Palsson Frosti, Forkert Nils D, Meyer Lukas, Broocks Gabriel, Flottmann Fabian, Maros Máté E, Bechstein Matthias, Winkelmeier Laurens, Schlemm Eckhard, Fiehler Jens, Gellißen Susanne, Kniep Helge C
deCODE Genetics Inc., Reykjavik, Iceland.
Department of Diagnostic and Interventional Neuroradiology, University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
Front Neurol. 2024 Mar 19;15:1330497. doi: 10.3389/fneur.2024.1330497. eCollection 2024.
In acute ischemic stroke, prediction of the tissue outcome after reperfusion can be used to identify patients that might benefit from mechanical thrombectomy (MT). The aim of this work was to develop a deep learning model that can predict the follow-up infarct location and extent exclusively based on acute single-phase computed tomography angiography (CTA) datasets. In comparison to CT perfusion (CTP), CTA imaging is more widely available, less prone to artifacts, and the established standard of care in acute stroke imaging protocols. Furthermore, recent RCTs have shown that also patients with large established infarctions benefit from MT, which might not have been selected for MT based on CTP core/penumbra mismatch analysis.
All patients with acute large vessel occlusion of the anterior circulation treated at our institution between 12/2015 and 12/2020 were screened ( = 404) and 238 patients undergoing MT with successful reperfusion were included for final analysis. Ground truth infarct lesions were segmented on 24 h follow-up CT scans. Pre-processed CTA images were used as input for a U-Net-based convolutional neural network trained for lesion prediction, enhanced with a spatial and channel-wise squeeze-and-excitation block. Post-processing was applied to remove small predicted lesion components. The model was evaluated using a 5-fold cross-validation and a separate test set with Dice similarity coefficient (DSC) as the primary metric and average volume error as the secondary metric.
The mean ± standard deviation test set DSC over all folds after post-processing was 0.35 ± 0.2 and the mean test set average volume error was 11.5 mL. The performance was relatively uniform across models with the best model according to the DSC achieved a score of 0.37 ± 0.2 after post-processing and the best model in terms of average volume error yielded 3.9 mL.
24 h follow-up infarct prediction using acute CTA imaging exclusively is feasible with DSC measures comparable to results of CTP-based algorithms reported in other studies. The proposed method might pave the way to a wider acceptance, feasibility, and applicability of follow-up infarct prediction based on artificial intelligence.
在急性缺血性卒中中,再灌注后组织转归的预测可用于识别可能从机械取栓(MT)中获益的患者。本研究的目的是开发一种深度学习模型,该模型能够仅基于急性单相计算机断层扫描血管造影(CTA)数据集预测随访时的梗死部位和范围。与CT灌注(CTP)相比,CTA成像更易于获得,不易产生伪影,并且是急性卒中成像方案中既定的标准治疗方法。此外,最近的随机对照试验表明,即使是已形成大面积梗死的患者也能从MT中获益,而这些患者可能未基于CTP核心/半暗带不匹配分析被选择进行MT。
对2015年12月至2020年12月在我院接受治疗的所有急性前循环大血管闭塞患者进行筛查(n = 404),最终纳入238例接受MT且再灌注成功的患者进行分析。在24小时随访CT扫描上分割真实梗死灶。预处理后的CTA图像用作基于U-Net的卷积神经网络的输入,该网络经过训练用于病变预测,并通过空间和通道维度的挤压激励模块进行增强。应用后处理去除预测的小病变成分。使用五折交叉验证和一个单独的测试集对模型进行评估,以骰子相似系数(DSC)作为主要指标,平均体积误差作为次要指标。
后处理后所有折叠的平均±标准差测试集DSC为0.35±0.2,测试集平均体积误差为11.5 mL。各模型的性能相对一致,根据DSC得出的最佳模型在后处理后得分为0.37±0.2,在平均体积误差方面最佳的模型为3.9 mL。
仅使用急性CTA成像进行24小时随访梗死预测是可行的,DSC测量结果与其他研究中基于CTP的算法结果相当。所提出的方法可能为基于人工智能的随访梗死预测的更广泛接受、可行性和适用性铺平道路。