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. 1979 Spring;14(1):33–43.

Estimates of preventive versus nonpreventive medical care demand in an HMO.

D R Lairson, J M Swint
PMCID: PMC1072099  PMID: 468551

Abstract

Multiple regression analysis is used to investigate whether medical services in a large HMO are distributed primarily on the basis of need and predisposing factors (such as health status, age and sex) or according to enabling characteristics (such as coinsurance and income) of the population. Equations are formulated to estimate the likelihood and volume of preventive visit demand, nonpreventive visit demand and hospital admissions for a sample of 3,892 individuals enrolled in the Kaiser Foundation Health Plan of Portland, Oregon. The results indicate that predisposing and need factors are the main determinants of nonpreventive visits and hospital utilization, while enabling characteristics are important determinants (along with age and education) of preventive utilization. There are marked differences in the impact of explanatory factors on utilization by dependents (children) versus nondependents (adults).

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Selected References

These references are in PubMed. This may not be the complete list of references from this article.

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