Data transformations to improve the performance of health plan payment methods.

The conventional method for developing health care plan payment systems uses observed data to study alternative algorithms and set incentives for the health care system. In this paper, we take a different approach and transform the input data rather than the algorithm, so that the data used reflect the desired spending levels rather than the observed spending levels. We present a general economic model that incorporates the previously overlooked two-way relationship between health plan payment and insurer actions. We then demonstrate our systematic approach for data transformations in two Medicare applications: underprovision of care for individuals with chronic illnesses and health care disparities by geographic income levels. Empirically comparing our method to two other common approaches shows that the "side effects" of these approaches vary by context, and that data transformation is an effective tool for addressing misallocations in individual health insurance markets.

[1]  J. Wasem,et al.  Health Plan Payment in Germany , 2018 .

[2]  Risk equalization in The Netherlands: an empirical evaluation , 2013, Expert review of pharmacoeconomics & outcomes research.

[3]  Jacob Glazer,et al.  Measuring Adverse Selection in Managed Health Care , 1998, Journal of health economics.

[4]  Colleen M. Carey,et al.  Technological Change and Risk Adjustment: Benefit Design Incentives in Medicare Part D† , 2017 .

[5]  T. Mcguire,et al.  Evaluating the Performance of Health Plan Payment Systems , 2018 .

[6]  Kurt Lavetti,et al.  Strategic Formulary Design in Medicare Part D Plans. , 2018, American economic journal. Economic policy.

[7]  R. V. van Kleef,et al.  Is there one measure-of-fit that fits all? A taxonomy and review of measures-of-fit for risk-equalization models. , 2015, Medical care research and review : MCRR.

[8]  L. Gruenberg,et al.  Pricing strategies for capitated delivery systems , 1986, Health care financing review.

[9]  S. Normand,et al.  Assessing incentives for service-level selection in private health insurance exchanges. , 2014, Journal of health economics.

[10]  T. Layton,et al.  Screening in Contract Design: Evidence from the ACA Health Insurance Exchanges , 2016, American economic journal. Economic policy.

[11]  A. Zaslavsky,et al.  Measuring racial/ethnic disparities in health care: methods and practical issues. , 2012, Health services research.

[12]  Setting health plan premiums to ensure efficient quality in health care: minimum variance optimal risk adjustment , 2002 .

[13]  Thomas G. McGuire,et al.  Improving risk equalization with constrained regression , 2015, The European Journal of Health Economics.

[14]  J. Trushenski Pricing the Priceless , 2019, Fisheries.

[15]  E. Schokkaert,et al.  Risk selection and the specification of the conventional risk adjustment formula. , 2004, Journal of health economics.

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

[17]  Erin LeDell,et al.  Super Learner Analysis of Electronic Adherence Data Improves Viral Prediction and May Provide Strategies for Selective HIV RNA Monitoring , 2015, Journal of acquired immune deficiency syndromes.

[18]  Mark Shepard,et al.  Hospital Network Competition and Adverse Selection: Evidence from the Massachusetts Health Insurance Exchange , 2016, American Economic Review.

[19]  M. J. van der Laan,et al.  Mortality prediction in intensive care units with the Super ICU Learner Algorithm (SICULA): a population-based study. , 2015, The Lancet. Respiratory medicine.

[20]  Yiling Chen,et al.  Fairness at Equilibrium in the Labor Market , 2017, ArXiv.

[21]  W. van de Ven,et al.  A limited-sample benchmark approach to assess and improve the performance of risk equalization models. , 2010, Journal of health economics.

[22]  Sherri Rose,et al.  Computational health economics for identification of unprofitable health care enrollees , 2017, Biostatistics.

[23]  Sherri Rose,et al.  A Machine Learning Framework for Plan Payment Risk Adjustment. , 2016, Health services research.

[24]  J. Newhouse,et al.  How Much Favorable Selection Is Left in Medicare Advantage? , 2014, American Journal of Health Economics.

[25]  M. J. van der Laan,et al.  Statistical Applications in Genetics and Molecular Biology Super Learner , 2010 .

[26]  Ellen Montz,et al.  Risk-Adjustment Simulation: Plans May Have Incentives To Distort Mental Health And Substance Use Coverage. , 2016, Health affairs.

[27]  Nancy McCall,et al.  Risk assessment of military populations to predict health care cost and utilization , 2005 .

[28]  J. Pearl Causality: Models, Reasoning and Inference , 2000 .

[29]  Sherri Rose,et al.  Risk Adjustment for Health Plan Payment , 2018 .

[30]  T. Mcguire,et al.  Deriving Risk Adjustment Payment Weights to Maximize Efficiency of Health Insurance Markets , 2016, Journal of health economics.

[31]  Anirban Basu,et al.  Alternative evaluation metrics for risk adjustment methods , 2018, Health economics.

[32]  Trevor Hastie,et al.  Regularization Paths for Generalized Linear Models via Coordinate Descent. , 2010, Journal of statistical software.

[33]  Akritee Shrestha,et al.  Mental Health Risk Adjustment with Clinical Categories and Machine Learning , 2018, Health services research.

[34]  B. Smedley,et al.  Unequal Treatment: Con-fronting Racial and Ethnic Disparities in Health Care , 2002 .

[35]  K. Lum,et al.  To predict and serve? , 2016 .

[36]  Kurt Lavetti,et al.  Does Part D abet advantageous selection in Medicare Advantage? , 2017, Journal of health economics.

[37]  Andy Liaw,et al.  Classification and Regression by randomForest , 2007 .