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ft_componentanalysis.m
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ft_componentanalysis.m
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function [comp] = ft_componentanalysis(cfg, data)
% FT_COMPONENTANALYSIS performs independent component analysis or other
% spatio-temporal decompositions of EEG or MEG data. This function computes
% the topography and timecourses of the components. The output of this
% function can be further analyzed with FT_TIMELOCKANALYSIS or
% FT_FREQANALYSIS.
%
% Use as
% [comp] = ft_componentanalysis(cfg, data)
% where cfg is a configuration structure and the input data is obtained from
% FT_PREPROCESSING or from FT_TIMELOCKANALYSIS.
%
% The configuration should contain
% cfg.method = 'runica', 'fastica', 'binica', 'pca', 'svd', 'jader',
% 'varimax', 'dss', 'cca', 'sobi', 'white' or 'csp'
% (default = 'runica')
% cfg.channel = cell-array with channel selection (default = 'all'),
% see FT_CHANNELSELECTION for details
% cfg.split = cell-array of channel types between which covariance
% is split, it can also be 'all' or 'no' (default = 'no')
% cfg.trials = 'all' or a selection given as a 1xN vector (default = 'all')
% cfg.numcomponent = 'all' or number (default = 'all')
% cfg.demean = 'no' or 'yes', whether to demean the input data (default = 'yes')
% cfg.updatesens = 'no' or 'yes' (default = 'yes')
% cfg.feedback = 'no', 'text', 'textbar', 'gui' (default = 'text')
%
% The runica method supports the following method-specific options. The
% values that these options can take can be found with HELP RUNICA.
% cfg.runica.extended
% cfg.runica.pca
% cfg.runica.sphering
% cfg.runica.weights
% cfg.runica.lrate
% cfg.runica.block
% cfg.runica.anneal
% cfg.runica.annealdeg
% cfg.runica.stop
% cfg.runica.maxsteps
% cfg.runica.bias
% cfg.runica.momentum
% cfg.runica.specgram
% cfg.runica.posact
% cfg.runica.verbose
% cfg.runica.logfile
% cfg.runica.interput
%
% The fastica method supports the following method-specific options. The
% values that these options can take can be found with HELP FASTICA.
% cfg.fastica.approach
% cfg.fastica.numOfIC
% cfg.fastica.g
% cfg.fastica.finetune
% cfg.fastica.a1
% cfg.fastica.a2
% cfg.fastica.mu
% cfg.fastica.stabilization
% cfg.fastica.epsilon
% cfg.fastica.maxNumIterations
% cfg.fastica.maxFinetune
% cfg.fastica.sampleSize
% cfg.fastica.initGuess
% cfg.fastica.verbose
% cfg.fastica.displayMode
% cfg.fastica.displayInterval
% cfg.fastica.firstEig
% cfg.fastica.lastEig
% cfg.fastica.interactivePCA
% cfg.fastica.pcaE
% cfg.fastica.pcaD
% cfg.fastica.whiteSig
% cfg.fastica.whiteMat
% cfg.fastica.dewhiteMat
% cfg.fastica.only
%
% The binica method supports the following method-specific options. The
% values that these options can take can be found with HELP BINICA.
% cfg.binica.extended
% cfg.binica.pca
% cfg.binica.sphering
% cfg.binica.lrate
% cfg.binica.blocksize
% cfg.binica.maxsteps
% cfg.binica.stop
% cfg.binica.weightsin
% cfg.binica.verbose
% cfg.binica.filenum
% cfg.binica.posact
% cfg.binica.annealstep
% cfg.binica.annealdeg
% cfg.binica.bias
% cfg.binica.momentum
%
% The dss method requires the following method-specific option and supports
% a whole lot of other options. The values that these options can take can
% be found with HELP DSS_CREATE_STATE.
% cfg.dss.denf.function
% cfg.dss.denf.params
%
% The sobi method supports the following method-specific options. The
% values that these options can take can be found with HELP SOBI.
% cfg.sobi.n_sources
% cfg.sobi.p_correlations
%
% The csp method implements the common-spatial patterns method. For CSP, the
% following specific options can be defined:
% cfg.csp.classlabels = vector that assigns a trial to class 1 or 2.
% cfg.csp.numfilters = the number of spatial filters to use (default: 6).
%
% The icasso method implements icasso. It runs fastica a specified number of
% times, and provides information about the stability of the components found
% The following specific options can be defined, see ICASSOEST:
% cfg.icasso.mode
% cfg.icasso.Niter
%
% Instead of specifying a component analysis method, you can also specify
% a previously computed unmixing matrix, which will be used to estimate the
% component timecourses in this data. This requires
% cfg.unmixing = NxN unmixing matrix
% cfg.topolabel = Nx1 cell-array with the channel labels
%
% You may specify a particular seed for random numbers called by
% rand/randn/randi, or the random state used by a previous call to this
% function to replicate results. For example:
% cfg.randomseed = integer seed value of user's choice
% cfg.randomseed = comp.cfg.callinfo.randomseed (from previous call)
%
% To facilitate data-handling and distributed computing you can use
% cfg.inputfile = ...
% cfg.outputfile = ...
% If you specify one of these (or both) the input data will be read from a *.mat
% file on disk and/or the output data will be written to a *.mat file. These mat
% files should contain only a single variable, corresponding with the
% input/output structure.
%
% See also FT_TOPOPLOTIC, FT_REJECTCOMPONENT, FASTICA, RUNICA, BINICA, SVD,
% JADER, VARIMAX, DSS, CCA, SOBI, ICASSO
% Copyright (C) 2003-2012, Robert Oostenveld
%
% This file is part of FieldTrip, see http://www.fieldtriptoolbox.org
% for the documentation and details.
%
% FieldTrip is free software: you can redistribute it and/or modify
% it under the terms of the GNU General Public License as published by
% the Free Software Foundation, either version 3 of the License, or
% (at your option) any later version.
%
% FieldTrip is distributed in the hope that it will be useful,
% but WITHOUT ANY WARRANTY; without even the implied warranty of
% MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
% GNU General Public License for more details.
%
% You should have received a copy of the GNU General Public License
% along with FieldTrip. If not, see <http://www.gnu.org/licenses/>.
%
% $Id$
% undocumented cfg options:
% cfg.cellmode = string, 'no' or 'yes', allows to run in cell-mode, i.e.
% no concatenation across trials is needed. This is based on experimental
% code and only supported for 'dss', 'fastica' and 'bsscca' as methods.
% these are used by the ft_preamble/ft_postamble function and scripts
ft_revision = '$Id$';
ft_nargin = nargin;
ft_nargout = nargout;
% do the general setup of the function
ft_defaults
ft_preamble init
ft_preamble debug
ft_preamble loadvar data
ft_preamble provenance data
ft_preamble trackconfig
ft_preamble randomseed
% the ft_abort variable is set to true or false in ft_preamble_init
if ft_abort
return
end
% check if the input data is valid for this function
istimelock = ft_datatype(data, 'timelock');
data = ft_checkdata(data, 'datatype', 'raw', 'feedback', 'yes');
% check if the input cfg is valid for this function
cfg = ft_checkconfig(cfg, 'forbidden', {'channels', 'trial'}); % prevent accidental typos, see issue 1729
cfg = ft_checkconfig(cfg, 'forbidden', {'detrend'});
cfg = ft_checkconfig(cfg, 'renamed', {'blc', 'demean'});
cfg = ft_checkconfig(cfg, 'renamedval', {'method', 'predetermined mixing matrix', 'predetermined unmixing matrix'});
cfg = ft_checkconfig(cfg, 'deprecated', {'topo'});
% set the defaults
cfg.method = ft_getopt(cfg, 'method', 'runica');
cfg.demean = ft_getopt(cfg, 'demean', 'yes');
cfg.trials = ft_getopt(cfg, 'trials', 'all', 1);
cfg.channel = ft_getopt(cfg, 'channel', 'all');
cfg.split = ft_getopt(cfg, 'split', 'no');
cfg.numcomponent = ft_getopt(cfg, 'numcomponent', 'all');
cfg.normalisesphere = ft_getopt(cfg, 'normalisesphere', 'yes');
cfg.cellmode = ft_getopt(cfg, 'cellmode', 'no');
cfg.doscale = ft_getopt(cfg, 'doscale', 'yes');
cfg.updatesens = ft_getopt(cfg, 'updatesens', 'yes');
cfg.feedback = ft_getopt(cfg, 'feedback', 'text');
% select channels, has to be done prior to handling of previous (un)mixing matrix
cfg.channel = ft_channelselection(cfg.channel, data.label);
if istrue(cfg.cellmode)
ft_hastoolbox('cellfunction', 1);
end
if isfield(cfg, 'topo') && isfield(cfg, 'topolabel')
ft_warning(['Specifying cfg.topo (= mixing matrix) to determine component '...
'timecourses in specified data is deprecated; please specify an '...
'unmixing matrix instead with cfg.unmixing. '...
'Using cfg.unmixing=pinv(cfg.topo) for now to reproduce old behavior.']);
cfg.unmixing = pinv(cfg.topo);
cfg = rmfield(cfg, 'topo');
end
if isfield(cfg, 'unmixing') && isfield(cfg, 'topolabel')
% use the previously determined unmixing matrix on this dataset
% test whether all required channels are present in the data
[datsel, toposel] = match_str(cfg.channel, cfg.topolabel);
if length(toposel)~=length(cfg.topolabel)
ft_error('not all channels that are required for the unmixing are present in the data');
end
% ensure that all data channels not used in the unmixing should be removed from the channel selection
tmpchan = match_str(cfg.channel, cfg.topolabel);
cfg.channel = cfg.channel(tmpchan);
% update some settings where there is no further choice to be made by the user
cfg.numcomponent = 'all';
cfg.method = 'predetermined unmixing matrix';
end
% add the options for the specified methods to the configuration, only if needed
switch cfg.method
case 'icasso'
cfg.icasso = ft_getopt(cfg, 'icasso', []);
cfg.icasso.mode = ft_getopt(cfg.icasso, 'mode', 'both');
cfg.icasso.Niter = ft_getopt(cfg.icasso, 'Niter', 15);
cfg.icasso.method = ft_getopt(cfg.icasso, 'method', 'fastica');
cfg.fastica = ft_getopt(cfg, 'fastica', []);
case 'fastica'
% additional options, see FASTICA for details
cfg.fastica = ft_getopt(cfg, 'fastica', []);
case 'runica'
% additional options, see RUNICA for details
cfg.runica = ft_getopt(cfg, 'runica', []);
cfg.runica.lrate = ft_getopt(cfg.runica, 'lrate', 0.001);
case 'binica'
% additional options, see BINICA for details
cfg.binica = ft_getopt(cfg, 'binica', []);
cfg.binica.lrate = ft_getopt(cfg.binica, 'lrate', 0.001);
case 'dss'
% additional options, see DSS for details
cfg.dss = ft_getopt(cfg, 'dss', []);
cfg.dss.denf = ft_getopt(cfg.dss, 'denf', []);
cfg.dss.denf.function = ft_getopt(cfg.dss.denf, 'function', 'denoise_fica_tanh');
cfg.dss.denf.params = ft_getopt(cfg.dss.denf, 'params', []);
cfg.dss.preprocf = ft_getopt(cfg.dss, 'preprocf', []);
cfg.dss.preprocf.function = ft_getopt(cfg.dss.preprocf, 'function', 'pre_sphere');
cfg.dss.preprocf.params = ft_getopt(cfg.dss.preprocf, 'params', []);
case 'csp'
% additional options, see CSP for details
cfg.csp = ft_getopt(cfg, 'csp', []);
cfg.csp.numfilters = ft_getopt(cfg.csp, 'numfilters', 6);
cfg.csp.classlabels = ft_getopt(cfg.csp, 'classlabels');
case 'bsscca'
% additional options, see BSSCCA for details
cfg.bsscca = ft_getopt(cfg, 'bsscca', []);
cfg.bsscca.refdelay = ft_getopt(cfg.bsscca, 'refdelay', 1);
cfg.bsscca.chandelay = ft_getopt(cfg.bsscca, 'chandelay', 0);
if strcmp(cfg.cellmode, 'no')
ft_error('cfg.mehod = ''bsscca'' requires cfg.cellmode = ''yes''');
end
otherwise
% do nothing
end
% select trials of interest
tmpcfg = keepfields(cfg, {'trials', 'channel', 'tolerance', 'showcallinfo', 'trackcallinfo', 'trackconfig', 'trackusage', 'trackdatainfo', 'trackmeminfo', 'tracktimeinfo'});
data = ft_selectdata(tmpcfg, data);
% restore the provenance information
[cfg, data] = rollback_provenance(cfg, data);
% deal with different chantypes if requested
if isequal(cfg.split, 'no')
chantype = {};
elseif isequal(cfg.split, 'all')
chantype = unique(ft_chantype(data.label));
else
chantype = cfg.split;
end
if numel(chantype)>0
% recurse per specified chantype
tmpdata = cell(1, numel(chantype));
for k = 1:numel(chantype)
tmpcfg = cfg;
tmpcfg.channel = data.label(ft_chantype(data.label, lower(chantype{k})));
tmpcfg.split = 'no';
tmpcfg.chantype = lower(chantype{k}); % makes the output labels unique, to allow appending later on
tmpdata{1,k} = ft_componentanalysis(tmpcfg, data);
end
comp = ft_appenddata([], tmpdata{:});
return;
else
%
end
Ntrials = length(data.trial);
Nchans = length(data.label);
if Nchans==0
ft_error('no channels were selected');
end
% default is to compute just as many components as there are channels in the data
if strcmp(cfg.numcomponent, 'all')
defaultNumCompsUsed = true(1);
cfg.numcomponent = length(data.label);
else
defaultNumCompsUsed = false(1);
end
% determine the size of each trial, they can be variable length
Nsamples = zeros(1,Ntrials);
for trial=1:Ntrials
Nsamples(trial) = size(data.trial{trial},2);
end
if strcmp(cfg.demean, 'yes')
% optionally perform baseline correction on each trial
ft_info('baseline correcting data \n');
for trial=1:Ntrials
data.trial{trial} = ft_preproc_baselinecorrect(data.trial{trial});
end
end
if strcmp(cfg.doscale, 'yes')
% determine the scaling of the data, scale it to approximately unity
% this will improve the performance of some methods, esp. fastica
trlidx = 1;
tmp = data.trial{trlidx};
while all(isnan(tmp(:))) % if all data in this trial is NaN
trlidx = trlidx + 1; % try next trial
tmp = data.trial{trlidx}; % overwrite tmp with next trial
end
tmp(~isfinite(tmp)) = 0; % ensure that the scaling is a finite value
scale = norm((tmp*tmp')./size(tmp,2)); clear tmp;
scale = sqrt(scale);
if scale ~= 0
ft_info('scaling data with 1 over %f\n', scale);
for trial=1:Ntrials
data.trial{trial} = data.trial{trial} ./ scale;
end
else
ft_info('no scaling applied, since factor is 0\n');
end
else
ft_info('no scaling applied to the data\n');
end
if strcmp(cfg.method, 'sobi')
% concatenate all the data into a 3D matrix respectively 2D (sobi)
ft_info('concatenating data');
Nsamples = Nsamples(1);
dat = zeros(Ntrials, Nchans, Nsamples);
% all trials should have an equal number of samples
% and it is assumed that the time axes of all trials are aligned
for trial=1:Ntrials
ft_info('.');
dat(trial,:,:) = data.trial{trial};
end
ft_info('\n');
ft_info('concatenated data matrix size %dx%dx%d\n', size(dat,1), size(dat,2), size(dat,3));
if Ntrials == 1
dummy = 0;
[dat, dummy] = shiftdim(dat);
else
dat = shiftdim(dat,1);
end
elseif strcmp(cfg.method, 'csp')
% concatenate the trials into two data matrices, one for each class
sel1 = find(cfg.csp.classlabels==1);
sel2 = find(cfg.csp.classlabels==2);
if min(length(sel1), length(sel2)) == 0
ft_error('CSP requires class labels!');
end
if length(sel1)+length(sel2)~=length(cfg.csp.classlabels)
ft_warning('not all trials belong to class 1 or 2');
end
dat1 = cat(2, data.trial{sel1});
dat2 = cat(2, data.trial{sel2});
ft_info('concatenated data matrix size for class 1 is %dx%d\n', size(dat1,1), size(dat1,2));
ft_info('concatenated data matrix size for class 2 is %dx%d\n', size(dat2,1), size(dat2,2));
elseif ~strcmp(cfg.method, 'predetermined unmixing matrix') && strcmp(cfg.cellmode, 'no')
% concatenate all the data into a 2D matrix unless we already have an
% unmixing matrix or unless the user request it otherwise
ft_info('concatenating data');
dat = zeros(Nchans, sum(Nsamples));
ft_progress('init', cfg.feedback, 'concatenating trials...');
for trial=1:Ntrials
ft_progress(trial/Ntrials, 'Concatenating trial %d from %d', trial, Ntrials);
begsample = sum(Nsamples(1:(trial-1))) + 1;
endsample = sum(Nsamples(1:trial));
dat(:,begsample:endsample) = data.trial{trial};
end
ft_progress('close')
ft_info('concatenated data matrix size %dx%d\n', size(dat,1), size(dat,2));
hasdatanans = any(~isfinite(dat(:)));
if hasdatanans && strcmp(cfg.method, 'dss')
ft_error('DSS does not work with nans or inf in the data');
elseif hasdatanans
ft_info('data contains nan or inf, only using the samples without nan or inf\n');
finitevals = sum(~isfinite(dat))==0;
if ~any(finitevals)
ft_error('no samples remaining');
else
dat = dat(:,finitevals);
end
end
else
ft_info('not concatenating data\n');
dat = data.trial;
% FIXME cellmode processing is not nan-transparent yet
end
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% perform the component analysis
ft_info('starting decomposition using %s\n', cfg.method);
switch cfg.method
case 'icasso'
% check whether the required low-level toolboxes are installed
ft_hastoolbox('icasso', 1);
if strcmp(cfg.icasso.method, 'fastica')
ft_hastoolbox('fastica', 1);
cfg.fastica.numOfIC = cfg.numcomponent;
optarg = ft_cfg2keyval(cfg.(cfg.icasso.method));
sR = icassoEst(cfg.icasso.mode, dat, cfg.icasso.Niter, optarg{:});
elseif strcmp(cfg.icasso.method, 'dss')
% recurse into ft_componentanalysis and do some post processing
tmpcfg = rmfield(cfg, 'icasso');
tmpcfg.method = cfg.icasso.method;
tmpdata = data;
% initialize the variables to hold the output
sR.W = cell(cfg.icasso.Niter, 1);
sR.A = cell(cfg.icasso.Niter, 1);
sR.index = zeros(0,2);
for k = 1:cfg.icasso.Niter
tmp = ft_componentanalysis(tmpcfg, tmpdata);
sR.W{k} = tmp.unmixing;
sR.A{k} = tmp.topo;
sR.index = cat(1, sR.index, [k*ones(size(tmp.topo,2),1) (1:size(tmp.topo,2))']);
sR.whiteningMatrix = tmp.cfg.dss.V;
sR.dewhiteningMatrix = tmp.cfg.dss.dV;
end
sR.signal = dat;
sR.mode = cfg.icasso.mode;
sR.rdim = size(tmp.topo,2);
else
ft_error('only ''fastica'' or ''dss'' is supported as method for icasso');
end
% do the rest of the icasso related processing
sR = icassoCluster(sR, 'strategy', 'AL', 'simfcn', 'abscorr', 's2d', 'sim2dis', 'L',cfg.numcomponent);
sR = icassoProjection(sR, 'cca', 's2d', 'sqrtsim2dis', 'epochs', 75);
[Iq, mixing, unmixing, dum, index2centrotypes] = icassoResult(sR,cfg.numcomponent);
% this step is done, because in icassoResult mixing is determined to be
% pinv(unmixing), which yields strange results. Better take it from the
% individual iterations. NOTE: as a consequence unmixing*mixing is not
% necessarily identity anymore !!!
for k = 1:size(mixing,2)
ix = sR.index(index2centrotypes(k),:);
mixing(:,k) = sR.A{ix(1)}(:,ix(2));
end
%[Iq, mixing, unmixing, dat] = icassoShow(sR, 'estimate', 'off', 'L', cfg.numcomponent);
% sort the output according to Iq
[srt, ix] = sort(-Iq); % account for NaNs
mixing = mixing(:, ix);
unmixing = unmixing(ix, :);
cfg.icasso.Iq = Iq(ix);
cfg.icasso.sR = rmfield(sR, 'signal'); % keep the rest of the information
case 'fastica'
% check whether the required low-level toolboxes are installed
ft_hastoolbox('fastica', 1); % see http://www.cis.hut.fi/projects/ica/fastica
if ~defaultNumCompsUsed &&...
(~isfield(cfg, 'fastica') || ~isfield(cfg.fastica, 'numOfIC'))
% user has specified cfg.numcomponent and not specified
% cfg.fastica.numOfIC, so copy cfg.numcomponent over
cfg.fastica.numOfIC = cfg.numcomponent;
elseif ~defaultNumCompsUsed &&...
isfield(cfg, 'fastica') && isfield(cfg.fastica, 'numOfIC')
% user specified both cfg.numcomponent and cfg.fastica.numOfIC,
% unsure which one to use
ft_error('you can specify either cfg.fastica.numOfIC or cfg.numcomponent (they will have the same effect), but not both');
end
try
% construct key-value pairs for the optional arguments
optarg = ft_cfg2keyval(cfg.fastica);
[mixing, unmixing] = fastica(dat, optarg{:});
catch
% the "catch me" syntax is broken on MATLAB74, this fixes it
me = lasterror;
% give a hopefully instructive error message
ft_info(['If you get an out-of-memory in fastica here, and you use fastica 2.5, change fastica.m, line 482: \n' ...
'from\n' ...
' if ~isempty(W) %% ORIGINAL VERSION\n' ...
'to\n' ...
' if ~isempty(W) && nargout ~= 2 %% if nargout == 2, we return [A, W], and NOT ICASIG\n']);
% forward original error
rethrow(me);
end
case 'runica'
% check whether the required low-level toolboxes are installed
% see http://www.sccn.ucsd.edu/eeglab
ft_hastoolbox('eeglab', 1);
if ~defaultNumCompsUsed &&...
(~isfield(cfg, 'runica') || ~isfield(cfg.runica, 'pca'))
% user has specified cfg.numcomponent and not specified
% cfg.runica.pca, so copy cfg.numcomponent over
cfg.runica.pca = cfg.numcomponent;
elseif ~defaultNumCompsUsed &&...
isfield(cfg, 'runica') && isfield(cfg.runica, 'pca')
% user specified both cfg.numcomponent and cfg.runica.pca,
% unsure which one to use
ft_error('you can specify either cfg.runica.pca or cfg.numcomponent (they will have the same effect), but not both');
end
% construct key-value pairs for the optional arguments
optarg = [ft_cfg2keyval(cfg.runica) {'reset_randomseed' 0}]; % let FieldTrip deal with the random seed handling
[weights, sphere] = runica(dat, optarg{:});
% scale the sphering matrix to unit norm
if strcmp(cfg.normalisesphere, 'yes')
sphere = sphere./norm(sphere);
end
unmixing = weights*sphere;
mixing = [];
case 'binica'
% check whether the required low-level toolboxes are installed
% see http://www.sccn.ucsd.edu/eeglab
ft_hastoolbox('eeglab', 1);
if ~defaultNumCompsUsed &&...
(~isfield(cfg, 'binica') || ~isfield(cfg.binica, 'pca'))
% user has specified cfg.numcomponent and not specified
% cfg.binica.pca, so copy cfg.numcomponent over
cfg.binica.pca = cfg.numcomponent;
elseif ~defaultNumCompsUsed &&...
isfield(cfg, 'binica') && isfield(cfg.binica, 'pca')
% user specified both cfg.numcomponent and cfg.binica.pca,
% unsure which one to use
ft_error('you can specify either cfg.binica.pca or cfg.numcomponent (they will have the same effect), but not both');
end
% construct key-value pairs for the optional arguments
optarg = ft_cfg2keyval(cfg.binica);
[weights, sphere] = binica(dat, optarg{:});
% scale the sphering matrix to unit norm
if strcmp(cfg.normalisesphere, 'yes')
sphere = sphere./norm(sphere);
end
unmixing = weights*sphere;
mixing = [];
case 'jader'
% check whether the required low-level toolboxes are installed
% see http://www.sccn.ucsd.edu/eeglab
ft_hastoolbox('eeglab', 1);
unmixing = jader(dat, cfg.numcomponent);
mixing = [];
case 'varimax'
% check whether the required low-level toolboxes are installed
% see http://www.sccn.ucsd.edu/eeglab
ft_hastoolbox('eeglab', 1);
unmixing = varimax(dat);
mixing = [];
case 'cca'
% check whether the required low-level toolboxes are installed
% see http://www.sccn.ucsd.edu/eeglab
ft_hastoolbox('cca', 1);
[y, w] = ccabss(dat);
unmixing = w';
mixing = [];
case 'pca'
% compute data cross-covariance matrix
if iscell(dat)
C = zeros(size(dat{1},1));
nC = 0;
for k = 1:numel(dat)
C = C + (dat{k}*dat{k}');
nC = nC + size(dat{k},2);
end
C = C./(nC-1);
else
C = (dat*dat')./(size(dat,2)-1);
end
% eigenvalue decomposition (EVD)
[E,D] = eig(C);
% sort eigenvectors in descending order of eigenvalues
d = cat(2,(1:1:Nchans)',diag(D));
d = sortrows(d, -2);
% return the desired number of principal components
unmixing = E(:,d(1:cfg.numcomponent,1))';
mixing = [];
clear C D E d
case 'kpca'
% linear kernel (same as normal covariance)
%kern = @(X,y) (sum(bsxfun(@times, X, y),2));
% polynomial kernel degree 2
%kern = @(X,y) (sum(bsxfun(@times, X, y),2).^2);
% RBF kernel
kern = @(X,y) (exp(-0.5* sqrt(sum(bsxfun(@minus, X, y).^2, 2))));
% compute kernel matrix
C = zeros(Nchans,Nchans);
ft_progress('init', cfg.feedback, 'computing kernel matrix...');
for k = 1:Nchans
ft_progress(k/Nchans, 'computing kernel matrix %d from %d', k, Nchans);
C(k,:) = kern(dat, dat(k,:));
end
ft_progress('close');
% eigenvalue decomposition (EVD)
[E,D] = eig(C);
% sort eigenvectors in descending order of eigenvalues
d = cat(2,(1:1:Nchans)',diag(D));
d = sortrows(d, -2);
% return the desired number of principal components
unmixing = E(:,d(1:cfg.numcomponent,1))';
mixing = [];
clear C D E d
case 'svd'
% it is more memory efficient to use the (non-scaled) covariance
if cfg.numcomponent<Nchans
% compute only the first components
[u, s, v] = svds(dat*dat', cfg.numcomponent);
else
% compute all components
[u, s, v] = svd(dat*dat', 0);
end
clear s v % not needed
unmixing = u';
mixing = [];
case 'dss'
% check whether the required low-level toolboxes are installed
% see http://www.cis.hut.fi/projects/dss
ft_hastoolbox('dss', 1);
params = removefields(struct(cfg.dss), {'V' 'dV' 'W' 'indx'});
params.denf.h = str2func(cfg.dss.denf.function);
params.preprocf.h = str2func(cfg.dss.preprocf.function);
if isfield(cfg.dss, 'wdim') && ~isempty(cfg.dss.wdim)
params.wdim = cfg.dss.wdim;
end
if ~ischar(cfg.numcomponent)
params.sdim = cfg.numcomponent;
if isfield(params, 'wdim')
params.sdim = min(params.sdim, params.wdim);
end
end
if isfield(params.denf, 'params') && isfield(params.denf.params, 'artifact')
% this may require the sampleinfo in the params structure, to keep the sampling bookkeeping correct
params.denf.params.sampleinfo = data.sampleinfo;
end
% create the state
state = dss_create_state(dat, params);
if isfield(cfg.dss, 'V') && ~isempty(cfg.dss.V)
state.V = cfg.dss.V;
state.Y = cfg.dss.V*dat;
end
if isfield(cfg.dss, 'dV') && ~isempty(cfg.dss.dV)
state.dV = cfg.dss.dV;
end
if isfield(cfg.dss, 'W') && ~isempty(cfg.dss.W)
state.W = cfg.dss.W;
end
if isfield(cfg.dss, 'indx') && ~isempty(cfg.dss.indx)
state.indx = cfg.dss.indx; %may be needed for dss_core_mim
end
% increase the amount of information that is displayed on screen
% state.verbose = 3;
% start the decomposition
state = denss(state); % this is for the DSS toolbox version 1.0
mixing = state.A;
unmixing = state.B;
% remember the updated configuration details
cfg.dss.denf = state.denf;
cfg.dss.orthof = state.orthof;
cfg.dss.preprocf = state.preprocf;
cfg.dss.stopf = state.stopf;
cfg.dss.W = state.W;
cfg.dss.V = state.V;
cfg.dss.dV = state.dV;
if isfield(state, 'D'), cfg.dss.D = state.D(1:min([state.sdim size(state.dV)])); end
cfg.numcomponent = min([state.sdim size(state.dV)]);
case 'sobi'
% check whether the required low-level toolboxes are installed
% see http://www.sccn.ucsd.edu/eeglab
ft_hastoolbox('eeglab', 1);
% check for additional options, see SOBI for details
if ~isfield(cfg, 'sobi')
mixing = sobi(dat, cfg.numcomponent);
elseif isfield(cfg.sobi, 'n_sources') && isfield(cfg.sobi, 'p_correlations')
mixing = sobi(dat, cfg.sobi.n_sources, cfg.sobi.p_correlations);
elseif isfield(cfg.sobi, 'n_sources')
mixing = sobi(dat,cfg.sobi.n_sources);
else
ft_error('unknown options for SOBI component analysis');
end
unmixing = [];
case 'predetermined unmixing matrix'
% check which labels from the cfg are identical to those of the data
% this gives us the rows of cfg.topo (the channels) and of
% data.trial (also channels) that we are going to use later
[datsel, chansel] = match_str(data.label, cfg.topolabel);
% ensure 1:1 corresponcence between cfg.topolabel & data.label
% otherwise we cannot compute the components (if source channels are
% missing) or will have a problem when projecting it back (because we
% dont have a marker to say that there are channels in data.label
% which we did not use and thus can't recover from source-space)
if length(cfg.topolabel)<length(chansel)
ft_error('cfg.topolabels do not uniquely correspond to data.label, please check')
end
if length(data.label)<length(datsel)
ft_error('cfg.topolabels do not uniquely correspond to data.label, please check')
end
% reorder the mixing matrix so that the channel order matches the order in the data
cfg.unmixing = cfg.unmixing(:,chansel);
cfg.topolabel = cfg.topolabel(chansel);
unmixing = cfg.unmixing;
mixing = [];
case 'white'
% compute the covariance matrix and an unmixing matrix that makes the data white
c = dat*dat';
c = c./(size(dat,2)-1);
[u, s] = svd(c);
% split the singular values into half
for i=1:size(s)
if (s(i,i)/s(1,1))>(100*eps)
s(i,i) = 1./sqrt(s(i,i));
else
s(i,i) = 0;
end
end
unmixing = s * u';
mixing = [];
case 'csp'
C1 = cov(dat1');
C2 = cov(dat2');
unmixing = csp(C1, C2, cfg.csp.numfilters);
mixing = []; % will be computed below
case 'bsscca'
% this method relies on time shifting of the original data, in much the
% same way as ft_denoise_tsr. as such it is more natural to represent
% the data in the cell-array, because the trial-boundaries are clear.
% if represented in a concatenated array one has to keep track of the
% trial boundaries
optarg = ft_cfg2keyval(cfg.bsscca);
optarg = cat(2,optarg, {'time', data.time});
[unmixing, mixing, rho, compdata, time] = bsscca(dat, optarg{:});
data.trial = mixing*compdata;
data.time = time;
data = removefields(data, 'sampleinfo');
if size(mixing,1)>numel(data.label)
for m = 1:(size(mixing,1)-numel(data.label))
data.label{end+1} = sprintf('refchan%03d',m);
end
end
% remember the canonical correlations
cfg.bsscca.rho = rho;
case 'parafac'
ft_error('parafac is not supported anymore in ft_componentanalysis');
otherwise
ft_error('unknown method for component analysis');
end % switch method
% make sure we have both mixing and unmixing matrices
% if not, compute (pseudo-)inverse to go from one to the other
if isempty(unmixing) && ~isempty(mixing)
if (size(mixing,1)==size(mixing,2))
unmixing = inv(mixing);
else
unmixing = pinv(mixing);
end
elseif isempty(mixing) && ~isempty(unmixing)
if (size(unmixing,1)==size(unmixing,2)) && rank(unmixing)==size(unmixing,1)
mixing = inv(unmixing);
else
mixing = pinv(unmixing);
end
elseif isempty(mixing) && isempty(unmixing)
% this sanity check is needed to catch convergence problems in fastica
% see http://bugzilla.fieldtriptoolbox.org/show_bug.cgi?id=1519
ft_error('the component unmixing failed');
end
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% collect the results and construct data structure
comp = keepfields(data, {'time' 'fsample'});
% make sure we don't return more components than were requested
% (some methods respect the maxcomponent parameters, others just always
% return a fixed (i.e., numchans) number of components)
if size(unmixing,1) > cfg.numcomponent
unmixing(cfg.numcomponent+1:end,:) = [];
end
if size(mixing,2) > cfg.numcomponent
mixing(:,cfg.numcomponent+1:end) = [];
end
% compute the activations in each trial
if strcmp(cfg.doscale, 'yes')
for trial=1:Ntrials
comp.trial{trial} = scale * unmixing * data.trial{trial};
end
else
for trial=1:Ntrials
comp.trial{trial} = unmixing * data.trial{trial};
end
end
% store mixing/unmixing matrices in structure
comp.topo = mixing;
comp.unmixing = unmixing;
% get the labels
if strcmp(cfg.method, 'predetermined unmixing matrix')
prefix = 'component';
else
prefix = cfg.method;
end
st = dbstack;
if numel(st)>1 && isequal(st(2).name, 'ft_componentanalysis')
% this is a recursive call, as per the cfg.split option, add something
% extra to the prefix
chantype = ft_getopt(cfg, 'chantype', '');
prefix = [prefix chantype];
end
for k = 1:size(comp.topo,2)
comp.label{k,1} = sprintf('%s%03d', prefix, k);
end
comp.topolabel = data.label(:);
sensfield = cell(0,1);
if isfield(data, 'grad')
sensfield{end+1} = 'grad';
end
if isfield(data, 'elec')
sensfield{end+1} = 'elec';
end
if isfield(data, 'opto')
sensfield{end+1} = 'opto';
end
% apply the linear projection also to the sensor description
if ~isempty(sensfield)
if strcmp(cfg.updatesens, 'yes')
% construct a montage and apply it to the sensor description
montage = [];
montage.labelold = data.label;
montage.labelnew = comp.label;
montage.tra = unmixing;
for m = 1:numel(sensfield)
ft_info('also applying the unmixing matrix to the %s structure\n', sensfield{m});
comp.(sensfield{m}) = ft_apply_montage(data.(sensfield{m}), montage, 'balancename', 'comp', 'keepunused', 'yes');
% The output sensor array cannot simply be interpreted as the input
% sensor array, hence the type should be removed to allow autodetection
% See also http://bugzilla.fieldtriptoolbox.org/show_bug.cgi?id=1806
if isfield(comp.(sensfield{m}), 'type')
comp.(sensfield{m}) = rmfield(comp.(sensfield{m}), 'type');
end
end
else
for m = 1:numel(sensfield)
ft_info('not applying the unmixing matrix to the %s structure\n', sensfield{m});
% simply copy it over
comp.(sensfield{m}) = data.(sensfield{m});
end
end
end % if sensfield
% copy the sampleinfo into the output
if isfield(data, 'sampleinfo')
comp.sampleinfo = data.sampleinfo;
end
% copy the trialinfo into the output
if isfield(data, 'trialinfo')
comp.trialinfo = data.trialinfo;
end
% convert back to input type if necessary
if istimelock
comp = ft_checkdata(comp, 'datatype', 'timelock+comp');
end
% do the general cleanup and bookkeeping at the end of the function
ft_postamble debug
ft_postamble trackconfig
ft_postamble randomseed
ft_postamble previous data
ft_postamble provenance comp
ft_postamble history comp
ft_postamble savevar comp