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Multimorbidity clusters and their contribution to well-being among the oldest old: Results based on a nationally representative sample in Germany

[journal article]

Hajek, André
Gyasi, Razak M.
Kostev, Karel
Soysal, Pinar
Veronese, Nicola
Smith, Lee
Jacob, Louis
Oh, Hans
Pengpid, Supa
Peltzer, Karl
König, Hans-Helmut

Abstract

Our aim was to identify multimorbidity clusters and, in particular, to examine their contribution to well-being outcomes among the oldest old in Germany. Methods: Data were taken from the large nationally representative D80+ study including community-dwelling and institutionalized individuals aged 8... view more

Our aim was to identify multimorbidity clusters and, in particular, to examine their contribution to well-being outcomes among the oldest old in Germany. Methods: Data were taken from the large nationally representative D80+ study including community-dwelling and institutionalized individuals aged 80 years and over residing in Germany (n=8,773). The mean age was 85.6 years (SD: 4.1). Based on 21 chronic conditions, latent class analysis was carried out to explore multimorbidity (≥2 chronic conditions) clusters. Widely used tools were applied to quantify well-being outcomes. Results Approximately nine out of ten people aged 80 and over living in Germany were multimorbid. Four multimorbidity clusters were identified: relatively healthy class (30.2%), musculoskeletal class (44.8%), mental illness class (8.6%), and high morbidity class (16.4%). Being part of the mental disorders cluster was consistently linked to reduced well-being (in terms of low life satisfaction, high loneliness and lower odds of meaning in life), followed by membership in the high morbidity cluster. Conclusions Four multimorbidity clusters were detected among the oldest old in Germany. Particularly belonging to the mental disorders cluster is consistently associated with low well-being, followed by belonging to the high morbidity cluster. This stresses the need for efforts to target such vulnerable groups, pending future longitudinal research.... view less

Keywords
aged; chronic illness; satisfaction with life; solitude; mental health; mental illness; morbidity; Federal Republic of Germany

Classification
Gerontology

Free Keywords
D80+; Mulitimorbidität; Hochaltrige; Clusters; Latent class analysis

Document language
English

Publication Year
2025

Journal
Archives of Gerontology and Geriatrics (2025) 130

DOI
https://doi.org/10.1016/j.archger.2024.105726

ISSN
1872-6976

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.