Department of Psychology, Stanford University, Stanford, California, United States of America.
PLoS One. 2012;7(11):e49790. doi: 10.1371/journal.pone.0049790. Epub 2012 Nov 14.
Tractography based on diffusion weighted imaging (DWI) data is a method for identifying the major white matter fascicles (tracts) in the living human brain. The health of these tracts is an important factor underlying many cognitive and neurological disorders. In vivo, tissue properties may vary systematically along each tract for several reasons: different populations of axons enter and exit the tract, and disease can strike at local positions within the tract. Hence quantifying and understanding diffusion measures along each fiber tract (Tract Profile) may reveal new insights into white matter development, function, and disease that are not obvious from mean measures of that tract. We demonstrate several novel findings related to Tract Profiles in the brains of typically developing children and children at risk for white matter injury secondary to preterm birth. First, fractional anisotropy (FA) values vary substantially within a tract but the Tract FA Profile is consistent across subjects. Thus, Tract Profiles contain far more information than mean diffusion measures. Second, developmental changes in FA occur at specific positions within the Tract Profile, rather than along the entire tract. Third, Tract Profiles can be used to compare white matter properties of individual patients to standardized Tract Profiles of a healthy population to elucidate unique features of that patient's clinical condition. Fourth, Tract Profiles can be used to evaluate the association between white matter properties and behavioral outcomes. Specifically, in the preterm group reading ability is positively correlated with FA measured at specific locations on the left arcuate and left superior longitudinal fasciculus and the magnitude of the correlation varies significantly along the Tract Profiles. We introduce open source software for automated fiber-tract quantification (AFQ) that measures Tract Profiles of MRI parameters for 18 white matter tracts. With further validation, AFQ Tract Profiles have potential for informing clinical management and decision-making.
基于弥散加权成像(DWI)数据的束流追踪是一种识别活体人脑主要白质束(束流)的方法。这些束流的健康是许多认知和神经障碍的重要因素。在体内,由于多种原因,组织特性可能沿每个束流系统地变化:不同的轴突群体进入和离开束流,疾病可能在束流内的局部位置发作。因此,量化和理解每个纤维束(束流轮廓)的扩散测量值可能会揭示出一些新的见解,这些见解是从该束流的平均测量值中无法明显看出的,这些见解与白质的发育、功能和疾病有关。我们展示了与早产儿出生后白质损伤风险相关的典型发育儿童和儿童大脑中的束流轮廓相关的几个新发现。首先,各向异性分数(FA)值在束流内变化很大,但束流 FA 轮廓在受试者之间是一致的。因此,束流轮廓包含的信息远远多于平均扩散测量值。其次,FA 的发育变化发生在束流轮廓内的特定位置,而不是沿着整个束流。第三,束流轮廓可用于将个体患者的白质性质与健康人群的标准化束流轮廓进行比较,以阐明该患者临床状况的独特特征。第四,束流轮廓可用于评估白质性质与行为结果之间的关联。具体来说,在早产儿组中,阅读能力与左弓状束和左额上纵束特定位置测量的 FA 值呈正相关,并且相关程度沿束流轮廓显著变化。我们引入了用于自动纤维束定量(AFQ)的开源软件,该软件可测量 18 条白质束的 MRI 参数的束流轮廓。通过进一步验证,AFQ 束流轮廓有可能为临床管理和决策提供信息。