比较像我的人与线性混合模型对膝关节置换术后功能恢复的预测

J. Graber, A. Kittelson, E. Juarez-colunga, Xin Jin, M. Bade, J. Stevens-Lapsley
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引用次数: 1

摘要

目的预测模型是监测患者状态和个性化治疗的有效工具。本研究的目的是比较预测膝关节置换术后功能恢复的两种不同方法的相对优缺点:基于邻居的People Like Me (PLM)方法和线性混合模型(LMM)方法。材料和方法我们使用两个不同的数据集来训练并测试PLM和LMM预测膝关节置换术后功能恢复的方法。我们使用了一种常用的运动能力测试——Timed Up and Go (TUG)来评估身体功能。两种方法都使用患者特征和术后基线TUG值来预测术后1-425天的TUG恢复情况。我们比较了测试数据集中PLM和LMM预测的准确度和精密度。结果共使用317例患者记录和1379条TUG观察结果对PLM和LMM方法进行训练,使用456例患者记录和1244条TUG观察结果对预测结果进行检验。这些方法在均方误差和偏差方面表现相似,但PLM方法提供了更准确和精确的预测不确定性估计。讨论与结论总体而言,PLM入路更准确地预测膝关节置换术后的TUG恢复。这些结果表明,PLM预测可能在临床上对监测膝关节置换术后的恢复和个性化护理更有用。然而,寻求在实践中使用预测的临床医生和组织在选择预测方法时应考虑其他因素(例如,资源需求)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing People-Like-Me and linear mixed model predictions of functional recovery following knee arthroplasty
Objective Prediction models can be useful tools for monitoring patient status and personalizing treatment in health care. The goal of this study was to compare the relative strengths and weaknesses of two different approaches for predicting functional recovery after knee arthroplasty: a neighbors-based People Like Me (PLM) approach and a linear mixed model (LMM) approach. Materials and Methods We used two distinct datasets to train and then test PLM and LMM prediction approaches for functional recovery following knee arthroplasty. We used Timed Up and Go (TUG), a commonly used test of mobility, to operationalize physical function. Both approaches used patient characteristics and baseline postoperative TUG values to predict TUG recovery from days 1-425 following surgery. We compared the accuracy and precision of PLM and LMM predictions in the testing dataset. Results A total of 317 patient records with 1379 TUG observations were used to train PLM and LMM approaches, and 456 patient records with 1244 TUG observations were used to test the predictions. The approaches performed similarly in terms of mean squared error and bias, but the PLM approach provided more accurate and precise estimates of prediction uncertainty. Discussion and Conclusion Overall, the PLM approach more accurately and precisely predicted TUG recovery following knee arthroplasty. These results suggest PLM predictions may be more clinically useful for monitoring recovery and personalizing care following knee arthroplasty. However, clinicians and organizations seeking to use predictions in practice should consider additional factors (e.g., resource requirements) when selecting a prediction approach.
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