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从爱丁堡产后抑郁量表生成 EQ-5D-3L 健康效用评分:围产期映射研究。

Generating EQ-5D-3L health utility scores from the Edinburgh Postnatal Depression Scale: a perinatal mapping study.

机构信息

School of Health Sciences, University of Manchester, Jean McFarlane Building, Oxford Road, Manchester, M13 9PT, UK.

School of Medicine, Keele University, Keele, UK.

出版信息

Eur J Health Econ. 2024 Mar;25(2):319-332. doi: 10.1007/s10198-023-01589-4. Epub 2023 Apr 24.

Abstract

BACKGROUND

Perinatal depression (PND) describes depression experienced by parents during pregnancy or in the first year after a baby is born. The EQ-5D instrument (a generic measure of health status) is not often collected in perinatal research, however disease-specific measures, such as the Edinburgh Postnatal Depression Scale (EPDS) are widely used. Mapping can be used to estimate generic health utility index values from disease-specific measures like the EPDS.

OBJECTIVE

To develop a mapping algorithm to estimate EQ-5D utility index values from the EPDS.

METHODS

Patient-level data from the BaBY PaNDA study (English observational cohort study) provided 1068 observations with paired EPDS and EQ-5D (3-level version; EQ-5D-3L) responses. We compared the performance of six alternative regression model types, each with four specifications of covariates (EPDS score and age: base, squared, and cubed). Model performance (ability to predict utility values) was assessed by ranking mean error, mean absolute error, and root mean square error. Algorithm performance in 3 external datasets was also evaluated.

RESULTS

There was moderate correlation between EPDS score and utility values (coefficient:  - 0.42). The best performing model type was a two-part model, followed by ordinary least squared. Inclusion of squared and cubed covariates improved model performance. Based on graphs of observed and predicted utility values, the algorithm performed better when utility was above 0.6.

CONCLUSIONS

This direct mapping algorithm allows the estimation of health utility values from EPDS scores. The algorithm has good external validity but is likely to perform better in samples with higher health status.

摘要

背景

围产期抑郁(PND)描述了孕妇在怀孕期间或婴儿出生后一年中经历的抑郁。EQ-5D 工具(一种通用的健康状况衡量标准)在围产期研究中并不常用,但是疾病特异性的衡量标准,如爱丁堡产后抑郁量表(EPDS)则被广泛应用。映射可用于从 EPDS 等疾病特异性衡量标准中估计通用健康效用指数值。

目的

开发一种从 EPDS 估计 EQ-5D 效用指数值的映射算法。

方法

BaBY PaNDA 研究(英语观察性队列研究)的患者水平数据提供了 1068 个具有 EPDS 和 EQ-5D(3 水平版本;EQ-5D-3L)配对反应的观察值。我们比较了六种替代回归模型类型的性能,每种类型都有 EPDS 评分和年龄的四个规范的协变量(基础、平方和立方)。通过排名平均误差、平均绝对误差和均方根误差来评估模型性能(预测效用值的能力)。还评估了算法在 3 个外部数据集的性能。

结果

EPDS 评分与效用值之间存在中度相关性(系数:-0.42)。表现最好的模型类型是两部分模型,其次是普通最小二乘法。包含平方和立方协变量可提高模型性能。基于观察到的和预测的效用值图,当效用值高于 0.6 时,算法的性能更好。

结论

这种直接映射算法允许从 EPDS 评分中估计健康效用值。该算法具有良好的外部有效性,但在健康状况较高的样本中可能表现更好。

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