Development and internal validation of a model predicting patient-reported shoulder function after arthroscopic rotator cuff repair in a Swiss setting.

Thomas Stojanov, Soheila Aghlmandi, Andreas Marc Müller, Markus Scheibel, Matthias Flury, Laurent Audigé
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引用次数: 1

Abstract

Background: Prediction models for outcomes after orthopedic surgery provide patients with evidence-based postoperative outcome expectations. Our objectives were (1) to identify prognostic factors associated with the postoperative shoulder function outcome (the Oxford Shoulder Score (OSS)) and (2) to develop and validate a prediction model for postoperative OSS.

Methods: Patients undergoing arthroscopic rotator cuff repair (ARCR) were prospectively documented at a Swiss orthopedic tertiary care center. The first primary ARCR in adult patients with a partial or complete rotator cuff tear were included between October 2013 and June 2021. Thirty-two potential prognostic factors were used for prediction model development. Two sets of factors identified using the knowledge from three experienced surgeons (Set 1) and Bayesian projection predictive variable selection (Set 2) were compared in terms of model performance using R squared and root-mean-squared error (RMSE) across 45 multiple imputed data sets using chained equations and complete case data.

Results: Multiple imputation using data from 1510 patients was performed. Set 2 retained the following factors: American Society of Anesthesiologists (ASA) classification, baseline level of depression and anxiety, baseline OSS, operation duration, tear severity, and biceps status and treatment. Apparent model performance was R-squared = 0.174 and RMSE = 7.514, dropping to R-squared = 0.156, and RMSE = 7.603 after correction for optimism.

Conclusion: A prediction model for patients undergoing ARCR was developed using solely baseline and operative data in order to provide patients and surgeons with individualized expectations for postoperative shoulder function outcomes. Yet, model performance should be improved before being used in clinical routine.

一个预测患者在瑞士关节镜下肩袖修复后肩部功能的模型的开发和内部验证。
背景:骨科手术后结果的预测模型为患者提供了基于证据的术后结果预期。我们的目标是(1)确定与术后肩部功能结果(牛津肩部评分(OSS))相关的预后因素;(2)开发和验证术后OSS的预测模型。方法:在瑞士骨科三级护理中心前瞻性记录接受关节镜下肩袖修复(ARCR)的患者。2013年10月至2021年6月期间,首次纳入成年肩袖部分或完全撕裂患者的原发性ARCR。32个潜在的预后因素被用于预测模型的开发。使用来自三位经验丰富的外科医生的知识确定的两组因素(集合1)和贝叶斯投影预测变量选择(集合2),在使用链式方程和完整病例数据的45个多个估算数据集中,使用R平方和均方根误差(RMSE),在模型性能方面进行比较。结果:使用1510名患者的数据进行了多重插补。第2组保留了以下因素:美国麻醉师学会(ASA)分类、抑郁和焦虑的基线水平、基线OSS、手术持续时间、撕裂严重程度、肱二头肌状态和治疗。表观模型性能为R平方 = 0.174和RMSE = 7.514,降至R平方 = 0.156和RMSE = 7.603乐观修正后。结论:仅使用基线和手术数据建立了ARCR患者的预测模型,以便为患者和外科医生提供对术后肩功能结果的个性化期望。然而,在用于临床常规之前,模型的性能应该得到改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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