Skip to main content

Tools for loading, augmenting and writing 3D medical images on PyTorch.

Project description

TorchIO

DOI Google Colab PyPI Version Build Status Coverage Status Code Quality

torchio is a Python package containing a set of tools to efficiently read, sample and write 3D medical images in deep learning applications written in PyTorch, including intensity and spatial transforms for data augmentation and preprocessing. Transforms include typical computer vision operations such as random affine transformations and also domain specific ones such as simulation of intensity artifacts due to MRI magnetic field inhomogeneity or k-space motion artifacts.

This package has been greatly inspired by NiftyNet.

Credits

If you like this repository, please click on Star!

If you used this package for your research, please cite this repository using the information available on its Zenodo entry or use this BibTeX:

@software{perez_garcia_fernando_2020_3598622,
  author       = {Pérez-García, Fernando},
  title        = {{fepegar/torchio: TorchIO: Tools for loading,
                   augmenting and writing 3D medical images on
                   PyTorch}},
  month        = jan,
  year         = 2020,
  publisher    = {Zenodo},
  doi          = {10.5281/zenodo.3598622},
  url          = {https://doi.org/10.5281/zenodo.3598622}
}

Interactive notebook

The best way to understand and try the library is the interactive Google Colab notebook. It includes many examples and visualization of most of the classes and even training of a 3D U-Net for brain segmentation of T1-weighted MRI with whole images and patch-based sampling.

Index

Installation

This package is on the Python Package Index (PyPI). To install it, just run in a terminal the following command:

$ pip install torchio

Features

Data handling

ImagesDataset

ImagesDataset is a reader of medical images that directly inherits from torch.utils.Dataset. It can be used with a torch.utils.DataLoader for efficient reading and data augmentation.

It receives a list of subjects, where each subject is an instance of torchio.Subject containing torchio.Image instances. The paths suffix must be .nii, .nii.gz or .nrrd.

import torchio
from torchio import ImagesDataset, Image, Subject

subject_a = Subject([
    Image('t1', '~/Dropbox/MRI/t1.nrrd', torchio.INTENSITY),
    Image('label', '~/Dropbox/MRI/t1_seg.nii.gz', torchio.LABEL),
])
subject_b = Subject(
    Image('t1', '/tmp/colin27_t1_tal_lin.nii.gz', torchio.INTENSITY),
    Image('t2', '/tmp/colin27_t2_tal_lin.nii', torchio.INTENSITY),
    Image('label', '/tmp/colin27_seg1.nii.gz', torchio.LABEL),
)
subjects_list = [subject_a, subject_b]
subjects_dataset = ImagesDataset(subjects_list)
subject_sample = subjects_dataset[0]

Samplers

torchio includes grid, uniform and label patch samplers. There is also an aggregator used for dense predictions. For more information about patch-based training, see NiftyNet docs.

import torch
import torchio

CHANNELS_DIMENSION = 1
patch_overlap = 4
grid_sampler = torchio.inference.GridSampler(
    input_array,  # some NumPy array
    patch_size=128,
    patch_overlap=patch_overlap,
)
patch_loader = torch.utils.data.DataLoader(grid_sampler, batch_size=4)
aggregator = torchio.inference.GridAggregator(
    input_array,
    patch_overlap=patch_overlap,
)

# Some torch.nn.Module
model.to(device)
model.eval()
with torch.no_grad():
    for patches_batch in patch_loader:
        input_tensor = patches_batch['image'].to(device)
        locations = patches_batch['location']
        logits = model(input_tensor)
        labels = logits.argmax(dim=CHANNELS_DIMENSION, keepdim=True)
        outputs = labels
        aggregator.add_batch(outputs, locations)

output_array = aggregator.output_array

Queue

A patches Queue (or buffer) can be used for randomized patch-based sampling during training. This interactive animation can be used to understand how the queue works.

import torch
import torchio

patches_queue = torchio.Queue(
    subjects_dataset=subjects_dataset,  # instance of torchio.ImagesDataset
    max_length=300,
    samples_per_volume=10,
    patch_size=96,
    sampler_class=torchio.sampler.ImageSampler,
    num_workers=4,
    shuffle_subjects=True,
    shuffle_patches=True,
)
patches_loader = DataLoader(patches_queue, batch_size=4)

num_epochs = 20
for epoch_index in range(num_epochs):
    for patches_batch in patches_loader:
        logits = model(patches_batch)  # model is some torch.nn.Module

Transforms

The transforms package should remind users of torchvision.transforms. They take as input the samples generated by an ImagesDataset.

A transform can be quickly applied to an image file using the command-line tool torchio-transform:

$ torchio-transform input.nii.gz RandomMotion output.nii.gz --kwargs "proportion_to_augment=1 num_transforms=4"

Augmentation

Intensity
MRI k-space motion artifacts

Magnetic resonance images suffer from motion artifacts when the subject moves during image acquisition. This transform follows Shaw et al., 2019 to simulate motion artifacts for data augmentation.

MRI k-space motion artifacts

MRI magnetic field inhomogeneity

MRI magnetic field inhomogeneity creates slow frequency intensity variations. This transform is very similar to the one in NiftyNet.

MRI bias field artifacts

Gaussian noise

Adds noise sampled from a normal distribution with mean 0 and standard deviation sampled from a uniform distribution in the range std_range. It is often used after ZNormalization, as the output of this transform has zero-mean.

Random Gaussian noise

Spatial
B-spline dense elastic deformation

Random elastic deformation

Flip

Reverse the order of elements in an image along the given axes.

Affine transform

Preprocessing

Histogram standardization

Implementation of New variants of a method of MRI scale standardization adapted from NiftyNet.

Histogram standardization

Z-normalization

This transform first extracts the values with intensity greater than the mean, which is an approximation of the foreground voxels. Then the foreground mean is subtracted from the image and it is divided by the foreground standard deviation.

Z-normalization

Rescale

Rescale intensity values in an image to a certain range.

Resample

Resample images to a new voxel spacing using nibabel.

Pad

Pad images, like in torchvision.transforms.Pad.

Crop

Crop images passing 1, 3, or 6 integers, as in Pad.

ToCanonical

Reorder the data so that it is closest to canonical NIfTI (RAS+) orientation.

CenterCropOrPad

Crops or pads image center to a target size, modifying the affine accordingly.

Example

This example shows the improvement in performance when multiple workers are used to load and preprocess the volumes using multiple workers.

import time
import multiprocessing as mp

from tqdm import trange

import torch.nn as nn
from torch.utils.data import DataLoader
from torchvision.transforms import Compose

from torchio import ImagesDataset, Queue, DATA
from torchio.data.sampler import ImageSampler
from torchio.utils import create_dummy_dataset
from torchio.transforms import (
    ZNormalization,
    RandomNoise,
    RandomFlip,
    RandomAffine,
)


# Define training and patches sampling parameters
num_epochs = 4
patch_size = 128
queue_length = 400
samples_per_volume = 10
batch_size = 4

class Network(nn.Module):
    def __init__(self):
        super().__init__()
        self.conv = nn.Conv3d(
            in_channels=1,
            out_channels=3,
            kernel_size=3,
        )
    def forward(self, x):
        return self.conv(x)

model = Network()

# Create a dummy dataset in the temporary directory, for this example
subjects_list = create_dummy_dataset(
    num_images=100,
    size_range=(193, 229),
    force=False,
)

# Each element of subjects_list is an instance of torchio.Subject:
# subject = Subject(
#     torchio.Image('one_image', path_to_one_image, torchio.INTENSITY),
#     torchio.Image('another_image', path_to_another_image, torchio.INTENSITY),
#     torchio.Image('a_label', path_to_a_label, torchio.LABEL),
# )

# Define transforms for data normalization and augmentation
transforms = (
    ZNormalization(),
    RandomNoise(std_range=(0, 0.25)),
    RandomAffine(scales=(0.9, 1.1), degrees=10),
    RandomFlip(axes=(0,)),
)
transform = Compose(transforms)
subjects_dataset = ImagesDataset(subjects_list, transform)


# Run a benchmark for different numbers of workers
workers = range(mp.cpu_count() + 1)
for num_workers in workers:
    print('Number of workers:', num_workers)

    # Define the dataset as a queue of patches
    queue_dataset = Queue(
        subjects_dataset,
        queue_length,
        samples_per_volume,
        patch_size,
        ImageSampler,
        num_workers=num_workers,
    )
    batch_loader = DataLoader(queue_dataset, batch_size=batch_size)

    start = time.time()
    for epoch_index in trange(num_epochs, leave=False):
        for batch in batch_loader:
            # The keys of batch have been defined in create_dummy_dataset()
            inputs = batch['one_modality'][DATA]
            targets = batch['segmentation'][DATA]
            logits = model(inputs)
    print('Time:', int(time.time() - start), 'seconds')
    print()

Output:

Number of workers: 0
Time: 394 seconds

Number of workers: 1
Time: 372 seconds

Number of workers: 2
Time: 278 seconds

Number of workers: 3
Time: 259 seconds

Number of workers: 4
Time: 242 seconds

Related projects

See also

======= History

0.2.0 (2019-12-06)

  • First release on PyPI.

0.3.0 (21-12-2019)

  • Add Rescale transform
  • Add support for multimodal data and missing modalities

0.4.0 (29-12-2019)

  • Add MRI k-space motion artefact augmentation

0.5.0 (01-01-2020)

  • Add bias field transform

0.6.0 (02-01-2020)

  • Add support for NRRD

0.7.0 (02-01-2020)

  • Make transforms use PyTorch tensors consistently

0.8.0 (11-01-2020)

  • Add Image class

0.9.0 (14-01-2020)

  • Add CLI tool to transform an image from file

0.10.0 (15-01-2020)

  • Add Pad transform
  • Add Crop transform

0.11.0 (15-01-2020)

  • Add Resample transform

0.12.0 (21-01-2020)

  • Add ToCanonical transform
  • Add CenterCropOrPad transform

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

torchio-0.12.8.tar.gz (42.1 kB view details)

Uploaded Source

Built Distribution

torchio-0.12.8-py2.py3-none-any.whl (41.8 kB view details)

Uploaded Python 2 Python 3

File details

Details for the file torchio-0.12.8.tar.gz.

File metadata

  • Download URL: torchio-0.12.8.tar.gz
  • Upload date:
  • Size: 42.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.1.1 pkginfo/1.5.0.1 requests/2.22.0 setuptools/45.1.0 requests-toolbelt/0.9.1 tqdm/4.42.0 CPython/3.7.1

File hashes

Hashes for torchio-0.12.8.tar.gz
Algorithm Hash digest
SHA256 5db3be2799b40e295477e54a6165191da399ac48eaabd77fd412e2ce186d7315
MD5 498b4c8ad612d86afde89426d2231be4
BLAKE2b-256 a32702f91265af1a93aa51b428677df522e4285666db12f60a00a7a35e7dfd55

See more details on using hashes here.

File details

Details for the file torchio-0.12.8-py2.py3-none-any.whl.

File metadata

  • Download URL: torchio-0.12.8-py2.py3-none-any.whl
  • Upload date:
  • Size: 41.8 kB
  • Tags: Python 2, Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/3.1.1 pkginfo/1.5.0.1 requests/2.22.0 setuptools/45.1.0 requests-toolbelt/0.9.1 tqdm/4.42.0 CPython/3.7.1

File hashes

Hashes for torchio-0.12.8-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 1a430ea857348c69c2b9251faceb0f0436a81f680f57f404be43a7783c6a5e18
MD5 62b43424ac64107852189d277491e9ce
BLAKE2b-256 e40a80e85c912e46ce2403f5c514f10f3df3247059b1777a4b9753281cca613c

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page