用 SF-6Dv2 引出健康状况效用的四种方法比较。

IF 3.1 3区 医学 Q1 ECONOMICS
Hosein Ameri, Thomas G Poder
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引用次数: 0

摘要

目标:比较四种偏好激发方法,即时间离散选择实验法(DCETTO)、最佳-最差时间缩放法(BWSTTO)、DCETTO 与 BWSTTO 法(DCEBWS)以及标准赌博法(SG)在使用 SF-6Dv2 评估健康状况时的效果:加拿大魁北克省具有代表性的普通人群完成了 6 项 SG 任务或 13 项 DCEBWS(即 10 项 DCETTO 和 3 项 BWSTTO)。选择任务采用 SF-6Dv2 设计。对 SG 数据的估计使用了多种模型,而对 DCE 或 BWS 数据的估计则使用了条件 logit 模型。使用预测准确度(平均绝对误差[MAE])、贝叶斯信息准则(BIC)拟合度、t 检验、Jarque-Bera(JB)检验、Ljung-Box(LB)检验、参数的逻辑一致性和显著性水平来评估 SG 模型的性能。通过可接受性(自我报告的答题难度和质量水平以及完成时间)、一致性(模型系数的单调性)、准确性(标准误差)、维度系数大小、估计值集之间的相关性以及估计值范围,对不同方法进行了比较。计算方差比例系数是为了评估个人在选择 DCE 和 BWS 方法时的一致性:在完成 SG 任务的 828 人和 DCEBWS 任务的 1208 人中,共有 724 人完成了 SG 任务,1153 人完成了 DCE 任务。虽然不同方法在自我报告的答题难度和质量方面没有明显差异,但SG的完成时间最长,而且被排除在外的SG参与者更容易报告答题困难。SG 的标准误差范围最窄(0.012-0.015),其次是 BWSTTO(0.023-0.035)、DCEBWS(0.028-0.050)和 DCETTO(0.028-0.052)。不显著和不合逻辑的参数数量最多的是 BWSTTO。在所有方法中,疼痛维度是最重要的维度。SG 和 DCEBWS 效用值之间的相关性最强(0.928),其次是 SG 和 BWSTTO 值(0.889),以及 SG 和 DCETTO 值(0.849)。SG 产生的效用值范围(-0.143 至 1)往往短于其他三种方法产生的效用值范围,而 BWSTTO(-0.505 至 1)的效用值范围则短于 DCETTO(-1.063 至 1)和 DCEBWS(-0.637 至 1)。方差比例系数表明,受访者对 DCE 和 BWS 的回答的确定性或信心水平几乎相似:SG 具有最窄的值集、最低的完成率、最长的完成时间、最好的预测准确性,并在一个水平上产生了意想不到的符号。与 DCETTO 和 DCEBWS 相比,BWSTTO 的值集更窄、完成时间更短、参数不一致性更高、不显著水平更高。DCEBWS 的结果在不显著参数和不合逻辑参数的数量以及相关性方面与 SG 更为相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of four approaches in eliciting health state utilities with SF-6Dv2.

Objective: To empirically compare four preference elicitation approaches, the discrete choice experiment with time (DCETTO), the Best-Worst Scaling with time (BWSTTO), DCETTO with BWSTTO (DCEBWS), and the Standard Gamble (SG) method, in valuing health states using the SF-6Dv2.

Methods: A representative sample of the general population in Quebec, Canada, completed 6 SG tasks or 13 DCEBWS (i.e., 10 DCETTO followed by 3 BWSTTO). Choice tasks were designed with the SF-6Dv2. Several models were used to estimate SG data, and the conditional logit model was used for the DCE or BWS data. The performance of SG models was assessed using prediction accuracy (mean absolute error [MAE]), goodness of fit using Bayesian information criterion (BIC), t-test, Jarque-Bera (JB) test,  Ljung-Box (LB) test, the logical consistency of the parameters, and significance levels. Comparison between approaches was conducted using acceptability (self-reported difficulty and quality levels in answering, and completion time), consistency (monotonicity of model coefficients), accuracy (standard errors), dimensions coefficient magnitude, correlation between the value sets estimated, and the range of estimated values. The variance scale factor was computed to assess individuals' consistency in their choices for DCE and BWS approaches.

Results: Out of 828 people who completed SG and 1208 for DCEBWS tasks, a total of 724 participants for SG and 1153 for DCE tasks were included for analysis. Although no significant difference was observed in self-reported difficulties and qualities in answers among approaches, the SG had the longest completion time and excluded participants in SG were more prone to report difficulties in answering. The range of standard errors of the SG was the narrowest (0.012 to 0.015), followed by BWSTTO (0.023 to 0.035), DCEBWS (0.028 to 0.050), and DCETTO (0.028 to 0.052). The highest number of insignificant and illogical parameters was for BWSTTO. Pain dimension was the most important across dimensions in all approaches. The correlation between SG and DCEBWS utility values was the strongest (0.928), followed by the SG and BWSTTO values (0.889), and the SG and DCETTO (0.849). The range of utility values generated by SG tended to be shorter (-0.143 to 1) than those generated by the other three methods, whereas BWSTTO (-0.505 to 1) range values were shorter than DCETTO (-1.063 to 1) and DCEBWS (-0.637 to 1). The variance scale factor suggests that respondents had almost similar level of certainty or confidence in both DCE and BWS responses.

Conclusion: The SG had the narrowest value set, the lowest completion rates, the longest completion time, the best prediction accuracy, and produced an unexpected sign for one level. The BWSTTO had a narrower value set, lower completion time, higher parameter inconsistency, and higher insignificant levels compared to DCETTO and DCEBWS. The results of DCEBWS were more similar to SG in number of insignificant and illogical parameters, and correlation.

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来源期刊
CiteScore
6.10
自引率
2.30%
发文量
131
期刊介绍: The European Journal of Health Economics is a journal of Health Economics and associated disciplines. The growing demand for health economics and the introduction of new guidelines in various European countries were the motivation to generate a highly scientific and at the same time practice oriented journal considering the requirements of various health care systems in Europe. The international scientific board of opinion leaders guarantees high-quality, peer-reviewed publications as well as articles for pragmatic approaches in the field of health economics. We intend to cover all aspects of health economics: • Basics of health economic approaches and methods • Pharmacoeconomics • Health Care Systems • Pricing and Reimbursement Systems • Quality-of-Life-Studies The editors reserve the right to reject manuscripts that do not comply with the above-mentioned requirements. The author will be held responsible for false statements or for failure to fulfill the above-mentioned requirements. Officially cited as: Eur J Health Econ
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