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dataset_1
list
[ 0.6844428181648254, 0.07296126335859299, 1.6058188676834106, 0.20916405320167542, 0.5453702211380005, 0.44317126274108887, 0.03716962784528732, 1.1692612171173096, 6.71463680267334, 0.1357884556055069, 0.058828096836805344, 0.2902819514274597, 0.003333753440529108, 0.3411829471588135, 0....
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End of preview.

Datasets used in FocusMIL paper

The Camelyon16 and Camelyon16-Standard-MIL-test datasets used in From Correlation to Causation: Max-Pooling-Based Multi-Instance Learning Leads to More Robust Whole Slide Image Classification (FocusMIL).

Code: FocusMIL-and-other-max-pooling-methods

These are pre-extracted patch features — you do not need the raw whole-slide images. Slide classification, patch-level metrics, and FROC localization all run directly off the files here.

For Camelyon17, see the AEM repository, whose publicly released features we use.

What's in here

Directory data_tag Backbone Dim Size
Camelyon16feat_256_10x/ c16_real ResNet18 (ImageNet) 512 5.3 GB
CTransPath_feature/ c16_real_ctrans CTransPath (SSL) 768 7.9 GB
camelyon16-standard-MIL-test/ c16_semi075 ResNet18, semi-synthetic 512 5.3 GB
froc_features/ per-slide feats + level-0 coords 4.3 GB
masks_c16_test.tar.gz 47 GT tumor masks (tarball) 60 MB

Patches are 256×256 at 10×. 23 GB total (27 GB on disk once the masks are extracted).

Usage

Download, mask extraction, directory layout, file format, and the training commands are documented in the code repo — see docs/DATASETS.md.

hf download Raymvp12/focusmil-camelyon16 --repo-type dataset --local-dir /path/to/camelyon16

MANIFEST.sha256 lets you verify nothing was truncated:

cd /path/to/camelyon16 && grep -v '^#' MANIFEST.sha256 | awk '{print $1"  "$3}' | sha256sum -c -

The Standard MIL Test (camelyon16-standard-MIL-test/)

A controlled probe of the standard MIL assumption, not a second copy of the data.

Attention-based and TransMIL-style methods pool instances through a learnable weighted combination, so they can exploit negative evidence — a pattern whose presence correlates with the negative bag label.

This benchmark plants exactly such a pattern. In the training set we introduce a poison by randomly selecting 20% of the patches in the normal slides and increasing the intensity of their green channel — a negative shortcut: a cue that correlates with the negative bag label but is causally irrelevant to tumour. In the test set we poison 20% of the patches in the tumour slides in the same way, so the shortcut now points the wrong way.

A method that leans on negative evidence is fooled and its slide AUC collapses; a max-pooling model, which predicts only from positive evidence, stays robust.

Any method whose slide AUC falls below 0.5 on this benchmark violates the standard MIL assumption — it is predicting from negative evidence rather than from positive evidence.

Format and labels are identical to c16_real; only the features change. Select it with the c16_semi075 data tag, and compare its slide AUC against c16_real.

Citation

@misc{liu2025correlationcausationmaxpoolingbasedmultiinstance,
      title={From Correlation to Causation: Max-Pooling-Based Multi-Instance Learning Leads to More Robust Whole Slide Image Classification},
      author={Xin Liu and Weijia Zhang and Wei Tang and Thuc Duy Le and Jiuyong Li and Lin Liu and Min-Ling Zhang},
      year={2025},
      eprint={2408.09449},
      archivePrefix={arXiv},
      primaryClass={cs.CV},
      url={https://arxiv.org/abs/2408.09449},
}

Please also cite the original Camelyon16 challenge.

License

The underlying Camelyon16 data is released under CC0 1.0 by the challenge organizers; these derived features are distributed under the same terms.

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