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首页> 外文期刊>The European journal of health economics: HEPAC : health economics in prevention and care >Eliciting preferences to the EQ-5D-5L health states: discrete choice experiment or multiprofile case of best-worst scaling?
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Eliciting preferences to the EQ-5D-5L health states: discrete choice experiment or multiprofile case of best-worst scaling?

机译:引起对EQ-5D-5L健康状态的偏爱:离散选择实验还是最差缩放的多模式情况?

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摘要

Choice-based methods have been used widely in assessing healthcare programs. This study compared the binary discrete choice experiment (DCE) and the multiprofile case of best-worst scaling (BWS) in eliciting preferences for the EQ-5D-5L. Forty-eight EQ-5D-5L health states were selected using a Bayesian efficient design and grouped into 24 pairs for the DCE tasks and 8 sets for the BWS tasks (each set has three health states). A total of 100 participants completed 12 pairs and 8 sets in a random order. A probit regression model and ranked order logistic regression model were used to estimate the latent utilities from the DCE and BWS, respectively. Both tasks were well understood by the majority of participants. The DCE tasks were relatively easier and took a shorter time to complete. The intraclass correlation coefficient (ICC) of the DCE was higher than that of the BWS. The variances associated with the latent utilities estimated from the DCE were larger than those from the BWS. The DCE is more feasible and reliable than the BWS in valuing the EQ-5D-5L. Future studies could focus on comparing the consistency and accuracy of these techniques in predicting the health utilities of the EQ-5D-5L.
机译:基于选择的方法已广泛用于评估医疗保健计划。这项研究比较了二元离散选择实验(DCE)和最差缩放比例(BWS)的多剖面情况,以引起对EQ-5D-5L的偏好。使用贝叶斯有效设计选择了48个EQ-5D-5L健康状态,并将其分为24对DCE任务对和8组BWS任务(每组具有3个健康状态)。共有100位参与者以随机顺序完成了12对和8套游戏。概率回归模型和排序逻辑回归模型分别用于从DCE和BWS估计潜在效用。多数参与者都很好地理解了这两项任务。 DCE任务相对容易一些,并且花费的时间较短。 DCE的类内相关系数(ICC)高于BWS。 DCE估计的与潜在效用相关的方差大于BWS的估计方差。在评估EQ-5D-5L方面,DCE比BWS更可行,更可靠。未来的研究可能集中在比较这些技术在预测EQ-5D-5L的健康效用方面的一致性和准确性。

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