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LEMON: a foundation model for nuclear morphology in Computational Pathology

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Computational pathology relies on effective representation learning to support cancer research and precision medicine. Although self-supervised learning has driven major progress at the patch and whole-slide image levels, representation learning at the single-cell level remains comparatively underexplored, despite its importance for characterizing cell types and cellular phenotypes. We introduce LEMON (Learning Embeddings from Morphology Of Nuclei), a self-supervised foundation model for scalable single-cell image representation learning. Trained on millions of cell images from diverse tissues and cancer types, LEMON learns robust and versatile morphological representations that support large-scale single-cell analyses in pathology. We evaluate LEMON on five benchmark datasets across a range of prediction tasks and show that it provides strong performance, highlighting its potential as a new paradigm for cell-level computational pathology. Model weights are available at https://huggingface.co/aliceblondel/LEMON.

Lo\"ic Chadoutaud, Alice Blondel, Hana Feki, Jacqueline Fontugne, Emmanuel Barillot, Thomas Walter (1, 2, 3) __INSTITUTION_6__ Institut Curie, Paris, France, (2) Mines Paris PSL, Centre for Computational Biology, Paris, France, (3) INSERM U1331, Paris, France, (4) Institut Curie, U1353/UMR9029 IRIS, Equipe IMPACT, Paris, France, (5) Department of Pathology, Universit\'e Paris-Saclay, UVSQ, Institut Curie, Saint-Cloud, France)• 2026

Related benchmarks

TaskDatasetResultRank
ClassificationNuCLS super
AUC93.2
11
Nuclear morphology classificationMIDOG25 majority
AUC91.1
11
ClassificationPanNuke
AUC91.2
11
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