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Predicting the EQ-5D-3L Preference Index from the SF-12 Health Survey in a National US Sample: A Finite Mixture Approach

机译:通过美国国家样本中的SF-12健康调查预测EQ-5D-3L偏好指数:有限混合方法

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Background. When data on preferences are not available, analysts rely on condition-specific or generic measures of health status like the SF-12 for predicting or mapping preferences. Such prediction is challenging because of the characteristics of preference data, which are bounded, have multiple modes, and have a large proportion of observations clustered at values of 1. Methods. We developed a finite mixture model for cross-sectional data that maps the SF-12 to the EQ-5D-3L preference index. Our model characterizes the observed EQ-5D-3L index as a mixture of 3 distributions: a degenerate distribution with mass at values indicating perfect health and 2 censored (Tobit) normal distributions. Using estimation and validation samples derived from the Medical Expenditure Panel Survey 2000 dataset, we compared the prediction performance of these mixture models to that of 2 previously proposed methods: ordinary least squares regression (OLS) and two-part models. Results. Finite mixture models in which predictions are based on classification outperform two-part models and OLS regression based on mean absolute error, with substantial improvement for samples with fewer respondents in good health. The potential for misclassification is reflected on larger root mean square errors. Moreover, mixture models underperform around the center of the observed distribution. Conclusions. Finite mixtures offer a flexible modeling approach that can take into account idiosyncratic characteristics of the distribution of preferences. The use of mixture models allows researchers to obtain estimates of health utilities when only summary scores from the SF-12 and a limited number of demographic characteristics are available. Mixture models are particularly useful when the target sample does not have a large proportion of individuals in good health.
机译:背景。当无法获得关于偏好的数据时,分析人员将根据特定条件的或一般的健康状况衡量指标(例如SF-12)来预测或映射偏好。由于偏好数据的特征是有界的,具有多种模式,并且大部分观察值聚集在1值上,因此这种预测具有挑战性。方法。我们为横截面数据开发了一个有限的混合模型,该模型将SF-12映射到EQ-5D-3L优先指数。我们的模型将观测到的EQ-5D-3L指数表征为3种分布的混合:简并的分布,其质量的值表示健康状况良好,并且经过2次删减(Tobit)正态分布。使用从Medical Expenditure Panel Survey 2000数据集获得的估计和验证样本,我们将这些混合模型的预测性能与2种先前提出的方法的预测性能进行了比较:普通最小二乘回归(OLS)和两部分模型。结果。其中基于分类的预测的有限混合模型的性能优于两部分模型,而基于平均绝对误差的OLS回归的性能优于具有较少健康状况的被调查者的样本。错误分类的可能性反映在较大的均方根误差上。此外,混合模型在观察到的分布中心附近表现不佳。结论有限的混合提供了一种灵活的建模方法,可以考虑偏好分布的特质特征。当只有SF-12的摘要分数和有限的人口统计学特征可用时,混合模型的使用可使研究人员获得对卫生效用的估计。当目标样品的健康状况不佳时,混合物模型特别有用。

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