Nurs Res. 2022;71(5):E39-E47. doi: 10.1097/NNR.0000000000000602. Epub 2022 May 12.
Some patients undergoing total knee arthroplasty successfully manage their condition postoperatively, whereas others encounter challenges in regaining function and controlling pain during recovery at home.
The aim of this study was to use traditional statistics and machine learning to develop prediction models that identify patients likely to have increased care needs related to managing function and pain following total knee arthroplasty.
This study included 201 patients. Outcomes were changes between baseline and follow-up in the functional and pain subcomponents of the Oxford Knee Score. Both classification and regression modeling were applied. Twenty-one predictors were included. Tenfold cross-validation was used, and the regression models were evaluated based on root-mean-square error, mean absolute error, and coefficient of determination. Classification models were evaluated based on the area under the receiver operating curve, sensitivity, and specificity.
In classification modeling, random forest and stochastic gradient boosting provided the best overall metrics for model performance. A support vector machine and a stochastic gradient boosting machine in regression modeling provided the best predictive performance. The models performed better in predicting challenges related to function compared to challenges related to pain.
There is valuable predictive information in the data routinely collected for patients undergoing total knee arthroplasty. The developed models may predict patients who are likely to have enhanced care needs regarding function and pain management. Improvements are needed before the models can be implemented in routine clinical practice.
一些接受全膝关节置换术的患者在术后成功地管理了他们的病情,而另一些患者在术后恢复期间在家中恢复功能和控制疼痛方面遇到了挑战。
本研究旨在使用传统统计学和机器学习方法开发预测模型,以识别那些在全膝关节置换术后管理功能和疼痛方面需要增加护理的患者。
本研究纳入了 201 名患者。结局是牛津膝关节评分的功能和疼痛子量表在基线和随访之间的变化。同时应用分类和回归建模。纳入了 21 个预测因子。采用 10 折交叉验证,根据均方根误差、平均绝对误差和决定系数评估回归模型。根据接收者操作特征曲线下面积、灵敏度和特异性评估分类模型。
在分类建模中,随机森林和随机梯度提升为模型性能提供了最佳的整体指标。回归建模中的支持向量机和随机梯度提升机提供了最佳的预测性能。与疼痛相关的挑战相比,这些模型在预测与功能相关的挑战方面表现更好。
在接受全膝关节置换术的患者中,常规收集的数据中存在有价值的预测信息。所开发的模型可以预测那些在功能和疼痛管理方面可能需要增加护理的患者。在模型可以在常规临床实践中实施之前,还需要进行改进。