» Articles » PMID: 16099178

Comparison of FMRI Motion Correction Software Tools

Overview
Journal Neuroimage
Specialty Radiology
Date 2005 Aug 16
PMID 16099178
Citations 85
Authors
Affiliations
Soon will be listed here.
Abstract

Motion correction of fMRI data is a widely used step prior to data analysis. In this study, a comparison of the motion correction tools provided by several leading fMRI analysis software packages was performed, including AFNI, AIR, BrainVoyager, FSL, and SPM2. Comparisons were performed using data from typical human studies as well as phantom data. The identical reconstruction, preprocessing, and analysis steps were used on every data set, except that motion correction was performed using various configurations from each software package. Each package was studied using default parameters, as well as parameters optimized for speed and accuracy. Forty subjects performed a Go/No-go task (an event-related design that investigates inhibitory motor response) and an N-back task (a block-design paradigm investigating working memory). The human data were analyzed by extracting a set of general linear model (GLM)-derived activation results and comparing the effect of motion correction on thresholded activation cluster size and maximum t value. In addition, a series of simulated phantom data sets were created with known activation locations, magnitudes, and realistic motion. Results from the phantom data indicate that AFNI and SPM2 yield the most accurate motion estimation parameters, while AFNI's interpolation algorithm introduces the least smoothing. AFNI is also the fastest of the packages tested. However, these advantages did not produce noticeably better activation results in motion-corrected data from typical human fMRI experiments. Although differences in performance between packages were apparent in the human data, no single software package produced dramatically better results than the others. The "accurate" parameters showed virtually no improvement in cluster t values compared to the standard parameters. While the "fast" parameters did not result in a substantial increase in speed, they did not degrade the cluster results very much either. The phantom and human data indicate that motion correction can be a valuable step in the data processing chain, yielding improvements of up to 20% in the magnitude and up to 100% in the cluster size of detected activations, but the choice of software package does not substantially affect this improvement.

Citing Articles

Processing, evaluating, and understanding FMRI data with afni_proc.py.

Reynolds R, Glen D, Chen G, Saad Z, Cox R, Taylor P Imaging Neurosci (Camb). 2024; 2:1-52.

PMID: 39575179 PMC: 11576932. DOI: 10.1162/imag_a_00347.


Inducing representational change in the hippocampus through real-time neurofeedback.

Peng K, Wammes J, Nguyen A, Iordan C, Norman K, Turk-Browne N Philos Trans R Soc Lond B Biol Sci. 2024; 379(1915):20230091.

PMID: 39428880 PMC: 11491844. DOI: 10.1098/rstb.2023.0091.


Processing, evaluating and understanding FMRI data with afni_proc.py.

Reynolds R, Glen D, Chen G, Saad Z, Cox R, Taylor P ArXiv. 2024; .

PMID: 39398207 PMC: 11468194.


Moving beyond processing- and analysis-related variation in resting-state functional brain imaging.

Li X, Esper N, Ai L, Giavasis S, Jin H, Feczko E Nat Hum Behav. 2024; 8(10):2003-2017.

PMID: 39103610 DOI: 10.1038/s41562-024-01942-4.


DeepRetroMoCo: deep neural network-based retrospective motion correction algorithm for spinal cord functional MRI.

Mobarak-Abadi M, Mahmoudi-Aznaveh A, Dehghani H, Zarei M, Vahdat S, Doyon J Front Psychiatry. 2024; 15:1323109.

PMID: 39006826 PMC: 11239515. DOI: 10.3389/fpsyt.2024.1323109.