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探究离散选择实验中设计特征对统计效率的影响:一项系统综述。

Investigating the impact of design characteristics on statistical efficiency within discrete choice experiments: A systematic survey.

作者信息

Vanniyasingam Thuva, Daly Caitlin, Jin Xuejing, Zhang Yuan, Foster Gary, Cunningham Charles, Thabane Lehana

机构信息

Department of Health Research Methods, Impact, and Evidence, McMaster University, Hamilton, ON, Canada.

Biostatistics Unit, Father Sean O'Sullivan Research Centre, St. Joseph's Healthcare, Hamilton, ON, Canada.

出版信息

Contemp Clin Trials Commun. 2018 Jan 10;10:17-28. doi: 10.1016/j.conctc.2018.01.002. eCollection 2018 Jun.

Abstract

OBJECTIVES

This study reviews simulation studies of discrete choice experiments to determine (i) how survey design features affect statistical efficiency, (ii) and to appraise their reporting quality.

OUTCOMES

Statistical efficiency was measured using relative design (D-) efficiency, D-optimality, or D-error.

METHODS

For this systematic survey, we searched Journal Storage (JSTOR), Since Direct, PubMed, and OVID which included a search within EMBASE. Searches were conducted up to year 2016 for simulation studies investigating the impact of DCE design features on statistical efficiency. Studies were screened and data were extracted independently and in duplicate. Results for each included study were summarized by design characteristic. Previously developed criteria for reporting quality of simulation studies were also adapted and applied to each included study.

RESULTS

Of 371 potentially relevant studies, 9 were found to be eligible, with several varying in study objectives. Statistical efficiency improved when increasing the number of choice tasks or alternatives; decreasing the number of attributes, attribute levels; using an unrestricted continuous "manipulator" attribute; using model-based approaches with covariates incorporating response behaviour; using sampling approaches that incorporate previous knowledge of response behaviour; incorporating heterogeneity in a model-based design; correctly specifying Bayesian priors; minimizing parameter prior variances; and using an appropriate method to create the DCE design for the research question. The simulation studies performed well in terms of reporting quality. Improvement is needed in regards to clearly specifying study objectives, number of failures, random number generators, starting seeds, and the software used.

CONCLUSION

These results identify the best approaches to structure a DCE. An investigator can manipulate design characteristics to help reduce response burden and increase statistical efficiency. Since studies varied in their objectives, conclusions were made on several design characteristics, however, the validity of each conclusion was limited. Further research should be conducted to explore all conclusions in various design settings and scenarios. Additional reviews to explore other statistical efficiency outcomes and databases can also be performed to enhance the conclusions identified from this review.

摘要

目的

本研究回顾离散选择实验的模拟研究,以确定(i)调查设计特征如何影响统计效率,(ii)并评估其报告质量。

结果

使用相对设计(D-)效率、D-最优性或D-误差来衡量统计效率。

方法

对于这项系统综述,我们检索了Journal Storage(JSTOR)、Since Direct、PubMed和OVID,其中包括在EMBASE内进行的搜索。截至2016年,我们对调查DCE设计特征对统计效率影响的模拟研究进行了检索。研究经过筛选,数据由两人独立且重复提取。每个纳入研究的结果按设计特征进行总结。先前制定的模拟研究报告质量标准也进行了调整并应用于每个纳入研究。

结果

在371项可能相关的研究中,发现9项符合条件,其中几项研究目标有所不同。增加选择任务或备选方案的数量;减少属性数量、属性水平;使用无限制的连续“操纵者”属性;使用基于模型的方法并结合协变量纳入响应行为;使用纳入响应行为先验知识的抽样方法;在基于模型的设计中纳入异质性;正确指定贝叶斯先验;最小化参数先验方差;以及使用适当的方法为研究问题创建DCE设计时,统计效率会提高。模拟研究在报告质量方面表现良好。在明确规定研究目标、失败次数、随机数生成器、起始种子和所使用的软件方面需要改进。

结论

这些结果确定了构建DCE的最佳方法。研究者可以操纵设计特征,以帮助减轻响应负担并提高统计效率。由于研究目标各不相同,因此对几个设计特征得出了结论,然而,每个结论的有效性都有限。应进行进一步研究,以探索各种设计设置和场景中的所有结论。还可以进行其他综述,以探索其他统计效率结果和数据库,以加强本综述中确定的结论。

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