Canals Pere, Garcia-Tornel Alvaro, Requena Manuel, Jabłońska Magda, Li Jiahui, Balocco Simone, Díaz Oliver, Tomasello Alejandro, Ribo Marc
Stroke Unit, Neurology, Vall d'Hebron University Hospital, Barcelona, Spain
Department of Medicine, Universitat Autònoma de Barcelona, Barcelona, Spain.
J Neurointerv Surg. 2025 May 22;17(6):653-659. doi: 10.1136/jnis-2024-021718.
In mechanical thrombectomy (MT), extracranial vascular tortuosity is among the main determinants of procedure duration and success. Currently, no rapid and reliable method exists to identify the anatomical features precluding fast and stable access to the cervical vessels.
A retrospective sample of 513 patients were included in this study. Patients underwent first-line transfemoral MT following anterior circulation large vessel occlusion stroke. Difficult transfemoral access (DTFA) was defined as impossible common carotid catheterization or time from groin puncture to first carotid angiogram >30 min. A machine learning model based on 29 anatomical features automatically extracted from head-and-neck computed tomography angiography (CTA) was developed to predict DTFA. Three experienced raters independently assessed the likelihood of DTFA on a reduced cohort of 116 cases using a Likert scale as benchmark for the model, using preprocedural CTA as well as automatic 3D vascular segmentation separately.
Among the study population, 11.5% of procedures (59/513) presented DTFA. Six different features from the aortic, supra-aortic, and cervical regions were included in the model. Cross-validation resulted in an area under the receiver operating characteristic (AUROC) curve of 0.76 (95% CI 0.75 to 0.76) for DTFA prediction, with high sensitivity for impossible access identification (0.90, 95% CI 0.81 to 0.94). The model outperformed human assessment in the reduced cohort [F1-score (95% CI) by experts with CTA: 0.43 (0.37 to 0.50); experts with 3D segmentation: 0.50 (0.46 to 0.54); and model: 0.70 (0.65 to 0.75)].
A fully automatic model for DTFA prediction was developed and validated. The presented method improved expert assessment of difficult access prediction in stroke MT. Derived information could be used to guide decisions regarding arterial access for MT.
在机械取栓术(MT)中,颅外血管迂曲是手术时间和成功率的主要决定因素之一。目前,尚无快速可靠的方法来识别妨碍快速稳定进入颈血管的解剖特征。
本研究纳入了513例患者的回顾性样本。患者在发生前循环大血管闭塞性卒中后接受一线经股动脉MT。困难经股动脉入路(DTFA)定义为无法进行颈总动脉插管或从腹股沟穿刺到首次颈动脉血管造影的时间>30分钟。开发了一种基于从头颈计算机断层扫描血管造影(CTA)中自动提取的29个解剖特征的机器学习模型,以预测DTFA。三名经验丰富的评估者分别使用术前CTA以及自动3D血管分割,以李克特量表作为模型的基准,在116例病例的缩减队列中独立评估DTFA的可能性。
在研究人群中,11.5%的手术(59/513)出现DTFA。模型纳入了来自主动脉、主动脉弓上和颈部区域的六个不同特征。交叉验证得出用于DTFA预测的受试者操作特征(AUROC)曲线下面积为0.76(95%CI 0.75至0.76),对无法入路的识别具有高敏感性(0.90,95%CI 0.81至0.94)。在缩减队列中,该模型的表现优于人工评估[CTA专家的F1评分(95%CI):0.43(0.37至0.50);3D分割专家的F1评分:0.50(0.46至0.54);模型的F1评分:0.70(0.65至0.75)]。
开发并验证了一种用于DTFA预测的全自动模型。所提出的方法改进了对卒中MT中困难入路预测的专家评估。所得信息可用于指导MT动脉入路的决策。