Mastrokostas Paul G, Mastrokostas Leonidas E, Emara Ahmed K, Wellington Ian J, Ford Brian T, Razi Abigail, Houten John K, Saleh Ahmed, Monsef Jad Bou, Razi Afshin E, Ng Mitchell K
Department of Orthopaedic Surgery, SUNY Downstate Health Sciences University, Brooklyn, NY, USA; Department of Orthopaedic Surgery, Maimonides Medical Center, Brooklyn, NY, USA.
Department of Orthopaedic Surgery, Maimonides Medical Center, Brooklyn, NY, USA.
Spine J. 2025 Mar;25(3):429-438. doi: 10.1016/j.spinee.2024.09.025. Epub 2024 Sep 26.
Cervical disc arthroplasty (CDA) has become an increasingly popular alternative to anterior cervical discectomy and fusion, offering benefits such as motion preservation and reduced risk of adjacent segment disease. Despite its advantages, understanding the economic implications associated with varying patient and hospital factors remains critical.
To evaluate how hospital size, geographic region, and patient-specific variables influence charges associated with the primary admission period following CDA.
A retrospective analysis using machine learning models to predict and analyze charge factors associated with CDA.
Data from the National Inpatient Sample (NIS) database from 2016 to 2020 was used, focusing on patients undergoing CDA.
The primary outcome was total charge associated with the primary admission for CDA, analyzed against patient demographics, hospital characteristics, and regional economic conditions.
Multivariate linear regression and machine learning algorithms including logistic regression, random forest, and gradient boosting trees were employed to assess their predictive power on charge outcomes. Statistical significance was set at the 0.003 level after applying a Bonferroni correction.
The analysis included 3,772 eligible CDA cases. Major predictors of charge identified were hospital size and ownership type, with large and privately owned hospitals associated with higher charges (p<.001). The Western region of the U.S. also showed significantly higher charges compared to the Northeast (p<.001). The gradient boosting trees model showed the highest accuracy (AUC=85.6%). Length of stay and wage index were significant charge drivers, with each additional inpatient day increasing charges significantly (p<.001) and higher wage index regions correlating with increased charges (p<.001).
Hospital size, geographic region, and specific patient demographics significantly influence the charges of CDA. Machine learning models proved effective in predicting these charges, suggesting that they could be instrumental in guiding economic decision-making in spine surgery. Future efforts should aim to incorporate these models into broader clinical practice to optimize healthcare spending and enhance patient care outcomes.
颈椎间盘置换术(CDA)已成为颈椎前路椎间盘切除融合术越来越受欢迎的替代方案,具有保留运动功能和降低相邻节段疾病风险等益处。尽管有这些优势,但了解与不同患者和医院因素相关的经济影响仍然至关重要。
评估医院规模、地理区域和患者特定变量如何影响CDA术后初次住院期间的费用。
使用机器学习模型进行回顾性分析,以预测和分析与CDA相关的费用因素。
使用了2016年至2020年国家住院样本(NIS)数据库中的数据,重点关注接受CDA的患者。
主要观察指标是与CDA初次住院相关的总费用,根据患者人口统计学、医院特征和区域经济状况进行分析。
采用多元线性回归和包括逻辑回归、随机森林和梯度提升树在内的机器学习算法,评估它们对费用结果的预测能力。在应用Bonferroni校正后,统计学显著性设定为0.003水平。
分析包括3772例符合条件的CDA病例。确定的费用主要预测因素是医院规模和所有制类型,大型和私立医院的费用较高(p<0.001)。与东北部相比,美国西部地区的费用也显著更高(p<0.001)。梯度提升树模型显示出最高的准确性(AUC=85.6%)。住院时间和工资指数是显著的费用驱动因素,每增加一个住院日费用显著增加(p<0.001),工资指数较高的地区费用增加(p<0.001)。
医院规模、地理区域和特定患者人口统计学显著影响CDA的费用。机器学习模型在预测这些费用方面被证明是有效的,表明它们可有助于指导脊柱手术中的经济决策。未来的努力应旨在将这些模型纳入更广泛的临床实践,以优化医疗保健支出并改善患者护理结果。