Literature DB >> 29403329

Implications of family risk pooling for individual health insurance markets.

Anna D Sinaiko1, Timothy J Layton2,3, Sherri Rose2, Thomas G McGuire2,3.   

Abstract

While family purchase of health insurance may benefit insurance markets by pooling individual risk into family groups, the correlation across illness types in families could exacerbate adverse selection. We analyze the impact of family pooling on risk for health insurers to inform policy about family-level insurance plans. Using data on 8,927,918 enrollees in fee-for-service commercial health plans in the 2013 Truven MarketScan database, we compare the distribution of annual individual health spending across four pooling scenarios: (1) "Individual" where there is no pooling into families; (2) "real families" where costs are pooled within families; (3) "random groups" where costs are pooled within randomly generated small groups that mimic families in group size; and (4) "the Sims" where costs are pooled within random small groups which match families in demographics and size. These four simulations allow us to identify the separate contributions of group size, group composition, and family affinity in family risk pooling. Variation in individual spending under family pooling is very similar to that within "simulated families" and to that within random groups, and substantially lower than when there is no family pooling and individuals choose independently (standard deviation $12,526 vs $11,919, $12,521 and $17,890 respectively). Within-family correlations in health status and utilization do not "undo" the gains from family pooling of risks. Family pooling can mitigate selection and improve the functioning of health insurance markets.

Entities:  

Keywords:  Adverse selection; Health insurance; Risk pooling

Year:  2017        PMID: 29403329      PMCID: PMC5796434          DOI: 10.1007/s10742-017-0170-3

Source DB:  PubMed          Journal:  Health Serv Outcomes Res Methodol        ISSN: 1387-3741


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