Skip to content

Thomas-Paul-Fr/mr_to_pct

 
 

Repository files navigation

MR to pCT for TUS

This script produces a pseudo-CT image from a T1-weighted MR image for use in acoustic simulations of transcranial ultrasound stimulation (TUS). See also https://github.com/sitiny/BRIC_TUS_Simulation_Tools.

Platform

Tested on Linux (Ubuntu 20.04.4 LTS) and on macOS Catalina (10.15.7; Intel i5) and Monterey (12.4; Apple M1 Pro).
Works with both NVIDIA GPU and CPU-only platforms.

Dependencies

Instructions

Install dependencies (see above).

Clone or download the repository, trained weights (https://osf.io/download/c3w98/) and example dataset (https://osf.io/download/xhne5/).

In cell #2 of the python notebook mr-to-pct_infer.ipynb, change the path to point to your input MR image, output pCT image, and the location where you saved the trained network weights:

# Set data file paths
input_mr_file = '/Users/sitiyaakub/Documents/Analysis/MRtoCT/ForGitHub/sub-test01_t1w.nii'
output_pct_file = '/Users/sitiyaakub/Documents/Analysis/MRtoCT/ForGitHub/sub-test01_pct.nii'
trained_weights = '/Users/sitiyaakub/Documents/Analysis/MRtoCT/ForGitHub/pretrained_net_final_20220825.pth'

You may optionally prepare your T1-weighted MR image. If prep_t1 is set to True, the T1-weighted MR image will be bias corrected (using ANTs N4BiasFieldCorrection) and backgound noise outside the head will be masked out.

# Do you want to prepare the t1 image? This will perform bias correction and create a head mask
# yes = True, no = False. Output will be saved to <mr_file>_prep.nii
prep_t1 = True

You may also optionally produce an example figure of the pCT output. If plot_mrct is set to True, an example figure will be produced.

# Do you want to produce an example plot? yes = True, no = False. 
plot_mrct = True

Run notebook.

This will produce the output pCT image in the specified file path.

Input to network

The software works best for input T1-weighted MR images in the NIfTI file format with the following specifications:

  1. RAS+ orientation
  2. scanner: Siemens Prisma 3T
  3. acquisition parameters: acquired in sagittal plane, 2100 ms repetition time (TR), 2.26 ms echo time (TE), 900 ms inversion time (TI), 8° flip angle (FA), GRAPPA acceleration factor of 2, and 1 mm3 voxel size
  4. maximum matrix size: 256 x 256 x 256
  5. voxel size: 1mm isotropic
  6. bias-corrected (e.g. using N4BiasFieldCorrection in ANTs or similar: see https://github.com/ANTsX/ANTs)
  7. noise outside the head masked out

The bias correction and noise masking can be optionally applied within the script by setting prep_t1 = True.

Troubleshooting

If your image is not in RAS+ orientation, you need to reorient it. Several tools are available to reorient NIfTI format images e.g. FSL's fslreorient2std (see: https://fsl.fmrib.ox.ac.uk/fsl/fslwiki/Orientation%20Explained) or NiBabel's as_closest_canonical (see: https://nipy.org/nibabel/image_orientation.html).

If you have problems with the ANTsPy installation, you can try running it without the ANTs bias-correction and head masking. To do this, change the third line of the mr-to-pct_infer.ipynb to: from utils.infer_funcs_noants import do_mr_to_pct. This will work best if you supply a bias-corrected and head masked T1-weighted MR image.

Citing this work

The rationale and principle are described in detail in the following paper.

Yaakub, S. N., White, T. A., Kerfoot, E., Verhagen, L., Hammers, A., & Fouragnan, E. F. (2023). Pseudo-CTs from T1-weighted MRI for planning of low-intensity transcranial focused ultrasound neuromodulation: an open-source tool. Brain Stimulation, 16(1), p75-78. https://doi.org/10.1016/j.brs.2023.01.838

If you use our MR to pCT method in your own work, please acknowledge us by citing the above paper and the repository DOI

Please also consider citing ANTsPy and MONAI (see the websites for details).

Feedback welcome at siti.yaakub@plymouth.ac.uk

About

MR to CT for TUS acoustic simulations

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 86.1%
  • Python 13.9%