首页> 外文期刊>Supportive care in cancer: official journal of the Multinational Association of Supportive Care in Cancer >Item response theory analysis of the patient satisfaction with cancer-related care measure: A psychometric investigation in a multicultural sample of 1,296 participants
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Item response theory analysis of the patient satisfaction with cancer-related care measure: A psychometric investigation in a multicultural sample of 1,296 participants

机译:患者对癌症相关护理措施满意度的项目反应理论分析:一项对1,296名参与者的多元文化样本的心理计量学调查

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Background: We developed and validated a Patient Satisfaction with Cancer-Related Care (PSCC) measure using classical test theory methods. The present study applied item response theory (IRT) analysis to determine item-level psychometric properties, facilitate development of short forms, and inform future applications for the PSCC. Methods: We applied unidimensional IRT models to PSCC data from 1,296 participants (73 % female; 18 to 86 years). An unconstrained graded response model (GRM) and a Rasch Model were fitted to estimate indices for model comparison using likelihood ratio (LR) test and information criteria. We computed item and latent trait parameter estimates, category and operating characteristic curves, and tested information curves for the better fitting model. Results: The GRM fitted the data better than the Rasch Model (LR=828, df=17, p<0.001). The log-likelihood (-17,390.38 vs. -17,804.26) was larger, and the AIC and BIC were smaller for the GRM compared to the Rash Model (AIC=34,960.77 vs. 35,754.73; BIC=35,425.80 vs. 36,131.92). Item parameter estimates (IPEs) showed substantial variation in items' discriminating power (0.94 to 2.18). Standard errors of the IPEs were small (threshold parameters mostly around 0.1; discrimination parameters 0.1 to 0.2), confirming the precision of the IPEs. Conclusion: The GRM provides precise IPEs that will enable comparable scores from different subsets of items, and facilitate optimal selections of items to estimate patients' latent satisfaction level. Given the large calibration sample, the IPEs can be used in settings with limited resources (e.g., smaller samples) to estimate patients' satisfaction.
机译:背景:我们使用经典的测试理论方法开发并验证了患者对癌症相关护理(PSCC)的满意度。本研究应用项目反应理论(IRT)分析来确定项目级别的心理测量属性,促进简短形式的发展,并为PSCC的未来应用提供信息。方法:我们将一维IRT模型应用于来自1,296名参与者(73%女性; 18至86岁)的PSCC数据。使用似然比(LR)测试和信息标准,对无约束的分级响应模型(GRM)和Rasch模型进行拟合,以估计用于模型比较的指标。我们计算了项目和潜在性状参数估计值,类别和操作特征曲线,并测试了信息曲线以得到更好的拟合模型。结果:GRM比Rasch模型更好地拟合了数据(LR = 828,df = 17,p <0.001)。与Rash模型相比,GRM的对数似然度(-17,390.38与-17,804.26)较大,AIC和BIC较小(AIC = 34,960.77对35,754.73; BIC = 35,425.80对36,131.92)。物品参数估计值(IPE)显示物品的辨别力有很大差异(0.94至2.18)。 IPE的标准误差很小(阈值参数大多在0.1左右;判别参数在0.1到0.2之间),这证明了IPE的精度。结论:GRM提供了精确的IPE,这些IPE将使不同子项的评分可比,并有助于对项的最佳选择,以估计患者的潜在满意度。给定较大的校准样本,可以将IPE用于资源有限的环境(例如较小的样本)中,以估计患者的满意度。

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