Abstract
ObjectivesTo classify older adults into clusters based on accumulating long-term conditions (LTC) as trajectories, characterise clusters and quantify their associations with all-cause mortality.DesignWe conducted a longitudinal study using the English Longitudinal Study of Ageing over 9 years (n=15 091 aged 50 years and older). Group-based trajectory modelling was used to classify people into clusters based on accumulating LTC over time. Derived clusters were used to quantify the associations between trajectory memberships, sociodemographic characteristics and all-cause mortality by conducting regression models.ResultsFive distinct clusters of accumulating LTC trajectories were identified and characterised as: ‘no LTC’ (18.57%), ‘single LTC’ (31.21%), ‘evolving multimorbidity’ (25.82%), ‘moderate multimorbidity’ (17.12%) and ‘high multimorbidity’ (7.27%). Increasing age was consistently associated with a larger number of LTCs. Ethnic minorities (adjusted OR=2.04; 95% CI 1.40 to 3.00) were associated with the ‘high multimorbidity’ cluster. Higher education and paid employment were associated with a lower likelihood of progression over time towards an increased number of LTCs. All the clusters had higher all-cause mortality than the ‘no LTC’ cluster.ConclusionsThe development of multimorbidity in the number of conditions over time follows distinct trajectories. These are determined by non-modifiable (age, ethnicity) and modifiable factors (education and employment). Stratifying risk through clustering will enable practitioners to identify older adults with a higher likelihood of worsening LTC over time to tailor effective interventions to prevent mortality.
Funder
National Institute for Health and Care Research
Reference32 articles.
1. World Health Organisation . Life tables [online], 2022. Available: https://www.who.int/data/gho/data/themes/mortality-and-global-health-estimates/ghe-life-expectancy-and-healthy-life-expectancy
2. Forecasting the care needs of the older population in England over the next 20 years: estimates from the population ageing and care simulation (Pacsim) Modelling study;Kingston;Lancet Public Health,2018
3. World Health Organisation . Ageing and health [online], 2022. Available: https://www.who.int/news-room/fact-sheets/detail/ageing-and-health
4. Variation in the estimated prevalence of Multimorbidity: systematic review and meta-analysis of 193 International studies;Ho;BMJ Open,2022
5. Multimorbidity and quality of life: systematic literature review and meta-analysis;Makovski;Ageing Res Rev,2019