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Lung-Cancer-Detection

Data Science Bowl 2017

Alex Bennet, Anya Gilad, Arpit Vats

Files description:

  1. cs640_project_report.pdf - full report

  2. rep. Random Forest model -

    • luna_preproc.py - creates 3d arrays of the luna dataset
    • luna_masks.py - applaying image processing methods to get the masks.
    • luna_tf.py - train and learn the luna data set
    • random_forest.py - run ML algorithms such as Kmeans and random forest to get a better understaning of the stage1 data set.
  3. rep. 3d conv net model - *preproc.py - the 3d image preprocessing we used. *convnet - 3d cnn model with csv output *convnet_exp.py - 3d cnn model with logloss for experiments. *convnet10individuals.py - Experimenting getting the mean probability out of 10 separated experiments (shuffeling the dataset for each run).

  4. mergedPrepro.py - New preprocessing method (combining the full preprocessing tutorial and the conv net preprocessing)