Chou Wen-Yi, Huang Tian-Hsiang, Cheng Jai-Hong, Lien Yu-Jui, Ho Wen-Hsien, Chou Paul Pei-Hsi
Ph.D. Program in Biomedical Engineering, College of Medicine, Kaohsiung Medical University, Kaohsiung, Taiwan; Department of Orthopedic Surgery, Kaohsiung Chang Gung Memorial Hospital and Chang Gung University College of Medicine, Kaohsiung, Taiwan; Department of Leisure and Sport Management, Cheng Shiu University, Kaohsiung, Taiwan.
Department of Computer Science and Information Engineering, National Penghu University of Science and Technology, Penghu, Taiwan.
J Shoulder Elbow Surg. 2025 Aug;34(8):e645-e655. doi: 10.1016/j.jse.2024.11.030. Epub 2025 Jan 19.
The efficacy of extracorporeal shockwave therapy (ESWT) for treating shoulder calcific tendinitis can be influenced by various prognostic factors. This study aimed to identify prognostic factors associated with the failure of ESWT for symptom relief and to evaluate the predictive capability of the eXtreme Gradient Boosting (XGBoost) algorithm of artificial intelligence techniques in this context.
This retrospective study enrolled patients with persistent shoulder pain attributed to calcific tendinitis who underwent ESWT after failed conservative treatment between January 1998 and December 2022. Age, sex, duration of symptoms, calcification classification and size, pre-ESWT visual analog scale (VAS), and pre-ESWT Constant-Murley score (CMS) served as potential input attributes. The difference in VAS and CMS were defined as the output attributes. The XGBoost model was used to predict treatment outcomes based on these factors. The dataset was balanced using the synthetic minority oversampling technique, and the model's performance was assessed using 10-fold cross-validation. Spearman's rank correlation coefficient analysis was adopted to explore the relationships between significant continuous input attributes and post-ESWT VAS and CMS scores.
A total of 296 patients with calcific tendinitis were enrolled and completed the 1-year follow-up. The findings revealed that a prolonged symptom duration (>10 months), severe pain (pre-ESWT VAS >5), and higher pre-ESWT CMS (>55) were significant prognostic factors for the failure of ESWT for symptom relief. Using these factors as inputs, the XGBoost model demonstrated high accuracy, precision, recall, and F1 score. By reducing the input attributes to age, calcification size, pre-ESWT CMS, and symptom duration, the model maintained a high prediction rate, suggesting that these factors are sufficient for effective prediction.
The present study identified significant prognostic factors associated with the failure of ESWT in the treatment of shoulder calcific tendinitis. By using artificial intelligence techniques, particularly the XGBoost algorithm, we demonstrated an effective ability to predict the VAS and the CMS outcomes following ESWT. By employing the trained XGBoost model, clinicians can offer accurate predictions regarding the outcome of ESWT in this clinical scenario, aiding in treatment decision-making and optimizing patient care.
体外冲击波疗法(ESWT)治疗肩部钙化性肌腱炎的疗效可能受多种预后因素影响。本研究旨在确定与ESWT症状缓解失败相关的预后因素,并评估人工智能技术中的极限梯度提升(XGBoost)算法在此背景下的预测能力。
这项回顾性研究纳入了1998年1月至2022年12月期间因钙化性肌腱炎导致持续性肩部疼痛且保守治疗失败后接受ESWT的患者。年龄、性别、症状持续时间、钙化分类和大小、ESWT前视觉模拟评分(VAS)以及ESWT前Constant-Murley评分(CMS)作为潜在输入属性。VAS和CMS的差异定义为输出属性。基于这些因素,使用XGBoost模型预测治疗结果。采用合成少数过采样技术平衡数据集,并使用10折交叉验证评估模型性能。采用Spearman等级相关系数分析来探究显著的连续输入属性与ESWT后VAS和CMS评分之间的关系。
共纳入296例钙化性肌腱炎患者并完成了1年随访。结果显示,症状持续时间延长(>10个月)、疼痛严重(ESWT前VAS>5)以及ESWT前CMS较高(>55)是ESWT症状缓解失败的显著预后因素。以这些因素作为输入,XGBoost模型显示出较高的准确率、精确率、召回率和F1分数。通过将输入属性减少到年龄、钙化大小、ESWT前CMS和症状持续时间,模型保持了较高的预测率,表明这些因素足以进行有效预测。
本研究确定了与ESWT治疗肩部钙化性肌腱炎失败相关的显著预后因素。通过使用人工智能技术,特别是XGBoost算法,我们证明了有效预测ESWT后VAS和CMS结果的能力。通过应用训练好的XGBoost模型,临床医生可以在此临床场景中对ESWT的结果提供准确预测,有助于治疗决策并优化患者护理。