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Library for using the MedIMeta dataset

Project description

MedIMeta for PyTorch

Medical Imaging Meta Dataset

We release the MedIMeta Dataset, a novel meta dataset comprised of 17 publicly available datasets containing a total of 28 tasks. We additionally prepared a private set of tasks derived from different datasets which will be used for validation and final testing of the submissions. All datasets included in the MedIMeta dataset have been previously published under a creative commons licence. The dataset bears similarity to, and has partial overlap with, the Medical MNIST dataset. However, we go beyond Medical MNIST in the amount and diversity of tasks included in our dataset. Moreover, all images in MedIMeta are standardized to an image size of 224x224 pixels which allows a more clinically meaningful analysis of the images. The MedIMeta dataset and this library provide a resource for quickly benchmarking algorithms on a wide range of medical tasks.

You can see details about the MedIMeta dataset as well as download the dataset from https://www.l2l-challenge.org/data.html.

PyTorch Library

This library allows easy access to all tasks in the MedIMeta dataset as PyTorch datasets. It provides a unified interface to the data and allows for easy usage in PyTorch. The MedIMeta library integrates with TorchCross, a PyTorch library for cross-domain learning, few-shot learning and meta-learning. It is therefore easy to use the MedIMeta dataset in conjunction with TorchCross to perform cross-domain learning, few-shot learning or meta-learning experiments.

This library is still in alpha. The API is potentially subject to change. Any feedback is welcome.

Installation

The toolbox can be installed via pip:

pip install medimeta-pytorch

Basic Usage

The MedIMeta dataset can be accessed via the medimeta.MedIMeta class, which extends the torch.utils.data.Dataset class. See the basic example below:

from medimeta import MedIMeta

# Create the dataset for the Disease task of the OCT dataset, assuming
# the data is stored in the "data/MedIMeta" directory
dataset = MedIMeta("data/MedIMeta", "oct", "Disease")

# Get the first sample
sample = dataset[0]

print(sample[0].shape)
print(sample[1])

This will print the following:

torch.Size([1, 224, 224])
0

Advanced Usage

MedIMeta builds on top of TorchCross, a library for cross-domain learning, few-shot learning and meta-learning in PyTorch. MedIMeta can be used in conjunction with TorchCross to easily create cross-domain learning or few-shot learning experiments. To this end, MedIMeta provides two convenience classes for generating batches from multiple MedIMeta tasks and for generating few-shot insttances of multiple MedIMeta tasks.

Examples

See the examples directory for examples on how to use MedIMeta in conjunction with TorchCross.

  • imagenet_pretrained.py shows how you can test pre-trained models on a few-shot instance of a MedIMeta task.
  • cross_domain_pretraining.py shows how you can perform cross-domain pre-training on different MedIMeta tasks and then test the pre-trained model on a few-shot instance of a MedIMeta task.
  • cross_domain_maml.py shows how you can perform cross-domain meta-learning with MAML on different MedIMeta tasks and then test the meta-learned model on multiple few-shot instances of a MedIMeta task.
  • fully_supervised.py shows how you can perform fully-supervised learning on MedIMeta tasks by using the TorchCross SimpleClassifier.

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