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Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims

Objective To determine the bias associated with frequency of visits by physicians in adjusting for illness, using diagnoses recorded in administrative databases. Setting Claims data from the US Medicare program for services provided in 2007 among 306 US hospital referral regions. Design Cross sectio...

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Autores principales: Wennberg, John E, Staiger, Douglas O, Sharp, Sandra M, Gottlieb, Daniel J, Bevan, Gwyn, McPherson, Klim, Welch, H Gilbert
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group Ltd. 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3578417/
https://www.ncbi.nlm.nih.gov/pubmed/23430282
http://dx.doi.org/10.1136/bmj.f549
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author Wennberg, John E
Staiger, Douglas O
Sharp, Sandra M
Gottlieb, Daniel J
Bevan, Gwyn
McPherson, Klim
Welch, H Gilbert
author_facet Wennberg, John E
Staiger, Douglas O
Sharp, Sandra M
Gottlieb, Daniel J
Bevan, Gwyn
McPherson, Klim
Welch, H Gilbert
author_sort Wennberg, John E
collection PubMed
description Objective To determine the bias associated with frequency of visits by physicians in adjusting for illness, using diagnoses recorded in administrative databases. Setting Claims data from the US Medicare program for services provided in 2007 among 306 US hospital referral regions. Design Cross sectional analysis. Participants 20% sample of fee for service Medicare beneficiaries residing in the United States in 2007 (n=5 153 877). Main outcome measures The effect of illness adjustment on regional mortality and spending rates using standard and visit corrected illness methods for adjustment. The standard method adjusts using comorbidity measures based on diagnoses listed in administrative databases; the modified method corrects these measures for the frequency of visits by physicians. Three conventions for measuring comorbidity are used: the Charlson comorbidity index, Iezzoni chronic conditions, and hierarchical condition categories risk scores. Results The visit corrected Charlson comorbidity index explained more of the variation in age, sex, and race mortality across the 306 hospital referral regions than did the standard index (R(2)=0.21 v 0.11, P<0.001) and, compared with sex and race adjusted mortality, reduced regional variation, whereas adjustment using the standard Charlson comorbidity index increased it. Although visit corrected and age, sex, and race adjusted mortality rates were similar in hospital referral regions with the highest and lowest fifths of visits, adjustment using the standard index resulted in a rate that was 18% lower in the highest fifth (46.4 v 56.3 deaths per 1000, P<0.001). Age, sex, and race adjusted spending as well as visit corrected spending was more than 30% greater in the highest fifth of visits than in the lowest fifth, but only 12% greater after adjustment using the standard index. Similar results were obtained using the Iezzoni and the hierarchical condition categories conventions for measuring comorbidity. Conclusion The rates of visits by physicians introduce substantial bias when regional mortality and spending rates are adjusted for illness using comorbidity measures based on the observed number of diagnoses recorded in Medicare’s administrative database. Adjusting without correction for regional variation in visit rates tends to make regions with high rates of visits seem to have lower mortality and lower costs, and vice versa. Visit corrected comorbidity measures better explain variation in age, sex, and race mortality than observed measures, and reduce observational intensity bias.
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spelling pubmed-35784172013-02-21 Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims Wennberg, John E Staiger, Douglas O Sharp, Sandra M Gottlieb, Daniel J Bevan, Gwyn McPherson, Klim Welch, H Gilbert BMJ Research Objective To determine the bias associated with frequency of visits by physicians in adjusting for illness, using diagnoses recorded in administrative databases. Setting Claims data from the US Medicare program for services provided in 2007 among 306 US hospital referral regions. Design Cross sectional analysis. Participants 20% sample of fee for service Medicare beneficiaries residing in the United States in 2007 (n=5 153 877). Main outcome measures The effect of illness adjustment on regional mortality and spending rates using standard and visit corrected illness methods for adjustment. The standard method adjusts using comorbidity measures based on diagnoses listed in administrative databases; the modified method corrects these measures for the frequency of visits by physicians. Three conventions for measuring comorbidity are used: the Charlson comorbidity index, Iezzoni chronic conditions, and hierarchical condition categories risk scores. Results The visit corrected Charlson comorbidity index explained more of the variation in age, sex, and race mortality across the 306 hospital referral regions than did the standard index (R(2)=0.21 v 0.11, P<0.001) and, compared with sex and race adjusted mortality, reduced regional variation, whereas adjustment using the standard Charlson comorbidity index increased it. Although visit corrected and age, sex, and race adjusted mortality rates were similar in hospital referral regions with the highest and lowest fifths of visits, adjustment using the standard index resulted in a rate that was 18% lower in the highest fifth (46.4 v 56.3 deaths per 1000, P<0.001). Age, sex, and race adjusted spending as well as visit corrected spending was more than 30% greater in the highest fifth of visits than in the lowest fifth, but only 12% greater after adjustment using the standard index. Similar results were obtained using the Iezzoni and the hierarchical condition categories conventions for measuring comorbidity. Conclusion The rates of visits by physicians introduce substantial bias when regional mortality and spending rates are adjusted for illness using comorbidity measures based on the observed number of diagnoses recorded in Medicare’s administrative database. Adjusting without correction for regional variation in visit rates tends to make regions with high rates of visits seem to have lower mortality and lower costs, and vice versa. Visit corrected comorbidity measures better explain variation in age, sex, and race mortality than observed measures, and reduce observational intensity bias. BMJ Publishing Group Ltd. 2013-02-21 /pmc/articles/PMC3578417/ /pubmed/23430282 http://dx.doi.org/10.1136/bmj.f549 Text en © Wennberg et al 2013 This is an open-access article distributed under the terms of the Creative Commons Attribution Non-commercial License, which permits use, distribution, and reproduction in any medium, provided the original work is properly cited, the use is non commercial and is otherwise in compliance with the license. See: http://creativecommons.org/licenses/by-nc/2.0/ and http://creativecommons.org/licenses/by-nc/2.0/legalcode.
spellingShingle Research
Wennberg, John E
Staiger, Douglas O
Sharp, Sandra M
Gottlieb, Daniel J
Bevan, Gwyn
McPherson, Klim
Welch, H Gilbert
Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims
title Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims
title_full Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims
title_fullStr Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims
title_full_unstemmed Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims
title_short Observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims
title_sort observational intensity bias associated with illness adjustment: cross sectional analysis of insurance claims
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3578417/
https://www.ncbi.nlm.nih.gov/pubmed/23430282
http://dx.doi.org/10.1136/bmj.f549
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