Iglesias Juan Eugenio, Augustinack Jean C, Nguyen Khoa, Player Christopher M, Player Allison, Wright Michelle, Roy Nicole, Frosch Matthew P, McKee Ann C, Wald Lawrence L, Fischl Bruce, Van Leemput Koen
Basque Center on Cognition, Brain and Language, San Sebastián, Spain; Martinos Center for Biomedical Imaging, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.
Martinos Center for Biomedical Imaging, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA.
Neuroimage. 2015 Jul 15;115:117-37. doi: 10.1016/j.neuroimage.2015.04.042. Epub 2015 Apr 29.
Automated analysis of MRI data of the subregions of the hippocampus requires computational atlases built at a higher resolution than those that are typically used in current neuroimaging studies. Here we describe the construction of a statistical atlas of the hippocampal formation at the subregion level using ultra-high resolution, ex vivo MRI. Fifteen autopsy samples were scanned at 0.13 mm isotropic resolution (on average) using customized hardware. The images were manually segmented into 13 different hippocampal substructures using a protocol specifically designed for this study; precise delineations were made possible by the extraordinary resolution of the scans. In addition to the subregions, manual annotations for neighboring structures (e.g., amygdala, cortex) were obtained from a separate dataset of in vivo, T1-weighted MRI scans of the whole brain (1mm resolution). The manual labels from the in vivo and ex vivo data were combined into a single computational atlas of the hippocampal formation with a novel atlas building algorithm based on Bayesian inference. The resulting atlas can be used to automatically segment the hippocampal subregions in structural MRI images, using an algorithm that can analyze multimodal data and adapt to variations in MRI contrast due to differences in acquisition hardware or pulse sequences. The applicability of the atlas, which we are releasing as part of FreeSurfer (version 6.0), is demonstrated with experiments on three different publicly available datasets with different types of MRI contrast. The results show that the atlas and companion segmentation method: 1) can segment T1 and T2 images, as well as their combination, 2) replicate findings on mild cognitive impairment based on high-resolution T2 data, and 3) can discriminate between Alzheimer's disease subjects and elderly controls with 88% accuracy in standard resolution (1mm) T1 data, significantly outperforming the atlas in FreeSurfer version 5.3 (86% accuracy) and classification based on whole hippocampal volume (82% accuracy).
对海马体各亚区的MRI数据进行自动分析,需要构建分辨率高于当前神经成像研究中通常使用的计算图谱。在此,我们描述了使用超高分辨率离体MRI构建海马结构亚区水平的统计图谱。使用定制硬件对15个尸检样本进行了平均各向同性分辨率为0.13毫米的扫描。利用专门为此研究设计的方案,将图像手动分割为13个不同的海马亚结构;扫描的超高分辨率使得精确描绘成为可能。除了这些亚区,还从一个单独的全脑活体T1加权MRI扫描数据集(1毫米分辨率)中获取了相邻结构(如杏仁核、皮质)的手动标注。通过基于贝叶斯推理的新型图谱构建算法,将来自活体和离体数据的手动标签组合成一个海马结构的单一计算图谱。所得图谱可用于在结构MRI图像中自动分割海马亚区,使用的算法能够分析多模态数据并适应由于采集硬件或脉冲序列差异导致的MRI对比度变化。我们将该图谱作为FreeSurfer(版本6.0)的一部分发布,通过对三个具有不同类型MRI对比度的不同公开可用数据集进行实验,证明了该图谱的适用性。结果表明,该图谱及配套分割方法:1)能够分割T1和T2图像及其组合,2)基于高分辨率T2数据重现轻度认知障碍的研究结果,3)在标准分辨率(1毫米)T1数据中,能够以88%的准确率区分阿尔茨海默病受试者和老年对照,显著优于FreeSurfer 5.3版本中的图谱(准确率86%)以及基于整个海马体积的分类方法(准确率82%)。