Cargando…

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

BACKGROUND: Multimorbidity prevalence rates vary considerably depending on the conditions considered in the morbidity count, but there is no standardised approach to the number or selection of conditions to include. METHODS AND FINDINGS: We conducted a cross-sectional study using English primary car...

Descripción completa

Detalles Bibliográficos
Autores principales: MacRae, Clare, McMinn, Megan, Mercer, Stewart W., Henderson, David, McAllister, David A., Ho, Iris, Jefferson, Emily, Morales, Daniel R., Lyons, Jane, Lyons, Ronan A., Dibben, Chris, Guthrie, Bruce
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10072475/
https://www.ncbi.nlm.nih.gov/pubmed/37014910
http://dx.doi.org/10.1371/journal.pmed.1004208
_version_ 1785019390803050496
author MacRae, Clare
McMinn, Megan
Mercer, Stewart W.
Henderson, David
McAllister, David A.
Ho, Iris
Jefferson, Emily
Morales, Daniel R.
Lyons, Jane
Lyons, Ronan A.
Dibben, Chris
Guthrie, Bruce
author_facet MacRae, Clare
McMinn, Megan
Mercer, Stewart W.
Henderson, David
McAllister, David A.
Ho, Iris
Jefferson, Emily
Morales, Daniel R.
Lyons, Jane
Lyons, Ronan A.
Dibben, Chris
Guthrie, Bruce
author_sort MacRae, Clare
collection PubMed
description BACKGROUND: Multimorbidity prevalence rates vary considerably depending on the conditions considered in the morbidity count, but there is no standardised approach to the number or selection of conditions to include. METHODS AND FINDINGS: We conducted a cross-sectional study using English primary care data for 1,168,260 participants who were all people alive and permanently registered with 149 included general practices. Outcome measures of the study were prevalence estimates of multimorbidity (defined as ≥2 conditions) when varying the number and selection of conditions considered for 80 conditions. Included conditions featured in ≥1 of the 9 published lists of conditions examined in the study and/or phenotyping algorithms in the Health Data Research UK (HDR-UK) Phenotype Library. First, multimorbidity prevalence was calculated when considering the individually most common 2 conditions, 3 conditions, etc., up to 80 conditions. Second, prevalence was calculated using 9 condition-lists from published studies. Analyses were stratified by dependent variables age, socioeconomic position, and sex. Prevalence when only the 2 commonest conditions were considered was 4.6% (95% CI [4.6, 4.6] p < 0.001), rising to 29.5% (95% CI [29.5, 29.6] p < 0.001) considering the 10 commonest, 35.2% (95% CI [35.1, 35.3] p < 0.001) considering the 20 commonest, and 40.5% (95% CI [40.4, 40.6] p < 0.001) when considering all 80 conditions. The threshold number of conditions at which multimorbidity prevalence was >99% of that measured when considering all 80 conditions was 52 for the whole population but was lower in older people (29 in >80 years) and higher in younger people (71 in 0- to 9-year-olds). Nine published condition-lists were examined; these were either recommended for measuring multimorbidity, used in previous highly cited studies of multimorbidity prevalence, or widely applied measures of “comorbidity.” Multimorbidity prevalence using these lists varied from 11.1% to 36.4%. A limitation of the study is that conditions were not always replicated using the same ascertainment rules as previous studies to improve comparability across condition-lists, but this highlights further variability in prevalence estimates across studies. CONCLUSIONS: 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.
format Online
Article
Text
id pubmed-10072475
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-100724752023-04-05 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 MacRae, Clare McMinn, Megan Mercer, Stewart W. Henderson, David McAllister, David A. Ho, Iris Jefferson, Emily Morales, Daniel R. Lyons, Jane Lyons, Ronan A. Dibben, Chris Guthrie, Bruce PLoS Med Research Article BACKGROUND: Multimorbidity prevalence rates vary considerably depending on the conditions considered in the morbidity count, but there is no standardised approach to the number or selection of conditions to include. METHODS AND FINDINGS: We conducted a cross-sectional study using English primary care data for 1,168,260 participants who were all people alive and permanently registered with 149 included general practices. Outcome measures of the study were prevalence estimates of multimorbidity (defined as ≥2 conditions) when varying the number and selection of conditions considered for 80 conditions. Included conditions featured in ≥1 of the 9 published lists of conditions examined in the study and/or phenotyping algorithms in the Health Data Research UK (HDR-UK) Phenotype Library. First, multimorbidity prevalence was calculated when considering the individually most common 2 conditions, 3 conditions, etc., up to 80 conditions. Second, prevalence was calculated using 9 condition-lists from published studies. Analyses were stratified by dependent variables age, socioeconomic position, and sex. Prevalence when only the 2 commonest conditions were considered was 4.6% (95% CI [4.6, 4.6] p < 0.001), rising to 29.5% (95% CI [29.5, 29.6] p < 0.001) considering the 10 commonest, 35.2% (95% CI [35.1, 35.3] p < 0.001) considering the 20 commonest, and 40.5% (95% CI [40.4, 40.6] p < 0.001) when considering all 80 conditions. The threshold number of conditions at which multimorbidity prevalence was >99% of that measured when considering all 80 conditions was 52 for the whole population but was lower in older people (29 in >80 years) and higher in younger people (71 in 0- to 9-year-olds). Nine published condition-lists were examined; these were either recommended for measuring multimorbidity, used in previous highly cited studies of multimorbidity prevalence, or widely applied measures of “comorbidity.” Multimorbidity prevalence using these lists varied from 11.1% to 36.4%. A limitation of the study is that conditions were not always replicated using the same ascertainment rules as previous studies to improve comparability across condition-lists, but this highlights further variability in prevalence estimates across studies. CONCLUSIONS: 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. Public Library of Science 2023-04-04 /pmc/articles/PMC10072475/ /pubmed/37014910 http://dx.doi.org/10.1371/journal.pmed.1004208 Text en © 2023 MacRae et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
MacRae, Clare
McMinn, Megan
Mercer, Stewart W.
Henderson, David
McAllister, David A.
Ho, Iris
Jefferson, Emily
Morales, Daniel R.
Lyons, Jane
Lyons, Ronan A.
Dibben, Chris
Guthrie, Bruce
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
title 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
title_full 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
title_fullStr 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
title_full_unstemmed 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
title_short 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
title_sort impact of varying the number and selection of conditions on estimated multimorbidity prevalence: a cross-sectional study using a large, primary care population dataset
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10072475/
https://www.ncbi.nlm.nih.gov/pubmed/37014910
http://dx.doi.org/10.1371/journal.pmed.1004208
work_keys_str_mv AT macraeclare theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT mcminnmegan theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT mercerstewartw theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT hendersondavid theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT mcallisterdavida theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT hoiris theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT jeffersonemily theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT moralesdanielr theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT lyonsjane theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT lyonsronana theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT dibbenchris theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT guthriebruce theimpactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT macraeclare impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT mcminnmegan impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT mercerstewartw impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT hendersondavid impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT mcallisterdavida impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT hoiris impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT jeffersonemily impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT moralesdanielr impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT lyonsjane impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT lyonsronana impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT dibbenchris impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset
AT guthriebruce impactofvaryingthenumberandselectionofconditionsonestimatedmultimorbidityprevalenceacrosssectionalstudyusingalargeprimarycarepopulationdataset