Yovel Yossi, Assaf Yaniv
Department of Neurobiochemistry, Tel Aviv University, Ramat Aviv, Tel Aviv, Israel.
Neuroimage. 2007 Mar;35(1):58-69. doi: 10.1016/j.neuroimage.2006.08.055. Epub 2007 Jan 8.
Individual mapping of cerebral, morphological, functionally related structures using MRI was carried out using a new multi-contrast acquisition and analysis framework, called virtual-dot-com imaging. So far, conventional anatomical MRI has been able to provide gross segmentation of gray/white matter boundaries and a few sub-cortical structures. By combining a handful of imaging contrasts mechanisms (T1, T2, magnetization transfer, T2* and proton density), we were able to further segment sub-cortical tissue to its sub-nuclei arrangement, a segmentation that is difficult based on conventional, single-contrast MRI. Using an automatic four-step image and signal processing algorithm, we segmented the thalamus to at least 7 sub-nuclei with high similarity across subjects and high statistical significance within subjects (p<0.0001). The identified sub-nuclei resembled the known anatomical arrangement of the thalamus given in various atlases. Each cluster was characterized by a unique MRI contrast fingerprint. With this procedure, the weighted proportions of the different cellular compartments could be estimated, a property available to date only by histological analysis. Each sub-nucleus could be characterized in terms of normalized MRI contrast and compared to other sub-nuclei. The different weights of the contrasts (T1/T2/T2*/PD/MT, etc.) for each sub-nuclei cluster might indicate the intra-cluster morphological arrangement of the tissue that it represents. The implications of this methodology are far-ranging, from non-invasive, in vivo, individual mapping of histologically distinct brain areas to automatic identification of pathological processes.
利用一种名为虚拟点成像的新型多对比度采集与分析框架,对大脑中与形态学、功能相关的结构进行了个体映射。到目前为止,传统的解剖MRI能够提供灰质/白质边界和一些皮质下结构的大致分割。通过结合几种成像对比机制(T1、T2、磁化传递、T2和质子密度),我们能够将皮质下组织进一步分割为其亚核排列,而基于传统的单对比度MRI很难进行这种分割。使用一种自动的四步图像和信号处理算法,我们将丘脑分割为至少7个亚核,在不同受试者之间具有高度相似性,在同一受试者内具有高度统计学意义(p<0.0001)。识别出的亚核类似于各种图谱中给出的丘脑已知解剖排列。每个簇都具有独特的MRI对比指纹。通过这个过程,可以估计不同细胞成分的加权比例,这是迄今为止只有通过组织学分析才能获得的特性。每个亚核可以根据归一化的MRI对比进行表征,并与其他亚核进行比较。每个亚核簇的不同对比权重(T1/T2/T2/PD/MT等)可能表明其所代表的组织在簇内的形态排列。这种方法的影响范围很广,从非侵入性的、体内的、对组织学上不同的脑区进行个体映射,到自动识别病理过程。