Dynamic Connectivity Mapping of Electrocorticographic Data using Bayesian Differential Structural Equation Modeling
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چکیده
Submit Manuscript | http://medcraveonline.com Abbreviations: ECoG: Electro Cortico Graphic; BdSEM: Bayesian Differential Structural Equation Modeling; ODEs: Ordinary Differential Equations; ROI: Region Of Interest; fMRI: functional Magnetic Resonance Imaging; MCMC: Markov Chain Monte Carlo; FDA: Functional Data Analysis; STG: Superior Temporal Gyrus; PostSTG: Posterior STG; MidSTG: Middle STG; BIC: Bayesian Information Criterion; AIC: Akaike Information Criterion; FF: Feed Forward; FB: Feed Back; ERP: Evoked Response Potential
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