Cargando…

The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report

OBJECTIVE: To examine agreement between administrative and self-reported data on the number of and constituent chronic conditions (CCs) used to measure multimorbidity. STUDY DESIGN AND SETTING: Cross-sectional self-reported survey data from four Canadian Community Health Survey waves were linked to...

Descripción completa

Detalles Bibliográficos
Autores principales: Griffith, Lauren E, Gruneir, Andrea, Fisher, Kathryn A, Upshur, Ross, Patterson, Christopher, Perez, Richard, Favotto, Lindsay, Markle-Reid, Maureen, Ploeg, Jenny
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7323264/
https://www.ncbi.nlm.nih.gov/pubmed/32637362
http://dx.doi.org/10.1177/2235042X20931287
_version_ 1783551758550695936
author Griffith, Lauren E
Gruneir, Andrea
Fisher, Kathryn A
Upshur, Ross
Patterson, Christopher
Perez, Richard
Favotto, Lindsay
Markle-Reid, Maureen
Ploeg, Jenny
author_facet Griffith, Lauren E
Gruneir, Andrea
Fisher, Kathryn A
Upshur, Ross
Patterson, Christopher
Perez, Richard
Favotto, Lindsay
Markle-Reid, Maureen
Ploeg, Jenny
author_sort Griffith, Lauren E
collection PubMed
description OBJECTIVE: To examine agreement between administrative and self-reported data on the number of and constituent chronic conditions (CCs) used to measure multimorbidity. STUDY DESIGN AND SETTING: Cross-sectional self-reported survey data from four Canadian Community Health Survey waves were linked to administrative data for residents of Ontario, Canada. Agreement for each of 12 CCs was assessed using kappa (κ) statistics. For the overall number of CCs, perfect agreement was defined as agreement on both the number and constituent CCs. Jackknife methods were used to assess the impact of individual CCs on perfect agreement. RESULTS: The level of chance-adjusted agreement between self-report and administrative data for individual CCs varied widely, from κ = 5.5% (inflammatory bowel disease) to κ = 77.5% (diabetes), and there was no clear pattern on whether using administrative data or self-reported data led to higher prevalence estimates. Only 26.9% of participants had perfect agreement on the number and constituent CCs; 10.6% agreed on the number but not constituent CCs. The impact of each CC on perfect agreement depended on both the level of agreement and the prevalence of the individual CC. CONCLUSION: Our results show that measuring agreement on multimorbidity is more complex than for individual CCs and that even small levels of individual condition disagreement can have a large impact on the agreement on the number of CCs.
format Online
Article
Text
id pubmed-7323264
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher SAGE Publications
record_format MEDLINE/PubMed
spelling pubmed-73232642020-07-06 The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report Griffith, Lauren E Gruneir, Andrea Fisher, Kathryn A Upshur, Ross Patterson, Christopher Perez, Richard Favotto, Lindsay Markle-Reid, Maureen Ploeg, Jenny J Comorb Article OBJECTIVE: To examine agreement between administrative and self-reported data on the number of and constituent chronic conditions (CCs) used to measure multimorbidity. STUDY DESIGN AND SETTING: Cross-sectional self-reported survey data from four Canadian Community Health Survey waves were linked to administrative data for residents of Ontario, Canada. Agreement for each of 12 CCs was assessed using kappa (κ) statistics. For the overall number of CCs, perfect agreement was defined as agreement on both the number and constituent CCs. Jackknife methods were used to assess the impact of individual CCs on perfect agreement. RESULTS: The level of chance-adjusted agreement between self-report and administrative data for individual CCs varied widely, from κ = 5.5% (inflammatory bowel disease) to κ = 77.5% (diabetes), and there was no clear pattern on whether using administrative data or self-reported data led to higher prevalence estimates. Only 26.9% of participants had perfect agreement on the number and constituent CCs; 10.6% agreed on the number but not constituent CCs. The impact of each CC on perfect agreement depended on both the level of agreement and the prevalence of the individual CC. CONCLUSION: Our results show that measuring agreement on multimorbidity is more complex than for individual CCs and that even small levels of individual condition disagreement can have a large impact on the agreement on the number of CCs. SAGE Publications 2020-06-26 /pmc/articles/PMC7323264/ /pubmed/32637362 http://dx.doi.org/10.1177/2235042X20931287 Text en © The Author(s) 2020 https://creativecommons.org/licenses/by-nc/4.0/ This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Article
Griffith, Lauren E
Gruneir, Andrea
Fisher, Kathryn A
Upshur, Ross
Patterson, Christopher
Perez, Richard
Favotto, Lindsay
Markle-Reid, Maureen
Ploeg, Jenny
The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report
title The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report
title_full The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report
title_fullStr The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report
title_full_unstemmed The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report
title_short The hidden complexity of measuring number of chronic conditions using administrative and self-report data: A short report
title_sort hidden complexity of measuring number of chronic conditions using administrative and self-report data: a short report
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7323264/
https://www.ncbi.nlm.nih.gov/pubmed/32637362
http://dx.doi.org/10.1177/2235042X20931287
work_keys_str_mv AT griffithlaurene thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT gruneirandrea thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT fisherkathryna thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT upshurross thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT pattersonchristopher thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT perezrichard thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT favottolindsay thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT marklereidmaureen thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT ploegjenny thehiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT griffithlaurene hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT gruneirandrea hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT fisherkathryna hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT upshurross hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT pattersonchristopher hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT perezrichard hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT favottolindsay hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT marklereidmaureen hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport
AT ploegjenny hiddencomplexityofmeasuringnumberofchronicconditionsusingadministrativeandselfreportdataashortreport