Author:
Paz-Linares Deirel,Gonzalez-Moreira Eduardo,Areces-Gonzalez Ariosky,Wang Ying,Li Min,Vega-Hernandez Mayrim,Wang Qing,Bosch-Bayard Jorge,Bringas-Vega Maria L.,Martinez-Montes Eduardo,Valdes-Sosa Mitchel J.,Valdes-Sosa Pedro A.
Abstract
Oscillatory processes at all spatial scales and on all frequencies underpin brain function. Electrophysiological Source Imaging (ESI) is the data-driven brain imaging modality that provides the inverse solutions to the source processes of the EEG, MEG, or ECoG data. This study aimed to carry out an ESI of the source cross-spectrum while controlling common distortions of the estimates. As with all ESI-related problems under realistic settings, the main obstacle we faced is a severely ill-conditioned and high-dimensional inverse problem. Therefore, we opted for Bayesian inverse solutions that positeda prioriprobabilities on the source process. Indeed, rigorously specifying both the likelihoods anda prioriprobabilities of the problem leads to the proper Bayesian inverse problem of cross-spectral matrices. These inverse solutions are our formal definition for cross-spectral ESI (cESI), which requiresa prioriof the source cross-spectrum to counter the severe ill-condition and high-dimensionality of matrices. However, inverse solutions for this problem were NP-hard to tackle or approximated within iterations with bad-conditioned matrices in the standard ESI setup. We introduce cESI with ajoint a prioriprobability upon the source cross-spectrum to avoid these problems. cESI inverse solutions are low-dimensional ones for the set of random vector instances and not random matrices. We achieved cESI inverse solutions through the variational approximationsviaour Spectral Structured Sparse Bayesian Learning (ssSBL) algorithmhttps://github.com/CCC-members/Spectral-Structured-Sparse-Bayesian-Learning. We compared low-density EEG (10–20 system) ssSBL inverse solutions with reference cESIs for two experiments: (a) high-density MEG that were used to simulate EEG and (b) high-density macaque ECoG that were recorded simultaneously with EEG. The ssSBL resulted in two orders of magnitude with less distortion than the state-of-the-art ESI methods. Our cESI toolbox, including the ssSBL method, is available athttps://github.com/CCC-members/BC-VARETA_Toolbox.
Reference183 articles.
1. Sufficiency and exponential families for discrete sample spaces;Andersen;J. Am. Stat. Assoc.,1970
2. Scale mixtures of normal distributions;Andrews;J. R. Stat. Soc. Ser. B,1974
3. Bayesian analysis of the neuromagnetic inverse problem with l(p)-norm priors;Auranen;Neuroimage,2005
4. Bayesian compressive sensing using non-convex priors;Babacan;Eur. Signal Process. Conf.,2009
5. Electromagnetic brain mapping;Baillet;IEEE Signal Process. Mag.,2001
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献