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arxiv: 2603.27048 · v3 · pith:IMYWIFBD · submitted 2026-03-27 · cs.CV

MOOZY: A Patient-First Foundation Model for Computational Pathology

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classification cs.CV
keywords moozyacrossfoundationtaskscasemodelmodelspathology
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Computational pathology needs whole-slide image (WSI) foundation models that transfer across diverse clinical tasks, yet current approaches remain largely slide-centric, often depend on private data and expensive paired-report supervision, and do not explicitly model relationships among multiple slides from the same patient. We present MOOZY, a patient-first pathology foundation model in which the patient case, not the individual slide, is the core unit of representation. MOOZY explicitly models dependencies across all slides from the same patient via a case transformer during pretraining, combining multi-stage self-supervision with scaled low-cost task supervision. In Stage 1, we pretrain a vision-only slide encoder on 77,134 public slide feature grids using masked self-distillation. In Stage 2, we align these representations with clinical semantics using a case transformer and multi-task supervision over 333 tasks from 56 public datasets, including 205 classification and 128 survival tasks across four endpoints. Across sixteen held-out tasks, MOOZY improves macro weighted F1, balanced accuracy, and macro weighted ROC-AUC relative to PRISM by +4.19\%, +7.93\%, and +6.95\%, respectively. MOOZY is also parameter efficient with 85.77M parameters, 14$\times$ smaller than GigaPath. These results suggest that patient-level pretraining yields transferable embeddings, providing a path toward scalable patient-first histopathology foundation models.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. CRISP -- Clustering-Based Redundancy-Reduced Instance Sampling for Pathology Case Representation and Retrieval

    cs.CV 2026-05 unverdicted novelty 6.0

    CRISP is a clustering-based sampling framework that builds case-level representations from multiple whole-slide images for improved pathology retrieval, matching or exceeding single-slide selection on two breast cance...