Quality and denoising in real-time functional magnetic resonance imaging neurofeedback: A methods review
Ikusi/ Ireki
Data
2020Egilea
Heunis, Stephan
Lamerichs, Rolf
Zinger, Svitlana
Caballero Gaudes, César
Jansen, Jacobus F. A.
Aldenkamp, Bert
Breeuwer, Marcel
Heunis, S, Lamerichs, R, Zinger, S, et al. Quality and denoising in real‐time functional magnetic resonance imaging neurofeedback: A methods review. Hum Brain Mapp. 2020; 41: 3439– 3467. https://doi.org/10.1002/hbm.25010
Laburpena
Neurofeedback training using real-time functional magnetic resonance imaging
(rtfMRI-NF) allows subjects voluntary control of localised and distributed brain activity.
It has sparked increased interest as a promising non-invasive treatment option in
neuropsychiatric and neurocognitive disorders, although its efficacy and clinical significance
are yet to be determined. In this work, we present the first extensive review
of acquisition, processing and quality control methods available to improve the quality
of the neurofeedback signal. Furthermore, we investigate the state of denoising
and quality control practices in 128 recently published rtfMRI-NF studies. We found:
(a) that less than a third of the studies reported implementing standard real-time
fMRI denoising steps, (b) significant room for improvement with regards to methods
reporting and (c) the need for methodological studies quantifying and comparing the
contribution of denoising steps to the neurofeedback signal quality. Advances in
rtfMRI-NF research depend on reproducibility of methods and results. Notably, a systematic
effort is needed to build up evidence that disentangles the various mechanisms
influencing neurofeedback effects. To this end, we recommend that future
rtfMRI-NF studies: (a) report implementation of a set of standard real-time fMRI denoising
steps according to a proposed COBIDAS-style checklist (https://osf.io/kjwhf/),
(b) ensure the quality of the neurofeedback signal by calculating and reporting
community-informed quality metrics and applying offline control checks and (c) strive
to adopt transparent principles in the form of methods and data sharing and support
of open-source rtfMRI-NF software. Code and data for reproducibility, as well as an
interactive environment to explore the study data, can be accessed at https://github.
com/jsheunis/quality-and-denoising-in-rtfmri-nf.