Harvard Medical School, Boston MA, USA.
Harvard Medical School, Boston MA, USA.
Neuroimage. 2018 May 15;172:826-837. doi: 10.1016/j.neuroimage.2017.10.029. Epub 2017 Oct 25.
In this paper, we propose an automated white matter connectivity analysis method for machine learning classification and characterization of white matter abnormality via identification of discriminative fiber tracts. The proposed method uses diffusion MRI tractography and a data-driven approach to find fiber clusters corresponding to subdivisions of the white matter anatomy. Features extracted from each fiber cluster describe its diffusion properties and are used for machine learning. The method is demonstrated by application to a pediatric neuroimaging dataset from 149 individuals, including 70 children with autism spectrum disorder (ASD) and 79 typically developing controls (TDC). A classification accuracy of 78.33% is achieved in this cross-validation study. We investigate the discriminative diffusion features based on a two-tensor fiber tracking model. We observe that the mean fractional anisotropy from the second tensor (associated with crossing fibers) is most affected in ASD. We also find that local along-tract (central cores and endpoint regions) differences between ASD and TDC are helpful in differentiating the two groups. These altered diffusion properties in ASD are associated with multiple robustly discriminative fiber clusters, which belong to several major white matter tracts including the corpus callosum, arcuate fasciculus, uncinate fasciculus and aslant tract; and the white matter structures related to the cerebellum, brain stem, and ventral diencephalon. These discriminative fiber clusters, a small part of the whole brain tractography, represent the white matter connections that could be most affected in ASD. Our results indicate the potential of a machine learning pipeline based on white matter fiber clustering.
在本文中,我们提出了一种自动化的白质连接分析方法,通过识别有区分度的纤维束,用于机器学习对白质异常进行分类和特征描述。该方法使用扩散磁共振成像纤维追踪和数据驱动的方法来找到与白质解剖结构细分相对应的纤维簇。从每个纤维簇中提取的特征描述了其扩散特性,并用于机器学习。该方法通过应用于来自 149 个人的儿科神经影像学数据集得到了验证,其中包括 70 名自闭症谱系障碍(ASD)儿童和 79 名典型发育对照(TDC)。在这项交叉验证研究中,达到了 78.33%的分类准确率。我们基于双张量纤维追踪模型研究了有区分度的扩散特征。我们观察到,第二个张量(与交叉纤维相关)的平均各向异性分数在 ASD 中受影响最大。我们还发现,ASD 和 TDC 之间沿纤维的局部差异有助于区分这两组。ASD 中这些改变的扩散性质与多个稳健的有区分度纤维簇相关,这些纤维簇属于几个主要的白质束,包括胼胝体、弓状束、钩束和斜角束;以及与小脑、脑干和腹侧间脑相关的白质结构。这些有区分度的纤维簇,是整个大脑纤维追踪的一小部分,代表了可能在 ASD 中受影响最大的白质连接。我们的结果表明,基于白质纤维聚类的机器学习管道具有潜力。