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Elbau_et_al_PNAS_2018/create_hrfpl_maps.m
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function create_hrfpl_maps(Canonical, Derivative, Conditions, Mask) | |
% | |
% Creates HRF_PL images according to Henson et al., 2002. Requires Matlab | |
% 2017b or later for niftiread function. Otherwise change function for | |
% reading and writing in volumes. | |
% Input: | |
% Canonical -- file name of beta_????.img of canonical term | |
% Derivative -- file name of beta_????.img of derivative term | |
% Conditions -- cell with condition/session names as needed for output | |
% name, e.g.: cond = {'PreStress', 'Stress', 'PostStress'} | |
% Mask -- file name of masking image. Optional (default is no | |
% mask) | |
% ---------------------------------------------------------------------- | |
% | |
% Authors: Immanuel Elbau and Philipp Sämann, MPI of Psychiatry- 2017 | |
% | |
% Email: immanuel_elbau@psych.mpg.de or saemann@psych.mpg.de | |
% ------------------------------------------------------------------- | |
%% Costants determined by optimizing fit of epmirical function with 'sigmoid_trans_optimization.m' | |
C(1,1:902629) = -2; | |
D(1,1:902629) = -0.7; | |
Ycorr(1,1:902629) = 0.25; | |
Xcorr(1,1:902629) = -0.5; | |
%% Load in beta images for canonical and derivative pictures | |
Info = niftiinfo(Canonical); | |
Canonical = niftiread(Info); | |
Canonical = reshape(Canonical, [1 size(Canonical,1).*size(Canonical,2).*size(Canonical,3)]); | |
Info = niftiinfo(Derivative); | |
Derivative = niftiread(Info); | |
Derivative = reshape(Derivative, [1 size(Derivative,1).*size(Derivative,2).*size(Derivative,3)]); | |
%% HRF-PL images according to Henson et al., 2002 | |
% Calculate derivative / canonical ratio | |
HRFPL = Derivative./Canonical; | |
% Perform sigmoid transformation | |
HRFPL = 2 .* C ./(1+exp(D.*(HRFPL-Xcorr))) - C + Ycorr; | |
%% Apply amplitude mask. | |
% Load mask file and binarize it. If no mask file is entered as argument. | |
% create an all ones mask (no masking) | |
if nargin < 4 | |
Mask = ones(1, size(Canonical,1).*size(Canonical,2).*size(Canonical,3)); | |
else | |
InfoMask = niftiinfo(Mask); | |
Mask = niftiread(InfoMask); | |
Mask = reshape(Mask, [1 size(Mask,1).*size(Mask,2).*size(Mask,3)]); | |
% Binarize Mask | |
Mask(Mask ~= 0 & ~isnan(Mask)) = 1; | |
Mask(Mask~=1) = 0; | |
Mask(isnan(Mask)) = 0; | |
end | |
% Multiply HRF-PL image with mask | |
HRFPL = HRFPL .* Mask; | |
%% Write image | |
Output = ['HRFPL_map_',Conditions,'.nii']; | |
HRFPL = reshape(HRFPL, [Info.ImageSize]); | |
niftiwrite(HRFPL, Output, Info); | |
% The resulting images were smoothed as described in the SI Appendix (p.5) | |
% with a 6 mm (FWHM) kernel | |
end |