How to calculate mean in moving cubic volume?

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SojM
SojM el 25 de Jul. de 2020
Respondida: Amy Van Wey Lovatt el 11 de Sept. de 2022
I have a stack of 2D images in 3D array format 100x100x500. Now I want to select a small cubic volume of 1x1x1 at center of the stack and increase this cubic volume step by step till I reach the array size, calculating mean at each stage. I know I need to use mat2cell and mean function. How can be done in corect for loop?

Respuesta aceptada

Matt J
Matt J el 25 de Jul. de 2020
Editada: Matt J el 25 de Jul. de 2020
I know I need to use mat2cell and mean function.
I don't think you do. Let's call your 3D volume, V:
[ci,cj,ck]=deal(51,51,251); %center coordinate ?
[I,J,K]=ndgrid(abs((1:100)-ci),abs((1:100)-cj),abs((1:500)-ck));
L=max(max(I,J),K)+1; %label matrix
stats = regionprops3(L,V,'MeanIntensity','Volume');
cumVolumes = cumsum(stats.Volume);
cumIntensities = cumsum(stats.Volume.*stats.MeanIntensity);
result = cumIntensities ./cumVolumes
  6 comentarios
Matt J
Matt J el 2 de Ag. de 2020
Something like this?
clear S
S(400)=struct('cumVolumes',[],'cumIntensities',[],'result',[]); %pre-allocate
for i = 1:400
[ci,cj,ck]=deal(51,51,50+i); %center coordinate
[I,J,K]= ndgrid(abs((1:100)-ci),abs((1:100)-cj),abs((i:100+i)-ck)); % Z remain 100 but changes with center
L = max(max(I,J),K)+1; %label matrix
stats = regionprops3(L,V(:,:[i:100+i]),'MeanIntensity','Volume');
S(i).cumVolumes = cumsum(stats.Volume);
S(i).cumIntensities = cumsum(stats.Volume.*stats.MeanIntensity);
S(i).result = cumIntensities ./cumVolumes
end
SojM
SojM el 2 de Ag. de 2020
Editada: SojM el 2 de Ag. de 2020
Thanks Matt. Yes, I was looking for somethign like that. That was very useful. Your code gave me error that "Undefined function or variable 'cumIntensities' ". I needed to define them before using as struct fields. It is working perfectly now. Following is the modified version of your code:
clear S
S(400)=struct('cumVolumes',[],'cumIntensities',[],'result',[]); %pre-allocate
for i = 1:400
[ci,cj,ck]=deal(51,51,50+i); %center coordinate
[I,J,K]= ndgrid(abs((1:100)-ci),abs((1:100)-cj),abs((i:100+i)-ck)); % Z remain 100 but changes with center
L = max(max(I,J),K)+1; %label matrix
stats = regionprops3(L,V(:,:,[i:100+i]),'MeanIntensity','Volume');
cumVolumes = cumsum(stats.Volume);
cumIntensities = cumsum(stats.Volume.*stats.MeanIntensity);
result = cumIntensities ./cumVolumes;
S(i).cumVolumes = cumVolumes;
S(i).cumIntensities = cumIntensities;
S(i).result = result;
end

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Amy Van Wey Lovatt
Amy Van Wey Lovatt el 11 de Sept. de 2022
Here is another option, which I'm using to calculate contrast uptake in breast images. I'm not sure which runs faster.
function PE = PeakEnhancement(S0,S1)
% S0 is the pre-contrast phase
% S1 is phase 1 or phase 2 of the contrast, this is an NxMxP matrix.
% sub is the initial percentage of uptake
sub=(S1-S0)./S0;
PE=zeros(size(sub));
% PeakEhnancement (PE) is the average of the 9 closest voxels in 3 x 3 x 3 cube.
% PE is a place holder ensuring size(PE)=size(S1) and boundaryies are all zerp.
for i=2:length(sub(:,1,1))-1
for j=2:length(sub(1,:,1))-1
for k=2:length(sub(1,1,:))-1
PE(i,j,k)=mean(sub(i-1:i+1,j-1:j+1,k-1:k+1),'all');
end
end
end
end

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