Brusini Irene, Lindberg Olof, Muehlboeck J-Sebastian, Smedby Örjan, Westman Eric, Wang Chunliang
Division of Biomedical Imaging, Department of Biomedical Engineering and Health Systems, KTH Royal Institute of Technology, Stockholm, Sweden.
Division of Clinical Geriatrics, Department of Neurobiology, Care Sciences and Society, Karolinska Institute, Solna, Sweden.
Front Neurosci. 2020 Jan 24;14:15. doi: 10.3389/fnins.2020.00015. eCollection 2020.
Performing an accurate segmentation of the hippocampus from brain magnetic resonance images is a crucial task in neuroimaging research, since its structural integrity is strongly related to several neurodegenerative disorders, including Alzheimer's disease (AD). Some automatic segmentation tools are already being used, but, in recent years, new deep learning (DL)-based methods have been proven to be much more accurate in various medical image segmentation tasks. In this work, we propose a DL-based hippocampus segmentation framework that embeds statistical shape of the hippocampus as context information into the deep neural network (DNN). The inclusion of shape information is achieved with three main steps: (1) a U-Net-based segmentation, (2) a shape model estimation, and (3) a second U-Net-based segmentation which uses both the original input data and the fitted shape model. The trained DL architectures were tested on image data of three diagnostic groups [AD patients, subjects with mild cognitive impairment (MCI) and controls] from two cohorts (ADNI and AddNeuroMed). Both intra-cohort validation and cross-cohort validation were performed and compared with the conventional U-net architecture and some variations with other types of context information (i.e., autocontext and tissue-class context). Our results suggest that adding shape information can improve the segmentation accuracy in cross-cohort validation, i.e., when DNNs are trained on one cohort and applied to another. However, no significant benefit is observed in intra-cohort validation, i.e., training and testing DNNs on images from the same cohort. Moreover, compared to other types of context information, the use of shape context was shown to be the most successful in increasing the accuracy, while keeping the computational time in the order of a few minutes.
从脑磁共振图像中准确分割海马体是神经影像学研究中的一项关键任务,因为其结构完整性与包括阿尔茨海默病(AD)在内的多种神经退行性疾病密切相关。目前已经在使用一些自动分割工具,但近年来,新的基于深度学习(DL)的方法在各种医学图像分割任务中已被证明更加准确。在这项工作中,我们提出了一个基于DL的海马体分割框架,该框架将海马体的统计形状作为上下文信息嵌入到深度神经网络(DNN)中。形状信息的纳入通过三个主要步骤实现:(1)基于U-Net的分割,(2)形状模型估计,以及(3)基于U-Net的第二次分割,该分割同时使用原始输入数据和拟合的形状模型。在来自两个队列(ADNI和AddNeuroMed)的三个诊断组[AD患者、轻度认知障碍(MCI)受试者和对照组]的图像数据上测试了训练好的DL架构。进行了队列内验证和跨队列验证,并与传统的U-net架构以及带有其他类型上下文信息(即自动上下文和组织类别上下文)的一些变体进行了比较。我们的结果表明,添加形状信息可以提高跨队列验证中的分割准确性,即当DNN在一个队列上训练并应用于另一个队列时。然而,在队列内验证中未观察到显著益处,即在来自同一队列的图像上训练和测试DNN。此外,与其他类型的上下文信息相比,形状上下文的使用在提高准确性方面最为成功,同时将计算时间保持在几分钟的量级。