Evolution of biomedical innovation quantified via billions of distinct article-level MeSH keyword combinations
Alexander M. Petersen

TL;DR
This paper introduces a systematic method to measure biomedical innovation through analyzing billions of MeSH keyword combinations, revealing trends in knowledge growth, innovation modes, and the shift towards convergence science.
Contribution
It presents a novel comprehensive approach to quantify combinatorial biomedical innovation using MeSH ontology, differentiating innovation types and analyzing higher-order combinations.
Findings
Knowledge network densifies over time despite new MeSH terms.
Conceptual innovation increasingly occurs within individual articles.
Higher-order combinations do not reveal new phenomena beyond pairwise analysis.
Abstract
We develop a systematic approach to measuring combinatorial innovation in the biomedical sciences based upon the comprehensive ontology of Medical Subject Headings (MeSH). This approach leverages an expert-defined knowledge ontology that features both breadth (27,875 MeSH analyzed across 25 million articles indexed by PubMed from 1902 onwards) and depth (we differentiate between Major and Minor MeSH terms to identify differences in the knowledge network representation constructed from primary research topics only). With this level of uniform resolution we differentiate between three different modes of innovation contributing to the combinatorial knowledge network: (i) conceptual innovation associated with the emergence of new concepts and entities (measured as the entry of new MeSH); and (ii) recombinant innovation, associated with the emergence of new combinations, which itself…
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