Group Averaging of fMRI Data

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Presentation transcript:

Group Averaging of fMRI Data

Goal of Group Analyses Determine the consistent pattern of brain responses across subjects

Goal of Group Analyses Determine the consistent pattern of brain responses across subjects Statistics determine how likely the data will generalize to new subjects

Goal of Group Analyses Determine the consistent pattern of brain responses across subjects Statistics determine how likely the data will generalize to new subjects Increase statistical power by pooling data across subjects

Goal of Group Analyses Determine the consistent pattern of brain responses across subjects Statistics determine how likely the data will generalize to new subjects Increase statistical power by pooling data across subjects Compare results between groups e.g. typical/patients; old/young; with/without intervention

Issues to consider when performing group analyses Statistical considerations of how to combine data across subjects When combining data across people should we use fixed effects vs. random effects analyses?

Issues to consider when performing group analyses Statistical considerations of how to combine data across subjects When combining data across people should we use fixed effects vs. random effects analyses? Anatomical considerations of how to combine data across subjects What is the appropriate common brain space to combine data across subjects?

Statistical Considerations

Fixed Effects: pool data across subjects by treating each subject as an independent sample and ignoring between-subjects differences

Fixed Effects: pool data across subjects by treating each subject as an independent sample and ignoring between-subjects differences Fixed effects analysis increases the statistical power At each voxel, the statistical analyses are done across data from all time points from all subjects, this increases the degrees of freedom and makes the statistical significance more robust.

Fixed Effects: pool data across subjects by treating each subject as an independent sample and ignoring between-subjects differences Fixed effects analysis increases the statistical power At each voxel, the statistical analyses are done across data from all time points from all subjects, this increases the degrees of freedom and makes the statistical significance more robust. Downsides: (1) cannot generalize to new subjects. (2) ignores differences across individuals

Random Effects: first analyze each subject’s data and then do a second order analysis taking into consideration between-subject effects

Random Effects: first analyze each subject’s data and then do a second order analysis taking into consideration between-subject effects Random effects analysis allows generalization to population level. At each voxel a statistic is computed separately for the data of each subject. Second-level statistics runs over these subject-specific scores.

Random Effects: first analyze each subject’s data and then do a second order analysis taking into consideration between-subject effects Random effects analysis allows generalization to population level. At each voxel a statistic is computed separately for the data of each subject. Second-level statistics runs over these subject-specific scores. Downsides: does not increase statistical power as much

Anatomical Considerations

Anatomical Considerations How similar are two brains? First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

Anatomical Considerations How similar are two brains? First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas! How do we align/compare different brains?

Anatomical Considerations How similar are two brains? First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas! How do we align/compare different brains? Is there a common brain space?

Anatomical Considerations How similar are two brains? First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas! How do we align/compare different brains? Is there a common brain space? At what spatial resolution do we want to compare brains?

Anatomical Considerations How similar are two brains? First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas! How do we align/compare different brains? Is there a common brain space? At what spatial resolution do we want to compare brains? What information is important to preserve when comparing brains?

Methods for registering brains We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

Methods for registering brains We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation We don’t care about anatomy, we care about preserving function across individuals First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

Methods for registering brains We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation We don’t care about anatomy, we care about preserving function across individuals Anatomy matters! We care about preserving functional-structural relationships across individuals First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

using an affine transformation We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation Affine transformation to Talairach & Tournoux Brain (1988) or to the MNI 305 template (Evans 1993) First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

Affine transformation to the Taliarach vs. MNI 305 brain

Taliarach & Tournoux brain (1988)

The MNI 305 brain Alan Evans from the Montreal Neurological institute (MNI) wanted to define a brain that is more representative of the population. Evans and colleagues created a template that was approximately matched to the Talairach brain in a two-stage procedure. http://www.nil.wustl.edu/labs/kevin/man/answers/mnispace.html

The MNI 305 brain Alan Evans from the Montreal Neurological institute (MNI) wanted to define a brain that is more representative of the population. Evans and colleagues created a template that was approximately matched to the Talairach brain in a two-stage procedure. First, they took 241 normal MRI scans, and manually defined various landmarks, in order to identify a line very similar to the AC-PC line, and the edges of the brain. Each brain was scaled to match the landmarks to equivalent positions on the Talairach atlas. http://www.nil.wustl.edu/labs/kevin/man/answers/mnispace.html

The MNI 305 brain Alan Evans from the Montreal Neurological institute (MNI) wanted to define a brain that is more representative of the population. Evans and colleagues created a template that was approximately matched to the Talairach brain in a two-stage procedure. First, they took 241 normal MRI scans, and manually defined various landmarks, in order to identify a line very similar to the AC-PC line, and the edges of the brain. Each brain was scaled to match the landmarks to equivalent positions on the Talairach atlas. Then they then took 305 normal MRI scans (all right handed, 239 M, 66 F, age 23.4 +/- 4.1), and used an automated 9 parameter linear algorithm to match the brains to the average of the 241 brains that had been matched to the Talairach atlas. From this they generated an average of 305 brain scans thus transformed - the MNI305 (Evans 1993) http://www.nil.wustl.edu/labs/kevin/man/answers/mnispace.html

The MNI 305 brain Alan Evans from the Montreal Neurological institute (MNI) wanted to define a brain that is more representative of the population. Evans and colleagues created a template that was approximately matched to the Talairach brain in a two-stage procedure. First, they took 241 normal MRI scans, and manually defined various landmarks, in order to identify a line very similar to the AC-PC line, and the edges of the brain. Each brain was scaled to match the landmarks to equivalent positions on the Talairach atlas. Then they then took 305 normal MRI scans (all right handed, 239 M, 66 F, age 23.4 +/- 4.1), and used an automated 9 parameter linear algorithm to match the brains to the average of the 241 brains that had been matched to the Talairach atlas. From this they generated an average of 305 brain scans thus transformed - the MNI305 (Evans 1993) In addition, one of the MNI lab members, Colin Holmes, was scanned 27 times, and the scans were coregistered and averaged to create a very high detail MRI dataset of one brain. This average was also matched to the MNI305, to create the image known as "colin27". http://www.nil.wustl.edu/labs/kevin/man/answers/mnispace.html

Spatial normalization: Talairach transformation 1. Rotation of 3D data set into the AC-PC plane (AC = anterior commissure, PC = posterior commissure) AC PC

Spatial normalization: Talairach transformation 1. Rotation of 3D data set into the AC-PC plane (AC = anterior commissure, PC = posterior commissure) 2. Selection of the (6) extreme points of the cerebrum and definition of 12 subvolumes AC PC

Spatial normalization: Talairach transformation 1. Rotation of 3D data set into the AC-PC plane (AC = anterior commissure, PC = posterior commissure) 2. Selection of the (6) extreme points of the cerebrum and definition of 12 subvolumes 3. Scaling of the 3D data set into the dimension of the standard brain of the Talairach and Tornoux atlas (1988) using a piecewise affine and continuous transformation for each of the 12 defined subvolumes AC PC

Talairach Normalization Align slices to brain volume Transformation to AC-PC plane (rigid body) Subvolume scaling to fit into Talairach proportional grid (piecewise linear) Align Slices to Brain Volume Affine body transformation to AC-PC Plane Talirach Normalization

Problem: Affine transformation such as the Talairach transformation does not preserve functional-anatomical relations Frost & Goebel 2011

Affine Transformation of Brains to the Talairach Space (or to MNI Template) Pro: Widespread acceptance Cons: Does not respect anatomy Crude alignment; requires spatial smoothing, which introduces severe problems like blurring of functionally distinct areas and the suppression of significant small areas There are two main approaches to provide a spatial correspondency between different brains:

Methods for registering brains We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation Affine transformation to Talairach & Tournoux Brain (1998) or to the MNI 305 template (Evans 1993) We don’t care about anatomy, we care about preserving function across individuals Region of Interest (ROI) analysis (Kanwisher 1997) Hyperalignment (Haxby 2011) Anatomy matters! We care about preserving functional-structural relationships across individuals Cortex-based alignment (Fischl 1999) to FreeSurfer average brain or average of your subjects (Frost & Goebel 2011) Non linear transformation to MNI ICBM 152 or MNI-Colins27 brain (http://nist.mni.mcgill.ca/?page_id=714) First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

Methods for registering brains We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation Affine transformation to Talairach & Tournoux Brain (1998) or to the MNI 305 template (Evans 1993) We don’t care about anatomy, we care about preserving function across individuals Region of Interest (ROI) analysis (Kanwisher 1997) Hyperalignment (Haxby 2011) First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

Region-Of-Interest (ROI) Approach Kanwisher 1997, 2017 Use (a) localizer run(s) to find a region of interest (e.g. primary auditory cortex).

Region-Of-Interest (ROI) Approach Kanwisher 1997, 2017 Use (a) localizer run(s) to find a region of interest (e.g. primary auditory cortex). Extract time course information from that region in separate independent runs.

Region-Of-Interest (ROI) Approach Kanwisher 1997, 2017 Use (a) localizer run(s) to find a region of interest (e.g. primary auditory cortex). Extract time course information from that region in separate independent runs. See if the trends in that region are statistically significant. Because the runs that are used to generate the area are independent from those used to test the hypothesis, liberal statistics can be used.

Region-Of-Interest (ROI) Approach Kanwisher 1997, 2017 Use (a) localizer run(s) to find a region of interest (e.g. primary auditory cortex). Extract time course information from that region in separate independent runs. See if the trends in that region are statistically significant. Because the runs that are used to generate the area are independent from those used to test the hypothesis, liberal statistics can be used. Apply to group analysis by using subject-specific ROI definitions.

All maps thresholded at t > 3 Precision: use consistent functional and anatomical criteria across subjects Subject 1 Subject 2 Subject 4 hV4 VO1 VO2 Subject 3 mFus pFus IOG ITG OTS hMT+ > All maps thresholded at t > 3 No spatial smoothing > faces & limbs overlap Weiner & Grill-Spector, 2010, 2012, 2013, 2014

ROI Analyses Pros: Optimal statistical analysis possible Cons: Not easily applicable in complex cognitive tasks, focuses on known areas, not automatic and depends on criteria to identify regions (threshold, contrast etc.) There are two main approaches to provide a spatial correspondency between different brains:

Methods for registering brains We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation Affine transformation to Talairach & Tournoux Brain (1998) or to the MNI 305 template (Evans 1993) We don’t care about anatomy, we care about preserving function across individuals Region of Interest (ROI) analysis (Kanwisher 1997) Hyperalignment (Haxby 2011) Anatomy matters! We care about preserving functional-structural relationships across individuals Cortex-based alignment (Fischl 1999) to FreeSurfer average brain or average of your subjects (Frost & Goebel 2011) Non linear transformation to MNI ICBM 152 or MNI-Colins27 brain (http://nist.mni.mcgill.ca/?page_id=714) First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!

Cortex Based Alignment (CBA) Fischl 1999

Cortex Based Alignment (CBA) Fischl 1999

Cortex Based Alignment (CBA) increases between subject consistency of functional ROIs as well as preserves functional-structural relationships Frost & Goebel 2011

Cortex Based Alignment (CBA) Pros: Maintains anatomical correspondence of regions Adding small sulci to this process may further improve the alignment between function and anatomy Cons: The pattern of cortical folding may vary across individuals Depends on an assumption that there is a tight correspondence between function and anatomy, but this correspondence may vary across the brain There are two main approaches to provide a spatial correspondency between different brains:

MNI: ICBM 152 Nonlinear atlases (2009) http://nist.mni.mcgill.ca A number of unbiased non-linear averages of the MNI152 database have been generated that combines the attractions of both high-spatial resolution and signal-to-noise while not being subject to the vagaries of any single brain (Fonov et al., 2011). The procedure involved multiple iterations of a process where, at each iteration, individual native MRIs were non-linearly fitted to the average template from the previous iteration, beginning with the MNI152 linear template.

http://stnava.github.io/ANTs/

Methods for registering brains We don’t care about fine details we’ll put brains into common anatomical volume using an affine transformation Affine transformation to Talairach & Tournoux Brain (1998) or to the MNI 305 template (Evans 1993) We don’t care about anatomy, we care about preserving function across individuals Region of Interest (ROI) analysis (Kanwisher 1997) Hyperalignment (Haxby 2011) Anatomy matters! We care about preserving functional-structural relationships across individuals Cortex-based alignment (Fischl 1999) to FreeSurfer average brain or average of your subjects (Frost & Goebel 2011) Non linear transformation to MNI ICBM 152 or MNI-Colins27 brain (http://nist.mni.mcgill.ca/?page_id=714) First, one has to ask: what is the reason for applying a new approach over and above the well known methods? The general problem that has to be solved is how one is able to compare two different brains? If this comparison is not done very careful, there is actually a danger of comparing apples with bananas!