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No time for drifting: Comparing performance and applicability of signal detrending algorithms for real-time fMRI
- Source :
- NeuroImage, NeuroImage, Vol. 191 (2019) pp. 421-429
- Publication Year :
- 2019
- Publisher :
- Academic Press, 2019.
-
Abstract
- As a consequence of recent technological advances in the field of functional magnetic resonance imaging (fMRI), results can now be made available in real-time. This allows for novel applications such as online quality assurance of the acquisition, intra-operative fMRI, brain-computer-interfaces, and neurofeedback. To that aim, signal processing algorithms for real-time fMRI must reliably correct signal contaminations due to physiological noise, head motion, and scanner drift. The aim of this study was to compare performance of the commonly used online detrending algorithms exponential moving average (EMA), incremental general linear model (iGLM) and sliding window iGLM (iGLM(window)). For comparison, we also included offline detrending algorithms (i.e., MATLAB's and SPM8's native detrending functions). Additionally, we optimized the EMA control parameter, by assessing the algorithm's performance on a simulated data set with an exhaustive set of realistic experimental design parameters. First, we optimized the free parameters of the online and offline detrending algorithms. Next, using simulated data, we systematically compared the performance of the algorithms with respect to varying levels of Gaussian and colored noise, linear and non-linear drifts, spikes, and step function artifacts. Additionally, using in vivo data from an actual rte-fMRI experiment, we validated our results in a post hoc offline comparison of the different detrending algorithms. Quantitative measures show that all algorithms perform well, even though they are differently affected by the different artifact types. The iGLM approach outperforms the other online algorithms and achieves online detrending performance that is as good as that of offline procedures. These results may guide developers and users of real-time fMRI analyses tools to best account for the problem of signal drifts in real-time fMRI.
- Subjects :
- 2805 Cognitive Neuroscience
610 Medicine & health
ddc:616.0757
stimulation
moving average
Article
compensation
Image Processing, Computer-Assisted
Humans
functional mri
intraoperative mri
10064 Neuroscience Center Zurich
temporal stability
motion correction
Brain Mapping
signal drifts
real-time fmri
incremental glm
Brain
neurofeedback
human amygdala
Magnetic Resonance Imaging
ddc:616.8
bold-contrast
connectivity
10054 Clinic for Psychiatry, Psychotherapy, and Psychosomatics
10076 Center for Integrative Human Physiology
2808 Neurology
brain activation
570 Life sciences
biology
Artifacts
Algorithms
detrending
Subjects
Details
- Language :
- English
- ISSN :
- 10538119
- Database :
- OpenAIRE
- Journal :
- NeuroImage, NeuroImage, Vol. 191 (2019) pp. 421-429
- Accession number :
- edsair.pmid.dedup....f5973d036e26e723f0e42c3c2e3010a9