Stopa Brittany M, Robertson Faith C, Karhade Aditya V, Chua Melissa, Broekman Marike L D, Schwab Joseph H, Smith Timothy R, Gormley William B
1Computational Neuroscience Outcomes Center at Harvard, Department of Neurosurgery, Brigham and Women's Hospital, Boston, Massachusetts.
2Department of Neurosurgery, Haaglanden Medical Center and Leiden University Medical Center, Leiden, The Netherlands; and.
J Neurosurg Spine. 2019 Jul 26;31(5):742-747. doi: 10.3171/2019.5.SPINE1987. Print 2019 Nov 1.
Nonroutine discharge after elective spine surgery increases healthcare costs, negatively impacts patient satisfaction, and exposes patients to additional hospital-acquired complications. Therefore, prediction of nonroutine discharge in this population may improve clinical management. The authors previously developed a machine learning algorithm from national data that predicts risk of nonhome discharge for patients undergoing surgery for lumbar disc disorders. In this paper the authors externally validate their algorithm in an independent institutional population of neurosurgical spine patients.
Medical records from elective inpatient surgery for lumbar disc herniation or degeneration in the Transitional Care Program at Brigham and Women's Hospital (2013-2015) were retrospectively reviewed. Variables included age, sex, BMI, American Society of Anesthesiologists (ASA) class, preoperative functional status, number of fusion levels, comorbidities, preoperative laboratory values, and discharge disposition. Nonroutine discharge was defined as postoperative discharge to any setting other than home. The discrimination (c-statistic), calibration, and positive and negative predictive values (PPVs and NPVs) of the algorithm were assessed in the institutional sample.
Overall, 144 patients underwent elective inpatient surgery for lumbar disc disorders with a nonroutine discharge rate of 6.9% (n = 10). The median patient age was 50 years and 45.1% of patients were female. Most patients were ASA class II (66.0%), had 1 or 2 levels fused (80.6%), and had no diabetes (91.7%). The median hematocrit level was 41.2%. The neural network algorithm generalized well to the institutional data, with a c-statistic (area under the receiver operating characteristic curve) of 0.89, calibration slope of 1.09, and calibration intercept of -0.08. At a threshold of 0.25, the PPV was 0.50 and the NPV was 0.97.
This institutional external validation of a previously developed machine learning algorithm suggests a reliable method for identifying patients with lumbar disc disorder at risk for nonroutine discharge. Performance in the institutional cohort was comparable to performance in the derivation cohort and represents an improved predictive value over clinician intuition. This finding substantiates initial use of this algorithm in clinical practice. This tool may be used by multidisciplinary teams of case managers and spine surgeons to strategically invest additional time and resources into postoperative plans for this population.
择期脊柱手术后的非常规出院会增加医疗成本,对患者满意度产生负面影响,并使患者面临更多医院获得性并发症。因此,预测该人群的非常规出院情况可能会改善临床管理。作者之前根据国家数据开发了一种机器学习算法,用于预测接受腰椎间盘疾病手术患者的非回家出院风险。在本文中,作者在一个独立的神经外科脊柱患者机构人群中对他们的算法进行了外部验证。
回顾性分析了布莱根妇女医院过渡护理项目(2013 - 2015年)中择期住院行腰椎间盘突出症或退变手术的病历。变量包括年龄、性别、体重指数、美国麻醉医师协会(ASA)分级、术前功能状态、融合节段数、合并症、术前实验室检查值以及出院处置情况。非常规出院定义为术后出院至除家以外的任何场所。在机构样本中评估该算法的辨别力(c统计量)、校准情况以及阳性和阴性预测值(PPV和NPV)。
总体而言,144例患者接受了择期住院腰椎间盘疾病手术,非常规出院率为6.9%(n = 10)。患者中位年龄为50岁,45.1%为女性。大多数患者为ASA II级(66.0%),融合1或2个节段(80.6%),且无糖尿病(91.7%)。中位血细胞比容水平为41.2%。神经网络算法在机构数据中泛化良好,c统计量(受试者操作特征曲线下面积)为0.89,校准斜率为1.09,校准截距为 - 0.08。在阈值为0.25时,PPV为0.50,NPV为0.97。
此次对先前开发的机器学习算法进行的机构外部验证表明,有一种可靠的方法可用于识别有腰椎间盘疾病且有非常规出院风险的患者。该算法在机构队列中的表现与推导队列中的表现相当,且相对于临床医生的直觉具有更高的预测价值。这一发现证实了该算法在临床实践中的初步应用。该工具可供病例管理人员和脊柱外科医生组成的多学科团队用于战略性地为该人群的术后计划投入额外的时间和资源。