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Characterizing physician referral networks with Ricci Curvature.
In: (Pediatric and Lifespan Data Science). Springer, 2025. 1-16 (Comm. Comp. Info. Sci. ; 2386 CCIS)
Identifying (a) systemic barriers to quality healthcare access and (b) key indicators of care efficacy in the United States remains a significant challenge. To improve our understanding of regional disparities in care delivery, we introduce a novel application of curvature, a geometrical-topological property of networks, to Physician Referral Networks. Our initial findings reveal that Forman-Ricci and Ollivier-Ricci curvature measures, which are known for their expressive power in characterizing network structure, offer promising indicators for detecting variations in healthcare efficacy while capturing a range of significant regional demographic features. We also present apparent, an open-source tool that leverages Ricci curvature and other network features to examine correlations between regional Physician Referral Networks structure, local census data, healthcare effectiveness, and patient outcomes.
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Publikationstyp
Artikel: Konferenzbeitrag
ISSN (print) / ISBN
1865-0929
e-ISSN
1865-0937
Konferenztitel
Pediatric and Lifespan Data Science
Quellenangaben
Band: 2386 CCIS,
Seiten: 1-16
Verlag
Springer
Begutachtungsstatus
Peer reviewed
Institut(e)
Human-Centered AI (HCA)