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使用计算机自适应测试来开发更简洁的患者报告结局指标。

Use of Computerized Adaptive Testing to Develop More Concise Patient-Reported Outcome Measures.

作者信息

Kane Liam T, Namdari Surena, Plummer Otho R, Beredjiklian Pedro, Vaccaro Alexander, Abboud Joseph A

机构信息

Rothman Orthopaedic Institute, Philadelphia, Pennsylvania.

Universal Research Solutions, Columbia, Missouri.

出版信息

JB JS Open Access. 2020 Mar 12;5(1):e0052. doi: 10.2106/JBJS.OA.19.00052. eCollection 2020 Jan-Mar.

Abstract

BACKGROUND

Patient-reported outcome measures (PROMs) are essential tools that are used to assess health status and treatment outcomes in orthopaedic care. Use of PROMs can burden patients with lengthy and cumbersome questionnaires. Predictive models using machine learning known as offer a potential solution. The purpose of this study was to evaluate the ability of CAT to improve efficiency of the Veterans RAND 12 Item Health Survey (VR-12) by decreasing the question burden while maintaining the accuracy of the outcome score.

METHODS

A previously developed CAT model was applied to the responses of 19,523 patients who had completed a full VR-12 survey while presenting to 1 of 5 subspecialty orthopaedic clinics. This resulted in the calculation of both a full-survey and CAT-model physical component summary score (PCS) and mental component summary score (MCS). Several analyses compared the accuracy of the CAT model scores with that of the full scores by comparing the means and standard deviations, calculating a Pearson correlation coefficient and intraclass correlation coefficient, plotting the frequency distributions of the 2 score sets and the score differences, and performing a Bland-Altman assessment of scoring patterns.

RESULTS

The CAT model required 4 fewer questions to be answered by each subject (33% decrease in question burden). The mean PCS was 1.3 points lower in the CAT model than with the full VR-12 (41.5 ± 11.0 versus 42.8 ± 10.4), and the mean MCS was 0.3 point higher (57.3 ± 9.4 versus 57.0 ± 9.6). The Pearson correlation coefficients were 0.97 for PCS and 0.98 for MCS, and the intraclass correlation coefficients were 0.96 and 0.97, respectively. The frequency distribution of the CAT and full scores showed significant overlap for both the PCS and the MCS. The difference between the CAT and full scores was less than the minimum clinically important difference (MCID) in >95% of cases for the PCS and MCS.

CONCLUSIONS

The application of CAT to the VR-12 survey demonstrated an ability to lessen the response burden for patients with a negligible effect on score integrity.

摘要

背景

患者报告结局测量指标(PROMs)是用于评估骨科护理中健康状况和治疗效果的重要工具。使用PROMs可能会让患者承受冗长繁琐的问卷负担。使用机器学习的预测模型提供了一种潜在的解决方案。本研究的目的是评估计算机自适应测试(CAT)通过减轻问题负担同时保持结局分数准确性来提高退伍军人兰德12项健康调查(VR - 12)效率的能力。

方法

将先前开发的CAT模型应用于19523名患者的回答,这些患者在前往5个骨科亚专科诊所之一就诊时完成了完整的VR - 12调查。由此计算出完整调查和CAT模型的身体成分汇总评分(PCS)以及心理成分汇总评分(MCS)。通过比较均值和标准差、计算Pearson相关系数和组内相关系数、绘制两个分数集的频率分布和分数差异,并对评分模式进行Bland - Altman评估,对CAT模型分数与完整分数的准确性进行了多项分析。

结果

CAT模型每个受试者需要回答的问题少4个(问题负担减少33%)。CAT模型的平均PCS比完整VR - 12低1.3分(41.5±11.0对42.8±10.4),平均MCS高0.3分(57.3±9.4对57.0±9.6)。PCS的Pearson相关系数为0.97,MCS为0.98,组内相关系数分别为0.96和0.97。CAT分数和完整分数的频率分布在PCS和MCS方面均显示出显著重叠。在PCS和MCS方面,CAT分数与完整分数的差异在超过95%的情况下小于最小临床重要差异(MCID)。

结论

将CAT应用于VR - 12调查表明,它有能力减轻患者的回答负担,同时对分数完整性的影响可忽略不计。

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