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Lydia Hellrung

Showing results (11-20 of 18) with videos related to

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Journal of Psychopharmacology (Oxford, England)|December 28, 2023
Arbitration between model-free and model-based control is not affected by transient changes in tonic serotonin levelsMaximilian D Gilger, Lydia Hellrung, Philipp T Neukam, et al.
Frontiers in Human Neuroscience|May 21, 2016
Amygdala Regulation Following fMRI-Neurofeedback without Instructed StrategiesMichael Marxen, Mark J Jacob, Dirk K Müller, et al.
BMC Psychiatry|February 10, 2021
Targeting hippocampal hyperactivity with real-time fMRI neurofeedback: protocol of a single-blind randomized controlled trial in mild cognitive impairmentKatharina Klink, Urs Jaun, Andrea Federspiel, et al.
Psychopharmacology|May 7, 2018
Risk-seeking for losses is associated with 5-HTTLPR, but not with transient changes in 5-HT levelsPhilipp T Neukam, Nils B Kroemer, Yacila I Deza Araujo, et al.
Data in Brief|October 21, 2016
"Eyes Open - Eyes Closed" EEG/fMRI data set including dedicated "Carbon Wire Loop" motion detection channelsJohan van der Meer, André Pampel, Eus van Someren, et al.
Neuroimage|October 28, 2015
Carbon-wire loop based artifact correction outperforms post-processing EEG/fMRI corrections--A validation of a real-time simultaneous EEG/fMRI correction methodJohan N van der Meer, André Pampel, Eus J W Van Someren, et al.
Human Brain Mapping|July 8, 2025
Neural Mechanisms of Feedback Processing and Regulation Recalibration During Neurofeedback TrainingGustavo S P Pamplona, Jana Zweerings, Cindy S Lor, et al.
Neuroimage|May 28, 2021
Predictors of real-time fMRI neurofeedback performance and improvement - A machine learning mega-analysisAmelie Haugg, Fabian M Renz, Andrew A Nicholson, et al.
Pageof 2

Showing results (11-20 of 18) with videos related to

Sort By:
Pageof 2
You have reached the last page of results.This site can display upto 18 results.
Journal of Psychopharmacology (Oxford, England)|December 28, 2023
Arbitration between model-free and model-based control is not affected by transient changes in tonic serotonin levelsMaximilian D Gilger, Lydia Hellrung, Philipp T Neukam, et al.
Frontiers in Human Neuroscience|May 21, 2016
Amygdala Regulation Following fMRI-Neurofeedback without Instructed StrategiesMichael Marxen, Mark J Jacob, Dirk K Müller, et al.
BMC Psychiatry|February 10, 2021
Targeting hippocampal hyperactivity with real-time fMRI neurofeedback: protocol of a single-blind randomized controlled trial in mild cognitive impairmentKatharina Klink, Urs Jaun, Andrea Federspiel, et al.
Psychopharmacology|May 7, 2018
Risk-seeking for losses is associated with 5-HTTLPR, but not with transient changes in 5-HT levelsPhilipp T Neukam, Nils B Kroemer, Yacila I Deza Araujo, et al.
Data in Brief|October 21, 2016
"Eyes Open - Eyes Closed" EEG/fMRI data set including dedicated "Carbon Wire Loop" motion detection channelsJohan van der Meer, André Pampel, Eus van Someren, et al.
Neuroimage|October 28, 2015
Carbon-wire loop based artifact correction outperforms post-processing EEG/fMRI corrections--A validation of a real-time simultaneous EEG/fMRI correction methodJohan N van der Meer, André Pampel, Eus J W Van Someren, et al.
Human Brain Mapping|July 8, 2025
Neural Mechanisms of Feedback Processing and Regulation Recalibration During Neurofeedback TrainingGustavo S P Pamplona, Jana Zweerings, Cindy S Lor, et al.
Neuroimage|May 28, 2021
Predictors of real-time fMRI neurofeedback performance and improvement - A machine learning mega-analysisAmelie Haugg, Fabian M Renz, Andrew A Nicholson, et al.
Pageof 2