The impact of varying the number and selection of conditions on estimated multimorbidity prevalence: A cross-sectional study using a large, primary care population dataset.
Clare MacRaeMegan A McMinnStewart W MercerDavid HendersonDavid A McAllisterIris Szu-Szu HoEmily R JeffersonDaniel R MoralesJane LyonsRonan A LyonsChris DibbenBruce GuthriePublished in: PLoS medicine (2023)
In this study, we observed that varying the number and selection of conditions results in very large differences in multimorbidity prevalence, and different numbers of conditions are needed to reach ceiling rates of multimorbidity prevalence in certain groups of people. These findings imply that there is a need for a standardised approach to defining multimorbidity, and to facilitate this, researchers can use existing condition-lists associated with highest multimorbidity prevalence.