Beta Series Analysis in SPM

The following is a script to run beta series analysis in SPM; which, conceptually, is identical to beta series analysis in AFNI, just made more complicated by the use of Matlab commands, many of which I would otherwise remain totally ignorant of.

Also, if you believe that I did this on my own, you are a scoundrel and a fool. Virtually all of the code is from my colleague Derek Nee, a postdoc who used to work in my lab and who remains my superior in all things, scientific and otherwise. He also once got me with the old "If you say gullible slowly, it sounds like orange" joke.

In any case, all that I did was repackage it into a function to be more accessible by people outside of our lab. You may see a couple snippets of code that are useful outside of just doing beta series analysis; for example, the spm_get_data command, which can be used for parameter extraction from the command line without using marsbar. Also note that the script assumes that each trial for a condition has been labeled separately with the regressor name followed by a "_" and then the occurrence of the trial. So, for example, if I were looking at 29 instances of pressing the left button, and the regressor name was LeftButtonPress, I would have LeftButtonPress_1, LeftButtonPress_2, LeftButtonPress_3...LeftButtonPress_29.

Obviously, this is very tedious to do by hand. The Multiple Conditions option through the SPM GUI for setting up 1st level analyses is indispensable; but to cover that is another tutorial, one that will probably cross over into our discussion of GLMs.

The script:

function DoBetaSeries(rootdir, subjects, spmdir, seedroi, Conds, MapNames)
% function BetaSeries(rootdir, subjects, spmdir, seedroi, Conds, MapNames)
%  rootdir  - Path to where subjects are stored
%  subjects - List of subjects (can concatenate with brackets)
%  spmdir   - Path to folder containing SPM file
%  seedroi  - Absolute path to file containing ROI in NIFTI format
%  Conds    - List of conditions for beta series analysis
%  MapNames - Output for list of maps, one per Conds cell
%   Example use:
%       BetaSeries('/data/study1/fmri/', [101 102 103],
%       'model/BetaSeriesDir/', '/data/study1/Masks/RightM1.nii',
%       {'TapLeft'}, {'TapLeft_RightM1'})
%       conditions to be averaged together should be placed together in a cell
%       separate correlation maps will be made for each cell
%       Conds = {'Incongruent' 'Congruent' {'Error' 'Late'}}; 
%       For MapNames, there should be one per Conds cell above
%       e.g., with the Conds above, MapNames = {'Incongruent_Map',
%       'Congruent_Map', 'Error_Late_Map'}
%       Once you have z-maps, these can be entered into a 2nd-level
%       1-sample t-test, or contrasts can be taken between z-maps and these
%       contrasts can be taken to a 1-sample t-test as well.

if nargin < 5
 disp('Need rootdir, subjects, spmdir, seedroi, Conds, MapNames. See "help BetaSeries" for more information.')

%Find XYZ coordinates of ROI
Y = spm_read_vols(spm_vol(seedroi),1);
indx = find(Y>0);
[x,y,z] = ind2sub(size(Y),indx);
XYZ = [x y z]';

%Find each occurrence of a trial for a given condition
%These will be stacked together in the Betas array
for i = 1:length(subjects)
    subj = num2str(subjects(i));
    disp(['Loading SPM for subject ' subj]);
    %Can change the following line of code to CD to the directory
    %containing your SPM file, if your directory structure is different
    cd([rootdir subj filesep spmdir]);
    load SPM;
    for cond = 1:length(Conds)
        Betas = [];
        currCond = Conds{cond};
        if ~iscell(currCond)
            currCond = {currCond};
        for j = 1:length(SPM.Vbeta) 
            for k = 1:length(currCond)
                if ~isempty(strfind(SPM.Vbeta(j).descrip,[currCond{k} '_'])) 
                    Betas = strvcat(Betas,SPM.Vbeta(j).fname);

    %Extract beta series time course from ROI
    %This will be correlated with every other voxel in the brain
    if ischar(Betas)
        P = spm_vol(Betas);

    est = spm_get_data(P,XYZ);
    est = nanmean(est,2);

        %----Do beta series correlation between ROI and rest of brain---%

            MapName = MapNames{cond};
            disp(['Performing beta series correlation for ' MapName]);
            Vin = spm_vol(Betas);
            nimgo = size(Vin,1);
            nslices = Vin(1).dim(3);

            % create new header files
            Vout_r = Vin(1);   
            Vout_p = Vin(1);
            [pth,nm,xt] = fileparts(deblank(Vin(1).fname));
            Vout_r.fname = fullfile(pth,[MapNames{cond} '_r.img']);
            Vout_p.fname = fullfile(pth,[MapNames{cond} '_p.img']);

            Vout_r.descrip = ['correlation map'];
            Vout_p.descrip = ['p-value map'];

            Vout_r.dt(1) = 16;
            Vout_p.dt(1) = 16;

            Vout_r = spm_create_vol(Vout_r);
            Vout_p = spm_create_vol(Vout_p);

            % Set up large matrix for holding image info
            % Organization is time by voxels
            slices = zeros([Vin(1).dim(1:2) nimgo]);
            stack = zeros([nimgo Vin(1).dim(1)]);
            out_r = zeros(Vin(1).dim);
            out_p = zeros(Vin(1).dim);

            for i = 1:nslices
                B = spm_matrix([0 0 i]);
                %creates plane x time
                for j = 1:nimgo
                    slices(:,:,j) = spm_slice_vol(Vin(j),B,Vin(1).dim(1:2),1);

                for j = 1:Vin(1).dim(2)
                    stack = reshape(slices(:,j,:),[Vin(1).dim(1) nimgo])';
                    [r p] = corr(stack,est);
                    out_r(:,j,i) = r;
                    out_p(:,j,i) = p;


                Vout_r = spm_write_plane(Vout_r,out_r(:,:,i),i);
                Vout_p = spm_write_plane(Vout_p,out_p(:,:,i),i);


            %Convert correlation maps to z-scores
            %NOTE: If uneven number of trials in conditions you are
            %comparing, leave out the "./(1/sqrt(n-3)" term in the zdata
            %variable assignment, as this can bias towards conditions which
            %have more trials
                disp(['Converting correlation maps for subject ' subj ', condition ' MapNames{cond} ' to z-scores'])
                P = [MapNames{cond} '_r.img'];
                n = size(Betas,1);
                Q = MapNames{cond};
                Vin = spm_vol([MapNames{cond} '_r.img']);

                % create new header files
                Vout = Vin;   

                [pth,nm,xt] = fileparts(deblank(Vin(1).fname));
                Vout.fname = fullfile(pth,[Q '_z.img']);

                Vout.descrip = ['z map'];

                Vout = spm_create_vol(Vout);

                data = spm_read_vols(Vin);
                zdata = atanh(data)./(1/sqrt(n-3));



This can either be copied and pasted into a script, or downloaded as a .m file here.