Wang Lujia, Schwedt Todd J, Chong Catherine D, Wu Teresa, Li Jing
School of Industrial and Systems Engineering, Georgia Institute of Technology, Atlanta, GA.
Department of Neurology, Mayo Clinic Arizona, Scottsdale, AZ.
IISE Trans. 2022;54(11):1084-1097. doi: 10.1080/24725854.2021.1987592. Epub 2021 Dec 6.
The human brain is a complex system with many functional units interacting with each other. This interacting relationship, known as the functional connectivity network (FCN), is critical for brain functions. To learn the FCN, machine learning algorithms can be built based on brain signals captured by sensing technologies such as EEG and fMRI. In neurological diseases, past research has revealed that the FCN is altered. Also, focusing on a specific disease, some part of the FCN, i.e., a sub-network, can be more susceptible than other parts. However, the current knowledge about disease-specific sub-networks is limited. We propose a novel Discriminant Subgraph Learner (DSL) to identify a functional sub-network that best differentiates patients with a specific disease from healthy controls based on brain sensory data. We develop an integrated optimization framework for DSL to simultaneously learn the FCN of each class and identify the discriminant sub-network. Further, we develop tractable and converging algorithms to solve the optimization. We apply DSL to identify a functional sub-network that best differentiates patients with episodic migraine (EM) from healthy controls based on a fMRI dataset. DSL achieved the best accuracy compared to five state-of-the-art competing algorithms.
人类大脑是一个复杂的系统,其中许多功能单元相互作用。这种相互作用关系,即功能连接网络(FCN),对大脑功能至关重要。为了学习FCN,可以基于脑电图(EEG)和功能磁共振成像(fMRI)等传感技术捕获的脑信号构建机器学习算法。在神经疾病中,过去的研究表明FCN会发生改变。此外,聚焦于特定疾病时,FCN的某些部分,即子网络,可能比其他部分更容易受到影响。然而,目前关于疾病特异性子网络的知识有限。我们提出了一种新颖的判别子图学习器(DSL),用于基于脑传感数据识别出能最佳区分特定疾病患者与健康对照的功能子网络。我们为DSL开发了一个集成优化框架,以同时学习每个类别的FCN并识别判别子网络。此外,我们开发了易于处理且收敛的算法来求解该优化问题。我们应用DSL基于一个fMRI数据集识别出能最佳区分发作性偏头痛(EM)患者与健康对照的功能子网络。与五种最先进的竞争算法相比,DSL取得了最佳准确率。