2nd Degree polynomial fit for the 3D array
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jupiter
le 22 Sep 2016
Modifié(e) : Jason Stockmann
le 22 Juil 2020
I am trying to find the 2nd degree polynomial fit for the 3d array which contains the magnetic field distortion information of water in MR imaging. I have two 3D arrays, one having fieldmap values and the other having magnetic field distortion around the MR sample. I am using the expression (Bfieldmap-Xi*Bsample), where Xi is a random value for susceptibility to find the data and try to fit this. But I am not quite sure how to find the fit for the 3D array, since it will have 10 coordinates including all three directions. Please help if someone has already an info on this.
Thanks,
Guru
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Jason Stockmann
le 22 Juil 2020
Modifié(e) : Jason Stockmann
le 22 Juil 2020
Guru, you could try the code below. This worked for me. 'data' is your distortion map. 'polyorder' is the scalar input specifying the order of polynomial you'd like to fit to the data. You need to vectorize both your MRI distortion map (dependent variable) and the coordinate system (independent variable). I am also fitting a 3D polynomial to MRI field map data. I just picked integer indices for the coordinate system (independent variables). I didn't bother scaling them into meaningful values for the image field of view. You could replace them with physically meaningful values if you intend to use them for plotting, etc. later on.
dims=size(data);
[XX,YY,ZZ] = ndgrid(1:dims(1),1:dims(2),1:dims(3));
polymodel = polyfitn([XX(:) YY(:) ZZ(:)],data(:),polyorder);
ypred = polyvaln(polymodel,[XX(:) YY(:) ZZ(:)]);
ypred_array = reshape(ypred,dims);
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Steven Lord
le 23 Sep 2016
If you have Curve Fitting Toolbox it can perform surface fitting. Use the Curve Fitting App to perform the fitting interactively or see "Fit and Plot a Polynomial Surface" on this documentation page for instructions on how to do it programmatically.
If you don't have Curve Fitting Toolbox, see the "Multiple Regression" section on this documentation page.
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