Aligning Knowledge Concepts to Whole Slide Images for Precise Histopathology Image Analysis
Due to the large size and lack of fine-grained annotation, Whole Slide Images (WSIs) analysis is commonly approached as a Multiple Instance Learning (MIL) problem. However, previous studies only learn from training data, posing a stark contrast to how human clinicians teach each other and reason abo...
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Zusammenfassung: | Due to the large size and lack of fine-grained annotation, Whole Slide Images
(WSIs) analysis is commonly approached as a Multiple Instance Learning (MIL)
problem. However, previous studies only learn from training data, posing a
stark contrast to how human clinicians teach each other and reason about
histopathologic entities and factors. Here we present a novel knowledge
concept-based MIL framework, named ConcepPath to fill this gap. Specifically,
ConcepPath utilizes GPT-4 to induce reliable diseasespecific human expert
concepts from medical literature, and incorporate them with a group of purely
learnable concepts to extract complementary knowledge from training data. In
ConcepPath, WSIs are aligned to these linguistic knowledge concepts by
utilizing pathology vision-language model as the basic building component. In
the application of lung cancer subtyping, breast cancer HER2 scoring, and
gastric cancer immunotherapy-sensitive subtyping task, ConcepPath significantly
outperformed previous SOTA methods which lack the guidance of human expert
knowledge. |
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DOI: | 10.48550/arxiv.2411.18101 |