Department of Anesthesiology, Tianjin Baodi Hospital, Baodi Clinical College of Tianjin Medical University, Tianjin, 301800, China.
Department of Orthopedics, Xiangyang Central Hospital, Affiliated Hospital of Hubei University of Arts and Science, Xiangyang, Hubei, 441000, China.
J Orthop Surg Res. 2024 Nov 28;19(1):803. doi: 10.1186/s13018-024-05271-0.
Machine learning (ML) has been widely applied to predict the outcomes of numerous diseases. The current study aimed to develop a prognostic prediction model using machine learning algorithms and identify risk factors associated with residual back pain in patients with osteoporotic vertebrae compression fracture (OVCF) following percutaneous vertebroplasty (PVP).
A total of 863 OVCF patients who underwent PVP surgery were enrolled and analyzed. One month following surgery, a Visual Analog Scale (VAS) score of ≥ 4 was deemed to signify residual low back pain following the operation and patients were grouped into a residual pain group and pain-free group. The optimal feature set for both machine learning and statistical models was adjusted based on a 2000-resample bootstrap-based internal validation via an exhaustive search. The area under the curve (AUC), classification accuracy, sensitivity, and specificity of each model were then calculated to evaluate the predictive performance of each model.
In our current study, two main findings were observed: (1) Compared with statistical models, ML models exhibited superior predictive performance, with SVM demonstrating the highest prediction accuracy; (2) several variables were identified as the most predictive factors by both the machine learning and statistical models, including bone cement volume, number of fractured vertebrae, facet joint violation, paraspinal muscle degeneration, and intravertebral vacuum cleft.
Overall, the study demonstrated that machine learning classifiers such as SVM can effectively predict residual back pain for patients with OVCF following PVP while identifying associated predictors in a multivariate manner.
机器学习(ML)已广泛应用于预测许多疾病的结果。本研究旨在开发一种使用机器学习算法的预后预测模型,并确定经皮椎体成形术(PVP)治疗后骨质疏松性椎体压缩性骨折(OVCF)患者残留腰痛的相关危险因素。
共纳入 863 例接受 PVP 手术的 OVCF 患者进行分析。术后 1 个月,视觉模拟评分(VAS)≥4 被认为是手术后继发残留腰痛,并将患者分为残留疼痛组和无疼痛组。通过基于 2000 个样本的内部验证的穷尽搜索,调整机器学习和统计模型的最优特征集。然后计算每个模型的曲线下面积(AUC)、分类准确性、敏感度和特异性,以评估每个模型的预测性能。
在本研究中,观察到两个主要发现:(1)与统计模型相比,ML 模型表现出更好的预测性能,SVM 显示出最高的预测准确性;(2)机器学习和统计模型都确定了几个变量为最具预测性的因素,包括骨水泥体积、骨折椎体数量、关节突关节侵犯、腰背肌退变和椎体内真空裂隙。
总体而言,该研究表明 SVM 等机器学习分类器可以有效地预测 PVP 治疗后 OVCF 患者的残留腰痛,并以多变量的方式识别相关的预测因素。