LGOct 6, 2025

A Clinical-grade Universal Foundation Model for Intraoperative Pathology

arXiv:2510.04861v2h-index: 26
AI Analysis

This addresses the problem of diagnostic complexity and data scarcity in intraoperative pathology for surgeons and pathologists, representing a significant advancement rather than an incremental improvement.

The researchers tackled the challenge of limited adoption of computational pathology in intraoperative settings by developing CRISP, a clinical-grade foundation model trained on over 100,000 frozen sections, which achieved high diagnostic accuracy in prospective validation and reduced diagnostic workload by 35%.

Intraoperative pathology is pivotal to precision surgery, yet its clinical impact is constrained by diagnostic complexity and the limited availability of high-quality frozen-section data. While computational pathology has made significant strides, the lack of large-scale, prospective validation has impeded its routine adoption in surgical workflows. Here, we introduce CRISP, a clinical-grade foundation model developed on over 100,000 frozen sections from eight medical centers, specifically designed to provide Clinical-grade Robust Intraoperative Support for Pathology (CRISP). CRISP was comprehensively evaluated on more than 15,000 intraoperative slides across nearly 100 retrospective diagnostic tasks, including benign-malignant discrimination, key intraoperative decision-making, and pan-cancer detection, etc. The model demonstrated robust generalization across diverse institutions, tumor types, and anatomical sites-including previously unseen sites and rare cancers. In a prospective cohort of over 2,000 patients, CRISP sustained high diagnostic accuracy under real-world conditions, directly informing surgical decisions in 92.6% of cases. Human-AI collaboration further reduced diagnostic workload by 35%, avoided 105 ancillary tests and enhanced detection of micrometastases with 87.5% accuracy. Together, these findings position CRISP as a clinical-grade paradigm for AI-driven intraoperative pathology, bridging computational advances with surgical precision and accelerating the translation of artificial intelligence into routine clinical practice.

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