Ghosh Attri, Freda Philip J, Shahrestani Shane, Boyke Andre E, Orlenko Alena, Choi Hyunjun, Matsumoto Nicholas, Obafemi-Ajayi Tayo, Moore Jason H, Walker Corey T
Department of Computational Biomedicine, Cedars-Sinai Medical Center, Los Angeles, CA, USA.
Department of Neurosurgery, Cedars-Sinai Medical Center, Los Angeles, CA, USA.
Spine J. 2025 Aug;25(8):1596-1607. doi: 10.1016/j.spinee.2025.01.031. Epub 2025 Jan 30.
Preoperative risk assessment remains a challenge in spinal fusion operations. Predictive modeling provides data-driven estimates of postsurgical outcomes, guiding clinical decisions and improving patient care. Moreover, automated machine learning models are both effective and user-friendly, allowing healthcare professionals with minimal technical expertise to identify high-risk patients who may need additional preoperative support.
This study investigated the use of automated machine learning models to predict discharge disposition, length of hospital stay, and readmission postsurgery by analyzing preoperative patient electronic medical record data and identifying key factors influencing adverse outcomes.
STUDY DESIGN/SETTING: Retrospective cohort study.
The sample includes electronic medical records of 3,006 unique surgical events from 2,855 patients who underwent lumbar spinal fusion surgeries at a single institution.
The adverse outcomes assessed were discharge disposition (nonhome facility), length of hospital stay (extended stay), and readmission within 90 days postsurgery.
We employed several inferential and predictive approaches, including the automated machine learning tool TPOT2 (Tree-based Pipeline Optimization Tool-2). TPOT2, which uses genetic programming to select optimal machine learning pipelines in a process inspired by molecular evolution, constructed, optimized and identified robust predictive models for all outcomes. Feature importance values were derived to identify major preoperative predictive features driving optimal models.
Adverse outcome rates were 25.9% for discharge to nonhome facilities, 23.9% for extended hospital stay, and 24.7% for readmission within 90 days postsurgery. TPOT2 delivered the best-performing predictive models, achieving balanced accuracies ([Sensitivity {true positive rate} + Specificity {true negative rate}]) / 2) of 0.72 for discharge disposition, 0.72 for length of stay, and 0.67 for readmission. Notably, preoperative hemoglobin emerged as a consistently strong predictor in best-performing models across outcomes. Patients with severe anemia (hemoglobin <80g/dL) demonstrated higher associations with all adverse outcomes and common comorbidities associated with frailty (eg, hypertension, type II diabetes, and chronic pain). Additional patient variables and comorbidities, including body mass index, age, and mental health status, influencing postsurgical outcomes were also highly predictive.
This study demonstrates the effectiveness of automated machine learning in predicting postsurgical adverse outcomes and identifying key preoperative predictors associated with such outcomes. While factors like age, BMI, insurance type, and specific comorbidities showed notable effects on outcomes, preoperative hemoglobin consistently emerged as a significant predictor across outcomes, suggesting its critical role in presurgical assessment. These findings underscore the potential of enhancing patient care and preoperative assessment through advanced predictive modeling.
在脊柱融合手术中,术前风险评估仍是一项挑战。预测模型可提供基于数据驱动的术后结果估计,指导临床决策并改善患者护理。此外,自动化机器学习模型既有效又用户友好,使技术专业知识有限的医疗保健专业人员能够识别可能需要额外术前支持的高风险患者。
本研究通过分析术前患者电子病历数据并确定影响不良结果的关键因素,调查了使用自动化机器学习模型预测出院处置、住院时间和术后再入院情况。
研究设计/设置:回顾性队列研究。
样本包括来自一家机构的2855例接受腰椎融合手术的患者的3006例独特手术事件的电子病历。
评估的不良结果包括出院处置(非家庭机构)、住院时间(延长住院)和术后90天内再入院。
我们采用了几种推理和预测方法,包括自动化机器学习工具TPOT2(基于树的管道优化工具-2)。TPOT2使用遗传编程在受分子进化启发的过程中选择最佳机器学习管道,为所有结果构建、优化并识别强大的预测模型。得出特征重要性值以识别驱动最佳模型的主要术前预测特征。
出院至非家庭机构的不良结果发生率为25.9%,延长住院时间的发生率为23.9%,术后90天内再入院的发生率为24.7%。TPOT2提供了表现最佳的预测模型,出院处置的平衡准确率([敏感性{真阳性率}+特异性{真阴性率}])/2)为0.72,住院时间为0.72,再入院为0.67。值得注意的是,术前血红蛋白在所有结果的最佳表现模型中始终是一个强大的预测指标。严重贫血(血红蛋白<80g/dL)的患者与所有不良结果以及与虚弱相关的常见合并症(如高血压、II型糖尿病和慢性疼痛)的关联更高。影响术后结果的其他患者变量和合并症,包括体重指数、年龄和心理健康状况,也具有高度预测性。
本研究证明了自动化机器学习在预测术后不良结果和识别与此类结果相关的关键术前预测指标方面的有效性。虽然年龄、体重指数、保险类型和特定合并症等因素对结果有显著影响,但术前血红蛋白始终是所有结果的重要预测指标,表明其在术前评估中的关键作用。这些发现强调了通过先进的预测模型加强患者护理和术前评估的潜力。