Abstract

Identification of novel drug targets is a critical step in drug development. Many recent studies have produced multiple types of data, which provides an opportunity to mine the relationships among them to predict drug targets. In this study, we present a novel integrative approach that combines ontology reasoning with network-assisted gene ranking to predict new drug targets. We utilized colorectal cancer (CRC) as a proof-of-concept use case to illustrate the approach. Starting from FDA-approved CRC drugs and the relationships among disease, drug, gene, pathway, and SNP in an ontology representing PharmGKB data, we inferred 113 potential CRC drug targets. We further prioritized these genes based on their relationships with CRC disease genes in the context of human protein–protein interaction networks. Thus, among the 113 potential drug targets, 15 were selected as the promising drug targets, including some genes that are supported by previous studies. Among them, EGFR, TOP1 and VEGFA are known targets of FDA-approved drugs. Additionally, CCND1 (cyclin D1), and PTGS2 (prostaglandin-endoperoxide synthase 2) have reported to be relevant to CRC or as potential drug targets based on the literature search. These results indicate that our approach is promising for drug target prediction for CRC treatment, which might be useful for other cancer therapeutics.

Highlights

  • Drug discovery is a time-consuming and expensive process, especially for complex diseases

  • The results indicate that our combination method of ontology and network analysis is promising for the identification of novel drug targets, which may provide valuable information for development of novel colorectal cancer (CRC) treatment

  • We further prioritized the inferred genes based on their relationships with CRC disease genes in the context of protein–protein interaction (PPI) networks and performed literature searches to provide independent evidence for the top ranked genes

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Summary

Introduction

Drug discovery is a time-consuming and expensive process, especially for complex diseases. Computational approaches have become one of the major methods for alleviating this issue through the comprehensive integration of heterogeneous knowledge and data, including genetic and genomic data, pharmaceutical data and pathway data These approaches could accelerate the process of revealing the valuable information underlying these complicated data and lead to the identification of promising drug targets and repurposed drugs [2, 5]. In this study, we utilized the semantic web and biological network technologies to integrate the relationships among drugs, genes, diseases, pathways and SNPs into one system for discovering potential drug targets. The results indicate that our combination method of ontology and network analysis is promising for the identification of novel drug targets, which may provide valuable information for development of novel CRC treatment

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