School of Engineering Science, Simon Fraser University, Canada.
School of Engineering Science, Simon Fraser University, Canada; Division of Neurology, Department of Medicine, University of British Columbia, Canada.
Comput Med Imaging Graph. 2022 Jan;95:102000. doi: 10.1016/j.compmedimag.2021.102000. Epub 2021 Oct 30.
Whole-brain segmentation is a crucial pre-processing step for many neuroimaging analyses pipelines. Accurate and efficient whole-brain segmentations are important for many neuroimage analysis tasks to provide clinically relevant information. Several recently proposed convolutional neural networks (CNN) perform whole brain segmentation using individual 2D slices or 3D patches as inputs due to graphical processing unit (GPU) memory limitations, and use sliding windows to perform whole brain segmentation during inference. However, these approaches lack global and spatial information about the entire brain and lead to compromised efficiency during both training and testing. We introduce a 3D hemisphere-based CNN for automatic whole-brain segmentation of T1-weighted magnetic resonance images of adult brains. First, we trained a localization network to predict bounding boxes for both hemispheres. Then, we trained a segmentation network to segment one hemisphere, and segment the opposing hemisphere by reflecting it across the mid-sagittal plane. Our network shows high performance both in terms of segmentation efficiency and accuracy (0.84 overall Dice similarity and 6.1 mm overall Hausdorff distance) in segmenting 102 brain structures. On multiple independent test datasets, our method demonstrated a competitive performance in the subcortical segmentation task and a high consistency in volumetric measurements of intra-session scans.
全脑分割是许多神经影像学分析管道的关键预处理步骤。准确高效的全脑分割对于许多神经影像分析任务至关重要,可提供有临床意义的信息。由于图形处理单元 (GPU) 内存限制,最近提出的几种卷积神经网络 (CNN) 使用单个 2D 切片或 3D 贴片作为输入进行全脑分割,并在推理过程中使用滑动窗口进行全脑分割。然而,这些方法缺乏整个大脑的全局和空间信息,导致在训练和测试过程中效率降低。我们引入了一种基于 3D 半球的 CNN,用于自动分割成人脑 T1 加权磁共振图像的全脑。首先,我们训练了一个定位网络来预测两个半球的边界框。然后,我们训练了一个分割网络来分割一个半球,并通过在中矢状面反射来分割对侧半球。我们的网络在分割 102 个脑结构的效率和准确性方面都表现出了很高的性能(整体 Dice 相似性为 0.84,整体 Hausdorff 距离为 6.1mm)。在多个独立的测试数据集上,我们的方法在皮质下分割任务中表现出了有竞争力的性能,并且在单次扫描的体积测量方面具有很高的一致性。