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Published in: BMC Primary Care 1/2020

Open Access 01-12-2020 | Care | Research article

Multimorbidity as a predictor of health service utilization in primary care: a registry-based study of the Catalan population

Authors: D. Monterde, E. Vela, M. Clèries, L. Garcia-Eroles, J. Roca, P. Pérez-Sust

Published in: BMC Primary Care | Issue 1/2020

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Abstract

Background

Multimorbidity is highly relevant for both service commissioning and clinical decision-making. Optimization of variables assessing multimorbidity in order to enhance chronic care management is an unmet need. To this end, we have explored the contribution of multimorbidity to predict use of healthcare resources at community level by comparing the predictive power of four different multimorbidity measures.

Methods

A population health study including all citizens ≥18 years (n = 6,102,595) living in Catalonia (ES) on 31 December 2014 was done using registry data. Primary care service utilization during 2015 was evaluated through four outcome variables: A) Frequent attendants, B) Home care users, C) Social worker users, and, D) Polypharmacy. Prediction of the four outcome variables (A to D) was carried out with and without multimorbidity assessment. We compared the contributions to model fitting of the following multimorbidity measures: i) Charlson index; ii) Number of chronic diseases; iii) Clinical Risk Groups (CRG); and iv) Adjusted Morbidity Groups (GMA).

Results

The discrimination of the models (AUC) increased by including multimorbidity as covariate into the models, namely: A) Frequent attendants (0.771 vs 0.853), B) Home care users (0.862 vs 0.890), C) Social worker users (0.809 vs 0.872), and, D) Polypharmacy (0.835 vs 0.912). GMA showed the highest predictive power for all outcomes except for polypharmacy where it was slightly below than CRG.

Conclusions

We confirmed that multimorbidity assessment enhanced prediction of use of healthcare resources at community level. The Catalan population-based risk assessment tool based on GMA presented the best combination of predictive power and applicability.
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Metadata
Title
Multimorbidity as a predictor of health service utilization in primary care: a registry-based study of the Catalan population
Authors
D. Monterde
E. Vela
M. Clèries
L. Garcia-Eroles
J. Roca
P. Pérez-Sust
Publication date
01-12-2020
Publisher
BioMed Central
Keyword
Care
Published in
BMC Primary Care / Issue 1/2020
Electronic ISSN: 2731-4553
DOI
https://doi.org/10.1186/s12875-020-01104-1

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