Department of Orthopedics, The First Affiliated Hospital of Chongqing Medical University, Chongqing 400016, China.
Orthopedic Laboratory of Chongqing Medical University, Chongqing, China.
Comput Math Methods Med. 2022 Aug 23;2022:2697841. doi: 10.1155/2022/2697841. eCollection 2022.
Surgical site infection is one of the serious complications after lumbar fusion. Early prediction and timely intervention can reduce the harm to patients. The aims of this study were to construct and validate a machine learning model for predicting surgical site infection after posterior lumbar interbody fusion, to screen out the most important risk factors for surgical site infection, and to explore whether synthetic minority oversampling technique could improve the model performance.
This study reviewed 584 patients who underwent posterior lumbar interbody fusion for degenerative lumbar disease at our center from January 2019 to August 2021. Clinical information and laboratory test data were collected from the electronic medical records. The original dataset was divided into training set and validation set in a 1 : 1 ratio. Seven machine learning algorithms were used to develop predictive models; the training set of each model was resampled using synthetic minority oversampling technique. Finally, the model performance was assessed in the validation set.
Of the 584 patients, 33 (5.65%) occurred surgical site infection. Stepwise logistic regression showed that preoperative albumin level (OR 0.659, 95% CI 0.563-0.756), diabetes (OR 9.129, 95% CI 3.816-23.126), intraoperative dural tear (OR 8.436, 95% CI 2.729-25.334), and rheumatic disease (OR 8.471, 95% CI 1.743-39.567) were significant predictors associated with surgical site infection. The performance of the AdaBoost Classification Trees model was the best among the seven machine learning models, and synthetic minority oversampling technique improved the performance of all models.
The prediction model we constructed based on machine learning and synthetic minority oversampling technique can accurately predict surgical site infection, which is conducive to clinical decision-making and optimization of perioperative management.
手术部位感染是腰椎融合术后的严重并发症之一。早期预测和及时干预可以降低对患者的危害。本研究的目的是构建和验证一种用于预测后路腰椎椎间融合术后手术部位感染的机器学习模型,筛选出手术部位感染的最重要危险因素,并探讨是否可以通过合成少数过采样技术来提高模型性能。
本研究回顾性分析了 2019 年 1 月至 2021 年 8 月在我院行后路腰椎椎间融合术治疗退行性腰椎疾病的 584 例患者的临床资料和实验室检查数据。原始数据集按 1:1 的比例分为训练集和验证集。使用七种机器学习算法来开发预测模型;对每个模型的训练集使用合成少数过采样技术进行重采样。最后,在验证集中评估模型性能。
584 例患者中,33 例(5.65%)发生手术部位感染。逐步逻辑回归显示,术前白蛋白水平(OR 0.659,95%CI 0.563-0.756)、糖尿病(OR 9.129,95%CI 3.816-23.126)、术中硬脊膜撕裂(OR 8.436,95%CI 2.729-25.334)和风湿性疾病(OR 8.471,95%CI 1.743-39.567)是与手术部位感染相关的显著预测因素。在七种机器学习模型中,AdaBoost 分类树模型的性能最好,而合成少数过采样技术提高了所有模型的性能。
我们基于机器学习和合成少数过采样技术构建的预测模型可以准确预测手术部位感染,有助于临床决策和围手术期管理的优化。