Department of Neurology Samsung Medical Center Sungkyunkwan University School of Medicine Seoul Republic of Korea.
Clinical Research Institute Samsung Medical Center Sungkyunkwan University School of Medicine Seoul Republic of Korea.
Ann Clin Transl Neurol. 2019 Mar 4;6(4):739-747. doi: 10.1002/acn3.751. eCollection 2019 Apr.
Clot characteristics can provide information on the cause of cerebral artery occlusion and may guide acute revascularization and secondary prevention strategies. We developed a rapid automated clot analysis system using machine learning (ML) and validated its accuracy in patients undergoing endovascular treatment.
Pre-endovascular treatment gradient echo (GRE) images from consecutive patients with middle cerebral artery occlusion were utilized to develop and validate an ML system to predict whether atrial fibrillation (AF) was the underlying cause of ischemic stroke. The accuracy of the ML algorithm was compared with that of visual inspection by neuroimaging specialists for the presence of blooming artifact. Endovascular procedures and outcomes were compared in patients with and without AF.
Of 67 patients, 29 (43.3%) had AF. Of these, 13 had known AF and 16 were newly diagnosed with cardiac monitoring. By visual inspection, interrater correlation for blooming artifact was 0.73 and sensitivity and specificity for AF were 0.79 and 0.63, respectively. For AF classification, the ML algorithms yielded an average accuracy of > 75.4% in fivefold cross-validation with clot signal profiles obtained from 52 patients and an area under the curve >0.87 for the average AF probability from five signal profiles in external validation ( = 15). Analysis with an in-house interface took approximately 3 min per patient. Absence of AF was associated with increased number of passes by stentriever, high reocclusion frequency, and additional use of rescue stenting and/or glycogen IIb/IIIa blocker for recanalization.
ML-based rapid clot analysis is feasible and can identify AF with high accuracy, enabling selection of endovascular treatment strategy.
血栓特征可提供大脑动脉闭塞的病因信息,并可能指导急性血管再通和二级预防策略。我们使用机器学习(ML)开发了一种快速自动血栓分析系统,并验证了其在接受血管内治疗的患者中的准确性。
利用连续的大脑中动脉闭塞患者血管内治疗前梯度回波(GRE)图像,开发并验证了一种 ML 系统,以预测心房颤动(AF)是否为缺血性脑卒中的潜在病因。将 ML 算法的准确性与神经影像学专家对存在blooming 伪影的视觉检查进行比较。比较了 AF 患者和非 AF 患者的血管内手术和结局。
在 67 例患者中,29 例(43.3%)有 AF。其中,13 例有已知的 AF,16 例是通过心脏监测新诊断的。通过视觉检查,blooming 伪影的观察者间相关性为 0.73,AF 的敏感性和特异性分别为 0.79 和 0.63。对于 AF 分类,在 52 例患者的血栓信号谱的五重交叉验证中,ML 算法的平均准确率>75.4%,外部验证中 5 个信号谱的平均 AF 概率的曲线下面积>0.87(=15)。使用内部接口进行分析,每位患者大约需要 3 分钟。无 AF 与支架取栓器的通过次数增加、再闭塞频率高以及需要额外使用补救支架和/或糖蛋白 IIb/IIIa 抑制剂进行再通有关。
基于 ML 的快速血栓分析是可行的,并且可以高度准确地识别 AF,从而能够选择血管内治疗策略。