Literature DB >> 29577489

Alternative evaluation metrics for risk adjustment methods.

Sungchul Park1, Anirban Basu1,2,3.   

Abstract

Risk adjustment is instituted to counter risk selection by accurately equating payments with expected expenditures. Traditional risk-adjustment methods are designed to estimate accurate payments at the group level. However, this generates residual risks at the individual level, especially for high-expenditure individuals, thereby inducing health plans to avoid those with high residual risks. To identify an optimal risk-adjustment method, we perform a comprehensive comparison of prediction accuracies at the group level, at the tail distributions, and at the individual level across 19 estimators: 9 parametric regression, 7 machine learning, and 3 distributional estimators. Using the 2013-2014 MarketScan database, we find that no one estimator performs best in all prediction accuracies. Generally, machine learning and distribution-based estimators achieve higher group-level prediction accuracy than parametric regression estimators. However, parametric regression estimators show higher tail distribution prediction accuracy and individual-level prediction accuracy, especially at the tails of the distribution. This suggests that there is a trade-off in selecting an appropriate risk-adjustment method between estimating accurate payments at the group level and lower residual risks at the individual level. Our results indicate that an optimal method cannot be determined solely on the basis of statistical metrics but rather needs to account for simulating plans' risk selective behaviors.
Copyright © 2018 John Wiley & Sons, Ltd.

Keywords:  individual-level prediction accuracy; models for health care expenditures; residual risk; risk adjustment; risk selection

Mesh:

Year:  2018        PMID: 29577489     DOI: 10.1002/hec.3657

Source DB:  PubMed          Journal:  Health Econ        ISSN: 1057-9230            Impact factor:   3.046


  7 in total

1.  Medicare Claim-Based National Institutes of Health Stroke Scale to Predict 30-Day Mortality and Hospital Readmission.

Authors:  Amit Kumar; Indrakshi Roy; Pamela R Bosch; Corey R Fehnel; Nicholas Garnica; Jon Cook; Meghan Warren; Amol M Karmarkar
Journal:  J Gen Intern Med       Date:  2021-10-26       Impact factor: 6.473

2.  Machine learning versus regression modelling in predicting individual healthcare costs from a representative sample of the nationwide claims database in France.

Authors:  Alexandre Vimont; Henri Leleu; Isabelle Durand-Zaleski
Journal:  Eur J Health Econ       Date:  2021-08-09

3.  Inequities in Access to Care and Health Care Spending for Asian Americans With Cancer.

Authors:  Sungchul Park; Jie Chen; Grace X Ma; Alexander N Ortega
Journal:  Med Care       Date:  2021-06-01       Impact factor: 3.178

4.  Incorporating machine learning and social determinants of health indicators into prospective risk adjustment for health plan payments.

Authors:  Jeremy A Irvin; Andrew A Kondrich; Michael Ko; Pranav Rajpurkar; Behzad Haghgoo; Bruce E Landon; Robert L Phillips; Stephen Petterson; Andrew Y Ng; Sanjay Basu
Journal:  BMC Public Health       Date:  2020-05-01       Impact factor: 3.295

5.  An examination of machine learning to map non-preference based patient reported outcome measures to health state utility values.

Authors:  Mona Aghdaee; Bonny Parkinson; Kompal Sinha; Yuanyuan Gu; Rajan Sharma; Emma Olin; Henry Cutler
Journal:  Health Econ       Date:  2022-06-15       Impact factor: 2.395

6.  Fair regression for health care spending.

Authors:  Anna Zink; Sherri Rose
Journal:  Biometrics       Date:  2020-01-06       Impact factor: 2.571

7.  Intersections of machine learning and epidemiological methods for health services research.

Authors:  Sherri Rose
Journal:  Int J Epidemiol       Date:  2021-01-23       Impact factor: 7.196

  7 in total

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