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arxiv:2601.05148

Atlas 2 -- Foundation models for clinical deployment

Published on Jan 8
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Abstract

Three pathology vision foundation models demonstrate superior performance, robustness, and efficiency across extensive benchmarks using a large-scale dataset of histopathology whole slide images.

AI-generated summary

Pathology foundation models substantially advanced the possibilities in computational pathology -- yet tradeoffs in terms of performance, robustness, and computational requirements remained, which limited their clinical deployment. In this report, we present Atlas 2, Atlas 2-B, and Atlas 2-S, three pathology vision foundation models which bridge these shortcomings by showing state-of-the-art performance in prediction performance, robustness, and resource efficiency in a comprehensive evaluation across eighty public benchmarks. Our models were trained on the largest pathology foundation model dataset to date comprising 5.5 million histopathology whole slide images, collected from three medical institutions Charité - Universtätsmedizin Berlin, LMU Munich, and Mayo Clinic.

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