Division of Orthopaedic Surgery, Children's Hospital of Philadelphia, Philadelphia, PA, USA.
Division of Orthopaedic Surgery, Ann & Robert H. Lurie Children's Hospital of Chicago, Chicago, IL, USA.
Spine Deform. 2024 Jul;12(4):1165-1172. doi: 10.1007/s43390-024-00848-5. Epub 2024 Mar 26.
Surgical treatment of early-onset scoliosis (EOS) is associated with high rates of complications, often requiring unplanned return to the operating room (UPROR). The aim of this study was to create and validate a machine learning model to predict which EOS patients will go on to require an UPROR during their treatment course.
A retrospective review was performed of all surgical EOS patients with at least 2 years follow-up. Patients were stratified based on whether they had experienced an UPROR. Ten machine learning algorithms were trained using tenfold cross-validation on an independent training set of patients. Model performance was evaluated on a separate testing set via their area under the receiver operating characteristic curve (AUC). Relative feature importance was calculated for the top-performing model.
257 patients were included in the study. 146 patients experienced at least one UPROR (57%). Five factors were identified as significant and included in model training: age at initial surgery, EOS etiology, initial construct type, and weight and height at initial surgery. The Gaussian naïve Bayes model demonstrated the best performance on the testing set (AUC: 0.79). Significant protective factors against experiencing an UPROR were weight at initial surgery, idiopathic etiology, initial definitive fusion construct, and height at initial surgery.
The Gaussian naïve Bayes machine learning algorithm demonstrated the best performance for predicting UPROR in EOS patients. Heavier, taller, idiopathic patients with initial definitive fusion constructs experienced UPROR less frequently. This model can be used to better quantify risk, optimize patient factors, and choose surgical constructs.
Prognostic: III.
早期发病脊柱侧凸(EOS)的手术治疗与高并发症发生率相关,往往需要计划外再次手术(UPROR)。本研究的目的是建立和验证一种机器学习模型,以预测哪些 EOS 患者在治疗过程中需要 UPROR。
对所有至少随访 2 年的手术治疗 EOS 患者进行回顾性研究。根据是否经历过 UPROR 将患者分层。使用 10 折交叉验证在独立的训练集中对 10 种机器学习算法进行训练。通过接收者操作特征曲线下面积(AUC)在单独的测试集中评估模型性能。计算表现最好的模型的相对特征重要性。
本研究共纳入 257 例患者。146 例患者至少经历过一次 UPROR(57%)。确定了 5 个重要因素并纳入模型训练:初次手术时的年龄、EOS 病因、初始构建类型以及初次手术时的体重和身高。高斯朴素贝叶斯模型在测试集上表现最佳(AUC:0.79)。初次手术时体重、特发性病因、初始确定性融合构建和初次手术时身高是预防 UPROR 的显著保护因素。
高斯朴素贝叶斯机器学习算法在预测 EOS 患者 UPROR 方面表现最佳。初始确定性融合构建的较重、较高、特发性患者 UPROR 发生率较低。该模型可用于更好地量化风险、优化患者因素和选择手术构建。
预后:III。