Arimoro Olayinka I, Lix Lisa M, Ferro Mark A, James Matthew T, Patten Scott B, Wiebe Samuel, Josephson Colin B, Sajobi Tolulope T
Department of Community Health Sciences & O'Brien Institute for Public Health, University of Calgary, Calgary, AB, Canada.
Department of Community Health Sciences, University of Manitoba, Winnipeg, MB, Canada.
Qual Life Res. 2025 Aug 22. doi: 10.1007/s11136-025-04046-2.
The validity of inferences from patient-reported outcome measure (PROM) scores can be confounded by differential item functioning (DIF). DIF occurs when there is heterogeneity in how patients respond to and interpret questions about their health, despite having the same underlying health status. Ignoring the effects of DIF could lead to inaccurate interpretations and misinformed clinical decisions resulting in compromised healthcare delivery. Tree-based item response theory (IRT) models are recommended as an alternative class of methods for analyzing PROMs because they offer a robust approach for identifying DIF when covariates associated with DIF are unknown a priori.
This paper introduces a web application developed using R Shiny, which enables users to implement tree-based IRT models for DIF assessment in potentially heterogeneous populations. The app provides flexible model specifications, visualization tools, and customizable settings to accommodate various data types and research needs. A practical tutorial is included, guiding users through the application interface, data preparation, model selection, and interpretation of results.
The web application (https://ucalgary-pcma-lab.shinyapps.io/tree_based_dif_analysis/) offers interactive data upload in .CSV and .XLSX data formats. Recommendations are provided for selecting model parameters within the app based on the results of previous simulation studies. The web app tests for DIF on dichotomous- and polytomous-scored items. The coefficients, item parameters, and plots provide insights into potential sources of DIF.
This web application provides a user-friendly, interactive, innovative, easily accessible, and valuable tool for clinicians, applied health researchers, and analysts seeking to understand sample heterogeneity due to DIF in PROM data.
患者报告结局测量(PROM)分数推断的有效性可能会因项目功能差异(DIF)而混淆。当患者尽管具有相同的潜在健康状况,但对有关其健康问题的回答和解释存在异质性时,就会出现DIF。忽略DIF的影响可能导致不准确的解释和错误的临床决策,从而损害医疗服务的提供。基于树的项目反应理论(IRT)模型被推荐作为分析PROM的另一类方法,因为当与DIF相关的协变量事先未知时,它们提供了一种强大的方法来识别DIF。
本文介绍了一个使用R Shiny开发的网络应用程序,该程序使用户能够在潜在异质人群中实施基于树的IRT模型进行DIF评估。该应用程序提供灵活的模型规范、可视化工具和可定制设置,以适应各种数据类型和研究需求。其中包括一个实用教程,指导用户使用应用程序界面、数据准备、模型选择和结果解释。
对于寻求了解PROM数据中因DIF导致的样本异质性的临床医生、应用健康研究人员和分析师而言,此网络应用程序提供了一个用户友好、交互式、创新、易于访问且有价值的工具。