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Challenge DLMI 2024

Code for the contribution of Diffused Burgers to the Kaggle challenge Classification of lymphocytosis from white blood cells (see https://www.kaggle.com/competitions/dlmi-lymphocytosis-classification).

Installation

  • Install Python 3.11
  • Install the package pip install -e .
  • Unzip the raw data in data/raw

The main function is in src/dlmi/__init__.py

Use

  • Start mlflow: run the command mlflow_run (you can access the web app at http://localhost:5001/)
  • Launch the program (training+inference on test) from the main folder of the project: dlmi_train
    • You can specify the config file dlmi_train --config-name [train_mlp,train_moe]: some examples are in src/dlmi/conf
  • Results are in the outputs folder, the prediction for the test set is in submission_test_final.csv

Tested on Windows + Nvidia RTX 4080 12GB and Linux + Nvidia V100S 32GB. Training time of less than 30 minutes on V100S.

Main models

  • Simple MLP on clinical attributes
  • Mixture Of Experts MLP on clinical attributes + CNN on images

Results

See report and leaderboard (#2 ex-aequo in the private leaderboard).

Troubleshooting

  • MiniDataset has not been updated to the latest version of the code (with Stratified K-Fold). Please use only MILDataset in the configs.
  • ResNet is the default backbone in the code. Switching to ViT can be done by uncommenting code in src/dlmi/models/moe_model.py. ViT was more computationnally-intensive and did not provide better results, hence our choice.

About

Code repo for the Kaggle Challenge from the MVA class Deep Learning for Medical Imaging

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