| Literature DB >> 31456735 |
Giulia Mele1, Carlo Cavaliere1, Vincenzo Alfano1, Mario Orsini1, Marco Salvatore1, Marco Aiello1.
Abstract
The increasing incidence of neurodegenerative and psychiatric diseases requires increasingly sophisticated tools for their diagnosis and monitoring. Clinical assessment takes advantage of objective parameters extracted by electroencephalogram and magnetic resonance imaging (MRI) among others, to support clinical management of neurological diseases. The complementarity of these two tools can be now emphasized by the possibility of integrating the two technologies in a hybrid solution, allowing simultaneous acquisition of the two signals by the novel EEG-fMRI technology. This review will focus on simultaneous EEG-fMRI technology and related early studies, dealing about issues related to the acquisition and processing of simultaneous signals, and including critical discussion about clinical and technological perspectives.Entities:
Keywords: EEG; EEG spectra; fMRI; functional connectivity; multimodal image analysis
Year: 2019 PMID: 31456735 PMCID: PMC6700249 DOI: 10.3389/fneur.2019.00848
Source DB: PubMed Journal: Front Neurol ISSN: 1664-2295 Impact factor: 4.003
Figure 1EEG power spectrum. It presents a Topographic representation of Alpha power activity. Image obtained on a 40 years-old healthy volunteer with hybrid EEG-fMRI system and included for illustrative purpose only.
Figure 2Gradient artifact on electroencephalographic recording. It presents a broadband artifact covering the entire spectrum of EEG frequencies. The amplitude of the artifact is more than 1,000 times that of the EEG signal. Image obtained on a 40 years-old healthy volunteer with hybrid EEG-fMRI system and included for illustrative purpose only.
Figure 3Ballistocardiogram artifact. It has a maximum amplitude of about 100 microvolt and is most evident in the frequency range up to 30 Hz. The artifact undergoes spatio-temporal variability linked to cardiac activity. Image obtained on a 40 years-old healthy volunteer with hybrid EEG-fMRI system and included for illustrative purpose only.
Figure 4Pie chart. Proportion of EEG-fMRI studies in relation to neuropsychological impairments and healthy control subjects.
A summary of the resting state EEG-fMRI studies since 2014.
| Bruggen et al. ( | AD | 14 AD patients and Healthy control | 3T | EPI TR/TE:2.5 s/30 ms | Brain Products | EEG: Brain Vision Analyzer for BCG and GA Filter 0.5–70 Hz | Diminished positive association between alpha band power fluctuation and BOLD signal fluctuation in several brain region of AD patient compared to healthy controls |
| Dong et al. ( | JME | 18 Jouvenil Myoclonical Epilepsy | 3T | TR/TE: 52,000 ms/30 ms | Neuroscan 62- channels | EEG: Curry 7 (Neuroscan software) MRI: SPM8 | Evidence of complex discharge-affecting networks in JME patients, in which linear and nonlinear relationships between EEG and fMRI features existed. |
| Deligianni et al. ( | Connectivity | 17 Healthy Volunteers | 1.5T | EPI sequence TR/TE = 2,160/30 ms, 3.3 × 3.3 × 4.0 mm | Electrode cap (BrainCap MR,) | EEG: Brain Vision Analyzer 2, SPM12b MRI: Freesurfer, SPM12b | Correlation between the EEG signals and the anatomical zones from which they are generated. |
| Marawar et al. ( | Sleep | 14 Healthy sleep-deprived subjects | 3T | EPI sequence TR/TE = 2000 /30 ms | fEEG; Kappametrics Inc, Chantilly, VA | EEG: MATLAB, MRI: FEAT, FSL | Different correlations for the Delta and Theta rhythms |
| Keinanen et al. ( | Epilepsy | 10 Healthy controls; 10 patients with drug-resistant epilepsy (DRE). | 3T | MREG | BrainAmp system with 32 Ag/AgCl electrodes | EEG: Brain Vision Analyzer (version 2.0, Brain Products); MRI: FSL pipeline | Intrinsic brain pulsations play a role in DRE and critically sampled fMRI may provide a powerful tool for their identification. |
| Yuan et al. ( | PTSD | 36 PTSD; 20 combat-exposed(controls) | 3T | EPI sequence | BrainAmp MR Plus amplifiers (Brain Products) 32ch | EEG: BrainVision Analyzer software; MRI: AFNI, RETROICOR,Advanced Normalization Tools | Correspondence between the temporal dynamics of default mode network and PTSD severity |
| Yin et al. ( | motor control | 36 Healthy Volunteers | 3T | (EPI) TR/TE = 1,980/30 ms | 32-channel MR-compatible EEG system (Brain Products) | EEG: Brain Vision Analyzer 2.0 | Power of Mu rhythms positively correlated with BOLD within the anterior cingulate cortex and the anterior insula. |
A summary of the task EEG-fMRI studies since 2014.
| Herweg et al. ( | Behavioral/ | 19 Healthy Control | 3T | EPI TR/TE = 4,000/25 ms RES: 2 × 2 × 2 mm | Braincap MR; Brain Products | MRI: SPM12b EEG: BrainVision Analyzer 2.0; EEGLAB | Recognition memory | Theta-alpha power is linked to hippocampal connectivity with the striatum and PFC |
| Zotev et al. ( | Neurofeedback | 15 Healthy Control | 3T | EPI TR/TE = 5.0/1.9 ms RES: 0.94 × 0.94 × 1.2 mm 3 mm | Brain Products 32-channels | EEG: BrainVision Analyzer 2.1 software Frmi: AFNI | Retrival of happy autobiographical monets | Emotional control training can improve alpha activity and functional connectivity of amygdala and prefrontal cortex |
| Pisauro et al. ( | Neuroscience | 21 Healthy Control | 3T | EPI TR/TE = 2.5 s/40 ms RES: 3 × 3 mm | Brain Amps MR-Plus 64-channels | EEG: Matlab MRI: FMRIB's Software Library | Independent reward-based decision-making task | task-dependent correlation with the ventromedial prefrontal cortex and the striatum |
| Andreou et al. ( | Translational Psychiatry | 22 Healthy Control | 3T | EPI TR/TE = 2,000/ TE = 25 ms | BrainVision Recorder 64channel | EEG: Brain Vision Analyzer Version 2.0 | Gambling Task | Negative feedback: Increase in theta band power associated that correspond with activation of fronto-parietal areas. Positive feedback: Increasing in beta band power that reflect activation of subcortical areas |
| Guo et al. ( | Neuropsychology | 20 Healthy Control | 3T | EPI TR/TE = 2,000 ms/35 ms RES: 1 × 1 × 1 mm | Net Station (EEG Electrical Geodesics) | EEG: Net Station Software MRI: SPM8 | Monerary gambling task | Egg-fMRI acquisition during gambling task underline activation of a posterior cingulate, medial pre-frontal cortex and ventral striatum |
| Zotev et al. ( | Neurofeedback | 30 Patients with PTSD | 3T | EPI TR/TE = 2,000/30 ms RES: 1.875 × 1.875 × 2.9 mm | Brain Products | EEG: BrainVision Analyzer 2.1 software Frmi: AFNI | Think of and write down five happy autobiographical memories. | rtfMRI-nf of the amygdala activity has the potential to correct the amygdala-prefrontal functional connectivity deficiencies specific to PTSD |
| Zich et al. ( | Neuropsychology | 24 Healthy Control | 3T | EPI TR/TE = 1.5 s/2.52 ms RES: 3.1 × 3.1 × 3.0 mm | Brain Product 32-channels | EEG: Brain Vision Analyzer RMI: spm8 | Eeg neurofeedback- motor task | Indicate a complex relationship between MI EEG signals and sensorimotor cortical activity and support the role of MI EEG feedback in motor rehabilitation. |
Figure 5Source analysis. (Left) Sources localization of the EEG frequencies for a time period of 3 s, accomplished through the LORETA analysis. (Right) 3-s period electroencephalographic pattern of a healthy subject. Image obtained on a 40 years-old healthy volunteer with hybrid EEG-fMRI system and included for illustrative purpose only.