Characterization Of Diseases In Temporal Comorbidity Networks
June 27, 2025 Β· Declared Dead Β· π arXiv.org
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Authors
Yuri Gardinazzi, Roger GonzalΓ©z March, Suprabhath Kalahasti, Andrea MontaΓ±o Ramirez, Matteo Neri, Cicely Nguyen, Giovanni Palermo, Erik Weis, Katharina Ledebur, Elma DerviΔ
arXiv ID
2506.22136
Category
physics.soc-ph
Cross-listed
cs.SI,
physics.med-ph
Citations
0
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Comorbidity networks, which capture disease-disease co-occurrence usually based on electronic health records, reveal structured patterns in how diseases cluster and progress across individuals. However, how these networks evolve across different age groups and how this evolution relates to properties like disease prevalence and mortality remains understudied. To address these issues, we used publicly available comorbidity networks extracted from a comprehensive dataset of 45 million Austrian hospital stays from 1997 to 2014, covering 8.9 million patients. These networks grow and become denser with age. We identified groups of diseases that exhibit similar patterns of structural centrality throughout the lifespan, revealing three dominant age-related components with peaks in early childhood, midlife, and late life. To uncover the drivers of this structural change, we examined the relationship between prevalence and degree. This allowed us to identify conditions that were disproportionately connected to other diseases. Using betweenness centrality in combination with mortality data, we further identified high-mortality bridging diseases. Several diseases show high connectivity relative to their prevalence, such as iron deficiency anemia (D50) in children, nicotine dependence (F17), and lipoprotein metabolism disorders (E78) in adults. We also highlight structurally central diseases with high mortality that emerge at different life stages, including cancers (C group), liver cirrhosis (K74), subarachnoid hemorrhage (I60), and chronic kidney disease (N18). These findings underscore the importance of targeting age-specific, network-central conditions with high mortality for prevention and integrated care.
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