Hopkins Benjamin S, Cloney Michael B, Dhillon Ekamjeet S, Texakalidis Pavlos, Dallas Jonathan, Nguyen Vincent N, Ordon Matthew, Tecle Najib El, Chen Thomas C, Hsieh Patrick C, Liu John C, Koski Tyler R, Dahdaleh Nader S
Department of Neurological Surgery, Keck School of Medicine, University of Southern California, Los Angeles, CA, USA.
Department of Neurological Surgery, Feinberg School of Medicine, Northwestern University, Chicago, IL, USA.
J Craniovertebr Junction Spine. 2023 Jul-Sep;14(3):221-229. doi: 10.4103/jcvjs.jcvjs_69_23. Epub 2023 Sep 18.
Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastating complication. With the advent of machine learning, an opportunity exists for more accurate prediction of such events to aid in prevention and treatment.
Seven models were screened using 108 database variables and 62 preoperative variables. These models included deep neural network (DNN), DNN with synthetic minority oversampling technique (SMOTE), logistic regression, ridge regression, lasso regression, simple linear regression, and gradient boosting classifier. Relevant metrics were compared between each model. The top four models were selected based on area under the receiver operator curve; these models included DNN with SMOTE, linear regression, lasso regression, and ridge regression. Separate random sampling of each model was performed 1000 additional independent times using a randomly generated training/testing distribution. Variable weights and magnitudes were analyzed after sampling.
Using all patient-related variables, DNN using SMOTE was the top-performing model in predicting postoperative VTE after spinal surgery (area under the curve [AUC] =0.904), followed by lasso regression (AUC = 0.894), ridge regression (AUC = 0.873), and linear regression (AUC = 0.864). When analyzing a subset of only preoperative variables, the top-performing models were lasso regression (AUC = 0.865) and DNN with SMOTE (AUC = 0.864), both of which outperform any currently published models. Main model contributions relied heavily on variables associated with history of thromboembolic events, length of surgical/anesthetic time, and use of postoperative chemoprophylaxis.
The current study provides promise toward machine learning methods geared toward predicting postoperative complications after spine surgery. Further study is needed in order to best quantify and model real-world risk for such events.
脊柱手术后静脉血栓栓塞事件(VTE)虽罕见但可能是灾难性并发症。随着机器学习的出现,存在更准确预测此类事件以辅助预防和治疗的机会。
使用108个数据库变量和62个术前变量筛选了7种模型。这些模型包括深度神经网络(DNN)、采用合成少数过采样技术(SMOTE)的DNN、逻辑回归、岭回归、套索回归、简单线性回归和梯度提升分类器。对各模型之间的相关指标进行了比较。根据受试者工作特征曲线下面积选择了前四种模型;这些模型包括采用SMOTE的DNN、线性回归、套索回归和岭回归。使用随机生成的训练/测试分布,对每个模型再进行1000次独立的随机抽样。抽样后分析变量权重和大小。
使用所有患者相关变量时,采用SMOTE的DNN是预测脊柱手术后VTE的最佳模型(曲线下面积[AUC]=0.904),其次是套索回归(AUC=0.894)、岭回归(AUC=0.873)和线性回归(AUC=0.864)。仅分析术前变量子集时,最佳模型是套索回归(AUC=0.865)和采用SMOTE的DNN(AUC=0.864),二者均优于任何当前已发表的模型。主要模型贡献严重依赖于与血栓栓塞事件病史、手术/麻醉时间长短以及术后化学预防措施使用相关的变量。
本研究为用于预测脊柱手术后并发症的机器学习方法带来了希望。需要进一步研究以便最好地量化和模拟此类事件的实际风险。