Identification of Discriminative Subnetwork from fMRI-Based Complete Functional Connectivity Networks

S. M. Hamdi, Yubao Wu, R. Angryk, L. Krishnamurthy, R. Morris
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引用次数: 3

Abstract

The comprehensive set of neuronal connections of the human brain, which is known as the human connectomes, has provided valuable insight into neurological and neurodevelopmental disorders. Functional Magnetic Resonance Imaging (fMRI) has facilitated this research by capturing regionally specific brain activity. Resting state fMRI is used to extract the functional connectivity networks, which are edge-weighted complete graphs. In these complete functional connectivity networks, each node represents one brain region or Region of Interest (ROI), and each edge weight represents the strength of functional connectivity of the adjacent ROIs. In order to leverage existing graph mining methodologies, these complete graphs are often made sparse by applying thresholds on weights. This approach can result in loss of discriminative information while addressing the issue of biomarkers detection, i.e. finding discriminative ROIs and connections, given the data of healthy and disabled population. In this work, we demonstrate a novel framework for representing the complete functional connectivity networks in a threshold-free manner and identifying biomarkers by using feature selection algorithms. Additionally, to compute meaningful representations of the discriminative ROIs and connections, we apply tensor decomposition techniques. Experiments on a fMRI dataset of neurodevelopmental reading disabilities show the highly interpretable nature of our approach in finding the biomarkers of the diseases.
基于fmri的完全功能连接网络鉴别子网络的识别
人类大脑中神经元连接的综合集合,即所谓的人类连接体,为神经和神经发育障碍提供了有价值的见解。功能性磁共振成像(fMRI)通过捕捉特定区域的大脑活动为这项研究提供了便利。静息状态fMRI用于提取边缘加权完全图的功能连接网络。在这些完整的功能连接网络中,每个节点代表一个大脑区域或感兴趣区域(ROI),每个边权代表相邻ROI的功能连接强度。为了利用现有的图挖掘方法,这些完全图通常通过对权重应用阈值而变得稀疏。在处理生物标志物检测问题时,这种方法可能导致歧视性信息的丢失,即根据健康人口和残疾人口的数据找到歧视性roi和连接。在这项工作中,我们展示了一个新的框架,用于以无阈值的方式表示完整的功能连接网络,并通过使用特征选择算法识别生物标志物。此外,为了计算判别roi和连接的有意义表示,我们应用张量分解技术。在神经发育性阅读障碍的fMRI数据集上的实验表明,我们的方法在寻找疾病的生物标志物方面具有高度可解释性。
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