Introduction to Functional and Anatomical Brain MRI Research Dr. Henk Cremers Dr. Sarah Keedy 1.

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Presentation transcript:

Introduction to Functional and Anatomical Brain MRI Research Dr. Henk Cremers Dr. Sarah Keedy 1

2 MRI: Protons align in strong magnetic field Applying another magnetic field tips the protons in orthogonal direction Protons start to return to their initial position = measurable signal With clever pulse sequences we can measure the signal “step-by-step” from different locations in the brain, and reconstruct the signal into an image F(MRI) Because deoxy and oxyhemoglobin have different magnetic properties we can measure oxygen consumption (~brain activity) Last week: MRI physics - Summary

Course Overview 3 o Week 1: Introduction o Week 2: Processing of FMRI data * o Week 3: Statistical Analysis of fMRI data o Week 4: Planning MRI Research to address your scientific question o Week 5: Interpretation, limitations and new applications of fMRI * some Illustrations from Martin Lindquist’ Coursera Course & wagerlab

4 Data Acquisition Experimental Design Scanning Parameters Reconstruction Slice-time Correction Motion Correction Co-registration Normalization (Tissue Classification) Smoothing Preprocessing Statistical Analysis General Linear Model Subject-level – Parameter estimation Group Level – Hypothesis testing Advanced Analysis Connectivity (Network approaches) Machine Learning Quality Assurance/Control

….Before preprocessing 5 Quality Control 1: Check the images for distortions Susceptibility artifacts (due to magnetic field inhomogeneity) Signal drop out in the OFC

….Before preprocessing 6 Quality Control 1: Check the images for distortions Susceptibility artifacts (due to magnetic field inhomogeneity) Signal drop out in the OFC K-space artifacts (image reconstruction) “stripes” in the images.

….Before preprocessing 7 Quality Control 1: Check the images for distortions Susceptibility artifacts (due to magnetic field inhomogeneity) Signal drop out in the OFC K-space artifacts; “stripes” in the images. Spikes (gradient artifacts)

….Before preprocessing 8 Quality Control 1: Check the images for distortions Susceptibility artifacts (due to magnetic field inhomogeneity) Signal drop out in the OFC K-space artifacts; “stripes” in the images. Spikes (gradient artifacts) Ghosting; wrap around in images

….Before preprocessing 9 Quality Control 1: Check the images for distortions Although it is important to always look at the images before you start analyzing: Artifacts are not always easy to detect by visual inspection It is not always clear what to do when you have found an artifact There are some toolboxes that help detect artifacts and set criteria for correction of exclusion of data (NYU toolbox, ART; artifact repair)

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Slice-time correction: Correcting for differences in the acquisition time of the BOLD signal of different slices.

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Slice-time correction: Correcting for differences in the acquisition time of the BOLD signal for different slices.

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Slice-time correction: Correcting for difference in the acquisition time of the BOLD signal for different slices. Important for event-related designs (not block designs) Only apply if you are very sure about the acquisition order of the slices (ascending/descending/interleaved)

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Head movements during an experiment can (severely) disrupt the signal you measure (As always) better prevent than correct -- good instructions to subjects & eg. use pads to minimize head movement There are 2 main ways to correct for the head motion Preprocessing: Realignment (overlay different volumes properly) Statistical model: Inclusion of motion parameters in the model (week 3)

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Realignment

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Realignment

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Realignment

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Linear Transformations: Rigid body – translation and rotation Similarity – translation, rotation and a single global scaling Affine – translation, rotation, scaling, shearing

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Quality Control 2: Check the motion parameters. max 3 mm (voxel size) translation in any direction Look for large sudden chances The (spm) program ART can “automatically” check this.

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Co-registration is the process of aligning different type of images (eg. structural and functional) This helps later transformation to a standard coordinate system (normalization) This is a more complicated process that realignment because the images (1) do not have the same signal intensity in the same areas (2) differ in shape. This involves optimizing a cost function, usually mutual information It may be necessary to first “skull-strip” the structural image (eg. FSL ‘s BET)

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Co-registration is the process of aligning different type of images (eg. structural and functional) Quality Control 3: Check if the functional and structural images overlap (eg. use spm Check Reg or FSL view)

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Tissue classification: determining from a structural image, white matter, grey matter and CSF If the classification is accurate, this process will also produce accurate normalization parameters. Grey matter maps are especially of interest, because they can be used for Voxel Based Morphometrty (VBM) analysis.

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Normalization: Brains are substantially different in size and shape; in order to compare different brains of different people they have to be warped (stretch, squeeze) to the same standard space.

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Normalization: Brains are substantially different in size and shape; in order to compare different brains they have to be warped (stretch, squeeze) to the same standard space. This process is similar to co-registration. Another advantage is that you can use standard stereotaxic space (Talaraich; MNI). … The algorithm behind normalization can get “stuck” into a local minima; can be avoided by aligning the images manually beforehand (setting the origin) Quality Control 4: Check if the normalized images overlap with a template image (eg. use SPM check reg or FSL view)

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Filtering Filtering: (1) Spatial Smoothing: Blurring of an image; to increase signal-to-noise, validate distribution assumptions (random field theory) and remove artifacts. The amount of smoothing is expressed in the Full-Width-Half-Maximum (FWHM) of the smoothing kernel (usually around 4-10 mm) …decreases the resolution (and anatomical specificity)

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Filtering Filtering: (1) Spatial Smoothing:

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Filtering Filtering (2)Temporal Domain Remove noise frequencies from the time-series data High pass filter (remove low frequency drifts) Low pass (to remove higher frequency “noise” –eg. respiration, heart rate) In SPM, the temporal filtering is actually done at the statistical model level (topic of week 3) Quality control 5: Always be aware of the frequency of your task, you don't want to filter that out the signal you are interested in (can be checked with SPM check design). Make sure you present stimuli often enough, eg. don’t present one type of stimuli just once or twice in a scanning session (topic of week 4).

Slice-time Correction * Motion Correction * Image Registration * Classification * Normalization * Smoothing Preprocessing: Always go for default options, unless there is a specific reason to change them Check the output carefully. Sample SPM preprocessing steps: Realign: estimate & reslice (functional images) Co-register Reference: Mean image of realignment Source: Structural Segment (defaults) Normalize: realigned functional images to MNI (use parameters from segmentation) Smooth. FWHM = QC shortcut: check if the normalized functional images roughly overlap with a template (eg. MNI) brain.