dipy_fit_dti#
Synopsis#
Workflow for tensor reconstruction and for computing DTI metrics using Weighted Least-Squares.
Performs a tensor reconstruction [1], [2] on the files by ‘globing’ input_files and saves the DTI metrics in a directory specified by out_dir.
Usage#
dipy_fit_dti [OPTIONS] input_files bvalues_files bvectors_files mask_files
Input Parameters#
- input_files- Path to the input volumes. This path may contain wildcards to process multiple inputs at once. 
- bvalues_files- Path to the bvalues files. This path may contain wildcards to use multiple bvalues files at once. 
- bvectors_files- Path to the bvectors files. This path may contain wildcards to use multiple bvectors files at once. 
- mask_files- Path to the input masks. This path may contain wildcards to use multiple masks at once. 
General Options#
- --fit_method- can be one of the following: ‘WLS’ for weighted least squares [3] ‘LS’ or ‘OLS’ for ordinary least squares [3] ‘NLLS’ for non-linear least-squares ‘RT’ or ‘restore’ or ‘RESTORE’ for RESTORE robust tensor fitting [4]. 
- --b0_threshold- Threshold used to find b0 volumes. 
- --bvecs_tol- Threshold used to check that norm(bvec) = 1 +/- bvecs_tol 
- --npeaks- Number of peaks/eigen vectors to save in each voxel. DTI generates 3 eigen values and eigen vectors. The principal eigenvector is saved by default. 
- --sigma- An estimate of the variance. Chang et al.[4] recommend to use 1.5267 * std(background_noise), where background_noise is estimated from some part of the image known to contain no signal (only noise) b-vectors are unit vectors. 
- --save_metrics- List of metrics to save. Possible values: fa, ga, rgb, md, ad, rd, mode, tensor, evec, eval 
- --nifti_tensor- Whether the tensor is saved in the standard Nifti format or in an alternate format that is used by other software (e.g., FSL): a 4-dimensional volume (shape (i, j, k, 6)) with Dxx, Dxy, Dxz, Dyy, Dyz, Dzz on the last dimension. 
- --extract_pam_values- Save or not to save pam volumes as single nifti files. 
Output Options#
- --out_dir- Output directory. (default current directory) 
- --out_tensor- Name of the tensors volume to be saved. Per default, this will be saved following the nifti standard: with the tensor elements as Dxx, Dxy, Dyy, Dxz, Dyz, Dzz on the last (5th) dimension of the volume (shape: (i, j, k, 1, 6)). If nifti_tensor is False, this will be saved in an alternate format that is used by other software (e.g., FSL): a 4-dimensional volume (shape (i, j, k, 6)) with Dxx, Dxy, Dxz, Dyy, Dyz, Dzz on the last dimension. 
- --out_fa- Name of the fractional anisotropy volume to be saved. 
- --out_ga- Name of the geodesic anisotropy volume to be saved. 
- --out_rgb- Name of the color fa volume to be saved. 
- --out_md- Name of the mean diffusivity volume to be saved. 
- --out_ad- Name of the axial diffusivity volume to be saved. 
- --out_rd- Name of the radial diffusivity volume to be saved. 
- --out_mode- Name of the mode volume to be saved. 
- --out_evec- Name of the eigenvectors volume to be saved. 
- --out_eval- Name of the eigenvalues to be saved. 
- --out_pam- Name of the peaks volume to be saved. 
- --out_peaks_dir- Name of the peaks directions volume to be saved. 
- --out_peaks_values- Name of the peaks values volume to be saved. 
- --out_peaks_indices- Name of the peaks indices volume to be saved. 
- --out_sphere- Sphere vertices name to be saved. 
- --out_qa- Name of the Quantitative Anisotropy to be saved. 
References#
Garyfallidis, E., M. Brett, B. Amirbekian, A. Rokem, S. Van Der Walt, M. Descoteaux, and I. Nimmo-Smith. Dipy, a library for the analysis of diffusion MRI data. Frontiers in Neuroinformatics, 1-18, 2014.