Department of Orthopedics, The Forth Medical Center of Chinese PLA General Hospital, Beijing, 100142, China.
Department of Orthopedics, Xiangyang Central Hospital, Affiliated Hospital of Hubei University of Arts and Science, Xiangyang, 441000, Hubei, China.
J Orthop Surg Res. 2024 Sep 4;19(1):539. doi: 10.1186/s13018-024-05004-3.
Machine learning (ML) is extensively employed for forecasting the outcome of various illnesses. The objective of the study was to develop ML based classifiers using a stacking ensemble strategy to predict the Japanese Orthopedic Association (JOA) recovery rate for patients with degenerative cervical myelopathy (DCM).
A total of 672 patients with DCM were included in the study and labeled with JOA recovery rate by 1-year follow-up. All data were collected during 2012-2023 and were randomly divided into training and testing (8:2) sub-datasets. A total of 91 initial ML classifiers were developed, and the top 3 initial classifiers with the best performance were further stacked into an ensemble classifier with a supported vector machine (SVM) classifier. The area under the curve (AUC) was the main indicator to assess the prediction performance of all classifiers. The primary predicted outcome was the JOA recovery rate.
By applying an ensemble learning strategy (e.g., stacking), the accuracy of the ML classifier improved following combining three widely used ML models (e.g., RFE-SVM, EmbeddingLR-LR, and RFE-AdaBoost). Decision curve analysis showed the merits of the ensemble classifiers, as the curves of the top 3 initial classifiers varied a lot in predicting JOA recovery rate in DCM patients.
The ensemble classifiers successfully predict the JOA recovery rate in DCM patients, which showed a high potential for assisting physicians in managing DCM patients and making full use of medical resources.
机器学习(ML)广泛用于预测各种疾病的结果。本研究的目的是开发基于 ML 的分类器,使用堆叠集成策略来预测退行性颈椎脊髓病(DCM)患者的日本骨科协会(JOA)恢复率。
共纳入 672 例 DCM 患者,通过 1 年随访进行 JOA 恢复率标记。所有数据均于 2012-2023 年采集,并随机分为训练和测试(8:2)子数据集。共开发了 91 个初始 ML 分类器,性能最佳的前 3 个初始分类器进一步堆叠成支持向量机(SVM)分类器的集成分类器。曲线下面积(AUC)是评估所有分类器预测性能的主要指标。主要预测结果是 JOA 恢复率。
通过应用集成学习策略(如堆叠),在结合三种广泛使用的 ML 模型(如 RFE-SVM、EmbeddingLR-LR 和 RFE-AdaBoost)后,ML 分类器的准确性得到提高。决策曲线分析显示了集成分类器的优点,因为前 3 个初始分类器的曲线在预测 DCM 患者的 JOA 恢复率方面差异很大。
集成分类器成功预测了 DCM 患者的 JOA 恢复率,这为医生管理 DCM 患者和充分利用医疗资源提供了很高的潜力。