Mapping the Beck Depression Inventory to the EQ-5D-3L in Patients with Depressive Disorders.

IF 1 4区 医学 Q4 HEALTH POLICY & SERVICES
Thomas Grochtdreis, Christian Brettschneider, Andr Hajek, Katharina Schierz, Juergen Hoyer, Hans-Helmut Koenig
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Abstract

Background: For cost-utility analyses, data on health state utilities, as provided by the EQ-5D-3L, is needed but not always available. This study specified mapping algorithms from the Beck Depression Inventory (BDI) index to the EQ-5D-3L index adjusted for specific socio-demographic variables for patients with depressive disorders.

Aims of the study: The objective of this study was to specify mapping algorithms from the BDI index to the preference-based EQ-5D index for patients with depressive disorders, adjusting for specific socio-demographic variables.

Methods: A sample of 1,074 consecutive patients with depressive disorders from a psychotherapeutic outpatient clinic was included in the study. Standardized clinical interviews were applied to establish reliable diagnoses. For the prediction of the EQ-5D-3L index from the BDI index and selected patient socio-demographic characteristics, ordinary least squares regression with robust standard errors was used. Model prediction properties were tested using the root mean squared error and repeated random sub-sampling cross-validation.

Results: The BDI index predicted the EQ-5D-3L index with a significant proportion of variance explained. The highest model goodness of fit was estimated for models with the BDI index and age as independent variables. The root mean squared error of the predicted EQ-5D-3L index in the validation samples was 0.23 for all models.

Discussion: The mean observed EQ-5D-3L index values and the mean predicted EQ-5D-3L index values seemed not to differ between models. However, a reduction of variability using cross-validation led to those (rather) accurate mean predicted values. One limitation of this study was the restricted generalizability. Moreover, some uncertainty was introduced in model predictive performance by usage of a dependent estimation sample for validation.

Implications for further research: The specified mapping algorithms from the BDI index to the EQ-5D-3L index for patients with depressive disorders are acceptable as approximation in cost-utility analyses. A further validation in independent samples is necessary to obtain more confidence in their performance.

贝克抑郁量表与抑郁症患者EQ-5D-3L的关系
背景:对于成本效用分析,需要EQ-5D-3L提供的健康状态效用数据,但并不总是可用的。本研究指定了从贝克抑郁量表(BDI)指数到EQ-5D-3L指数的映射算法,该算法针对抑郁症患者的特定社会人口变量进行了调整。研究目的:本研究的目的是为抑郁症患者指定从BDI指数到基于偏好的EQ-5D指数的映射算法,并根据特定的社会人口变量进行调整。方法:从心理治疗门诊连续1074例抑郁症患者纳入研究。采用标准化的临床访谈建立可靠的诊断。通过BDI指数和选定的患者社会人口学特征预测EQ-5D-3L指数,采用具有稳健标准误差的普通最小二乘回归。使用均方根误差和重复随机子抽样交叉验证来检验模型的预测性能。结果:BDI指数预测EQ-5D-3L指数,方差占比显著。以BDI指数和年龄为自变量的模型拟合优度估计最高。所有模型验证样本预测EQ-5D-3L指数的均方根误差为0.23。讨论:各模型之间EQ-5D-3L的平均观测指数值和EQ-5D-3L的平均预测指数值似乎没有差异。然而,使用交叉验证减少可变性导致那些(相当)准确的平均预测值。本研究的一个局限性是有限的通用性。此外,通过使用依赖估计样本进行验证,在模型预测性能中引入了一些不确定性。对进一步研究的启示:从抑郁症患者的BDI指数到EQ-5D-3L指数的指定映射算法在成本效用分析中是可以接受的近似值。在独立样本中进一步验证是必要的,以获得对其性能的更多信心。
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来源期刊
CiteScore
2.20
自引率
6.20%
发文量
8
期刊介绍: The Journal of Mental Health Policy and Economics publishes high quality empirical, analytical and methodologic papers focusing on the application of health and economic research and policy analysis in mental health. It offers an international forum to enable the different participants in mental health policy and economics - psychiatrists involved in research and care and other mental health workers, health services researchers, health economists, policy makers, public and private health providers, advocacy groups, and the pharmaceutical industry - to share common information in a common language.
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