Veazie Peter J, Manning Willard G, Kane Robert L
Department of Health Services Administration, University of Florida, Gainesville 32610, USA.
Med Care. 2003 Jun;41(6):741-52. doi: 10.1097/01.MLR.0000065127.88685.7D.
This article compares a linear risk-adjusted model of medical expenditures for Medicare patients with a model that explicitly account for skewness in distribution of expenditures.
A model of expenditures and a model of the square root of expenditures, each expressed as linear combinations of risk adjusters, are estimated using data from the 1992 through 1994 Medicare Current Beneficiary Surveys. Five sets of risk adjusters are considered. Each combination of model and set of risk adjusters is tested for linearity, heteroscedasticity, in-sample fit (R2), forecast performance (forecast bias and forecast mean squared error), and overfitting the data. We analyze forecast performance (1)based on forecasts in same year used for estimation, and (2)based on forecasts in the year following that used for estimation.
In the first analysis, the model using a square root transformation of expenditures as the dependent variable and the more parsimonious specification of risk adjusters performs best in terms of forecast squared error and overfitting. The untransformed model performs best in terms of forecast bias in each group based on severity of disability, with the exception of the severely disabled for whom the square root model is best. In the second analysis, the square root model performs better than the untransformed model in terms of forecast squared error, but neither model is statistically distinguishable from zero in terms of bias.
Accounting for skewness in expenditures tends to improve precision but not necessarily bias, except among the severely disabled. Adjusting for health status improves risk adjustment.
本文将医疗保险患者医疗支出的线性风险调整模型与一个明确考虑支出分布偏态的模型进行比较。
使用1992年至1994年医疗保险当前受益人的调查数据,估计支出模型和支出平方根模型,每个模型都表示为风险调整因素的线性组合。考虑了五组风险调整因素。对模型和风险调整因素集的每种组合进行线性、异方差、样本内拟合优度(R²)、预测性能(预测偏差和预测均方误差)以及数据过度拟合的检验。我们基于(1)用于估计的同一年的预测,以及(2)用于估计的年份之后一年的预测来分析预测性能。
在第一次分析中,将支出的平方根变换作为因变量且风险调整因素设定更为简约的模型,在预测均方误差和数据过度拟合方面表现最佳。在基于残疾严重程度划分的每个组中,未变换的模型在预测偏差方面表现最佳,但重度残疾组除外,该组中平方根模型表现最佳。在第二次分析中,平方根模型在预测均方误差方面比未变换的模型表现更好,但在偏差方面两个模型与零均无统计学差异。
考虑支出的偏态倾向于提高精度,但不一定能减少偏差,重度残疾患者除外。对健康状况进行调整可改善风险调整。