Andersen J D, Hangaard S, Buus A A Ø, Laursen M, Hejlesen O K, El-Galaly A
Department of Health Science and Technology, Faculty of Medicine, Aalborg University, Denmark.
Steno Diabetes Center North Denmark, Aalborg University Hospital, Aalborg, Denmark.
J Orthop. 2021 Mar 11;24:216-221. doi: 10.1016/j.jor.2021.03.001. eCollection 2021 Mar-Apr.
Revision TKA is a serious adverse event with substantial consequences for the patient. As revision is becoming increasingly common in patients under 65 years, the need for improved preoperative patient selection is imminently needed. Therefore, this study aimed to identify the most important factors of early revision and to develop a prediction model of early revision including assessment of the effect of incorporating data on patient-reported outcome measures (PROMs).
A cohort of 538 patients undergoing primary TKA was included. Multiple logistic regression using forward selection of variables was applied to identify the best predictors of early revision and to develop a prediction model. The model was internally validated with stratified 5-fold cross-validation. This procedure was repeated without including data on PROMs to develop a model for comparison. The models were evaluated on their discriminative capacity using area under the receiver operating characteristic curve (AUC).
The most important factors of early revision were age (OR 0.63 [0.42, 0.95]; = 0.03), preoperative EQ-5D (OR 0.07 [0.01, 0.51]; = 0.01), and number of comorbidities (OR 1.01 [0.97, 1.25]; = 0.15). The AUCs of the models with and without PROMs were 0.65 and 0.61, respectively. The difference between the AUCs was not statistically significant ( 0.32).
Although more work is needed in order to reach a clinically meaningful quality of the predictions, our results show that the inclusion of PROMs seems to improve the quality of the prediction model.
翻修全膝关节置换术(TKA)是一种严重的不良事件,会给患者带来重大影响。由于65岁以下患者的翻修手术越来越普遍,因此迫切需要改进术前患者的选择。因此,本研究旨在确定早期翻修的最重要因素,并开发一个早期翻修的预测模型,包括评估纳入患者报告结局量表(PROMs)数据的效果。
纳入538例行初次TKA的患者队列。采用向前变量选择的多因素逻辑回归来确定早期翻修的最佳预测因素并建立预测模型。该模型通过分层5折交叉验证进行内部验证。在不纳入PROMs数据的情况下重复此过程以建立一个用于比较的模型。使用受试者工作特征曲线下面积(AUC)评估模型的辨别能力。
早期翻修的最重要因素是年龄(比值比[OR]0.63[0.42,0.95];P = 0.03)、术前EQ-5D(OR 0.07[0.01,0.51];P = 0.01)和合并症数量(OR 1.01[0.97,1.25];P = 0.15)。纳入和未纳入PROMs的模型的AUC分别为0.65和0.61。AUC之间的差异无统计学意义(P = 0.32)。
尽管为了使预测达到具有临床意义的质量还需要更多工作,但我们的结果表明,纳入PROMs似乎可以提高预测模型的质量。