arXiv Open Access 2026

TC-SSA: Token Compression via Semantic Slot Aggregation for Gigapixel Pathology Reasoning

Zhuo Chen Shawn Young Lijian Xu
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Abstrak

The application of large vision-language models to computational pathology holds great promise for diagnostic assistants but faces a critical computational bottleneck: the gigapixel scale of Whole Slide Images (WSIs). A single WSI typically contains over 105 patches, creating sequence lengths that exceed the constraints of standard Transformer architectures. Existing solutions often resort to spatial sampling, which risks discarding diagnostically critical evidence. To address this, we propose TC-SSA (Token Compression via Semantic Slot Aggregation), a learnable token compression framework that aggregates patch features into a fixed number of semantic slots. A gated routing module assigns patches to slots using sparse Top-2 routing, followed by weighted aggregation, enabling global slide coverage under a strict token budget. The resulting representation retains diagnostically relevant information while reducing the number of visual tokens to 1.7% of the original sequence. On the SlideBench(TCGA), our model achieves 78.34% overall accuracy and 77.14% on the diagnosis subset, outperforming sampling-based baselines under comparable token budgets. The method also generalizes to MIL classification, reaching AUC of 95.83% on TCGA-BRCA, 98.27% on TCGA-NSCLC and 79.80% on PANDA. These results suggest that learnable semantic aggregation provides an effective trade-off between efficiency and diagnostic performance for gigapixel pathology reasoning.

Topik & Kata Kunci

Penulis (3)

Z

Zhuo Chen

S

Shawn Young

L

Lijian Xu

Format Sitasi

Chen, Z., Young, S., Xu, L. (2026). TC-SSA: Token Compression via Semantic Slot Aggregation for Gigapixel Pathology Reasoning. https://arxiv.org/abs/2603.01143

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Tahun Terbit
2026
Bahasa
en
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arXiv
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Open Access ✓