Contact info: [email protected]
The aim of this project was to develop a Quality Assessment tool for fetal brain MRIs, which is able to score each volume through a deep learning regression model. Developed using Python3 and Keras/Tensorflow framework.
Our network architecture consists of a non-linear configuration, known as Residual Network (ResNet) architecture:
Given that we are dealing with an unbalanced distribution regarding input dataset, we applied different weights to each input class to compensate for the imbalance in the training sample.
- Linux environment
- Python3
- Conda/Anaconda setup
- Create the environment from the conda_environment.yml file:
conda env create -f conda_environment.yml
The first line of the yml file sets the new environment's name.
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Activate the new environment: conda activate myenv
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Verify that the new environment was installed correctly:
conda env list
You can also use conda info --envs
For more information, visit Conda documentation.