Contrasting Low and High-Resolution Features for HER2 Scoring using Deep Learning
Breast cancer, the most common malignancy among women, requires precise detection and classification for effective treatment. Immunohistochemistry (IHC) biomarkers like HER2, ER, and PR are critical for identifying breast cancer subtypes. However, traditional IHC classification relies on pathologist...
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Main Authors | , , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
27.03.2025
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2503.22069 |
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Summary: | Breast cancer, the most common malignancy among women, requires precise
detection and classification for effective treatment. Immunohistochemistry
(IHC) biomarkers like HER2, ER, and PR are critical for identifying breast
cancer subtypes. However, traditional IHC classification relies on
pathologists' expertise, making it labor-intensive and subject to significant
inter-observer variability. To address these challenges, this study introduces
the India Pathology Breast Cancer Dataset (IPD-Breast), comprising of 1,272 IHC
slides (HER2, ER, and PR) aimed at automating receptor status classification.
The primary focus is on developing predictive models for HER2 3-way
classification (0, Low, High) to enhance prognosis. Evaluation of multiple deep
learning models revealed that an end-to-end ConvNeXt network utilizing
low-resolution IHC images achieved an AUC, F1, and accuracy of 91.79%, 83.52%,
and 83.56%, respectively, for 3-way classification, outperforming patch-based
methods by over 5.35% in F1 score. This study highlights the potential of
simple yet effective deep learning techniques to significantly improve accuracy
and reproducibility in breast cancer classification, supporting their
integration into clinical workflows for better patient outcomes. |
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DOI: | 10.48550/arxiv.2503.22069 |