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RSNA Intracranial Hemorrhage Detection

Table of Contents

Directory layout

.
├── bin           # Scripts to perform various tasks such as `preprocess`, `train`.
├── cache         # Where preprocessed outputs are saved.
├── conf          # Configuration files for classification models.
├── input         # Input files provided by kaggle. 
├── model         # Where classification model outputs are saved.
├── meta          # Where second level model outputs are saved.
├── src           # 
└── submission    # Where submission files are saved.

Missing directories will be created when ./bin/preprocess.sh is run.

Solution Overview

You can find it on kaggle forum.

How to run

Please put ./input directory in the root level and unzip the downloaded file from kaggle there. The zipped file has to be the one provided for 2nd stage and the file size should be 180GB before unzipping.

Please make sure you run each of the scripts from parent directory of ./bin.

Requirements

The library versions we used. It does not mean other versions can not be used but not tested.

  • Python 3.6.6
  • CUDA 10.0 (CUDA driver 410.79)
  • Pytorch 1.1.0
  • NVIDIA apex 0.1 (for mixed precision training)

Preprocessing

$ sh ./bin/preprocess.sh

preprocess.sh does the following at once.

Training (classification model)

$ sh ./bin/train.sh
  • Trains two types of models se_resnext50_32x4d and se_resnext101_32x4d with 8 folds each.

Predicting (classification model)

$ sh ./bin/predict.sh
  • Makes predictions for validation data (out-of-fold predictions).
  • Makes predictions for test data.
  • Checkpoints from 2nd and 3rd epoch of each fold are used for predictions.

Second level model

$ sh ./bin/predict_meta.sh
  • Ensembles out-of-fold predictions from the previous step (used as meta features to construct train data).
  • Ensembles test predictions from the previous step (used as meta features to construct test data).
  • Trains LightGBM, Catboost and XGB with 8 folds each.
  • Predicts on test data using each of the trained models.

Ensembling (+postprocessing)

$ sh ./bin/ensemble.sh
  • Ensembles predictions from the previous step.
  • Makes a submission file.

Download

Trained Weights

Due to kaggle dataset limit, model110 checkpoints are split into two parts. To use these checkpoints, please download them and unzip at ./model directory. You can skip Training phase and start Predicting by using them.

License

The license is MIT.

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