Department of Radiology, Stanford University School of Medicine, Stanford, CA, USA.
Department of Radiology, St Vincent's University Hospital, Elm Park, Dublin 4, Ireland.
Eur Radiol. 2023 Aug;33(8):5728-5739. doi: 10.1007/s00330-023-09478-3. Epub 2023 Feb 27.
Treatment and outcomes of acute stroke have been revolutionised by mechanical thrombectomy. Deep learning has shown great promise in diagnostics but applications in video and interventional radiology lag behind. We aimed to develop a model that takes as input digital subtraction angiography (DSA) videos and classifies the video according to (1) the presence of large vessel occlusion (LVO), (2) the location of the occlusion, and (3) the efficacy of reperfusion.
All patients who underwent DSA for anterior circulation acute ischaemic stroke between 2012 and 2019 were included. Consecutive normal studies were included to balance classes. An external validation (EV) dataset was collected from another institution. The trained model was also used on DSA videos post mechanical thrombectomy to assess thrombectomy efficacy.
In total, 1024 videos comprising 287 patients were included (44 for EV). Occlusion identification was achieved with 100% sensitivity and 91.67% specificity (EV 91.30% and 81.82%). Accuracy of location classification was 71% for ICA, 84% for M1, and 78% for M2 occlusions (EV 73, 25, and 50%). For post-thrombectomy DSA (n = 194), the model identified successful reperfusion with 100%, 88%, and 35% for ICA, M1, and M2 occlusion (EV 89, 88, and 60%). The model could also perform classification of post-intervention videos as mTICI < 3 with an AUC of 0.71.
Our model can successfully identify normal DSA studies from those with LVO and classify thrombectomy outcome and solve a clinical radiology problem with two temporal elements (dynamic video and pre and post intervention).
• DEEP MOVEMENT represents a novel application of a model applied to acute stroke imaging to handle two types of temporal complexity, dynamic video and pre and post intervention. • The model takes as an input digital subtraction angiograms of the anterior cerebral circulation and classifies according to (1) the presence or absence of large vessel occlusion, (2) the location of the occlusion, and (3) the efficacy of thrombectomy. • Potential clinical utility lies in providing decision support via rapid interpretation (pre thrombectomy) and automated objective gradation of thrombectomy outcomes (post thrombectomy).
机械取栓术彻底改变了急性脑卒中的治疗和预后。深度学习在诊断方面显示出巨大的潜力,但在视频和介入放射学中的应用却落后了。我们旨在开发一种模型,该模型可以输入数字减影血管造影(DSA)视频,并根据(1)大血管闭塞(LVO)的存在,(2)闭塞的位置以及(3)再灌注的效果对视频进行分类。
纳入 2012 年至 2019 年间接受前循环急性缺血性脑卒中 DSA 检查的所有患者。连续正常研究纳入以平衡分类。从另一机构收集了经过训练的模型的外部验证(EV)数据集。该模型还用于机械取栓术后的 DSA 视频,以评估取栓效果。
总共纳入了 1024 个视频,包含 287 名患者(EV 为 44 名)。闭塞的检出率为 100%,敏感度和特异性分别为 91.67%(EV 为 91.30%和 81.82%)。ICA 的位置分类准确率为 71%,M1 为 84%,M2 为 78%(EV 为 73%,25%和 50%)。对于取栓后 DSA(n=194),该模型识别 ICA、M1 和 M2 闭塞的再灌注成功率分别为 100%、88%和 35%(EV 为 89%、88%和 60%)。该模型还可以通过 AUC 为 0.71 对 mTICI <3 的术后干预视频进行分类。
我们的模型可以成功地从具有 LVO 的 DSA 研究中识别出正常的 DSA 研究,并对取栓效果进行分类,解决了具有两个时间元素(动态视频和介入前后)的临床放射学问题。
• DEEP MOVEMENT 代表了将模型应用于急性脑卒中成像的一种新应用,用于处理两种类型的时间复杂性,即动态视频和介入前后。• 该模型以大脑前循环的数字减影血管造影作为输入,并根据(1)是否存在大血管闭塞,(2)闭塞的位置以及(3)取栓效果进行分类。• 潜在的临床应用价值在于通过快速解释(取栓前)和自动客观分级取栓效果(取栓后)提供决策支持。