Neural and functional validation of fMRI-informed EEG model of right inferior frontal gyrus activity

•Developing of a new fMRI-based EEG model related to activity in the right IFG (rIFG- EFP) – a major node in the cognitive control circuit.•Implementation of the model in neurofeedback (NF) setting and its neural and functional validation.•We demonstrate neural target engagement, showing associated...

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Veröffentlicht in:NeuroImage (Orlando, Fla.) Fla.), 2023-02, Vol.266, p.119822-119822, Article 119822
Hauptverfasser: Or-Borichev, Ayelet, Gurevitch, Guy, Klovatch, Ilana, Greental, Ayam, Lerner, Yulia, Levy, Dino J., Hendler, Talma
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Sprache:eng
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Zusammenfassung:•Developing of a new fMRI-based EEG model related to activity in the right IFG (rIFG- EFP) – a major node in the cognitive control circuit.•Implementation of the model in neurofeedback (NF) setting and its neural and functional validation.•We demonstrate neural target engagement, showing associated rIFG-BOLD activity changing during simultaneous rIFG-EFP-NF training.•Learning to up-regulate the rIFG-EFP signal through NF was associated with decreased risk taking in a designated task, indicating improved cognitive control.•Results confirm the validity of a scalable NF probe for targeting rIFG activity by using an EEG probe. The right inferior frontal gyrus (rIFG) is a region involved in the neural underpinning of cognitive control across several domains such as inhibitory control and attentional allocation process. Therefore, it constitutes a desirable neural target for brain-guided interventions such as neurofeedback (NF). To date, rIFG-NF has shown beneficial ability to rehabilitate or enhance cognitive functions using functional Magnetic Resonance Imaging (fMRI-NF). However, the utilization of fMRI-NF for clinical purposes is severely limited, due to its poor scalability. The present study aimed to overcome the limited applicability of fMRI-NF by developing and validating an EEG model of fMRI-defined rIFG activity (hereby termed "Electrical FingerPrint of rIFG"; rIFG-EFP). To validate the computational model, we employed two experiments in healthy individuals. The first study (n = 14) aimed to test the target engagement of the model by employing rIFG-EFP-NF training while simultaneously acquiring fMRI. The second study (n = 41) aimed to test the functional outcome of two sessions of rIFG-EFP-NF using a risk preference task (known to depict cognitive control processes), employed before and after the training. Results from the first study demonstrated neural target engagement as expected, showing associated rIFG-BOLD signal changing during simultaneous rIFG-EFP-NF training. Target anatomical specificity was verified by showing a more precise prediction of the rIFG-BOLD by the rIFG-EFP model compared to other EFP models. Results of the second study suggested that successful learning to up-regulate the rIFG-EFP signal through NF can reduce one's tendency for risk taking, indicating improved cognitive control after two sessions of rIFG-EFP-NF. Overall, our results confirm the validity of a scalable NF method for targeting rIFG activity by using an EEG probe.
ISSN:1053-8119
1095-9572
DOI:10.1016/j.neuroimage.2022.119822