IVCVMar 5, 2025

Beyond H&E: Unlocking Pathological Insights with Polarization Imaging

arXiv:2503.05933v2h-index: 7BIBM
Originality Incremental advance
AI Analysis

This work addresses the problem of insufficient tissue characterization in digital pathology for improved diagnostic accuracy, representing an incremental advance through multimodal integration.

The paper tackles the limitation of standard H&E staining in histopathology by introducing polarization imaging to capture birefringence and tissue anisotropy, and proposes a dual-modality fusion framework called PolarHE, which achieves accuracies of 86.70% on the Chaoyang dataset and 89.06% on the MHIST dataset.

Histopathology image analysis is fundamental to digital pathology, with hematoxylin and eosin (H&E) staining as the gold standard for diagnostic and prognostic assessments. While H&E imaging effectively highlights cellular and tissue structures, it lacks sensitivity to birefringence and tissue anisotropy, which are crucial for assessing collagen organization, fiber alignment, and microstructural alterations--key indicators of tumor progression, fibrosis, and other pathological conditions. To bridge this gap, we construct a polarization imaging system and curate a new dataset of over 13,000 paired Polar-H&E images. Visualizations of polarization properties reveal distinctive optical signatures in pathological tissues, underscoring its diagnostic value. Building on this dataset, we propose PolarHE, a dual-modality fusion framework that integrates H&E with polarization imaging, leveraging the latter ability to enhance tissue characterization. Our approach employs a feature decomposition strategy to disentangle common and modality specific features, ensuring effective multimodal representation learning. Through comprehensive validation, our approach significantly outperforms previous methods, achieving an accuracy of 86.70% on the Chaoyang dataset and 89.06% on the MHIST dataset. These results demonstrate that polarization imaging is a powerful and underutilized modality in computational pathology, enriching feature representation and improving diagnostic accuracy. PolarHE establishes a promising direction for multimodal learning, paving the way for more interpretable and generalizable pathology models.

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