The Clinical Hospital of Chengdu Brain Science Institute, MOE Key Lab for Neuroinformation, University of Electronic Science and Technology of China, Chengdu 611731, People's Republic of China.
School of Bioinformatics, Chongqing University of Posts and Telecommunications, Chongqing, People's Republic of China.
Neural Netw. 2020 Apr;124:213-222. doi: 10.1016/j.neunet.2020.01.022. Epub 2020 Jan 25.
The conventional multivariate Granger Analysis (GA) of directed interactions has been widely applied in brain network construction based on EEG recordings as well as fMRI. Nevertheless, EEG is usually inevitably contaminated by strong noise, which may cause network distortion due to the L2-norm used in GAs for directed network recovery. The Lp (p ≤1) norm has been shown to be more robust to outliers as compared to LASSO and L2-GAs. Motivated to construct the sparse brain networks under strong noise condition, we hereby introduce a new approach for GA analysis, termed LAPPS (Least Absolute LP (0<p<1) Penalized Solution). LAPPS utilizes the L1-loss function for the residual error to alleviate the effect of outliers, and another Lp-penalty term (p=0.5) to obtain the sparse connections while suppressing the spurious linkages in the networks. The simulation results reveal that LAPPS obtained the best performance under various noise conditions. In a real EEG data test when subjects performed the left and right hand Motor Imagery (MI) for brain network estimation, LAPPS also obtained a sparse network pattern with the hub at the contralateral brain primary motor areas consistent with the physiological basis of MI.
传统的多元格兰杰因果分析(GA)在基于 EEG 记录和 fMRI 的脑网络构建中得到了广泛应用。然而,EEG 通常不可避免地受到强噪声的干扰,由于 GA 中用于定向网络恢复的 L2 范数,可能会导致网络扭曲。与 LASSO 和 L2-GA 相比,Lp(p≤1)范数对离群值更稳健。受此启发,我们在强噪声条件下构建稀疏脑网络,提出了一种新的 GA 分析方法,称为 LAPPS(最小绝对 LP(0<p<1)惩罚解)。LAPPS 利用残差的 L1 损失函数来减轻离群值的影响,另一个 Lp 惩罚项(p=0.5)用于获得稀疏连接,同时抑制网络中的虚假连接。模拟结果表明,在各种噪声条件下,LAPPS 都能获得最佳性能。在对受试者进行左手和右手运动想象(MI)以估计脑网络的真实 EEG 数据测试中,LAPPS 还获得了一个稀疏网络模式,其枢纽位于对侧大脑初级运动区,与 MI 的生理基础一致。