Biomedical Engineering Department, Tulane University, New Orleans, Louisiana, USA.
The Mind Research Network, Albuquerque, New Mexico, USA.
Hum Brain Mapp. 2021 Jun 15;42(9):2691-2705. doi: 10.1002/hbm.25394. Epub 2021 Apr 9.
Functional network connectivity has been widely acknowledged to characterize brain functions, which can be regarded as "brain fingerprinting" to identify an individual from a pool of subjects. Both common and unique information has been shown to exist in the connectomes across individuals. However, very little is known about whether and how this information can be used to predict the individual variability of the brain. In this paper, we propose to enhance the uniqueness of individual connectome based on an autoencoder network. Specifically, we hypothesize that the common neural activities shared across individuals may reduce the individual identification. By removing contributions from shared activities, inter-subject variability can be enhanced. Our experimental results on HCP data show that the refined connectomes obtained by utilizing autoencoder with sparse dictionary learning can distinguish an individual from the remaining participants with high accuracy (up to 99.5% for the rest-rest pair). Furthermore, high-level cognitive behaviors (e.g., fluid intelligence, executive function, and language comprehension) can also be better predicted with the obtained refined connectomes. We also find that high-order association cortices contribute more to both individual discrimination and behavior prediction. In summary, our proposed framework provides a promising way to leverage functional connectivity networks for cognition and behavior study, in addition to a better understanding of brain functions.
功能网络连接在刻画大脑功能方面已得到广泛认可,可以将其视为“脑纹识别”,以从一组研究对象中识别个体。已经证明在个体的连接组中存在共同和独特的信息。然而,关于这些信息是否以及如何可以用于预测大脑的个体变异性,人们知之甚少。在本文中,我们提出基于自动编码器网络来增强个体连接组的独特性。具体来说,我们假设个体之间共享的常见神经活动可能会降低个体识别的能力。通过去除共享活动的贡献,可以增强个体间的变异性。我们在 HCP 数据上的实验结果表明,利用具有稀疏字典学习的自动编码器获得的精细化连接组可以以高精度(对于其余的 rest-rest 对高达 99.5%)区分个体。此外,还可以利用获得的精细化连接组更好地预测高级认知行为(例如,流体智力、执行功能和语言理解)。我们还发现,高阶联合皮层对个体辨别和行为预测的贡献更大。总之,我们提出的框架为利用功能连接网络进行认知和行为研究提供了一种很有前途的方法,同时也加深了对大脑功能的理解。