Noh Sung Hyun, Lee Hye Sun, Park Go Eun, Ha Yoon, Park Jeong Yoon, Kuh Sung Uk, Chin Dong Kyu, Kim Keun Su, Cho Yong Eun, Kim Sang Hyun, Kim Kyung Hyun
Department of Neurosurgery, Ajou University College of Medicine, Suwon, Korea.
Department of Neurosurgery, Yonsei University College of Medicine, Seoul, Korea.
Neurospine. 2023 Mar;20(1):265-274. doi: 10.14245/ns.2244854.427. Epub 2023 Mar 31.
This study aimed to create an ideal machine learning model to predict mechanical complications in adult spinal deformity (ASD) surgery based on GAPB (modified global alignment and proportion scoring with body mass index and bone mineral density) factors.
Between January 2009 and December 2018, 238 consecutive patients with ASD, who received at least 4-level fusions and were followed-up for ≥ 2 years, were included in the study. The data were stratified into training (n = 167, 70%) and test (n = 71, 30%) sets and input to machine learning algorithms, including logistic regression, random forest gradient boosting system, and deep neural network.
Body mass index, bone mineral density, the relative pelvic version score, the relative lumbar lordosis score, and the relative sagittal alignment score of the global alignment and proportion score were significantly different in the training and test sets (p < 0.05) between the complication and no complication groups. In the training set, the area under receiver operating characteristics (AUROCs) for logistic regression, gradient boosting, random forest, and deep neural network were 0.871 (0.817-0.925), 0.942 (0.911-0.974), 1.000 (1.000-1.000), and 0.947 (0.915-0.980), respectively, and the accuracies were 0.784 (0.722-0.847), 0.868 (0.817-0.920), 1.000 (1.000-1.000), and 0.856 (0.803-0.909), respectively. In the test set, the AUROCs were 0.785 (0.678-0.893), 0.808 (0.702-0.914), 0.810 (0.710-0.910), and 0.730 (0.610-0.850), respectively, and the accuracies were 0.732 (0.629-0.835), 0.718 (0.614-0.823), 0.732 (0.629-0.835), and 0.620 (0.507-0.733), respectively. The random forest achieved the best predictive performance on the training and test dataset.
This study created a comprehensive model to predict mechanical complications after ASD surgery. The best prediction accuracy was 73.2% for predicting mechanical complications after ASD surgery.
本研究旨在基于GAPB(结合体重指数和骨密度的改良全局比对与比例评分)因素创建一个理想的机器学习模型,以预测成人脊柱畸形(ASD)手术中的机械并发症。
2009年1月至2018年12月期间,连续纳入238例接受至少4节段融合且随访≥2年的ASD患者。数据被分层为训练集(n = 167,70%)和测试集(n = 71,30%),并输入到包括逻辑回归、随机森林梯度提升系统和深度神经网络在内的机器学习算法中。
并发症组与无并发症组之间,训练集和测试集的体重指数、骨密度、全局比对与比例评分中的相对骨盆矢状面角评分、相对腰椎前凸评分以及相对矢状面平衡评分存在显著差异(p < 0.05)。在训练集中,逻辑回归、梯度提升、随机森林和深度神经网络的受试者工作特征曲线下面积(AUROC)分别为0.871(0.817 - 0.925)、0.942(0.911 - 0.974)、1.000(1.000 - 1.000)和0.947(0.915 - 0.980),准确率分别为0.784(0.722 - 0.847)、0.868(0.817 - 0.920)、1.000(1.000 - 1.000)和0.856(0.803 - 0.909)。在测试集中,AUROC分别为0.785(0.678 - 0.893)、0.808(0.702 - 0.914)、0.810(0.710 - 0.910)和0.730(0.610 - 0.850),准确率分别为0.732(0.629 - 0.835)、0.718(0.614 - 0.823)、0.732(0.629 - 0.835)和0.620(0.507 - 0.733)。随机森林在训练集和测试数据集上具有最佳的预测性能。
本研究创建了一个综合模型来预测ASD手术后的机械并发症。预测ASD手术后机械并发症的最佳预测准确率为73.2%。