Abstract

BackgroundDrug side effects are one of main concerns in the drug discovery, which gains wide attentions. Investigating drug side effects is of great importance, and the computational prediction can help to guide wet experiments. As far as we known, a great number of computational methods have been proposed for the side effect predictions. The assumption that similar drugs may induce same side effects is usually employed for modeling, and how to calculate the drug-drug similarity is critical in the side effect predictions.ResultsIn this paper, we present a novel measure of drug-drug similarity named “linear neighborhood similarity”, which is calculated in a drug feature space by exploring linear neighborhood relationship. Then, we transfer the similarity from the feature space into the side effect space, and predict drug side effects by propagating known side effect information through a similarity-based graph. Under a unified frame based on the linear neighborhood similarity, we propose method “LNSM” and its extension “LNSM-SMI” to predict side effects of new drugs, and propose the method “LNSM-MSE” to predict unobserved side effect of approved drugs.ConclusionsWe evaluate the performances of LNSM and LNSM-SMI in predicting side effects of new drugs, and evaluate the performances of LNSM-MSE in predicting missing side effects of approved drugs. The results demonstrate that the linear neighborhood similarity can improve the performances of side effect prediction, and the linear neighborhood similarity-based methods can outperform existing side effect prediction methods. More importantly, the proposed methods can predict side effects of new drugs as well as unobserved side effects of approved drugs under a unified frame.

Highlights

  • Drug side effects are one of main concerns in the drug discovery, which gains wide attentions

  • We present a unified frame based on linear neighborhood similarity to predict side effects of new drugs (SEND task) as well as unobserved side effects of approved drugs (SEAD task)

  • We propose method “Linear neighborhood similarity method (LNSM)” and its extension “LNSM-SMI”, which respectively make use of single features and multiple features to predict side effects of new drugs (SEND task); we propose the method “LNSM-MSE” which can predict unobserved side effect of approved drugs based on known side effects (SEAD task)

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Summary

Introduction

Drug side effects are one of main concerns in the drug discovery, which gains wide attentions. Investigating drug side effects is of great importance, and the computational prediction can help to guide wet experiments. Researchers defined preclinical druginduced effect patterns to investigate the structureresponse relationships or structure-property relationships [7,8,9,10,11], and utilized them to identify drug side effects. These methods have to analyze data case by case, and are not suitable for complicated data.

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