%% Rest data preprocessing step.. %%%%%%%%%%%%%%% About Markers %%%%%%%%%%%%%%%%%%%% % S 1 = Warning Cue % S 2 = GO Cue % get the EEGLAB and have Brain Vision import addon %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% % Ref is Pz and Fs = 500 Hz clear; clc; close all; cwd = pwd; addpath(cwd); datalocation= [cwd '\ALL_DATA\RAW_DATA\']; % Data are here %%% load subject and Behaviour info from the excel sheet [~, ~, SubjInfo] = xlsread([cwd '\Patients_MS.xlsx'],'AllPedaling'); savelocation= [cwd '\ALL_DATA\ALL_Processed_Data\']; % Data go here cd(savelocation); % add eeglab to the path p = genpath('eeglab13_4_4b'); addpath(p); %% for nn = 1:size(SubjInfo,1) type = SubjInfo{nn,1}; subj = SubjInfo{nn, 2}; disp([type,num2str(subj)]); EEG = pop_loadbv(datalocation,[type,num2str(subj),'.vhdr'], [], []); % Edit the event code del = 0; for b = 1:size(EEG.event,2) if strcmp(EEG.event(b-del).type, 'boundary') EEG.event(b-del) = []; del = del+1; end end % get the time difference: S1 ---> S2 TimeDiff = (diff([EEG.event.latency])/EEG.srate)'; TimeDiff = ([0; TimeDiff]); for b = 1:size(EEG.event,2); EEG.event(b).TimeDiff = TimeDiff(b); end % Epoch data on the basis of GO cue EEG = pop_epoch( EEG, { 'S 2' }, [-1 3], 'epochinfo', 'yes'); EEG = eeg_checkset( EEG ); %% Remove X,Y,Z accelerometer channels if EEG.nbchan>63 EEG.X=squeeze(EEG.data(64,:,:)); EEG.Y=squeeze(EEG.data(65,:,:)); EEG.Z=squeeze(EEG.data(66,:,:)); EEG.data=EEG.data(1:63,:,:); EEG.nbchan=63; EEG.chanlocs(66)=[]; EEG.chanlocs(65)=[]; EEG.chanlocs(64)=[]; end % Fix BV-specific issue - - - only needed for APPLE for ai=1:size(EEG.urevent,2), EEG.urevent(ai).bvtime=EEG.urevent(ai).bvmknum; end for ai=1:size(EEG.event,2), EEG.event(ai).bvtime=EEG.event(ai).bvmknum; end for ai=1:size(EEG.epoch,2), EEG.epoch(ai).eventbvtime=EEG.epoch(ai).eventbvmknum; end % Add Pz which is Ref EEG = pop_chanedit(EEG,'append',63,'changefield',{64 'labels' 'Pz'}); % EEG = pop_chanedit(EEG,'lookup', locpath); %%%% if loading channels location then use this % Re-Ref to Average Ref and recover Pz EEG = pop_reref(EEG,[],'refloc',struct('labels',{'Pz'},'type',{''},'theta',{180},'radius',{0.2535},'X',{-60.7385},'Y',{-7.4383e-15},'Z',{59.4629},... 'sph_theta',{-180},'sph_phi',{44.3920},'sph_radius',{85},'urchan',{64},'ref',{''}),'keepref','on'); % Remove 1=Fp1 and 31=Fp2: Eye blink and artifacts; 26=FT10, 10=TP9 and 20=TP10: Ear muscle artifacts: Since Pz has been reconstructed from the total EEG.data = EEG.data([2:9, 11:19, 21:25, 27:30, 32:64],:,:); EEG.nbchan=59; EEG.chanlocs(31)=[]; EEG.chanlocs(26)=[]; EEG.chanlocs(20)=[]; EEG.chanlocs(10)=[]; EEG.chanlocs(1)=[]; % Have to be in this order! It will delete channel locs % Should probably re-ref to average again now that the contaminated channels are gone EEG = pop_reref(EEG,[]); % Remove mean EEG = pop_rmbase(EEG,[],[]); %% ---------------------- % Setup APPLE to interp chans, reject epochs, & ID bad ICs. Output will be Avg ref'd and ICA'd. subno = subj; VEOG = 0; session = 1; TASK = ['Ped_',type]; EEG_chans=1:EEG.nbchan; Do_ICA=1; Reref = 'FCz'; % Re-Ref to FCz [THIS IS FOR FASTER, which is a part of APPLE] chanidx = find(strcmpi(Reref,{EEG.chanlocs.labels})); ref_chan=chanidx; EEG = pop_reref(EEG,ref_chan,'keepref','on'); % Run APPLE (will re-ref data to avg ref) [EEG,bad_chans,bad_epochs,bad_ICAs]=APPLE_ActiveCap_v2(EEG,EEG_chans,ref_chan,Do_ICA,subno,VEOG,session,TASK); %%% Save save([savelocation,type,num2str(subj),'_Ped_Processed.mat'],'EEG','bad_chans','bad_epochs','bad_ICAs'); %%% for loop clearvars -except datalocation savelocation SubjInfo end