| Literature DB >> 27942966 |
Richard C van Kleef1, Thomas G McGuire2,3, René C J A van Vliet4, Wynand P P M van de Ven4.
Abstract
State-of-the-art risk equalization models undercompensate some risk groups and overcompensate others, leaving systematic incentives for risk selection. A natural approach to reducing the under- or overcompensation for a particular group is enriching the risk equalization model with risk adjustor variables that indicate membership in that group. For some groups, however, appropriate risk adjustor variables may not (yet) be available. For these situations, this paper proposes an alternative approach to reducing under- or overcompensation: constraining the estimated coefficients of the risk equalization model such that the under- or overcompensation for a group of interest equals a fixed amount. We show that, compared to ordinary least-squares, constrained regressions can reduce under/overcompensation for some groups but increase under/overcompensation for others. In order to quantify this trade-off two fundamental questions need to be answered: "Which groups are relevant in terms of risk selection actions?" and "What is the relative importance of under- and overcompensation for these groups?" By making assumptions on these aspects we empirically evaluate a particular set of constraints using individual-level data from the Netherlands (N = 16.5 million). We find that the benefits of introducing constraints in terms of reduced under/overcompensations for some groups can be worth the costs in terms of increased under/overcompensations for others. Constrained regressions add a tool for developing risk equalization models that can improve the overall economic performance of health plan payment schemes.Entities:
Keywords: Capitation; Constrained regression; Health insurance; Risk equalization; Risk selection
Mesh:
Year: 2016 PMID: 27942966 PMCID: PMC5641290 DOI: 10.1007/s10198-016-0859-1
Source DB: PubMed Journal: Eur J Health Econ ISSN: 1618-7598
Population frequency and medical spending (in euros, 2012) at aggregated levels of risk characteristics (N = 16.5 million)
| Population frequency (%) | Medical spending | ||
|---|---|---|---|
| Mean | SD | ||
| Men, <65 | 42 | 1207 | 5893 |
| Men, ≥65 | 8 | 4612 | 11,050 |
| Women, <65 | 41 | 1487 | 5212 |
| Women, ≥65 | 9 | 4123 | 8889 |
| Region, clusters 1–5 | 50 | 1979 | 6941 |
| Region, clusters 6–10 | 50 | 1719 | 6237 |
| Source of income, reference group (age <18 or >64) | 38 | 2477 | 8235 |
| Source of income, disability benefits | 5 | 3817 | 10,570 |
| Source of income, social security benefits | 2 | 2321 | 7110 |
| Source of income, student | 3 | 588 | 2717 |
| Source of income, self-employment | 4 | 1012 | 3814 |
| Source of income, other (including employment) | 48 | 1282 | 4541 |
| Socioeconomic status, home address >15 residents | 1 | 4507 | 10,219 |
| Socioeconomic status, income deciles 1–3 | 30 | 1842 | 6526 |
| Socioeconomic status, income deciles 4–7 | 40 | 1869 | 6527 |
| Socioeconomic status, income deciles 8–10 | 30 | 1721 | 6555 |
| Pharmacy-based cost group (PCG) | |||
| No | 82 | 1212 | 5199 |
| Yes | 18 | 4751 | 10,417 |
| Diagnoses-based cost group (DCG) | |||
| No | 91 | 1353 | 4921 |
| Yes | 9 | 6855 | 14,530 |
| Durable medical equipment cost group (DMECG) | |||
| No | 99 | 1772 | 6382 |
| Yes | 1 | 10,933 | 17,099 |
| Multiple-year high cost group (MHCG) | |||
| No | 94 | 1378 | 4957 |
| Yes | 6 | 9536 | 17,056 |
| PCG, DCG, DMECG and/or MHCG | |||
| No | 77 | 984 | 4106 |
| Yes | 23 | 4784 | 11,090 |
| Total population | 100 | 1848 | 6597 |
Population frequency, medical spending and under/overcompensation by the Dutch RE model of 2015 (base model) in euros (2012) for the 4 omitted and 16 included indicators studied in our empirical analyses (N = 16.5 million)
| Population frequency (%) | Medical spending | Under/overcompensation base model | ||
|---|---|---|---|---|
| Mean | SD | |||
| Omitted indicators | ||||
| Use of home care in | ||||
| No | 97.31 | 1659 | 5985 | 34 |
| Yes | 2.69 | 8696 | 16,541 | −1231 |
| Use of physiotherapy in | ||||
| No | 97.62 | 1737 | 6313 | 23 |
| Yes | 2.38 | 6422 | 13,124 | −922 |
| Included indicators | ||||
| No DCG | 91.00 | 1353 | 4921 | 0 |
| DCG1 | 0.67 | 5573 | 8943 | 0 |
| DCG2 | 1.49 | 4649 | 8100 | 0 |
| DCG3 | 1.11 | 4196 | 8243 | 0 |
| DCG4 | 1.80 | 5058 | 9541 | 0 |
| DCG5 | 1.16 | 6291 | 11,420 | 0 |
| DCG6 | 1.26 | 7645 | 13,461 | 0 |
| DCG7 | 0.55 | 8832 | 15,511 | 0 |
| DCG8 | 0.12 | 10,039 | 15,978 | 0 |
| DCG9 | 0.30 | 9582 | 18,583 | 0 |
| DCG10 | 0.33 | 13,175 | 20,678 | 0 |
| DCG11 | 0.04 | 14,557 | 25,078 | 0 |
| DCG12 | 0.07 | 17,107 | 28,243 | 0 |
| DCG13 | 0.04 | 25,105 | 41,154 | 0 |
| DCG14 | 0.04 | 90,296 | 42,858 | 0 |
| DCG15 | 0.01 | 62,451 | 110,800 | 0 |
| Total population | 100 | 1848 | 6597 | 0 |
Results (euros, 2012) for the base model and for ten single-constraint models
|
| CPM (×100%) | |
|---|---|---|
| Base model | 22.5% | 24.8% |
| Base model + single constraint to limit undercompensation for users of | ||
| 20% | 22.5% | 24.9% |
| 40% | 22.5% | 24.9% |
| 60% | 22.4% | 24.9% |
| 80% | 22.3% | 24.9% |
| 100% | 22.2% | 24.8% |
| Base model + single constraint to limit undercompensation for users of | ||
| 20% | 22.5% | 24.9% |
| 40% | 22.5% | 25.0% |
| 60% | 22.4% | 25.0% |
| 80% | 22.2% | 25.0% |
| 100% | 22.0% | 24.8% |
Fig. 1Results (euros, 2012) for the base model (N = 16.5 m) and for the same model supplemented with a single constraint to reduce undercompensation in year t for users of home care in t−1
Fig. 2Results (euros, 2012) for the base model (N = 16.5 m) and for the same model supplemented with a single constraint to reduce undercompensation in year t for users of physiotherapy in t−1
Fig. 3Over- and undercompensation in year t in three models (N = 16.5 m)
Fig. 4Base model (N = 16.5 m) with constraints on undercompensation for users of home care in prior year: weighted mean squared deviation (WMSD) for two sets of mutually exclusive groups
Fig. 5Base model (N = 16.5 m) with constraints on undercompensation for users of home care in prior year: weighted mean squared deviation (WMSD) for full population segmented into 64 groups by home care (Y/N), physiotherapy (Y/N) and 16 DCGs
Fig. 6Normalized weighted mean absolute deviations (euros, 2012) for 64 mutually exclusive groups for exponential weights on deviations of p = 1 and p = 2 (N = 16.5 m)
Fig. 7Population frequency (%) and average under- or overcompensation (euros, 2012) for prior-year survey-based indicators not included in the base model and not included in constraints (N = 14,310)