Contribution of Frailty to Multimorbidity Patterns and Trajectories: Longitudinal Dynamic Cohort Study of Aging People
Author
Date
2023-06-27Permanent link
https://hdl.handle.net/11351/10391DOI
10.2196/45848
PMID
37368462
Abstract
Background: Multimorbidity and frailty are characteristics of aging that need individualized evaluation, and there is a 2-way
causal relationship between them. Thus, considering frailty in analyses of multimorbidity is important for tailoring social and
health care to the specific needs of older people.
Objective: This study aimed to assess how the inclusion of frailty contributes to identifying and characterizing multimorbidity
patterns in people aged 65 years or older.
Methods: Longitudinal data were drawn from electronic health records through the SIDIAP (Sistema d’Informació pel
Desenvolupament de la Investigació a l’Atenció Primària) primary care database for the population aged 65 years or older from
2010 to 2019 in Catalonia, Spain. Frailty and multimorbidity were measured annually using validated tools (eFRAGICAP, a
cumulative deficit model; and Swedish National Study of Aging and Care in Kungsholmen [SNAC-K], respectively). Two sets
of 11 multimorbidity patterns were obtained using fuzzy c-means. Both considered the chronic conditions of the participants. In
addition, one set included age, and the other included frailty. Cox models were used to test their associations with death, nursing
home admission, and home care need. Trajectories were defined as the evolution of the patterns over the follow-up period.
Results: The study included 1,456,052 unique participants (mean follow-up of 7.0 years). Most patterns were similar in both
sets in terms of the most prevalent conditions. However, the patterns that considered frailty were better for identifying the
population whose main conditions imposed limitations on daily life, with a higher prevalence of frail individuals in patterns like
chronic ulcers &peripheral vascular. This set also included a dementia-specific pattern and showed a better fit with the risk of
nursing home admission and home care need. On the other hand, the risk of death had a better fit with the set of patterns that did
not include frailty. The change in patterns when considering frailty also led to a change in trajectories. On average, participants
were in 1.8 patterns during their follow-up, while 45.1% (656,778/1,456,052) remained in the same pattern. Conclusions: Our results suggest that frailty should be considered in addition to chronic diseases when studying multimorbidity
patterns in older adults. Multimorbidity patterns and trajectories can help to identify patients with specific needs. The patterns
that considered frailty were better for identifying the risk of certain age-related outcomes, such as nursing home admission or
home care need, while those considering age were better for identifying the risk of death. Clinical and social intervention guidelines
and resource planning can be tailored based on the prevalence of these patterns and trajectories.
Keywords
Multimorbidity; Fragility; Primary careBibliographic citation
Carrasco-Ribelles LA, Cabrera-Bean M, Danés-Castells M, Zabaleta-Del-Olmo E, Roso-Llorach A, Violán C. Contribution of Frailty to Multimorbidity Patterns and Trajectories: Longitudinal Dynamic Cohort Study of Aging People. JMIR Public Health Surveill. 2023 Jun 27;9:e45848.
Audience
Professionals
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