Chen Iris E, Tsui Brian, Zhang Haoyue, Qiao Joe X, Hsu William, Nour May, Salamon Noriko, Ledbetter Luke, Polson Jennifer, Arnold Corey, BahrHossieni Mersedeh, Jahan Reza, Duckwiler Gary, Saver Jeffrey, Liebeskind David, Nael Kambiz
Department of Radiological Sciences, David Geffen School of Medicine at University of California Los Angeles, Los Angeles, CA, USA.
Department of Neurology, David Geffen School of Medicine at University of California Los Angeles, Los Angeles, CA, USA.
Interv Neuroradiol. 2025 Feb;31(1):32-41. doi: 10.1177/15910199221145487. Epub 2022 Dec 26.
Accurate estimation of ischemic core on baseline imaging has treatment implications in patients with acute ischemic stroke (AIS). Machine learning (ML) algorithms have shown promising results in estimating ischemic core using routine noncontrast computed tomography (NCCT).
We used an ML-trained algorithm to quantify ischemic core volume on NCCT in a comparative analysis to pretreatment magnetic resonance imaging (MRI) diffusion-weighted imaging (DWI) in patients with AIS.
Patients with AIS who had both pretreatment NCCT and MRI were enrolled. An automatic segmentation ML approach was applied using Brainomix software (Oxford, UK) to segment the ischemic voxels and calculate ischemic core volume on NCCT. Ischemic core volume was also calculated on baseline MRI DWI. Comparative analysis was performed using Bland-Altman plots and Pearson correlation.
A total of 72 patients were included. The time-to-stroke onset time was 134.2/89.5 minutes (mean/median). The time difference between NCCT and MRI was 64.8/44.5 minutes (mean/median). In patients who presented within 1 hour from stroke onset, the ischemic core volumes were significantly (p = 0.005) underestimated by ML-NCCT. In patients presented beyond 1 hour, the ML-NCCT estimated ischemic core volumes approximated those obtained by MRI-DWI and with significant correlation ( = 0.56, p < 0.001).
The ischemic core volumes calculated by the described ML approach on NCCT approximate those obtained by MRI in patients with AIS who present beyond 1 hour from stroke onset.
对急性缺血性卒中(AIS)患者进行基线影像学检查时,准确估计缺血核心具有治疗指导意义。机器学习(ML)算法在利用常规非增强计算机断层扫描(NCCT)估计缺血核心方面已显示出有前景的结果。
我们使用经过ML训练的算法对AIS患者的NCCT上的缺血核心体积进行量化,并与预处理磁共振成像(MRI)扩散加权成像(DWI)进行比较分析。
纳入同时进行了预处理NCCT和MRI检查的AIS患者。使用Brainomix软件(英国牛津)采用自动分割ML方法对缺血体素进行分割,并计算NCCT上的缺血核心体积。还在基线MRI DWI上计算缺血核心体积。使用Bland-Altman图和Pearson相关性进行比较分析。
共纳入72例患者。卒中发作时间为134.2/89.5分钟(均值/中位数)。NCCT和MRI之间的时间差为64.8/44.5分钟(均值/中位数)。在卒中发作后1小时内就诊的患者中,ML-NCCT显著低估了缺血核心体积(p = 0.005)。在卒中发作后超过1小时就诊的患者中,ML-NCCT估计的缺血核心体积与MRI-DWI获得的体积相近,且具有显著相关性(r = 0.56,p < 0.001)。
对于卒中发作后超过1小时就诊的AIS患者,通过上述ML方法在NCCT上计算的缺血核心体积与MRI获得的体积相近。