Scalable and Locally Applicable Measures of Treatment Variation That Use Hospital Billing Data

Care variation studies often use large amounts of data but approaches developed for such research are either scalable but not locally applicable or locally applicable but not scalable. We present a method that is scalable and locally applicable while being statistically significant. Using a population of patients diagnosed with both congestive heart failure and myocardial infarction, we developed and tested measures of care variation on data derived from hospital billing records. Our metrics yielded statistically significant results. Computing time for the method was found to increase linearly allowing for the desired scalability. In the future, our care variation metrics be used to gain insight into local conditions that correlate with outcomes of interest like visit charges or morbidity rates.

[1]  S. Reis,et al.  Treatment of patients admitted to the hospital with congestive heart failure: specialty-related disparities in practice patterns and outcomes. , 1997, Journal of the American College of Cardiology.

[2]  C. O'connor,et al.  Heart Failure Care in the Outpatient Cardiology Practice Setting: Findings From IMPROVE HF , 2008, Circulation. Heart failure.

[3]  A. Remppis,et al.  Physician and Patient Predictors of Evidence-Based Prescribing in Heart Failure: A Multilevel Study , 2012, PloS one.

[4]  G. Fonarow,et al.  Predictors of in-hospital mortality in patients hospitalized for heart failure: insights from the Organized Program to Initiate Lifesaving Treatment in Hospitalized Patients with Heart Failure (OPTIMIZE-HF). , 2008, Journal of the American College of Cardiology.

[5]  S. Yusuf,et al.  Natural history and patterns of current practice in heart failure , 1993 .

[6]  L. Bosco,et al.  Variations in the use of medication for the treatment of childhood asthma in the Michigan Medicaid population, 1980 to 1986. , 1993, Chest.

[7]  D M Eddy,et al.  Variations in physician practice: the role of uncertainty. , 1984, Health affairs.

[8]  A. Hungin,et al.  Barriers to accurate diagnosis and effective management of heart failure in primary care: qualitative study , 2003, BMJ : British Medical Journal.

[9]  J. Wennberg,et al.  Unwarranted variations in healthcare delivery: implications for academic medical centres , 2002, BMJ : British Medical Journal.

[10]  C. K. Lynn,et al.  Cardiologist versus internist management of patients with unstable angina: treatment patterns and outcomes. , 1996, Journal of the American College of Cardiology.

[11]  B. Fitzgerald Guidance Regarding Methods for De-identification of Protected Health Information in Accordance with the Health Insurance Portability and Accountability Act (HIPAA) Privacy Rule , 2015 .

[12]  A. Majeed,et al.  Age, sex and practice variations in the use of statins in general practice in England and Wales. , 2000, Journal of public health medicine.

[13]  D. Wennberg,et al.  Variation in Cardiologists' Propensity to Test and Treat: Is It Associated With Regional Variation in Utilization? , 2010, Circulation. Cardiovascular quality and outcomes.

[14]  A. Gittelsohn,et al.  Small Area Variations in Health Care Delivery , 1973, Science.

[15]  David Morganstein,et al.  Recall Error: Sources and Bias Reduction Techniques , 2011 .

[16]  S. Coughlin Recall bias in epidemiologic studies. , 1990, Journal of clinical epidemiology.

[17]  P. Loy International Classification of Diseases--9th revision. , 1978, Medical record and health care information journal.

[18]  J. Tu,et al.  Determinants of variations in coronary revascularization practices , 2012, Canadian Medical Association Journal.

[19]  J. Wheeler,et al.  Clinical decision making in pain management: Contributions of physician and patient characteristics to variations in practice. , 2003, The journal of pain : official journal of the American Pain Society.

[20]  H. Jacobe,et al.  Morphea in adults and children cohort II: patients with morphea experience delay in diagnosis and large variation in treatment. , 2012, Journal of the American Academy of Dermatology.

[21]  J. Gastwirth The Estimation of the Lorenz Curve and Gini Index , 1972 .

[22]  C. Camargo,et al.  Elderly patients receive less aggressive medical and invasive management of unstable angina: potential impact of practice guidelines. , 1998, Archives of internal medicine.

[23]  Pete Stark,et al.  Congressional intent for the HITECH Act. , 2010, The American journal of managed care.

[24]  D. Margolin,et al.  Physician coding and reimbursement. , 2007, The Ochsner journal.

[25]  Shaleah Levant,et al.  Electronic collection of inpatient and ambulatory hospital care data: national hospital care survey , 2012, dg.o '12.

[26]  J. Weinstein,et al.  Geographic Variation in the Surgical Treatment of Degenerative Cervical Disc Disease: American Board of Orthopedic Surgery Quality Improvement Initiative; Part II Candidates , 2012, Spine.

[27]  Nancy M Albert,et al.  HFSA 2010 Comprehensive Heart Failure Practice Guideline. , 2010, Journal of cardiac failure.

[28]  D. Baker,et al.  Variations in family physicians' and cardiologists' care for patients with heart failure. , 1999, American heart journal.

[29]  J. Whittle,et al.  Racial differences in the use of invasive cardiovascular procedures in the Department of Veterans Affairs medical system. , 1993, The New England journal of medicine.

[30]  C. Gini Measurement of Inequality of Incomes , 1921 .

[31]  C. Yancy,et al.  Temporal trends in clinical characteristics, treatments, and outcomes for heart failure hospitalizations, 2002 to 2004: findings from Acute Decompensated Heart Failure National Registry (ADHERE). , 2007, American heart journal.

[32]  E. Fisher,et al.  Regional Variation in Carotid Artery Stenting and Endarterectomy in the Medicare Population , 2010, Circulation. Cardiovascular quality and outcomes.

[33]  B. Massie,et al.  Differences between primary care physicians and cardiologists in management of congestive heart failure: relation to practice guidelines. , 1997, Journal of the American College of Cardiology.

[34]  Ashish K. Jha,et al.  Record Systems Small , Nonteaching , And Rural Hospitals Continue To Be Slow In Adopting Electronic , 2012 .