| Literature DB >> 18191585 |
Russell A Poldrack1, Paul C Fletcher2, Richard N Henson3, Keith J Worsley4, Matthew Brett3, Thomas E Nichols5.
Abstract
In this editorial, we outline a set of guidelines for the reporting of methods and results in functional magnetic resonance imaging studies and provide a checklist to assist authors in preparing manuscripts that meet these guidelines.Entities:
Mesh:
Year: 2007 PMID: 18191585 PMCID: PMC2287206 DOI: 10.1016/j.neuroimage.2007.11.048
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556
| All designs | |
| Number of blocks, trials or experimental units per session and/or subject | |
| Length of each trial and interval between trials | |
| If variable interval, report the mean and range of ISIs and how they were distributed | |
| Blocked designs | |
| Length of blocks | |
| Event-related designs | |
| Was the design optimized for efficiency, and if so, how? | |
| Mixed designs | |
| Report correlation between block and event regressors |
| Instructions | |
| What were subjects asked to do? | |
| Stimuli | |
| What were the stimuli and how many were there? | |
| Did specific stimuli repeat across trials? |
| If the experiment has multiple conditions, what are the specific planned comparisons, or is an omnibus ANOVA used? |
| Number of subjects | |
| Age (mean and range) | |
| Handedness | |
| Number of males/female | |
| Additional inclusion/exclusion criteria, if any (including specific sampling strategies that limit inclusion to a specific group, such as laboratory members) | |
| If any subjects were scanned but then rejected from analysis after data collection, state how many and reasons for rejection | |
| For group comparisons, what variables (if any) were equated across groups? |
| State which IRB approved the protocol |
| How was behavioral performance measured (e.g., response time, accuracy)? |
| MRI system: | |
| Manufacturer, field strength (in Tesla), model name | |
| MRI acquisition: | |
| Number of experimental sessions and volumes acquired per session | |
| Pulse sequence type (gradient/spin echo, EPI/spiral) | |
| If used, parallel imaging parameters (e.g., method [SENSE/GRAPPA] and acceleration factor) | |
| Field of view, matrix size, slice thickness, interslice skip | |
| Acquisition orientation (axial, sagittal, coronal, oblique; if axials co-planar with AC–PC, the volume coverage in terms of | |
| Whole brain? if not, state area of acquisition (preferably with a figure) | |
| Order of acquisition of slices (sequential or interleaved) | |
| TE/TR/flip angle |
| For each piece of software used, give the version number (or, if no version number is available, date of last application of updates) | |
| If any subjects required different processing operations or settings in the analysis, those differences should be specified explicitly |
| Specify order of preprocessing operations | |
| Describe any data quality control measures | |
| Unwarping of B0 distortions | |
| Slice timing correction | |
| Reference slice and type of interpolation used (e.g., “Slice timing correction to the first slice as performed, using SPM5's Fourier phase shift interpolation”) | |
| Motion correction | |
| Reference scan, image similarity metric, type of interpolation used, degrees-of-freedom (if not rigid body) and, ideally, optimization method, e.g., “Head motion corrected with FSL's MCFLIRT by maximizing the correlation ratio between each timepoint and the middle volume, using linear interpolation.” | |
| Motion susceptibility correction used |
| Intersubject registration method used | |
| Illustration of the voxels present in all subjects (“mask image”) can be helpful, particularly for restricted fields of view (to illustrate overlap of slices across all subjects). Better still would be an indication of average BOLD sensitivity within each voxel in the mask | |
| Transformation model and optimization | |
| Transformation model (linear/affine, nonlinear), type of any non-linear transformations (polynomial, discrete cosine basis), number of parameters (e.g., 12 parameter affine, 3 × 2 × 3 DCT basis), regularization, image-similarity metric, and interpolation method | |
| Object image information (image used to determine transformation to atlas) | |
| Anatomical MRI? Image properties (see above) | |
| Co-planar with functional acquisition? | |
| Functional acquisition co-registered to anatomical? if so, how? | |
| Segmented gray image? | |
| Functional image (single or mean) | |
| Atlas/target information | |
| Brain image template space, name, modality and resolution | |
| e.g., “FSL's MNI Avg152, T1 2 × 2 × 2 mm”; “SPM2's MNI gray matter template 2 × 2 × 2 mm”) | |
| Coordinate space | |
| Typically MNI, Talairach, or MNI converted to Talairach | |
| If MNI converted to Talairach, what method? e.g., Brett's mni2tal? | |
| How were anatomical locations (e.g., gyral anatomy, Brodmann areas) determined? (e.g., paper atlas, Talairach Daemon, manual inspection of individuals' anatomy, etc.) |
| Size and type of smoothing kernel (provide justification for size; e.g., for a group study, “12 mm FHWM Gaussian smoothing applied to ameliorate differences in intersubject localization”; for single subject fMRI “6 mm FWHM Gaussian smoothing used to reduce noise”) |
| For novel methods that are not described in detail in a separate paper, provide explicit description and validation of method either in the text or as an appendix |
| Statistical model and estimation method | |
| Multiple regression is most common statistical model | |
| Estimation methods are typically ordinary least squares (OLS), OLS with adjustment for autocorrelation (i.e., variance correction and use of effective degrees-of-freedom), or generalized least squares (i.e., OLS after whitening) | |
| Block/epoch-based or event-related model | |
| Hemodynamic response function (HRF) | |
| Assumed HRF model (e.g., SPM's canonical difference of gammas HRF; FSL's canonical gamma HRF), HRF basis (list basis set) or estimated HRF (supply methods for estimating HRF)? | |
| Additional regressors used (e.g., temporal derivatives, motion, behavioral covariates) | |
| Any orthogonalization of regressors | |
| Drift modeling/high-pass filtering (e.g., “DCT with cut off of | |
| Autocorrelation model type (e.g., AR(1), AR(1) + WN, or arbitrary autocorrelation function), and whether global or local. | |
| (e.g., for SPM2/SPM5, ‘Approximate AR(1) autocorrelation model estimated at omnibus | |
| Contrast construction | |
| Exactly what terms are subtracted from what? Define these in terms of task or stimulus conditions (e.g., using abstract names such as AUDSTIM, VISSTIM) instead of underlying psychological concepts |
| Statistical model and estimation method, inference type (mixed/random effects or fixed), e.g., “Mixed effects inference with one sample | |
| If fixed effects inference used, justify | |
| If more than 2-levels, describe the levels and assumptions of the model (e.g., are variances assumed equal between groups) | |
| Repeated measures? | |
| If multiple measurements per subject, list method to account for within subject correlation, exact assumptions made about correlation/variance | |
| e.g., SPM: “Within-subject correlation estimated at |
| Type of search region for analysis, and the volume in voxels or CC | |
| If not whole brain, state how region was determined; method for constructing region should be independent of present statistic image | |
| If threshold used for inference and threshold used for visualization in figures is different, clearly state so and list each | |
| Explicitly state if inferences are corrected for multiple comparisons, and if so, what method and over what region | |
| If correction is limited to a small volume, the method for selecting the region should be stated explicitly | |
| If no formal multiple comparisons method is used, the inference must be explicitly labeled “uncorrected” | |
| Voxel-wise significance? Corrected for Family-wise error (FWE) or false discovery rate (FDR)? | |
| If FWE found by random field theory list the smoothness in mm FWHM and the RESEL count | |
| If FWE found by simulation (e.g., AFNI AlphaSim), provide details of parameters for simulation | |
| If not a standard method, specify the method for finding significance (e.g., “Custom in-lab software was used to construct statistic maps and thresholded at FDR< 0.05 ( | |
| Cluster-wise significance | |
| State cluster-defining threshold (e.g., | |
| State the corrected cluster significance level | |
| (e.g., “Statistic images were assessed for cluster-wise significance using a cluster-defining threshold of | |
| If significance determined with random field theory, then smoothness and RESEL count must be supplied | |
| Correction for multiple planned comparisons within each voxel? | |
| False negative discussion | |
| Any discussion of failure to reject the null hypothesis (e.g., lack of activation in a particular region) should be accompanied by SNR or effect size of the actually observed effect (allows reader to infer power to estimate an effect) |
| How were ROIs defined | |
| (e.g., functional versus anatomical localizer)? | |
| How was signal extracted within ROI? | |
| (e.g., average parameter estimates, FIR deconvolution?) | |
| If percent signal change reported, how was scaling factor determined (e.g., height of block regressor or height of isolated event regressor)? Is change relative to voxel-mean, or whole-brain mean? |
| What statistical map is the figure/table based upon (e.g., | |
| Thresholds used to create the image or figure (intensity and cluster extent, where appropriate) | |
| What is the underlying anatomical image (e.g., average anatomy, template image)? | |
| Any additional operations (e.g., masking out parts of the image)? | |
| Locations in stereotactic space (with the space described specifically) | |
| Statistics for each cluster (including maximum and cluster extent) | |
| Source of anatomical labels (e.g., atlas, automated labeling method) |