Look Ma, no code: fine tuning nnU-Net for the AutoPET II challenge by only adjusting its JSON plans

24 Sep 2023  ·  Fabian Isensee, Klaus H. Maier-Hein ·

We participate in the AutoPET II challenge by modifying nnU-Net only through its easy to understand and modify 'nnUNetPlans.json' file. By switching to a UNet with residual encoder, increasing the batch size and increasing the patch size we obtain a configuration that substantially outperforms the automatically configured nnU-Net baseline (5-fold cross-validation Dice score of 65.14 vs 33.28) at the expense of increased compute requirements for model training. Our final submission ensembles the two most promising configurations.

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