1Department of Orthopedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, Massachusetts.
2Department of Neurosurgery, Leiden University Medical Center, Leiden, The Netherlands; and.
Neurosurg Focus. 2018 Nov 1;45(5):E6. doi: 10.3171/2018.8.FOCUS18340.
OBJECTIVEIf not anticipated and prearranged, hospital stay can be prolonged while the patient awaits placement in a rehabilitation unit or skilled nursing facility following elective spine surgery. Preoperative prediction of the likelihood of postoperative discharge to any setting other than home (i.e., nonroutine discharge) after elective inpatient spine surgery would be helpful in terms of decreasing hospital length of stay. The purpose of this study was to use machine learning algorithms to develop an open-access web application for preoperative prediction of nonroutine discharges in surgery for elective inpatient lumbar degenerative disc disorders.METHODSThe American College of Surgeons National Surgical Quality Improvement Program was queried to identify patients who underwent elective inpatient spine surgery for lumbar disc herniation or lumbar disc degeneration between 2011 and 2016. Four machine learning algorithms were developed to predict nonroutine discharge and the best algorithm was incorporated into an open-access web application.RESULTSThe rate of nonroutine discharge for 26,364 patients who underwent elective inpatient surgery for lumbar degenerative disc disorders was 9.28%. Predictive factors selected by random forest algorithms were age, sex, body mass index, fusion, level, functional status, extent and severity of comorbid disease (American Society of Anesthesiologists classification), diabetes, and preoperative hematocrit level. On evaluation in the testing set (n = 5273), the neural network had a c-statistic of 0.823, calibration slope of 0.935, calibration intercept of 0.026, and Brier score of 0.0713. On decision curve analysis, the algorithm showed greater net benefit for changing management over all threshold probabilities than changing management on the basis of the American Society of Anesthesiologists classification alone or for all patients or for no patients. The model can be found here: https://sorg-apps.shinyapps.io/discdisposition/.CONCLUSIONSMachine learning algorithms show promising results on internal validation for preoperative prediction of nonroutine discharges. If found to be externally valid, widespread use of these algorithms via the open-access web application by healthcare professionals may help preoperative risk stratification of patients undergoing elective surgery for lumbar degenerative disc disorders.
如果没有预料到并预先安排,患者在择期脊柱手术后等待安置在康复病房或熟练护理病房时,住院时间可能会延长。对于择期住院脊柱手术,预测术后出院到家庭以外任何环境(即非常规出院)的可能性,有助于缩短住院时间。本研究旨在使用机器学习算法为择期住院腰椎退行性椎间盘疾病手术的非常规出院建立一个可公开访问的网络应用程序。
通过美国外科医师学院国家手术质量改进计划查询了 2011 年至 2016 年间接受择期住院脊柱手术治疗腰椎间盘突出症或腰椎间盘退行性疾病的患者。开发了四种机器学习算法来预测非常规出院,并且选择最佳算法纳入可公开访问的网络应用程序。
26364 例接受择期住院手术治疗腰椎退行性椎间盘疾病的患者中,非常规出院率为 9.28%。随机森林算法选择的预测因素包括年龄、性别、体重指数、融合、手术节段、功能状态、合并症的严重程度和范围(美国麻醉医师协会分类)、糖尿病和术前血细胞比容水平。在测试集(n=5273)中的评估中,神经网络的 C 统计量为 0.823,校准斜率为 0.935,校准截距为 0.026,Brier 分数为 0.0713。在决策曲线分析中,与仅根据美国麻醉医师协会分类或所有患者或无患者改变管理相比,该算法在所有阈值概率下改变管理显示出更大的净收益。该模型可以在以下网址找到:https://sorg-apps.shinyapps.io/discdisposition/。
机器学习算法在内部验证中对非常规出院的术前预测显示出良好的结果。如果被证明具有外部有效性,医疗保健专业人员通过可公开访问的网络应用程序广泛使用这些算法可能有助于术前对接受择期腰椎退行性椎间盘疾病手术的患者进行风险分层。