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Code for "Generalizable deep learning model for early Alzheimer’s disease detection from structural MRIs"

License: GNU Affero General Public License v3.0

Python 17.43% Shell 0.69% Jupyter Notebook 81.88%
alzheimer-disease artificial-intelligence brain-mri clinical-data convolutional-neural-networks deep-learning dementia medical-imaging mild-cognitive-impairment mri

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jeremyhide avatar shengliu66 avatar

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cnn_design_for_ad's Issues

Reproducibility

Hi, thanks for the great project. I am trying to reproduce the results. I have downloaded ADNI, and used .sh files to preprocess the dataset following ReadMe instructions. The model trained by config.yaml of the repo, I got 60% accuracy compared to 68% reported in the model evaluation notebook. Have you used another config.yaml file?

bug

2 poolings in models.py (line 92 and line 102) have same names. This means the last 5x5 pooling doesn't work at all. Please check your code.

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