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############# Demo for task-oriented denoising network (TOD-Net) #################

This is the demo for our MICCAI-2021 paper 'Task-Oriented Low-Dose CT Image Denoising'. The original paper can be found here: https://arxiv.org/abs/2103.13557

The codes include two parts, 'Train downstream tasks' and 'Train TOD-Net' as below.

Part I: Train downstream tasks

Train_downstream_tasks.py -- the main file to train downstream models, unet is used as an example

dataset.py -- user defined dataloader functions (loading 3D CT images)

utils.py -- utils functions such as model initialization, model saving ect.

metric.py -- eval metrics for the downstream tasks

CV_5-fold.txt -- data location where you save your ct images

Part II: Train TOD-Net

main.py -- the main file to train taks-oriented wgan network

model.py -- downstream segmentation network

TOD-Net.py -- task-oriented denoising network

loss.py -- losses used for training TOD-Net

dataset.py -- user defined dataloader functions (loading 3D CT images)

utils.py -- utils functions such as model initialization, model saving ect.

metric.py -- eval metrics for the downstream tasks

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