Cabrera Andrew, Bouterse Alexander, Nelson Michael, Dietrich Coleman, Razzouk Jacob, Oyoyo Udochukwu, Bono Christopher M, Danisa Olumide
School of Medicine, Loma Linda University, Loma Linda, CA, USA.
Office of Dental Education Services, Loma Linda University School of Dentistry, Loma Linda, CA, USA.
Int J Spine Surg. 2024 Mar 4;18(1):62-68. doi: 10.14444/8567.
Ankylosing spondylitis (AS) and diffuse idiopathic skeletal hyperostosis (DISH) are distinct pathological entities that similarly increase the risk of vertebral fractures. Such fractures can be clinically devastating and frequently portend significant neurological injury, thus making their prevention a critical focus. Of particular significance, spinal fractures in patients with AS or DISH carry a considerable risk of mortality, with reports on 1-year injury-related deaths ranging from 24% to 33%. As such, the purpose of this study was to conduct machine learning (ML) analysis to predict postoperative mortality in patients with AS or DISH using the Nationwide Inpatient Sample Healthcare Cost and Utilization Project (HCUP-NIS) database.
HCUP-NIS was queried to identify adult patients carrying a diagnosis of AS or DISH who were admitted for spinal fractures and underwent subsequent fusion or corpectomy between 2016 and 2018. Predictions of in-hospital mortality in this cohort were then generated by three independent ML algorithms.
An in-hospital mortality rate of 5.40% was observed in our selected population, including a rate of 6.35% in patients with AS, 2.81% in patients with DISH, and 8.33% in patients with both diagnoses. Increasing age, hypertension with end-organ complications, spinal cord injury, and cervical spinal fractures each carried considerable predictive importance across the algorithms utilized in our analysis. Predictions were generated with an average area under the curve of 0.758.
This study's application of ML algorithms to predict in-hospital mortality among patients with AS or DISH identified a number of clinical risk factors relevant to this outcome.
These findings may serve to provide physicians with an awareness of risk factors for in-hospital mortality and, subsequently, guide management and shared decision-making among patients with AS or DISH.
强直性脊柱炎(AS)和弥漫性特发性骨肥厚(DISH)是不同的病理实体,但同样会增加椎体骨折的风险。此类骨折在临床上可能具有毁灭性,且常常预示着严重的神经损伤,因此预防骨折成为关键重点。特别重要的是,AS或DISH患者的脊柱骨折具有相当高的死亡风险,关于1年与损伤相关的死亡率报告范围为24%至33%。因此,本研究的目的是使用全国住院患者样本医疗成本和利用项目(HCUP-NIS)数据库进行机器学习(ML)分析,以预测AS或DISH患者的术后死亡率。
查询HCUP-NIS以识别2016年至2018年间因脊柱骨折入院并随后接受融合或椎体次全切除术的诊断为AS或DISH的成年患者。然后通过三种独立的ML算法对该队列中的住院死亡率进行预测。
在我们选定的人群中观察到住院死亡率为5.40%,其中AS患者的死亡率为6.35%,DISH患者为2.81%,两种诊断均有的患者为8.33%。年龄增加、伴有终末器官并发症的高血压、脊髓损伤和颈椎骨折在我们分析中使用的各种算法中均具有相当大的预测重要性。预测的曲线下平均面积为0.758。
本研究应用ML算法预测AS或DISH患者的住院死亡率,确定了一些与此结果相关的临床风险因素。
这些发现可能有助于让医生了解住院死亡率的风险因素,进而指导AS或DISH患者的管理和共同决策。