School of Health Science and Engineering, University of Shanghai for Science and Technology, No. 516 Jun-Gong Road, Shanghai, 200093, China.
Medical Imaging Center, Tai'an Central Hospital, Shandong, China.
Med Biol Eng Comput. 2023 Aug;61(8):2149-2157. doi: 10.1007/s11517-023-02867-2. Epub 2023 Jun 22.
Alberta Stroke Program Early Computed Tomographic Scoring (ASPECTS) is a reliable method for assessing early ischemic changes in the blood supply area of the middle cerebral artery in patients with acute ischemic stroke. This study aims to propose a deep learning based automatic evaluation strategy for DWI-ASPECTS to serve as a reference for clinicians in urgent decision making for endovascular thrombectomy. Ten ASPECTS regions are extracted from the DWI series to train the independent classification network for each region, the accurate training labels of which are confirmed by neuroradiologists. Two classical convolutional neural networks (VGG-16 and ResNet-50) are validated. Subsequently, the innovative CBAM-VGG is designed to improve the accurate scoring of four small-volume DWI-ASPECTS regions, including caudate nucleus, lenticular nucleus, internal capsule, and insular lobe. Average F1-score of 0.929 and 0.840 and the average accuracy of 94.75% and 84.99% are obtained when scoring on six cortical regions M1-M6 and four small ASPECTS regions, respectively. In addition, the modified algorithm CBAM-VGG shows a significant improvement in the accuracy of estimating the four ASPECTS regions with smaller volumes. The experimental results demonstrate that the deep learning methods facilitate the efficiency and robustness of automatic DWI-ASPECTS scoring, which can provide a reference for clinical decision-making.
阿尔伯塔卒中项目早期计算机断层扫描评分(ASPECTS)是一种可靠的方法,可用于评估急性缺血性卒中患者大脑中动脉供血区的早期缺血性改变。本研究旨在提出一种基于深度学习的 DWI-ASPECTS 自动评估策略,为临床医生在血管内血栓切除术的紧急决策中提供参考。从 DWI 序列中提取 10 个 ASPECTS 区域,为每个区域训练独立的分类网络,由神经放射科医生确认其准确的训练标签。验证了两种经典卷积神经网络(VGG-16 和 ResNet-50)。随后,设计了创新的 CBAM-VGG,以提高对四个小体积 DWI-ASPECTS 区域(尾状核、豆状核、内囊和脑岛叶)的准确评分。当对 6 个皮质区域 M1-M6 和 4 个小 ASPECTS 区域进行评分时,平均 F1 得分为 0.929 和 0.840,平均准确率为 94.75%和 84.99%。此外,改进后的算法 CBAM-VGG 在估计体积较小的四个 ASPECTS 区域的准确性方面有显著提高。实验结果表明,深度学习方法提高了自动 DWI-ASPECTS 评分的效率和稳健性,可为临床决策提供参考。