Cleanthous Sophie, Barbic Skye Pamela, Smith Sarah, Regnault Antoine
Modus Outcomes Ltd, UK Office, Suite 210b, Spirella Building, Letchworth Garden City, SG6 4ET, UK.
Faculty of Medicine, Department of Occupational Science and Occupational Therapy, University of British Columbia, Vancouver, BC, Canada.
J Patient Rep Outcomes. 2019 Jul 30;3(1):47. doi: 10.1186/s41687-019-0131-4.
PURPOSE: The aim of this study is to illustrate an example application of Rach Measurement Theory (RMT) in the evaluation of patient-reported outcome (PRO) measures. RMT diagnostic methods were applied to evaluate the PROMIS® Depression items as part of a series of papers applying different psychometric paradigms in parallel to the same data. METHODS: RMT was used to examine scale-to-sample targeting, scale performance and sample measurement of two PROMIS depression item pools including respectively 28 and 51- items. RESULTS: Sub-optimal but improved targeting was displayed in the 51-item pool which covered 27% of the range of depression measured in the sample compared to only 15% in the 28-item bank, further reducing the sample percentage with lower depression not covered by the scale (28% Vs 34%). Satisfactory scale performance was observed by the 28-item bank with marginal item misfit. However, deviations from the RMT criteria in the 51-itempool were observed including: 9 reversed thresholds; 12 misfitting items and 12 item-pairs displaying dependency. Overall reliability was good for sets of items (Person Separation Index = 0.93 and 0.95), but sub-optimal sample measurement (17% Vs 19% fit residuals outside of the recommended range). CONCLUSIONS: The RMT approach in this exercise provided evidence that compared to the 28-item bank, the extended 51-item version of the PROMIS depression, improved sample-to-scale targeting. However, targeting in the lower end of the concept of interest remained sub-optimal and scale performance deteriorated. There may be a need to improve the conceptual breadth of the construct under investigation to ensure the inclusion of items that capture the full range of the concept of interest for this context of use.
目的:本研究旨在阐述拉施测量理论(RMT)在患者报告结局(PRO)测量评估中的一个示例应用。作为一系列对同一数据并行应用不同心理测量范式的论文的一部分,RMT诊断方法被用于评估患者报告结果测量信息系统(PROMIS®)抑郁项目。 方法:RMT被用于检验两个PROMIS抑郁项目库(分别包含28项和51项)的量表与样本匹配度、量表性能及样本测量情况。 结果:51项项目库显示出次优但有所改善的匹配度,其覆盖了样本中所测量抑郁范围的27%,相比之下,28项项目库仅覆盖了15%,进一步降低了量表未涵盖的低抑郁水平样本的百分比(28%对34%)。28项项目库观察到令人满意的量表性能,仅有边际项目不匹配。然而,在51项项目库中观察到偏离RMT标准的情况,包括:9个反向阈值;12个不匹配项目以及12对显示依赖性的项目对。总体而言,项目集的可靠性良好(个人分离指数分别为0.93和0.95),但样本测量次优(17%对19%的拟合残差超出推荐范围)。 结论:本研究中的RMT方法提供的证据表明,与28项项目库相比,PROMIS抑郁扩展后的51项版本改善了样本与量表的匹配度。然而,在感兴趣概念的低端匹配度仍次优,且量表性能恶化。可能需要提高所研究结构的概念广度,以确保纳入能涵盖该使用背景下感兴趣概念全范围的项目。
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