Department of Neurological Surgery and Montefiore-Einstein Cerebrovascular Research Lab, Montefiore Medical Center, Albert Einstein College of Medicine, Bronx, NY, USA.
Departments of Radiology and Neurosurgery, Mayo Clinic, Rochester, MN, USA.
J Stroke Cerebrovasc Dis. 2024 Nov;33(11):107897. doi: 10.1016/j.jstrokecerebrovasdis.2024.107897. Epub 2024 Jul 26.
The Woven EndoBridge (WEB) device is emerging as a novel therapy for intracranial aneurysms, but its use for off-label indications requires further study. Using machine learning, we aimed to develop predictive models for complete occlusion after off-label WEB treatment and to identify factors associated with occlusion outcomes.
This multicenter, retrospective study included 162 patients who underwent off-label WEB treatment for intracranial aneurysms. Baseline, morphological, and procedural variables were utilized to develop machine-learning models predicting complete occlusion. Model interpretation was performed to determine significant predictors. Ordinal regression was also performed with occlusion status as an ordinal outcome from better (Raymond Roy Occlusion Classification [RROC] grade 1) to worse (RROC grade 3) status. Odds ratios (OR) with 95 % confidence intervals (CI) were reported.
The best performing model achieved an AUROC of 0.8 for predicting complete occlusion. Larger neck diameter and daughter sac were significant independent predictors of incomplete occlusion. On multivariable ordinal regression, higher RROC grades (OR 1.86, 95 % CI 1.25-2.82), larger neck diameter (OR 1.69, 95 % CI 1.09-2.65), and presence of daughter sacs (OR 2.26, 95 % CI 0.99-5.15) were associated with worse aneurysm occlusion after WEB treatment, independent of other factors.
This study found that larger neck diameter and daughter sacs were associated with worse occlusion after WEB therapy for aneurysms. The machine learning approach identified anatomical factors related to occlusion outcomes that may help guide patient selection and monitoring with this technology. Further validation is needed.
编织式 EndoBridge(WEB)装置作为一种治疗颅内动脉瘤的新方法正在出现,但将其用于超适应证治疗需要进一步研究。我们使用机器学习的方法,旨在为超适应证 WEB 治疗后的完全闭塞建立预测模型,并确定与闭塞结果相关的因素。
这项多中心回顾性研究纳入了 162 例接受 WEB 治疗颅内动脉瘤的超适应证患者。利用基线、形态学和程序变量来开发预测完全闭塞的机器学习模型。对模型进行解释,以确定显著的预测因素。还进行了有序回归,将闭塞状态作为一个有序结果,从较好(Raymond Roy 闭塞分级 [RROC] 1 级)到较差(RROC 3 级)。报告了比值比(OR)及其 95%置信区间(CI)。
表现最好的模型在预测完全闭塞方面的 AUROC 为 0.8。颈内动脉直径较大和子囊是不完全闭塞的独立显著预测因素。在多变量有序回归中,较高的 RROC 分级(OR 1.86,95%CI 1.25-2.82)、较大的颈内动脉直径(OR 1.69,95%CI 1.09-2.65)和存在子囊(OR 2.26,95%CI 0.99-5.15)与 WEB 治疗后动脉瘤闭塞较差相关,独立于其他因素。
本研究发现,颈内动脉直径较大和子囊与 WEB 治疗后闭塞较差相关。机器学习方法确定了与闭塞结果相关的解剖学因素,这可能有助于指导该技术的患者选择和监测。需要进一步验证。