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Interoperability of phenome-wide multimorbidity patterns: a comparative study of two large-scale EHR systems.

Authors :
Strayer N
Vessels T
Choi K
Zhang S
Li Y
Han L
Sharber B
Hsi RS
Bejan CA
Bick AG
Balko JM
Johnson DB
Wheless LE
Wells QS
Philips EJ
Pulley JM
Self WH
Chen Q
Hartert T
Wilkins CH
Savona MR
Shyr Y
Roden DM
Smoller JW
Ruderfer DM
Xu Y
Source :
MedRxiv : the preprint server for health sciences [medRxiv] 2024 May 27. Date of Electronic Publication: 2024 May 27.
Publication Year :
2024

Abstract

Background: Electronic health records (EHR) are increasingly used for studying multimorbidities. However, concerns about accuracy, completeness, and EHRs being primarily designed for billing and administrative purposes raise questions about the consistency and reproducibility of EHR-based multimorbidity research.<br />Methods: Utilizing phecodes to represent the disease phenome, we analyzed pairwise comorbidity strengths using a dual logistic regression approach and constructed multimorbidity as an undirected weighted graph. We assessed the consistency of the multimorbidity networks within and between two major EHR systems at local (nodes and edges), meso (neighboring patterns), and global (network statistics) scales. We present case studies to identify disease clusters and uncover clinically interpretable disease relationships. We provide an interactive web tool and a knowledge base combining data from multiple sources for online multimorbidity analysis.<br />Findings: Analyzing data from 500,000 patients across Vanderbilt University Medical Center and Mass General Brigham health systems, we observed a strong correlation in disease frequencies (Kendall's τ = 0.643) and comorbidity strengths (Pearson ρ = 0.79). Consistent network statistics across EHRs suggest similar structures of multimorbidity networks at various scales. Comorbidity strengths and similarities of multimorbidity connection patterns align with the disease genetic correlations. Graph-theoretic analyses revealed a consistent core-periphery structure, implying efficient network clustering through threshold graph construction. Using hydronephrosis as a case study, we demonstrated the network's ability to uncover clinically relevant disease relationships and provide novel insights.<br />Interpretation: Our findings demonstrate the robustness of large-scale EHR data for studying phenome-wide multimorbidities. The alignment of multimorbidity patterns with genetic data suggests the potential utility for uncovering shared biology of diseases. The consistent core-periphery structure offers analytical insights to discover complex disease interactions. This work also sets the stage for advanced disease modeling, with implications for precision medicine.<br />Funding: VUMC Biostatistics Development Award, the National Institutes of Health, and the VA CSRD.<br />Competing Interests: JWS is a member of the Scientific Advisory Board of Sensorium Therapeutics (with equity) and has received grant support from Biogen, Inc. He is the principal investigator of a collaborative study of the genetics of depression and bipolar disorder sponsored by 23andMe, for which 23andMe provides analysis time as in-kind support but no payments. DMR has served on advisory boards for Illumina and Alkermes and has received research funds unrelated to this work from PTC Therapeutics. All other authors declare no competing interests.

Details

Language :
English
Database :
MEDLINE
Journal :
MedRxiv : the preprint server for health sciences
Publication Type :
Academic Journal
Accession number :
38585743
Full Text :
https://doi.org/10.1101/2024.03.28.24305045