| Literature DB >> 28762051 |
K P M van Winssen1, R C van Kleef2, W P M M van de Ven2.
Abstract
Most health insurers in the Netherlands apply community-rating and open enrolment for supplementary health insurance, although it is offered at a free market. Theoretically, this should result in adverse selection. There are four indications that adverse selection indeed has started to occur on the Dutch supplementary insurance market. The goal of this paper is to analyze whether premium differentiation would be able to counteract adverse selection. We do this by simulating the uptake and premium development of supplementary insurance over 25 years using data on healthcare expenses and background characteristics from 110,261 insured. For the simulation of adverse selection, it is assumed that only insured for whom supplementary insurance is expected not to be beneficial will consider opting out of the insurance. Therefore, we calculate for each insured the financial profitability (by making assumptions about the consumer's expected claims and the premium set by the insurer), the individual's risk attitude and the probability to opt out or opt in. The simulation results show that adverse selection might result in a substantial decline in insurance uptake. Additionally, the simulations show that if insurers were to differentiate their premium to 28 age and gender groups, adverse selection could be modestly counteracted. Finally, this paper shows that if insurers would apply highly refined risk-rating, adverse selection for this type of supplementary insurance could be counteracted completely.Entities:
Keywords: Adverse selection; Adverse selection spiral; Death spiral; Health insurance; Premium; Premium differentiation; Supplementary insurance
Mesh:
Year: 2017 PMID: 28762051 PMCID: PMC5948292 DOI: 10.1007/s10198-017-0918-2
Source DB: PubMed Journal: Eur J Health Econ ISSN: 1618-7598
Average actual health claims under supplementary insurance (SHI) in 2011 broken down into deciles
| Decile | Percentage insureda | Average claims under SHI in 2011 (€) |
|---|---|---|
| 1 | 10 | 0 |
| 2 | 19.3 | 0 |
| 3 | 0.5 | 13.58b |
| 4 | 10.1 | 44.71 |
| 5 | 10.5 | 101.18 |
| 6 | 9.5 | 147.70 |
| 7 | 8.8 | 213.06 |
| 8 | 11.2 | 271.98 |
| 9 | 10.0 | 429.37 |
| 10 | 10.0 | 996.32 |
aThe fact that the deciles do not consist of 10% of the total number of insured is caused by the reimbursement limits. As a result, a substantial number of individuals have roughly the same amount of claims, which causes them to end up in the same decile
bNotice that due to the fact that the vast majority of the group of insured belonging to the third decile actually have zero healthcare claims, the average claims presented here are of the small group of insured belonging to the third decile who actually had claims
Fig. 1The simulation process
Average predicted claims under supplementary insurance (SHI) in 2011 broken down into deciles
| Decile | Percentage insured | Average predicted claims under SHI in 2011 (€) |
|---|---|---|
| 1 | 10 | 61.06 |
| 2 | 10 | 88.37 |
| 3 | 10 | 116.89 |
| 4 | 10 | 146.04 |
| 5 | 10 | 170.66 |
| 6 | 10 | 194.07 |
| 7 | 10 | 220.16 |
| 8 | 10 | 256.59 |
| 9 | 10 | 323.81 |
| 10 | 10 | 632.83 |
Graph 1Effect of adverse selection on the uptake of supplementary health insurance (SHI). The small ‘bumps’ in the lines are caused by the fact that the group of insured becomes less healthy as time continuous. This is firstly caused by the fact that we select a group of insured who continuously take out supplementary insurance during the entire period on which the data are based, implying that they might benefit from taking out supplementary insurance because their health might be worse than the health of those insured leaving the supplementary insurance. Secondly, this might be caused by the fact that insured age as time continuous and might develop an illness. However, since we continuously use the same data sequence (i.e., 2007–2011) the health of these insured is ‘reset’ at the beginning of each new cycle. This makes them appear to be healthy again in the analyses, while they were not healthy in the year before (since that was the last year of the sequence). Note, however, that each insured’s health still corresponds to the insured’s healthcare expenses for that year. *Within the group of insured for whom purchasing supplementary insurance is expected not to be beneficial, the probability to opt out (resulting from adverse selection) is, respectively, 0.05 (blue/upper line) and 0.1 (green/bottom line) (color figure online)
Graph 2Effect of premium differentiation on the uptake of supplementary health insurance (SHI) if within the group of insured for whom purchasing supplementary insurance is not expected to be beneficial, the probability to opt out (resulting from adverse selection) is, respectively, 0.05 (a) and 0.1 (b)
Comparing characteristics of the Dutch population and the insured within the data. For comparison reasons, children are included into this analysis
| 2011 | ||
|---|---|---|
| The Netherlands (%) | Data (%) | |
| PCG (yes) | 21.4 | 26.5 |
| DCG (yes) | 8.7 | 4.8 |
| 0–18 yearsa | 23.5 | 16.2 |
| 19–40 years | 25.0 | 20.5 |
| 41–65 years | 35.9 | 37.5 |
| 66 years and older | 15.6 | 25.8 |
|
| 16,655,799 | 140,557 |
aThe numbers regarding the Dutch population regard insured between the age of 0 and 20
Summary statistics of the different models tested to estimate the predicted claims for supplementary health insurance for individuals in year t − 1
| Mean expenses | Minimum expenses | Maximum expenses | Average expenses |
| Mean absolute prediction error | ||||
|---|---|---|---|---|---|---|---|---|---|
| 1st tertile | 2nd tertile | 3rd tertile | |||||||
| 0 | Actual healthcare expenses in year | 221.04 | 0 | 21,010.59 | 0 | 100.12 | 566.37 | ||
| 1 | OLS | 221.04 | −25.13a | 754.97 | 89.95 | 182.83 | 390.36 | 0.1874 | 199.06 |
| 2 | GLM with gamma distribution and log link | 222.68 | 36.57 | 1235.62 | 92.72 | 175.74 | 399.62 | 0.2078 | 199.89 |
| 3 | GLM with normal distribution and log link | 221.11 | 49.29 | 1023.97 | 97.10 | 176.53 | 389.76 | 0.1912 | 199.44 |
| 4 | GLM with Poisson distribution and log link | 221.04 | 46.47 | 985.46 | 95.68 | 176.14 | 391.36 | 0.1927 | 199.27 |
aOnly 36 insured had negative predicted claims, which makes up for 0.033% of the data