% Script to generate GLMs with the matched case info and volume statistics % from both MRI and photo segmentations clear all %% load data removalLevel = 1; GLM_RESULTS = ['/home/acasamitjana/Data/UWphoto/PowerAnalysis/GLM/GLMresults_removalLevel_' num2str(removalLevel) '_new.mat']; load(GLM_RESULTS, 'MRI_GLM_resultsStruct', 'Hrd_GLM_resultsStruct', 'Sft_GLM_resultsStruct', 'Design_mat'); X=Design_mat; clear Design_mat; ALPHA = 0.05; POWER = 0.8; N_COVARIATES = 4; GAMMAX = inv(X'*X); %% MRI power analysis disp('MRI analysis') PA_MRI.ALPHA = ALPHA; PA_MRI.POWER = POWER; N_MRI = MRI_GLM_resultsStruct.N_total; MRI_results = MRI_GLM_resultsStruct.full; volume_fields = fieldnames(MRI_results); MRI_col = zeros(length(volume_fields),1); for it_volume=1:length(volume_fields) stats = MRI_results.(volume_fields{it_volume}).stats; beta = stats.beta(3); gammaX=GAMMAX(3,3); sigma2 = sum(stats.resid.*stats.resid); [nout, tval, pval, power] = computeSampleSize(0, beta, sigma2, gammaX, N_COVARIATES, POWER, ALPHA); PA_MRI.full.(volume_fields{it_volume}).power = power; PA_MRI.full.(volume_fields{it_volume}).pval = pval; PA_MRI.full.(volume_fields{it_volume}).tval = tval; PA_MRI.full.(volume_fields{it_volume}).sample_size = nout; % if pval>ALPHA % disp(['MRI_ALPHA_' volume_fields{it_volume} ]) % end % if powerALPHA % disp(['Hard_ALPHA_' volume_fields{it_volume} ]) % end % if powerALPHA % disp(['Soft_ALPHA_' volume_fields{it_volume} ]) % end % if power