Engineering Proceedings (Oct 2023)

Data-Driven Drug Repurposing in Diabetes Mellitus through an Enhanced Knowledge Graph

  • Sotiris Ouzounis,
  • Alexandros Kanterakis,
  • Vasilis Panagiotopoulos,
  • Dionisis Cavouras,
  • Panagiotis Zoumpoulakis,
  • Minos-Timotheos Matsoukas,
  • Theodora Katsila,
  • Ioannis Kalatzis

DOI
https://doi.org/10.3390/engproc2023050009
Journal volume & issue
Vol. 50, no. 1
p. 9

Abstract

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Diabetes mellitus affects more than 400 million people worldwide, and the incidence of disease is rising. Current anti-hyperglycemic agents share major drawbacks, such as hypoglycemia and low potency due to a lack of target specificity. Drug repurposing accelerates drug research and development pipelines and empowers chemical space enrichment. Herein, we propose a data-driven approach towards drug repurposing in diabetes mellitus by integrating heterogeneous biomedical data in a unified knowledge graph. Through extensive data mining in public repositories, diabetes-related multimodal data have been retrieved. Several data analysis techniques were employed to extract information and define semantic associations, followed by data parsing and, next, descriptive statistics, regression, and cluster analysis. Biomedical entity recognition and negation detection were performed by natural language processing. Predefined biological ontologies served as reference endpoints for class definition upon data integration. Graph analytics were performed, and drug–drug, protein–protein, drug–protein, and drug–disease interactions were established. A majority vote-based machine learning framework for the prediction of human cytochrome P450 inhibitors was also integrated into the proposed enhanced knowledge graph analysis that facilitates data-driven ranking for drug repurposing candidates in diabetes mellitus. The presented method yields a ranked list of repurposing candidates.

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