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Auteurs principaux: Copara, Jenny, Naderi, Nona, Falquet, Gilles, Teodoro, Douglas
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2406.18792
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author Copara, Jenny
Naderi, Nona
Falquet, Gilles
Teodoro, Douglas
author_facet Copara, Jenny
Naderi, Nona
Falquet, Gilles
Teodoro, Douglas
contents The Medical Subject Headings (MeSH), one of the main knowledge organization systems in the biomedical domain, continuously evolves to reflect the latest scientific discoveries in health and life sciences. Previous research has focused on quantifying information in MeSH primarily through its hierarchical structure. In this work, we propose a data-driven approach based on information theory and network analysis to quantify the relevance of MeSH concepts. Our method leverages article annotations and their citation networks to compute four aspects of relevance -- informativeness, usefulness, disruptiveness, and influence -- over time. Using both the citation network and the MeSH hierarchy, we compute these relevance aspects and apply an aggregation algorithm to propagate scores to parent nodes. We evaluated our approach on MeSH terminology changes and showed that it effectively captures the evolution of concepts. The mean relevance of evolving concepts is higher compared to concepts that remained unchanged ($2.09E-03$ vs. $8.46E-04$). Moreover, we validated the framework by analyzing retracted articles and found that concepts used to annotate retracted articles (mean relevance: 0.17) differ substantially from those annotating non-retracted ones (mean relevance: 0.15). Overall, the proposed framework provides an effective method for ranking concept relevance and can support the maintenance of evolving knowledge organization systems.
format Preprint
id arxiv_https___arxiv_org_abs_2406_18792
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MeSH Concept Relevance and Knowledge Evolution: A Data-driven Perspective
Copara, Jenny
Naderi, Nona
Falquet, Gilles
Teodoro, Douglas
Social and Information Networks
The Medical Subject Headings (MeSH), one of the main knowledge organization systems in the biomedical domain, continuously evolves to reflect the latest scientific discoveries in health and life sciences. Previous research has focused on quantifying information in MeSH primarily through its hierarchical structure. In this work, we propose a data-driven approach based on information theory and network analysis to quantify the relevance of MeSH concepts. Our method leverages article annotations and their citation networks to compute four aspects of relevance -- informativeness, usefulness, disruptiveness, and influence -- over time. Using both the citation network and the MeSH hierarchy, we compute these relevance aspects and apply an aggregation algorithm to propagate scores to parent nodes. We evaluated our approach on MeSH terminology changes and showed that it effectively captures the evolution of concepts. The mean relevance of evolving concepts is higher compared to concepts that remained unchanged ($2.09E-03$ vs. $8.46E-04$). Moreover, we validated the framework by analyzing retracted articles and found that concepts used to annotate retracted articles (mean relevance: 0.17) differ substantially from those annotating non-retracted ones (mean relevance: 0.15). Overall, the proposed framework provides an effective method for ranking concept relevance and can support the maintenance of evolving knowledge organization systems.
title MeSH Concept Relevance and Knowledge Evolution: A Data-driven Perspective
topic Social and Information Networks
url https://arxiv.org/abs/2406.18792