Middleton Dana M, Li Jonathan Y, Lee Hui J, Chen Steven, Dickson Patricia I, Ellinwood N Matthew, White Leonard E, Provenzale James M
1 School of Medicine, Duke University, USA.
2 Kyungpook National University Hospital, South Korea.
Neuroradiol J. 2017 Aug;30(4):324-329. doi: 10.1177/1971400917709628. Epub 2017 Jun 20.
Purpose The purpose of this study was to investigate a novel tensor shape plot analysis technique of diffusion tensor imaging data as a means to assess microstructural differences in brain tissue. We hypothesized that this technique could distinguish white matter regions with different microstructural compositions. Methods Three normal canines were euthanized at seven weeks old. Their brains were imaged using identical diffusion tensor imaging protocols on a 7T small-animal magnetic resonance imaging system. We examined two white matter regions, the internal capsule and the centrum semiovale, each subdivided into an anterior and posterior region. We placed 100 regions of interest in each of the four brain regions. Eigenvalues for each region of interest triangulated onto tensor shape plots as the weighted average of three shape metrics at the plot's vertices: CS, CL, and CP. Results The distribution of data on the plots for the internal capsule differed markedly from the centrum semiovale data, thus confirming our hypothesis. Furthermore, data for the internal capsule were distributed in a relatively tight cluster, possibly reflecting the compact and parallel nature of its fibers, while data for the centrum semiovale were more widely distributed, consistent with the less compact and often crossing pattern of its fibers. This indicates that the tensor shape plot technique can depict data in similar regions as being alike. Conclusion Tensor shape plots successfully depicted differences in tissue microstructure and reflected the microstructure of individual brain regions. This proof of principle study suggests that if our findings are reproduced in larger samples, including abnormal white matter states, the technique may be useful in assessment of white matter diseases.
目的 本研究的目的是探讨一种用于扩散张量成像数据的新型张量形状图分析技术,作为评估脑组织微观结构差异的一种方法。我们假设该技术能够区分具有不同微观结构组成的白质区域。方法 三只正常犬在7周龄时实施安乐死。在一台7T小动物磁共振成像系统上,使用相同的扩散张量成像方案对它们的大脑进行成像。我们检查了两个白质区域,即内囊和半卵圆中心,每个区域又细分为前部和后部区域。我们在四个脑区的每个区域放置了100个感兴趣区域。将每个感兴趣区域的特征值作为张量形状图顶点处三个形状度量(CS、CL和CP)的加权平均值,三角剖分到张量形状图上。结果 内囊在图上的数据分布与半卵圆中心的数据明显不同,从而证实了我们的假设。此外,内囊的数据分布在一个相对紧密的簇中,这可能反映了其纤维紧密且平行的性质,而半卵圆中心的数据分布更广泛,与其纤维不那么紧密且经常交叉的模式一致。这表明张量形状图技术能够将相似区域的数据描绘得相似。结论 张量形状图成功地描绘了组织微观结构的差异,并反映了各个脑区的微观结构。这项原理验证研究表明,如果我们的发现在更大样本中得到重现,包括异常白质状态,该技术可能在白质疾病评估中有用。