School of Computer Science and Engineering, Nanyang Technological University, Singapore.
Hum Brain Mapp. 2022 Jun 15;43(9):2801-2816. doi: 10.1002/hbm.25817. Epub 2022 Feb 27.
Functional magnetic resonance imaging (fMRI) is used to capture complex and dynamic interactions between brain regions while performing tasks. Task related alterations in the brain have been classified as task specific and task general, depending on whether they are particular to a task or common across multiple tasks. Using recent attempts in interpreting deep learning models, we propose an approach to determine both task specific and task general architectures of the functional brain. We demonstrate our methods with a reference-based decoder on deep learning classifiers trained on 12,500 rest and task fMRI samples from the Human Connectome Project (HCP). The decoded task general and task specific motor and language architectures were validated with findings from previous studies. We found that unlike intersubject variability that is characteristic of functional pathology of neurological diseases, a small set of connections are sufficient to delineate the rest and task states. The nodes and connections in the task general architecture could serve as potential disease biomarkers as alterations in task general brain modulations are known to be implicated in several neuropsychiatric disorders.
功能磁共振成像 (fMRI) 用于捕获执行任务时大脑区域之间复杂而动态的相互作用。根据它们是否特定于任务或在多个任务中通用,大脑中的与任务相关的改变被分类为任务特异性和任务一般性。利用最近在解释深度学习模型方面的尝试,我们提出了一种方法来确定功能大脑的任务特异性和任务一般性结构。我们使用基于参考的解码器在人类连接组计划 (HCP) 的 12500 个休息和任务 fMRI 样本上训练的深度学习分类器上演示了我们的方法。使用先前研究的结果验证了解码的任务特异性和任务一般性运动和语言结构。我们发现,与神经疾病功能病理学特征的个体间变异性不同,一小部分连接就足以描绘休息和任务状态。任务一般性架构中的节点和连接可以作为潜在的疾病生物标志物,因为众所周知,任务一般性大脑调节的改变与几种神经精神障碍有关。