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 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 (R2=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.

[1]  United States Government Accountability Office GAO Report to Congressional Committees MEDICARE PHYSICIAN PAYMENT Care Coordination Programs Used in Demonstration Show Promise , but Wider Use of Payment Approach May Be Limited , 2008 .

[2]  E. Fisher,et al.  Geographic variation in expenditures for physicians' services in the United States. , 1993, The New England journal of medicine.

[3]  P. Pronovost,et al.  Using hospital mortality rates to judge hospital performance: a bad idea that just won’t go away , 2010, BMJ : British Medical Journal.

[4]  Qiong Zhou,et al.  Looking Forward, Looking Back: Assessing Variations in Hospital Resource Use and Outcomes for Elderly Patients With Heart Failure , 2009, Circulation. Cardiovascular quality and outcomes.

[5]  G. Westert,et al.  Measuring and explaining mortality in Dutch hospitals; The Hospital Standardized Mortality Rate between 2003 and 2005 , 2008, BMC health services research.

[6]  José Suárez-Lledó,et al.  The Black Swan: The Impact of the Highly Improbable , 2011 .

[7]  Peter C Smith,et al.  A person based formula for allocating commissioning funds to general practices in England: development of a statistical model , 2011, BMJ : British Medical Journal.

[8]  Jon Nicholl,et al.  Case-mix adjustment in non-randomised observational evaluations: the constant risk fallacy , 2007, Journal of Epidemiology & Community Health.

[9]  Julie Bynum,et al.  Regional variations in diagnostic practices. , 2010, The New England journal of medicine.

[10]  L I Iezzoni,et al.  Explaining differences in English hospital death rates using routinely collected data , 1999, BMJ.

[11]  F. Schut,et al.  Universal mandatory health insurance in the Netherlands: a model for the United States? , 2008, Health affairs.

[12]  A. Jena,et al.  Hospital Spending and Inpatient Mortality: Evidence From California , 2011, Annals of Internal Medicine.

[13]  Laurence C Baker,et al.  Integrated telehealth and care management program for Medicare beneficiaries with chronic disease linked to savings. , 2011, Health affairs.

[14]  J. Silber,et al.  Aggressive treatment style and surgical outcomes. , 2010, Health services research.

[15]  H. Mooney Marmot says government can’t afford to ignore health inequality , 2010, BMJ : British Medical Journal.

[16]  J. Freeman,et al.  ARE HOSPITAL SERVICES RATIONED IN NEW HAVEN OR OVER-UTILISED IN BOSTON? , 1987, The Lancet.

[17]  K. McPherson,et al.  Will payment based on diagnosis-related groups control hospital costs? , 1984, The New England journal of medicine.

[18]  John E. Wennberg,et al.  Geographic Variation in Expenditures for Physicians' Services in the United States , 1993 .

[19]  B. Barnes,et al.  Professional uncertainty and the problem of supplier-induced demand. , 1982, Social science & medicine.

[20]  J. Skinner,et al.  Geographic variation in diagnosis frequency and risk of death among Medicare beneficiaries. , 2011, JAMA.

[21]  James S. Goodwin,et al.  Tracking Medicine: A Researcher's Quest to Understand Health Care By John E. Wennberg , 2011 .

[22]  J. Skinner,et al.  Prices don't drive regional Medicare spending variations. , 2010, Health affairs.

[23]  Lisa I. Iezzoni,et al.  Risk Adjustment of Medicare Capitation Payments Using the CMS-HCC Model , 2004, Health care financing review.

[24]  J. Deeks,et al.  Evidence of methodological bias in hospital standardised mortality ratios: retrospective database study of English hospitals , 2009, BMJ : British Medical Journal.

[25]  Nassim Nicholas Taleb,et al.  The Black Swan: The Impact of the Highly Improbable , 2007 .

[26]  Timothy L Lash,et al.  25 year trends in first time hospitalisation for acute myocardial infarction, subsequent short and long term mortality, and the prognostic impact of sex and comorbidity: a Danish nationwide cohort study , 2012, BMJ : British Medical Journal.

[27]  John E. Wennberg,et al.  Tracking the Care of Patients with Severe Chronic Illness: The Dartmouth Atlas of Health Care 2008 , 2008 .

[28]  G. Coffman,et al.  Chronic conditions and risk of in-hospital death. , 1994, Health services research.

[29]  G. Bevan The Search for a Proportionate Care Law by Formula Funding in the English NHS , 2009 .

[30]  Duncan J Macfarlane,et al.  Physical activity for cancer survivors: meta-analysis of randomised controlled trials , 2012, BMJ : British Medical Journal.

[31]  C. Mackenzie,et al.  A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. , 1987, Journal of chronic diseases.

[32]  W W Holland,et al.  Can hospital use be a measure of need for health care? , 1987, Journal of epidemiology and community health.