Improving prediction of drug-target interactions based on fusing multiple features with data balancing and feature selection techniques

Author:

Khojasteh Hakimeh,Pirgazi JamshidORCID,Ghanbari Sorkhi Ali

Abstract

Drug discovery relies on predicting drug-target interaction (DTI), which is an important challenging task. The purpose of DTI is to identify the interaction between drug chemical compounds and protein targets. Traditional wet lab experiments are time-consuming and expensive, that’s why in recent years, the use of computational methods based on machine learning has attracted the attention of many researchers. Actually, a dry lab environment focusing more on computational methods of interaction prediction can be helpful in limiting search space for wet lab experiments. In this paper, a novel multi-stage approach for DTI is proposed that called SRX-DTI. In the first stage, combination of various descriptors from protein sequences, and a FP2 fingerprint that is encoded from drug are extracted as feature vectors. A major challenge in this application is the imbalanced data due to the lack of known interactions, in this regard, in the second stage, the One-SVM-US technique is proposed to deal with this problem. Next, the FFS-RF algorithm, a forward feature selection algorithm, coupled with a random forest (RF) classifier is developed to maximize the predictive performance. This feature selection algorithm removes irrelevant features to obtain optimal features. Finally, balanced dataset with optimal features is given to the XGBoost classifier to identify DTIs. The experimental results demonstrate that our proposed approach SRX-DTI achieves higher performance than other existing methods in predicting DTIs. The datasets and source code are available at: https://github.com/Khojasteh-hb/SRX-DTI.

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference71 articles.

1. Machine learning approaches and databases for prediction of drug–target interaction: a survey paper;M. Bagherian;Briefings in bioinformatics,2021

2. A Bayesian machine learning approach for drug target identification using diverse data types;N.S. Madhukar;Nature communications,2019

3. The legacy of the human genome project;J.E. Rood;Science,2021

4. Incorporating chemical sub-structures and protein evolutionary information for inferring drug-target interactions;L. Wang;Scientific reports,2020

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