Department of Neurosurgery, Kermanshah University of Medical Sciences, Imam Reza Hospital, Kermanshah, Iran.
Kermanshah University of Medical Sciences, Kermanshah, Iran.
BMC Musculoskelet Disord. 2024 Nov 18;25(1):922. doi: 10.1186/s12891-024-08045-1.
The management of patients with thoracolumbar burst fractures remains a topic of debate, with conservative treatment being successful in most cases but not all. This study aimed to assess the utility of machine learning models (MLMs) in predicting the need for surgery in patients with these fractures who do not respond to conservative management.
A retrospective analysis of 357 patients with traumatic thoracolumbar burst fractures treated conservatively between January 2017 and October 2023 was conducted. Various potential risk factors for treatment failure were evaluated, including age, gender, BMI, smoking, diabetes, vertebral body compression rate, anterior height compression, Cobb angle, interpedicular distance, canal compromise, and pain intensity. Three MLMs-random forest (RF), support vector machine (SVM), and k-nearest neighborhood (k-NN)-were used to predict treatment failure, with the RF model also identifying factors associated with treatment failure.
Among the patients studied, most (85.2%) completed conservative treatment, while 14.8% required surgery during follow-up. Smoking (OR: 2.01; 95% CI: 1.54-2.86; p = 0.011) and interpedicular distance (OR: 2.31; 95% CI: 1.22-2.73; p = 0.003) were found to be independent risk factors for treatment failure. The MLMs demonstrated good performance, with SVM achieving the highest accuracy (0.931), followed by RF (0.911) and k-NN (0.896). SVM also exhibited superior sensitivity and specificity compared to the other models, with AUC values of 0.897, 0.854, and 0.815 for SVM, RF, and k-NN, respectively.
This study underscores the effectiveness of MLMs in predicting conservative treatment failure in patients with thoracolumbar burst fractures. These models offer valuable prognostic insights that can aid in optimizing patient management and clinical outcomes in this specific patient population.
胸腰椎爆裂骨折的治疗管理仍然是一个有争议的话题,大多数情况下保守治疗是成功的,但并非所有情况都是如此。本研究旨在评估机器学习模型(MLM)在预测对保守治疗无反应的此类骨折患者是否需要手术方面的效用。
对 2017 年 1 月至 2023 年 10 月期间接受保守治疗的 357 例创伤性胸腰椎爆裂骨折患者进行回顾性分析。评估了治疗失败的各种潜在风险因素,包括年龄、性别、BMI、吸烟、糖尿病、椎体压缩率、前方高度压缩、Cobb 角、椎弓根间距离、椎管狭窄和疼痛强度。使用三种 MLM(随机森林 RF、支持向量机 SVM 和 K-近邻 k-NN)预测治疗失败,RF 模型还确定了与治疗失败相关的因素。
在所研究的患者中,大多数(85.2%)完成了保守治疗,而在随访期间,14.8%需要手术。吸烟(OR:2.01;95%CI:1.54-2.86;p=0.011)和椎弓根间距离(OR:2.31;95%CI:1.22-2.73;p=0.003)被发现是治疗失败的独立危险因素。MLM 表现出良好的性能,SVM 实现了最高的准确性(0.931),其次是 RF(0.911)和 k-NN(0.896)。SVM 还表现出优于其他模型的灵敏度和特异性,SVM、RF 和 k-NN 的 AUC 值分别为 0.897、0.854 和 0.815。
本研究强调了 MLM 在预测胸腰椎爆裂骨折患者保守治疗失败中的有效性。这些模型提供了有价值的预后信息,可以帮助优化该特定患者群体的患者管理和临床结果。