Gamst-Klaussen Thor, Lamu Admassu N, Chen Gang, Olsen Jan Abel
Department of Community Medicine,University of Tromsø,Norway.
Centre for Health Economics,Monash University,Australia.
BJPsych Open. 2018 Jul;4(4):160-166. doi: 10.1192/bjo.2018.21.
Many clinical studies including mental health interventions do not use a health state utility instrument, which is essential for producing quality-adjusted life years. In the absence of such utility instrument, mapping algorithms can be applied to estimate utilities from a disease-specific instrument.AimsWe aim to develop mapping algorithms from two widely used depression scales; the Depression Anxiety Stress Scales (DASS-21) and the Kessler Psychological Distress Scale (K-10), onto the most widely used health state utility instrument, the EQ-5D-5L, using eight country-specific value sets.
A total of 917 respondents with self-reported depression were recruited to describe their health on the DASS-21 and the K-10 as well as the new five-level version of the EQ-5D, referred to as the EQ-5D-5L. Six regression models were used: ordinary least squares regression, generalised linear models, beta binomial regression, fractional logistic regression model, MM-estimation and censored least absolute deviation. Root mean square error, mean absolute error and r2 were used as model performance criteria to select the optimal mapping function for each country-specific value set.
Fractional logistic regression model was generally preferred in predicting EQ-5D-5L utilities from both DASS-21 and K-10. The only exception was the Japanese value set, where the beta binomial regression performed best.
Mapping algorithms can adequately predict EQ-5D-5L utilities from scores on DASS-21 and K-10. This enables disease-specific data from clinical trials to be applied for estimating outcomes in terms of quality-adjusted life years for use in economic evaluations.Declaration of interestNone.
包括心理健康干预在内的许多临床研究并未使用健康状态效用工具,而该工具对于生成质量调整生命年至关重要。在缺乏此类效用工具的情况下,可以应用映射算法从特定疾病的工具中估计效用。
我们旨在使用八个国家特定的价值集,开发从两种广泛使用的抑郁量表,即抑郁焦虑压力量表(DASS-21)和凯斯勒心理困扰量表(K-10),到最广泛使用的健康状态效用工具EQ-5D-5L的映射算法。
共招募了917名自我报告患有抑郁症的受访者,让他们在DASS-21、K-10以及EQ-5D的新五级版本(称为EQ-5D-5L)上描述自己的健康状况。使用了六种回归模型:普通最小二乘法回归、广义线性模型、贝塔二项式回归、分数逻辑回归模型、MM估计和截尾最小绝对偏差。均方根误差、平均绝对误差和r2用作模型性能标准来为每个国家特定的价值集选择最佳映射函数。
分数逻辑回归模型在从DASS-21和K-10预测EQ-5D-5L效用方面通常更受青睐。唯一的例外是日本价值集,其中贝塔二项式回归表现最佳。
映射算法可以根据DASS-21和K-10的得分充分预测EQ-5D-5L效用。这使得来自临床试验的特定疾病数据能够用于估计质量调整生命年方面的结果,以用于经济评估。
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