Rowen Donna, Brazier John, Roberts Jennifer
Health Economics and Decision Science, University of Sheffield, Regent Court, 30 Regent Street, Sheffield, S1 4DA, UK.
Health Qual Life Outcomes. 2009 Mar 31;7:27. doi: 10.1186/1477-7525-7-27.
Mapping from health status measures onto generic preference-based measures is becoming a common solution when health state utility values are not directly available for economic evaluation. However the accuracy and reliability of the models employed is largely untested, and there is little evidence of their suitability in patient datasets. This paper examines whether mapping approaches are reliable and accurate in terms of their predictions for a large and varied UK patient dataset.
SF-36 dimension scores are mapped onto the EQ-5D index using a number of different model specifications. The predicted EQ-5D scores for subsets of the sample are compared across inpatient and outpatient settings and medical conditions. This paper compares the results to those obtained from existing mapping functions.
The model including SF-36 dimensions, squared and interaction terms estimated using random effects GLS has the most accurate predictions of all models estimated here and existing mapping functions as indicated by MAE (0.127) and MSE (0.030). Mean absolute error in predictions by EQ-5D utility range increases with severity for our models (0.085 to 0.34) and for existing mapping functions (0.123 to 0.272).
Our results suggest that models mapping the SF-36 onto the EQ-5D have similar predictions across inpatient and outpatient setting and medical conditions. However, the models overpredict for more severe EQ-5D states; this problem is also present in the existing mapping functions.
当健康状态效用值无法直接用于经济评估时,从健康状况测量值映射到基于偏好的通用测量值正成为一种常见的解决方案。然而,所采用模型的准确性和可靠性在很大程度上未经检验,而且几乎没有证据表明它们适用于患者数据集。本文研究了映射方法对于一个庞大且多样的英国患者数据集的预测是否可靠和准确。
使用多种不同的模型规格将SF - 36维度得分映射到EQ - 5D指数上。在住院和门诊环境以及医疗状况中,比较样本子集的预测EQ - 5D得分。本文将结果与从现有映射函数获得的结果进行比较。
如平均绝对误差(MAE为0.127)和均方误差(MSE为0.030)所示,包含SF - 36维度、平方项和交互项并使用随机效应广义最小二乘法估计的模型,在此处估计的所有模型以及现有映射函数中具有最准确的预测。对于我们的模型(0.085至0.34)和现有映射函数(0.123至0.272),EQ - 5D效用范围预测中的平均绝对误差随严重程度增加。
我们的结果表明,将SF - 36映射到EQ - 5D的模型在住院和门诊环境以及医疗状况中的预测相似。然而,这些模型对更严重的EQ - 5D状态预测过高;现有映射函数中也存在这个问题。