Powell Michael A, Garcia Javier O, Yeh Fang-Cheng, Vettel Jean M, Verstynen Timothy
Department of Mathematical Sciences, United States Military Academy, West Point, NY, USA.
U.S. Army Research Laboratory, Aberdeen Proving Ground, MD, USA.
Netw Neurosci. 2018 Mar 1;2(1):86-105. doi: 10.1162/NETN_a_00031. eCollection 2018 Spring.
The unique architecture of the human connectome is defined initially by genetics and subsequently sculpted over time with experience. Thus, similarities in predisposition and experience that lead to similarities in social, biological, and cognitive attributes should also be reflected in the local architecture of white matter fascicles. Here we employ a method known as local connectome fingerprinting that uses diffusion MRI to measure the fiber-wise characteristics of macroscopic white matter pathways throughout the brain. This fingerprinting approach was applied to a large sample ( = 841) of subjects from the Human Connectome Project, revealing a reliable degree of between-subject correlation in the local connectome fingerprints, with a relatively complex, low-dimensional substructure. Using a cross-validated, high-dimensional regression analysis approach, we derived local connectome phenotype (LCP) maps that could reliably predict a subset of subject attributes measured, including demographic, health, and cognitive measures. These LCP maps were highly specific to the attribute being predicted but also sensitive to correlations between attributes. Collectively, these results indicate that the local architecture of white matter fascicles reflects a meaningful portion of the variability shared between subjects along several dimensions.
人类连接组的独特架构最初由基因决定,随后随着时间推移,在经验的塑造下不断演变。因此,在易感性和经验方面的相似性导致社会、生物和认知属性的相似性,这也应该反映在白质纤维束的局部架构中。在这里,我们采用一种称为局部连接组指纹识别的方法,该方法利用扩散磁共振成像来测量全脑宏观白质通路的纤维特征。这种指纹识别方法应用于来自人类连接组计划的大量样本(N = 841),揭示了局部连接组指纹中受试者间可靠的相关程度,以及相对复杂的低维子结构。使用交叉验证的高维回归分析方法,我们得出了局部连接组表型(LCP)图谱,该图谱能够可靠地预测所测量的受试者属性的一个子集,包括人口统计学、健康和认知指标。这些LCP图谱对所预测的属性具有高度特异性,但也对属性之间的相关性敏感。总体而言,这些结果表明,白质纤维束的局部架构反映了受试者在多个维度上共享的有意义的变异性部分。