Spatial risk adjustment between health insurances: using GWR in risk adjustment models to conserve incentives for service optimisation and reduce MAUP

被引:11
|
作者
Wende, Danny [1 ]
机构
[1] Wissensch Inst Gesundheitsokon & Gesundheitssyst, Markt 8, D-04109 Leipzig, Germany
来源
EUROPEAN JOURNAL OF HEALTH ECONOMICS | 2019年 / 20卷 / 07期
关键词
Health insurance; Health care utilisation; Risk adjustment; Geographic variations; Germany; GEOGRAPHICALLY WEIGHTED REGRESSION; REGIONAL-VARIATIONS; AREA DEPRIVATION; CARE UTILIZATION; SELECTION; GERMANY; DETERMINANTS; EQUALIZATION; INEQUALITIES; IMPACT;
D O I
10.1007/s10198-019-01079-6
中图分类号
F [经济];
学科分类号
02 ;
摘要
This paper presents a new approach to deal with spatial inequalities in risk adjustment between health insurances. The shortcomings of non-spatial and spatial fixed effects in risk adjustment models are analysed and opposed against spatial kernel estimators. Theoretical and empirical evidence suggests that a reasonable choice of the spatial kernel could limit the spatial uncertainty of the modifiable area unit problem under heavy-tailed claims data, leading to more precise predictions and economically positive incentives on the healthcare market. A case study of the German risk adjustment shows a spatial risk spread of 86 Euro p.c., leading to incentives for spatial risk selection. The proposed estimator eliminates this issue and conserves incentives for services optimisation.
引用
收藏
页码:1079 / 1091
页数:13
相关论文
共 50 条
  • [41] Comparison of alternative risk adjustment measures for predictive modeling: high risk patient case finding using Taiwan's National Health Insurance claims
    Chang, Hsien-Yen
    Lee, Wui-Chiang
    Weiner, Jonathan P.
    BMC HEALTH SERVICES RESEARCH, 2010, 10
  • [42] Risk Adjustment for Lumbar Dysfunction: Comparison of Linear Mixed Models With and Without Inclusion of Between-Clinic Variation as a Random Effect
    Yen, Sheng-Che
    Corkery, Marie B.
    Chui, Kevin K.
    Manjourides, Justin
    Wang, Ying-Chih
    Resnik, Linda J.
    PHYSICAL THERAPY, 2015, 95 (12): : 1692 - 1702
  • [43] Using Enriched Observational Data to Develop and Validate Age-specific Mortality Risk Adjustment Models for Hospitalized Pediatric Patients
    Tabak, Ying P.
    Sun, Xiaowu
    Hyde, Linda
    Yaitanes, Ayla
    Derby, Karen
    Johannes, Richard S.
    MEDICAL CARE, 2013, 51 (05) : 437 - 445
  • [44] Impact of Area Deprivation Index on the Performance of Claims-Based Risk-Adjustment Models in Predicting Health Care Costs and Utilization
    Chang, Hsien-Yen
    Hatef, Elham
    Ma, Xiaomeng
    Weiner, Jonathan P.
    Kharrazi, Hadi
    POPULATION HEALTH MANAGEMENT, 2021, 24 (03) : 403 - 411
  • [45] Optimizing Hierarchical Condition Category-Risk Adjustment Factor Management in Population Health Using Rapid Process Improvement Methods
    Benjamin, Karri L.
    Meyer, Brett C.
    Pan, Jeff
    Guidi, Susie R.
    Carreno, Shivon
    Nguyen, Khai
    Hofflich, Heather
    Timmerman, Nathan C.
    Eckenrodt, Constance
    Kollipara, Usha
    Lopez, Leann
    Albright, Michelle G.
    Satre, Matthew P.
    Haley, Eileen M.
    Agnihotri, Parag
    POPULATION HEALTH MANAGEMENT, 2024, 27 (06) : 365 - 373
  • [46] Attenuation of the association between sugar-sweetened beverages and diabetes risk by adiposity adjustment: a secondary analysis of national health survey data
    Yi Jing
    Thang S. Han
    Majid M. Alkhalaf
    Michael E. J. Lean
    European Journal of Nutrition, 2019, 58 : 1703 - 1710
  • [47] Attenuation of the association between sugar-sweetened beverages and diabetes risk by adiposity adjustment: a secondary analysis of national health survey data
    Jing, Yi
    Han, Thang S.
    Alkhalaf, Majid M.
    Lean, Michael E. J.
    EUROPEAN JOURNAL OF NUTRITION, 2019, 58 (04) : 1703 - 1710
  • [48] Exploring the use of machine learning for risk adjustment: A comparison of standard and penalized linear regression models in predicting health care costs in older adults
    Kan, Hong J.
    Kharrazi, Hadi
    Chang, Hsien-Yen
    Bodycombe, Dave
    Lemke, Klaus
    Weiner, Jonathan P.
    PLOS ONE, 2019, 14 (03):
  • [49] Can Adding Laboratory Values Improve Risk-Adjustment Mortality Models Using Clinical Percutaneous Cardiac Intervention Registry Data?
    Qian, Feng
    Hannan, Edward L.
    Pine, Michael
    Fry, Donald E.
    Whitman, Kay
    Dennison, Barbara A.
    JOURNAL OF INVASIVE CARDIOLOGY, 2015, 27 (07): : E117 - E124
  • [50] Using automated clinical data for risk adjustment - Development and validation of six disease-specific mortality predictive models for pay-for-performance
    Tabak, Ying P.
    Johannes, Richard S.
    Silber, Jeffrey H.
    MEDICAL CARE, 2007, 45 (08) : 789 - 805