4.6 Article

A Network-Based Analysis of Disease Modules From a Taxonomic Perspective

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2021.3106787

关键词

Diseases; Taxonomy; Ontologies; Drugs; Clustering algorithms; Labeling; Proteins; Disease modules; human interactome; disease ontology; Network Medicine; taxonomy induction

资金

  1. MIUR under Grant Dipartimenti di Eccellenza 2018-2022 of the Department of Computer Science of Sapienza University
  2. Sapienza Information-Based Technology InnovaTion Center for Health - STITCH

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This study aims to analyze the relationship between the categorical proximity of diseases in human-curated ontologies and the structural proximity of the related disease modules in the interactome. By proposing a method to induce a hierarchical structure from proximity relations between disease modules and comparing it with a human-curated disease taxonomy, the study demonstrates the systematic analysis of commonalities and differences in disease similarities, refining and extending human disease classification systems.
Objective: Human-curated diseaseontologies are widely used for diagnostic evaluation, treatment and data comparisons over time, and clinical decision support. The classification principles underlying these ontologies are guided by the analysis of observable pathological similarities between disorders, often based on anatomical or histological principles. Although, thanks to recent advances in molecular biology, disease ontologies are slowly changing to integrate the etiological and genetic origins of diseases, nosology still reflects this reductionist perspective. Proximity relationships of disease modules (hereafter DMs) in the human interactome network are now increasingly used in diagnostics, to identify pathobiologically similar diseases and to support drug repurposing and discovery. On the other hand, similarity relations induced from structural proximity of DMs also have several limitations, such as incomplete knowledge of disease-gene relationships and reliability of clinical trials to assess their validity. The purpose of the study described in this paper is to shed more light on disease similarities by analyzing the relationship between categorical proximity of diseases in human-curated ontologies and structural proximity of the related DMs in the interactome. Method: We propose a method (and related algorithms) to automatically induce a hierarchical structure from proximity relations between DMs, and to compare this structure with a human-curated disease taxonomy. Results: We demonstrate that the proposed method allows to systematically analyze commonalities and differences among structural and categorical similarity of human diseases, help refine and extend human disease classification systems, and identify promising network areas where new disease-gene interactions can be discovered.

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