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DeepBrain

PyPI - Version PyPI - Python Version

Brain image processing tools using Deep Learning focused on speed and accuracy. ***This is a fork of the original deepbrain which has not been updated since 2018 - changed the initial imports to use tensorflow.compat.v1 ***

How to install - directly from github instead of PyPI

$ pip install git+https://github.com/rockstreamguy/deepbrain.git#egg=deepbrain

Available tools:

Extractor

img

Extract brain tissue from T1 Brain MRI (i.e skull stripping).

Extractor runs a custom U-Net model trained on a variety of manual-verified skull-stripping datasets.

Why choose Extractor over others (e.g. BET FSL, ANTs, PINCRAM)?

  1. Extractor is fast. It's CNN was implemented on Tensorflow and carefully designed to be as small as possible (i.e. lower amount of parameters). See below for speed comparison. You can achieve < 2 second extraction on GPU.

  2. Running Extractor is easy. You don't need to provide any complicated parameters (like brain templates or prior probability masks), just with the brain MRI is enough. This is because the model was trained with a data augmentation process that involved all kind of rotations and orientations of the brain MRI. This means that the extraction will be successfull regardless the orientation of the input brain MRI. No registration process is done.

  3. Extractor is accurate. It does not fail in some cases where others (specially BET) fails.

Speed

Extractor CPU (i5 2015 MBP) Extractor GPU (Nvidia TitanXP)
~20 seconds ~2 seconds

Accuracy

Extractor achieves state-of-the art accuracy > 0.97 Dice metric on the test set that is compound with a subset of entries from the CC359 dataset, NFBS dataset and ADNI dataset.

How to run

As command line program

$ deepbrain-extractor -i brain_mri.nii.gz -o ~/Desktop/output/

Where:

  • -i: the brain MRI that will be skull-stripped. It can be a nii or nii.gz image (or whatever format nibabel supports).
  • -o: an output directory (does not need to exist) where the program will save the brain_mask.nii and brain.nii files.

See deepbrain-extractor -h for more information.

As python

import nibabel as nb
from deepbrain import Extractor

# Load a nifti as 3d numpy image [H, W, D]
img = nib.load(img_path).get_fdata()

ext = Extractor()

# `prob` will be a 3d numpy image containing probability 
# of being brain tissue for each of the voxels in `img`
prob = ext.run(img) 

# mask can be obtained as:
mask = prob > 0.5

See deepbrain-extractor -h for more information.

Future Tools:

  • Brain T1 tissue segmentation [WORK IN PROGRESS]