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Predictors of real-time fMRI neurofeedback performance and improvement - A machine learning mega-analysis.

Authors :
Haugg, Amelie
Renz, Fabian M
Nicholson, Andrew A
Lor, Cindy
Götzendorfer, Sebastian J
Sladky, Ronald
Skouras, Stavros
McDonald, Amalia
Craddock, Cameron
Hellrung, Lydia
Kirschner, Matthias
Herdener, Marcus
Koush, Yury
Papoutsi, Marina
Keynan, Jackob
Hendler, Talma
Cohen Kadosh, Kathrin
Zich, Catharina
Kohl, Simon H
Hallschmid, Manfred
MacInnes, Jeff
Adcock, R Alison
Dickerson, Kathryn C
Chen, Nan-Kuei
Young, Kymberly
Bodurka, Jerzy
Marxen, Michael
Yao, Shuxia
Becker, Benjamin
Auer, Tibor
Schweizer, Renate
Pamplona, Gustavo
Lanius, Ruth A
Emmert, Kirsten
Haller, Sven
Van De Ville, Dimitri
Kim, Dong-Youl
Lee, Jong-Hwan
Marins, Theo
Megumi, Fukuda
Sorger, Bettina
Kamp, Tabea
Liew, Sook-Lei
Veit, Ralf
Spetter, Maartje
Weiskopf, Nikolaus
Scharnowski, Frank
Steyrl, David
Haugg, Amelie
Renz, Fabian M
Nicholson, Andrew A
Lor, Cindy
Götzendorfer, Sebastian J
Sladky, Ronald
Skouras, Stavros
McDonald, Amalia
Craddock, Cameron
Hellrung, Lydia
Kirschner, Matthias
Herdener, Marcus
Koush, Yury
Papoutsi, Marina
Keynan, Jackob
Hendler, Talma
Cohen Kadosh, Kathrin
Zich, Catharina
Kohl, Simon H
Hallschmid, Manfred
MacInnes, Jeff
Adcock, R Alison
Dickerson, Kathryn C
Chen, Nan-Kuei
Young, Kymberly
Bodurka, Jerzy
Marxen, Michael
Yao, Shuxia
Becker, Benjamin
Auer, Tibor
Schweizer, Renate
Pamplona, Gustavo
Lanius, Ruth A
Emmert, Kirsten
Haller, Sven
Van De Ville, Dimitri
Kim, Dong-Youl
Lee, Jong-Hwan
Marins, Theo
Megumi, Fukuda
Sorger, Bettina
Kamp, Tabea
Liew, Sook-Lei
Veit, Ralf
Spetter, Maartje
Weiskopf, Nikolaus
Scharnowski, Frank
Steyrl, David
Publication Year :
2021

Abstract

Real-time fMRI neurofeedback is an increasingly popular neuroimaging technique that allows an individual to gain control over his/her own brain signals, which can lead to improvements in behavior in healthy participants as well as to improvements of clinical symptoms in patient populations. However, a considerably large ratio of participants undergoing neurofeedback training do not learn to control their own brain signals and, consequently, do not benefit from neurofeedback interventions, which limits clinical efficacy of neurofeedback interventions. As neurofeedback success varies between studies and participants, it is important to identify factors that might influence neurofeedback success. Here, for the first time, we employed a big data machine learning approach to investigate the influence of 20 different design-specific (e.g. activity vs. connectivity feedback), region of interest-specific (e.g. cortical vs. subcortical) and subject-specific factors (e.g. age) on neurofeedback performance and improvement in 608 participants from 28 independent experiments. With a classification accuracy of 60% (considerably different from chance level), we identified two factors that significantly influenced neurofeedback performance: Both the inclusion of a pre-training no-feedback run before neurofeedback training and neurofeedback training of patients as compared to healthy participants were associated with better neurofeedback performance. The positive effect of pre-training no-feedback runs on neurofeedback performance might be due to the familiarization of participants with the neurofeedback setup and the mental imagery task before neurofeedback training runs. Better performance of patients as compared to healthy participants might be driven by higher motivation of patients, higher ranges for the regulation of dysfunctional brain signals, or a more extensive piloting of clinical experimental paradigms. Due to the large heterogeneity of our dataset, these findings likely

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1280666771
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1016.j.neuroimage.2021.118207