Department of Biomedical Data Science, Geisel School of Medicine at Dartmouth, Hanover, NH 03755, USA.
Department of Computer Science, Dartmouth College, Hanover, NH 03755, USA.
Neuroimage Clin. 2020;27:102276. doi: 10.1016/j.nicl.2020.102276. Epub 2020 May 26.
In this paper, we demonstrate the feasibility and performance of deep residual neural networks for volumetric segmentation of irreversibly damaged brain tissue lesions on T1-weighted MRI scans for chronic stroke patients. A total of 239 T1-weighted MRI scans of chronic ischemic stroke patients from a public dataset were retrospectively analyzed by 3D deep convolutional segmentation models with residual learning, using a novel zoom-in&out strategy. Dice similarity coefficient (DSC), average symmetric surface distance (ASSD), and Hausdorff distance (HD) of the identified lesions were measured by using manual tracing of lesions as the reference standard. Bootstrapping was employed for all metrics to estimate 95% confidence intervals. The models were assessed on a test set of 31 scans. The average DSC was 0.64 (0.51-0.76) with a median of 0.78. ASSD and HD were 3.6 mm (1.7-6.2 mm) and 20.4 mm (10.0-33.3 mm), respectively. The latest deep learning architecture and techniques were applied with 3D segmentation on MRI scans and demonstrated effectiveness for volumetric segmentation of chronic ischemic stroke lesions.
在本文中,我们证明了深度残差神经网络在 T1 加权 MRI 扫描上对不可逆损伤性脑损伤病变的体积分割的可行性和性能,用于慢性中风患者。通过使用新的缩放策略,对来自公共数据集的 239 例慢性缺血性中风患者的 T1 加权 MRI 扫描进行了 3D 深度卷积分割模型的回顾性分析。使用病变的手动追踪作为参考标准,测量了病变的 Dice 相似系数(DSC)、平均对称面距离(ASSD)和 Hausdorff 距离(HD)。对所有指标进行了自举,以估计 95%置信区间。在 31 例测试集中评估了模型。平均 DSC 为 0.64(0.51-0.76),中位数为 0.78。ASSD 和 HD 分别为 3.6mm(1.7-6.2mm)和 20.4mm(10.0-33.3mm)。应用了最新的深度学习架构和技术,对 MRI 扫描进行了 3D 分割,展示了用于慢性缺血性中风病变体积分割的有效性。