Langs Georg, Wang Danhong, Golland Polina, Mueller Sophia, Pan Ruiqi, Sabuncu Mert R, Sun Wei, Li Kuncheng, Liu Hesheng
Department of Biomedical Imaging and Image-guided Therapy, Computational Imaging Research Lab, Medical University of Vienna, Vienna, Austria Computer Science and Artificial Intelligence Lab, Massachusetts Institute of Technology, Cambridge, MA, USA.
Athinoula A. Martinos Center for Biomedical Imaging, Department of Radiology, Massachusetts General Hospital, Harvard Medical School, Charlestown, MA, USA.
Cereb Cortex. 2016 Oct;26(10):4004-14. doi: 10.1093/cercor/bhv189. Epub 2015 Sep 1.
The connectivity architecture of the human brain varies across individuals. Mapping functional anatomy at the individual level is challenging, but critical for basic neuroscience research and clinical intervention. Using resting-state functional connectivity, we parcellated functional systems in an "embedding space" based on functional characteristics common across the population, while simultaneously accounting for individual variability in the cortical distribution of functional units. The functional connectivity patterns observed in resting-state data were mapped in the embedding space and the maps were aligned across individuals. A clustering algorithm was performed on the aligned embedding maps and the resulting clusters were transformed back to the unique anatomical space of each individual. This novel approach identified functional systems that were reproducible within subjects, but were distributed across different anatomical locations in different subjects. Using this approach for intersubject alignment improved the predictability of individual differences in language laterality when compared with anatomical alignment alone. Our results further revealed that the strength of association between function and macroanatomy varied across the cortex, which was strong in unimodal sensorimotor networks, but weak in association networks.
人类大脑的连接架构因人而异。在个体水平上绘制功能解剖图具有挑战性,但对于基础神经科学研究和临床干预至关重要。利用静息态功能连接,我们基于人群共有的功能特征在“嵌入空间”中划分功能系统,同时考虑功能单元在皮质分布中的个体变异性。在静息态数据中观察到的功能连接模式被映射到嵌入空间中,并且这些图谱在个体间进行对齐。对对齐后的嵌入图谱执行聚类算法,然后将得到的聚类转换回每个个体独特的解剖空间。这种新颖的方法识别出在个体内部可重复,但在不同个体中分布于不同解剖位置的功能系统。与仅使用解剖对齐相比,使用这种方法进行个体间对齐提高了语言偏侧性个体差异的可预测性。我们的结果进一步表明,功能与大体解剖之间的关联强度在整个皮质中各不相同,在单峰感觉运动网络中较强,而在联合网络中较弱。