples are projected into a lower-dimensional space using the principal component analysis. Finally, a classifier is built for each ADR using its positive and negative samples with reduced dimensions. The performance of the proposed method is evaluated on simulative prediction for 1276 ADRs and 1048 drugs, comparing using four machine learning algorithms and with two baseline approaches. Extensive experiments show that the proposed way to represent drugs characterizes drugs accurately. With highly-credible negative samples selected by HCNS-ADR, the four machine learning algorithms achieve significant performance improvements. HCNS-ADR is also shown to be able to predict both known and novel drug-drug-ADR associations, outperforming two other baseline approaches significantly.ConclusionsThe results demonstrate that integration of different drug properties to represent drugs are valuable for ADR prediction of combined medication and the selection of highly-credible negative samples can significantly improve the prediction performance.

Highlights

  • And accurate identification of potential adverse drug reactions (ADRs) for combined medication is vital for public health

  • We propose a method called HCNS-ADR to predict adverse drug reactions of combined medication using credible negative samples selected from pharmacologic databases

  • Performance evaluation metrics 5-fold cross-validation is performed to evaluate the prediction performance: (i) drug pairs in the gold standard set are split into five equal-sized subsets; (ii) each subset is used as the test set, and the remaining four subsets are taken as the training set in turn to train the predictive models; (3) the final performance is evaluated on all results over 5-folds

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Summary

Introduction

And accurate identification of potential adverse drug reactions (ADRs) for combined medication is vital for public health. Existing methods either rely on expensive wet-lab experiments or detecting existing associations from related records. They inevitably suffer under-reporting, delays in reporting, and inability to detect ADRs for new and rare drugs. Drug combined medication refers to the scenario where two or more drugs are taken together or concomitantly [1]. It is very common in therapy and clinical practice [2]. Early identification of potential ADRs for combined medication is vital to improve drug safety and prevent medication error

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