Schwarz Ricarda, Bier Georg, Wilke Vera, Wilke Carlo, Taubmann Oliver, Ditt Hendrik, Hempel Johann-Martin, Ernemann Ulrike, Horger Marius, Gohla Georg
Department of Diagnostic and Interventional Radiology, Eberhard Karls University of Tuebingen, D-72076 Tuebingen, Germany.
Department of Diagnostic and Interventional Neuroradiology, Eberhard Karls University of Tuebingen, D-72076 Tuebingen, Germany.
Diagnostics (Basel). 2023 Sep 5;13(18):2863. doi: 10.3390/diagnostics13182863.
(1) Background: to test the diagnostic performance of a fully convolutional neural network-based software prototype for clot detection in intracranial arteries using non-enhanced computed tomography (NECT) imaging data. (2) Methods: we retrospectively identified 85 patients with stroke imaging and one intracranial vessel occlusion. An automated clot detection prototype computed clot location, clot length, and clot volume in NECT scans. Clot detection rates were compared to the visual assessment of the hyperdense artery sign by two neuroradiologists. CT angiography (CTA) was used as the ground truth. Additionally, NIHSS, ASPECTS, type of therapy, and TOAST were registered to assess the relationship between clinical parameters, image results, and chosen therapy. (3) Results: the overall detection rate of the software was 66%, while the human readers had lower rates of 46% and 24%, respectively. Clot detection rates of the automated software were best in the proximal middle cerebral artery (MCA) and the intracranial carotid artery (ICA) with 88-92% followed by the more distal MCA and basilar artery with 67-69%. There was a high correlation between greater clot length and interventional thrombectomy and between smaller clot length and rather conservative treatment. (4) Conclusions: the automated clot detection prototype has the potential to detect intracranial arterial thromboembolism in NECT images, particularly in the ICA and MCA. Thus, it could support radiologists in emergency settings to speed up the diagnosis of acute ischemic stroke, especially in settings where CTA is not available.
(1) 背景:使用非增强计算机断层扫描(NECT)成像数据,测试基于全卷积神经网络的软件原型对颅内动脉血栓检测的诊断性能。(2) 方法:我们回顾性纳入了85例有卒中影像学表现且存在1例颅内血管闭塞的患者。一个自动血栓检测原型可计算NECT扫描中的血栓位置、血栓长度和血栓体积。将血栓检测率与两名神经放射科医生对高密度动脉征的视觉评估进行比较。CT血管造影(CTA)用作金标准。此外,记录美国国立卫生研究院卒中量表(NIHSS)、脑梗死溶栓治疗前脑CT评分(ASPECTS)、治疗类型和急性卒中治疗的TOAST分型,以评估临床参数、图像结果和所选治疗之间的关系。(3) 结果:该软件的总体检测率为66%,而人工阅片者的检测率分别较低,为46%和24%。自动软件在大脑中动脉近端(MCA)和颅内颈动脉(ICA)的血栓检测率最高,为88% - 92%,其次是大脑中动脉远端和基底动脉,为67% - 69%。血栓长度越大与介入性取栓术之间以及血栓长度越小与较为保守的治疗之间存在高度相关性。(4) 结论:自动血栓检测原型有潜力在NECT图像中检测颅内动脉血栓栓塞,尤其是在ICA和MCA中。因此,它可以在紧急情况下支持放射科医生加快急性缺血性卒中的诊断,特别是在没有CTA的情况下。