Abstract

BackgroundDrug repurposing can improve the return of investment as it finds new uses for existing drugs. Literature-based analyses exploit factual knowledge on drugs and diseases, e.g. from databases, and combine it with information from scholarly publications. Here we report the use of the Open Discovery Process on scientific literature to identify non-explicit ties between a disease, namely epilepsy, and known drugs, making full use of available epilepsy-specific ontologies.ResultsWe identified characteristics of epilepsy-specific ontologies to create subsets of documents from the literature; from these subsets we generated ranked lists of co-occurring neurological drug names with varying specificity. From these ranked lists, we observed a high intersection regarding reference lists of pharmaceutical compounds recommended for the treatment of epilepsy. Furthermore, we performed a drug set enrichment analysis, i.e. a novel scoring function using an adaptive tuning parameter and comparing top-k ranked lists taking into account the varying length and the current position in the list. We also provide an overview of the pharmaceutical space in the context of epilepsy, including a final combined ranked list of more than 70 drug names.ConclusionsBiomedical ontologies are a rich resource that can be combined with text mining for the identification of drug names for drug repurposing in the domain of epilepsy. The ranking of the drug names related to epilepsy provides benefits to patients and to researchers as it enables a quick evaluation of statistical evidence hidden in the scientific literature, useful to validate approaches in the drug discovery process.

Highlights

  • Drug repurposing can improve the return of investment as it finds new uses for existing drugs

  • Other text mining approaches on literature-based discovery for drug repurposing, e.g. [47,48,49], provide rankings for the extracted drug disease associations evaluated by comparing them to factual databases, e.g. the Comparative Toxicogenomics Database (CTD) [50, 51], or to expert judgment on the significance of the involved biological pathways

  • Text Mining can contribute to the process of drug repurposing by providing empirical evidence about the similarity of entities related to drugs and diseases

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Summary

Introduction

Drug repurposing can improve the return of investment as it finds new uses for existing drugs. Literature-based analyses exploit factual knowledge on drugs and diseases, e.g. from databases, and combine it with information from scholarly publications. We report the use of the Open Discovery Process on scientific literature to identify non-explicit ties between a disease, namely epilepsy, and known drugs, making full use of available epilepsy-specific ontologies. Data resources for drug repurposing The hypothesis behind drug repurposing is that similar properties of drugs and diseases allow the inference for new application domains. The vast amount of publicly available biomedical databases provide a rich resource for factual knowledge on drug and disease-related properties that can be later used to calculate similarities. There is a variety of biomedical sources providing relevant information to find such similarities, e.g. phenotypes, gene expression and gene-disease association. Domain-specific ontologies contain semantic relations of diseases and drugs that are not directly available in literature or databases

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