参与监督运动和教育的骨关节炎患者膝关节疼痛变化的个性化预测:预后模型研究。

Q2 Medicine
Mahdie Rafiei, Supratim Das, Mohammad Bakhtiari, Ewa Maria Roos, Søren T Skou, Dorte T Grønne, Jan Baumbach, Linda Baumbach
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引用次数: 0

摘要

背景:膝关节骨关节炎(OA)是一种常见的慢性疾病,它会损害活动能力并降低生活质量。尽管运动疗法和患者教育在管理OA疼痛和功能限制方面已被证实有好处,但这些策略往往未得到充分利用。为了激励和提高患者的参与度,可以使用个性化的结果预测模型。然而,现有模型在预测膝关节疼痛结果变化方面的准确性仍然没有得到充分的检验。目的:本研究旨在验证现有模型,并引入一种简洁的个性化模型,预测膝关节OA患者参加有监督的患者教育和运动治疗计划(GLA:D)前后膝关节疼痛的变化。方法:我们的预测模型利用自我报告的患者信息和功能测量。为了细化变量的数量,我们评估了变量的重要性并应用临床推理。我们训练随机森林回归模型,并将模型的真实预测率与使用平均值的模型进行比较。在补充分析中,我们还考虑了最近添加到GLA:D注册表中的变量。结果:我们分别评估了包含所有34个变量、所有11个连续变量和6个最具预测性变量的完整、连续和简明模型的性能。尽管我们增加了样本量,但这三种模型的表现相似,与现有模型相当,R2值为0.31-0.32,均方根误差为18.65-18.85。允许15点(视觉模拟量表)偏离疼痛的真实变化,我们的简明模型正确估计了58%的病例的疼痛变化,而使用平均值导致51%的准确率。我们的补充分析得出了类似的结果。结论:我们的简洁个性化预测模型比使用平均疼痛改善值更能准确预测GLA:D方案后膝关节疼痛的变化。无论是样本量的增加,还是额外变量的加入,都不能改善以前的模型。根据目前的知识和现有数据,没有比这更好的预测了。当一个模型的性能足以用于临床实践时,需要指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized Predictions for Changes in Knee Pain Among Patients With Osteoarthritis Participating in Supervised Exercise and Education: Prognostic Model Study.

Background: Knee osteoarthritis (OA) is a common chronic condition that impairs mobility and diminishes quality of life. Despite the proven benefits of exercise therapy and patient education in managing OA pain and functional limitations, these strategies are often underused. To motivate and enhance patient engagement, personalized outcome prediction models can be used. However, the accuracy of existing models in predicting changes in knee pain outcomes remains insufficiently examined.

Objective: This study aims to validate existing models and introduce a concise personalized model predicting changes in knee pain from before to after participating in a supervised patient education and exercise therapy program (GLA:D) among patients with knee OA.

Methods: Our prediction models leverage self-reported patient information and functional measures. To refine the number of variables, we evaluated the variable importance and applied clinical reasoning. We trained random forest regression models and compared the rate of true predictions of our models with those using average values. In supplementary analyses, we additionally considered recently added variables to the GLA:D registry.

Results: We evaluated the performance of a full, continuous, and concise model including all 34 variables, all 11 continuous variables, and the 6 most predictive variables, respectively. All three models performed similarly and were comparable to the existing model, with R2 values of 0.31-0.32 and root-mean-squared errors of 18.65-18.85-despite our increased sample size. Allowing a deviation of 15 (visual analog scale) points from the true change in pain, our concise model correctly estimated the change in pain in 58% of cases, while using average values that resulted in 51% accuracy. Our supplementary analysis led to similar outcomes.

Conclusions: Our concise personalized prediction model provides more often accurate predictions for changes in knee pain after the GLA:D program than using average pain improvement values. Neither the increase in sample size nor the inclusion of additional variables improved previous models. Based on current knowledge and available data, no better predictions are possible. Guidance is needed on when a model's performance is good enough for clinical practice use.

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来源期刊
CiteScore
4.20
自引率
0.00%
发文量
31
审稿时长
12 weeks
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