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https://github.com/yousefis/Hadamard-te-ASL-recon


https://github.com/yousefis/Hadamard-te-ASL-recon

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# Goal

In this project I designed a deep learning network to accelerate 4D data reconstruction in Tensorflow.

# Dynamic Angiography and Perfusion Reconstruction from Hadamard-te Arterial Spin Labeling of rank 8
# 1- Introduction
In this work 4D Angiography and Perfusion at eight time-points are reconstructed from an interleaved half-sampled crushed and non-crushed Hadamard-te arterial spin labeling (ASL) of rank 8. The network uses DenseUnet structure and multi-stage loss function. Different loss functions have been applied for training including: perceptual loss (PL), mean squre error (MSE), Structural Similarity Index (SSIM) in a single and multi-stage fasions. Also, a framework for generating dynamic ASL scans based on the Hadamard ASL kinetic model has been proposed.

The reconstruction process can be formulated as:
,
in which is the decoding and subtraction function, and are the acquired scans of the row of non-crushed and crushed Hadamard te-pCASL datasets, and denote perfusion and angiography scans respectively.

Here you can find the Hadamard te-ASL signal generator.
# 2- Citation
@inproceedings{yousefi2019fast,
title={Fast Dynamic Perfusion and Angiography Reconstruction using an end-to-end 3D Convolutional Neural Network},
author={Yousefi, Sahar and Hirschler, Lydiane and van der Plas, Merlijn and Elmahdy, Mohamed S and Sokooti, Hessam and Van Osch, Matthias and Staring, Marius},
booktitle={International Workshop on Machine Learning for Medical Image Reconstruction},
pages={25--35},
year={2019},
organization={Springer}
}

# 3- Proposed network



Figure 1- Proposed network, a multi-stage DenseUnet. Inputs: an interleaved half-sampled crushed and non-crushed Hadamard-te arterial spin labeling (ASL) of rank 8. Output: dynamic angiography and perdusion scans at 8 time-point.

# 4- Proposed data generator



Figure 2- Proposed data generator.

# 5- Results



Figure 3- Results of reconstructed angiography scans for one subject.



Figure 4- Results of reconstructed perfusion scans for one subject.

# Requirments

Tensorflow<2 & python>3.4

# If this repository helps you in anyway, show your love :heart: by putting a :star: on this project