Dean D C, Lange N, Travers B G, Prigge M B, Matsunami N, Kellett K A, Freeman A, Kane K L, Adluru N, Tromp D P M, Destiche D J, Samsin D, Zielinski B A, Fletcher P T, Anderson J S, Froehlich A L, Leppert M F, Bigler E D, Lainhart J E, Alexander A L
Waisman Center, University of Wisconsin-Madison, Madison, WI, USA.
Department of Psychiatry, Harvard School of Medicine, Boston, MA, USA; Child and Adolescent Psychiatry, McLean Hospital, Belmont, MA, USA.
Neuroimage Clin. 2017 Jan 6;14:54-66. doi: 10.1016/j.nicl.2017.01.002. eCollection 2017.
The complexity and heterogeneity of neuroimaging findings in individuals with autism spectrum disorder has suggested that many of the underlying alterations are subtle and involve many brain regions and networks. The ability to account for multivariate brain features and identify neuroimaging measures that can be used to characterize individual variation have thus become increasingly important for interpreting and understanding the neurobiological mechanisms of autism. In the present study, we utilize the Mahalanobis distance, a multidimensional counterpart of the Euclidean distance, as an informative index to characterize individual brain variation and deviation in autism. Longitudinal diffusion tensor imaging data from 149 participants (92 diagnosed with autism spectrum disorder and 57 typically developing controls) between 3.1 and 36.83 years of age were acquired over a roughly 10-year period and used to construct the Mahalanobis distance from regional measures of white matter microstructure. Mahalanobis distances were significantly greater and more variable in the autistic individuals as compared to control participants, demonstrating increased atypicalities and variation in the group of individuals diagnosed with autism spectrum disorder. Distributions of multivariate measures were also found to provide greater discrimination and more sensitive delineation between autistic and typically developing individuals than conventional univariate measures, while also being significantly associated with observed traits of the autism group. These results help substantiate autism as a truly heterogeneous neurodevelopmental disorder, while also suggesting that collectively considering neuroimaging measures from multiple brain regions provides improved insight into the diversity of brain measures in autism that is not observed when considering the same regions separately. Distinguishing multidimensional brain relationships may thus be informative for identifying neuroimaging-based phenotypes, as well as help elucidate underlying neural mechanisms of brain variation in autism spectrum disorders.
自闭症谱系障碍个体神经影像学研究结果的复杂性和异质性表明,许多潜在的改变很细微,且涉及多个脑区和神经网络。因此,能够解释多元脑特征并识别可用于表征个体差异的神经影像学测量方法,对于解释和理解自闭症的神经生物学机制变得越来越重要。在本研究中,我们使用马氏距离(欧几里得距离的多维对应物)作为一个信息指标,以表征自闭症个体脑的个体差异和偏差。在大约10年的时间里,我们获取了149名参与者(92名被诊断为自闭症谱系障碍,57名发育正常的对照者)在3.1至36.83岁之间的纵向扩散张量成像数据,并用于构建基于白质微观结构区域测量的马氏距离。与对照参与者相比,自闭症个体的马氏距离显著更大且更具变异性,这表明被诊断为自闭症谱系障碍的个体组中存在更多的非典型性和变异性。还发现,与传统单变量测量相比,多变量测量的分布在区分自闭症个体和发育正常个体方面提供了更大的辨别力和更敏感的划分,同时也与自闭症组观察到的特征显著相关。这些结果有助于证实自闭症是一种真正异质性的神经发育障碍,同时也表明,综合考虑多个脑区的神经影像学测量方法,可以更好地洞察自闭症脑测量的多样性,而单独考虑相同区域时则无法观察到这种多样性。因此,区分多维脑关系可能有助于识别基于神经影像学的表型,并有助于阐明自闭症谱系障碍中脑变异的潜在神经机制。