School of Medicine, Loma Linda University, Loma Linda, CA 92354, USA.
Twin Cities Spine Center, Minneapolis, MN 55404, USA.
J Clin Neurosci. 2023 Jan;107:167-171. doi: 10.1016/j.jocn.2022.10.029. Epub 2022 Nov 12.
Random Forest (RF) is a widely used machine learning algorithm that can be utilized for identification of patient characteristics important for outcome prediction. Posterior cervical decompression with instrumented fusion (PCDF) is a procedure for the management of cervical spondylosis, cervical spinal stenosis, and degenerative disorders that can cause cervical myelopathy or radiculopathy. An RF algorithm was employed to predict and describe length of stay (LOS), readmission, reoperation, transfusion, and infection rates following elective PCDF using The American College of Surgeons National Quality Improvement Program (ACS-NSQIP) database 2008 through 2018. The RF algorithm was tasked with determining the importance of independent clinical variables in predicting our outcomes of interest and importance of each variable based on the reduction in the Gini index. Application of an RF algorithm to the ACS-NSQIP database yielded a highly predictive set of patient characteristics and perioperative events for five outcomes of interest related to elective PCDF. These variables included postoperative infection, increased age, BMI, operative time, and LOS, and decreased preoperative hematocrit and white blood cell count. Risk factors that were predictive for rate of reoperation, readmission, hospital length of stay, transfusion requirement, and post-operative infection were identified with AUC values of 0.781, 0.791, 0.781, 0.902, and 0.724 respectively. Utilization of these findings may assist in risk analysis during the perioperative period and may influence clinical or surgical decision-making.
随机森林 (RF) 是一种广泛使用的机器学习算法,可用于识别对结果预测重要的患者特征。后路颈椎减压融合术 (PCDF) 是一种用于治疗颈椎病、颈椎椎管狭窄症和退行性疾病的手术方法,这些疾病可导致颈脊髓病或神经根病。我们使用美国外科医师学会国家质量改进计划 (ACS-NSQIP) 数据库 2008 年至 2018 年的数据,采用 RF 算法预测和描述选择性 PCDF 术后的住院时间 (LOS)、再入院、再次手术、输血和感染率。RF 算法的任务是确定独立临床变量在预测我们感兴趣的结果中的重要性,以及根据基尼指数的降低确定每个变量的重要性。将 RF 算法应用于 ACS-NSQIP 数据库,得出了一组与选择性 PCDF 相关的五个感兴趣结果的高度预测性患者特征和围手术期事件。这些变量包括术后感染、年龄增加、BMI、手术时间和 LOS,以及术前血细胞比容和白细胞计数降低。确定了与再次手术、再入院、住院时间、输血需求和术后感染相关的再手术、再入院、住院时间、输血需求和术后感染的预测风险因素,AUC 值分别为 0.781、0.791、0.781、0.902 和 0.724。利用这些发现可能有助于围手术期的风险分析,并可能影响临床或手术决策。