Departments of Neurosurgery.
Anesthesiology, Perioperative and Pain Medicine, Icahn School of Medicine at Mount Sinai.
Clin Spine Surg. 2024 Feb 1;37(1):E30-E36. doi: 10.1097/BSD.0000000000001520. Epub 2024 Jan 29.
A retrospective cohort study.
The purpose of this study is to develop a machine learning algorithm to predict nonhome discharge after cervical spine surgery that is validated and usable on a national scale to ensure generalizability and elucidate candidate drivers for prediction.
Excessive length of hospital stay can be attributed to delays in postoperative referrals to intermediate care rehabilitation centers or skilled nursing facilities. Accurate preoperative prediction of patients who may require access to these resources can facilitate a more efficient referral and discharge process, thereby reducing hospital and patient costs in addition to minimizing the risk of hospital-acquired complications.
Electronic medical records were retrospectively reviewed from a single-center data warehouse (SCDW) to identify patients undergoing cervical spine surgeries between 2008 and 2019 for machine learning algorithm development and internal validation. The National Inpatient Sample (NIS) database was queried to identify cervical spine fusion surgeries between 2009 and 2017 for external validation of algorithm performance. Gradient-boosted trees were constructed to predict nonhome discharge across patient cohorts. The area under the receiver operating characteristic curve (AUROC) was used to measure model performance. SHAP values were used to identify nonlinear risk factors for nonhome discharge and to interpret algorithm predictions.
A total of 3523 cases of cervical spine fusion surgeries were included from the SCDW data set, and 311,582 cases were isolated from NIS. The model demonstrated robust prediction of nonhome discharge across all cohorts, achieving an area under the receiver operating characteristic curve of 0.87 (SD=0.01) on both the SCDW and nationwide NIS test sets. Anterior approach only, age, elective admission status, Medicare insurance status, and total Elixhauser Comorbidity Index score were the most important predictors of discharge destination.
Machine learning algorithms reliably predict nonhome discharge across single-center and national cohorts and identify preoperative features of importance following cervical spine fusion surgery.
回顾性队列研究。
本研究旨在开发一种机器学习算法,以预测颈椎手术后非居家出院,并在全国范围内进行验证和使用,以确保通用性,并阐明预测的候选驱动因素。
住院时间过长可归因于术后向中级护理康复中心或熟练护理设施转介的延迟。准确预测可能需要使用这些资源的患者,可以促进更有效的转介和出院流程,从而降低医院和患者的成本,同时最大限度地降低医院获得性并发症的风险。
从单一中心数据仓库(SCDW)回顾性审查电子病历,以确定 2008 年至 2019 年期间接受颈椎手术的患者,用于机器学习算法的开发和内部验证。查询国家住院患者样本(NIS)数据库,以确定 2009 年至 2017 年期间的颈椎融合手术,以验证算法性能的外部验证。构建梯度提升树来预测患者队列的非居家出院。使用接收者操作特征曲线下的面积(AUROC)来衡量模型性能。使用 SHAP 值来识别非居家出院的非线性风险因素,并解释算法预测。
从 SCDW 数据集共纳入 3523 例颈椎融合手术病例,从 NIS 中分离出 311582 例。该模型在所有队列中均能可靠地预测非居家出院,在 SCDW 和全国性 NIS 测试集上的 AUROC 分别为 0.87(SD=0.01)。仅前路、年龄、择期入院状态、医疗保险状况和总 Elixhauser 合并症指数评分是出院目的地的最重要预测因素。
机器学习算法可靠地预测单一中心和全国性队列中的非居家出院,并确定颈椎融合术后重要的术前特征。