Chu Xu, Song Jiajun, Wang Jiandong, Kang Hui
Department of Shoulder and Elbow of Sports Medicine, Honghui Hospital, Xi'an Jiaotong University, Xi'an, 710054, China.
Department of Orthopedics Surgery, Tianjin Medical University General Hospital, Tianjin, 300052, China.
Sci Rep. 2025 Mar 22;15(1):9954. doi: 10.1038/s41598-025-94755-y.
Machine learning (ML) has been extensively utilized to predict complications associated with various diseases. This study aimed to develop ML-based classifiers employing a stacking ensemble strategy to forecast the intensity of postoperative axial pain (PAP) in patients diagnosed with degenerative cervical myelopathy (DCM). A total of 711 consecutive postoperative DCM patients were included between 2016 and 2024, and after excluding patients who did not meet the inclusion criteria and those who met the exclusion criteria, a total of 484 patients were ultimately included in this study. The intensity of PAP was assessed using a standardized Numerical Rating Scale (NRS) score one year following surgery. Participants were randomly allocated into training and testing sub-datasets in a ratio of 8:2. 91 initial ML classifiers were developed, from which the top three highest-performing classifiers were subsequently integrated into an ensemble model utilizing 13 different machine learning models. The area under the curve (AUC) served as the primary metric for evaluating the predictive performance of all classifiers. The classifiers EmbeddingLR-RF (AUC = 0.81), EmbeddingRF-MLP (AUC = 0.81), and RFE-SVM (AUC = 0.80) were recognized as the leading three models. By implementing an ensemble learning approach such as stacking, an enhancement in performance for the ML classifier was observed after amalgamating these three models, with SVM ensemble classifier performed the best (AUC = 0.91). Decision curve analysis underscored the advantages conferred by these ensemble classifiers; notably, prediction curves for PAP intensity among DCM patients exhibited significant variability across the top three initial classifiers. The ensemble classifiers effectively predicted PAP intensity in DCM patients, showcasing substantial potential to aid clinicians in managing DCM cases while optimizing medical resource utilization.
机器学习(ML)已被广泛用于预测与各种疾病相关的并发症。本研究旨在开发基于ML的分类器,采用堆叠集成策略来预测诊断为退行性颈椎病(DCM)患者的术后轴向疼痛(PAP)强度。2016年至2024年期间共纳入711例连续的DCM术后患者,在排除不符合纳入标准和符合排除标准的患者后,本研究最终共纳入484例患者。术后一年使用标准化数字评定量表(NRS)评分评估PAP强度。参与者按8:2的比例随机分配到训练和测试子数据集。开发了91个初始ML分类器,随后利用13种不同的机器学习模型将表现最佳的前三个分类器集成到一个集成模型中。曲线下面积(AUC)作为评估所有分类器预测性能的主要指标。EmbeddingLR-RF(AUC = 0.81)、EmbeddingRF-MLP(AUC = 0.81)和RFE-SVM(AUC = 0.80)分类器被认为是领先的三个模型。通过实施诸如堆叠的集成学习方法,在合并这三个模型后观察到ML分类器的性能有所提高,其中支持向量机集成分类器表现最佳(AUC = 0.91)。决策曲线分析强调了这些集成分类器的优势;值得注意的是,DCM患者中PAP强度的预测曲线在最初的前三个分类器之间表现出显著差异。集成分类器有效地预测了DCM患者的PAP强度,显示出在帮助临床医生管理DCM病例同时优化医疗资源利用方面的巨大潜力。