Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis

Abstract Lymph node micro-metastasis represents the initial stage of breast cancer spread or metastasis. However, the limited size of these hidden lesions restricts dataset expansion, presenting a significant challenge for manual examination and conventional deep learning techniques. By harnessing t...

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Main Authors: Jing Huang, Jingtao Wang, Junhai Shi, Hengli Ni, Shan Xu, Ping Wu, Yuexiang Ren, Lijuan Bian, Chenhan Su, Yuxuan Xu, Xinyu He, Xinjian Chen, Jianming Li
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:npj Digital Medicine
Online Access:https://doi.org/10.1038/s41746-025-01833-6
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author Jing Huang
Jingtao Wang
Junhai Shi
Hengli Ni
Shan Xu
Ping Wu
Yuexiang Ren
Lijuan Bian
Chenhan Su
Yuxuan Xu
Xinyu He
Xinjian Chen
Jianming Li
author_facet Jing Huang
Jingtao Wang
Junhai Shi
Hengli Ni
Shan Xu
Ping Wu
Yuexiang Ren
Lijuan Bian
Chenhan Su
Yuxuan Xu
Xinyu He
Xinjian Chen
Jianming Li
author_sort Jing Huang
collection DOAJ
description Abstract Lymph node micro-metastasis represents the initial stage of breast cancer spread or metastasis. However, the limited size of these hidden lesions restricts dataset expansion, presenting a significant challenge for manual examination and conventional deep learning techniques. By harnessing the power of meta-learning on limited datasets, we developed a novel network named MetaTrans, equipped with a 34-category dataset (MT-MCD) to effectively pinpoint micro-metastases in lymph nodes from pathological images. MetaTrans demonstrated superior performance on two different multi-center datasets and excelled in the 0-shot task for intraoperative frozen section diagnosis. Beyond breast cancer, MetaTrans efficiently identifies micro-metastases in thyroid and colorectal cancers and can be directly applied to recognize images captured by digital cameras under a microscope. Across all clinical validation scenarios, our method surpasses state-of-the-art baselines, exhibiting robust cross-domain adaptation and task-specific reliability, which highlight its translational potential in diverse pathological settings.
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id doaj-art-d2bc75a8b4ac4a2b960c03c6f3c85802
institution Kabale University
issn 2398-6352
language English
publishDate 2025-07-01
publisher Nature Portfolio
record_format Article
series npj Digital Medicine
spelling doaj-art-d2bc75a8b4ac4a2b960c03c6f3c858022025-08-20T03:46:12ZengNature Portfolionpj Digital Medicine2398-63522025-07-018111510.1038/s41746-025-01833-6Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasisJing Huang0Jingtao Wang1Junhai Shi2Hengli Ni3Shan Xu4Ping Wu5Yuexiang Ren6Lijuan Bian7Chenhan Su8Yuxuan Xu9Xinyu He10Xinjian Chen11Jianming Li12Department of Pathology, Soochow Medical College, Soochow UniversitySchool of Electronics and Information Engineering, Soochow UniversityDepartment of Pathology, Soochow Medical College, Soochow UniversityDepartment of Pathology, Children’s Hospital, Soochow UniversityDepartment of Pathology and Institute of Molecular Pathology, Jiangxi Provincial Key Laboratory for Precision Pathology and Intelligent Diagnosis, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Pathology and Institute of Molecular Pathology, Jiangxi Provincial Key Laboratory for Precision Pathology and Intelligent Diagnosis, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Pathology and Institute of Molecular Pathology, Jiangxi Provincial Key Laboratory for Precision Pathology and Intelligent Diagnosis, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Pathology, Sun Yat-sen Memorial Hospital, Sun Yat-sen UniversityDepartment of Pathology, Soochow Medical College, Soochow UniversityDepartment of Pathology, Soochow Medical College, Soochow UniversityDepartment of Pathology, Soochow Medical College, Soochow UniversitySchool of Electronics and Information Engineering, Soochow UniversityDepartment of Pathology, Soochow Medical College, Soochow UniversityAbstract Lymph node micro-metastasis represents the initial stage of breast cancer spread or metastasis. However, the limited size of these hidden lesions restricts dataset expansion, presenting a significant challenge for manual examination and conventional deep learning techniques. By harnessing the power of meta-learning on limited datasets, we developed a novel network named MetaTrans, equipped with a 34-category dataset (MT-MCD) to effectively pinpoint micro-metastases in lymph nodes from pathological images. MetaTrans demonstrated superior performance on two different multi-center datasets and excelled in the 0-shot task for intraoperative frozen section diagnosis. Beyond breast cancer, MetaTrans efficiently identifies micro-metastases in thyroid and colorectal cancers and can be directly applied to recognize images captured by digital cameras under a microscope. Across all clinical validation scenarios, our method surpasses state-of-the-art baselines, exhibiting robust cross-domain adaptation and task-specific reliability, which highlight its translational potential in diverse pathological settings.https://doi.org/10.1038/s41746-025-01833-6
spellingShingle Jing Huang
Jingtao Wang
Junhai Shi
Hengli Ni
Shan Xu
Ping Wu
Yuexiang Ren
Lijuan Bian
Chenhan Su
Yuxuan Xu
Xinyu He
Xinjian Chen
Jianming Li
Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis
npj Digital Medicine
title Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis
title_full Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis
title_fullStr Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis
title_full_unstemmed Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis
title_short Transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis
title_sort transformer optimization with meta learning on pathology images for breast cancer lymph node micrometastasis
url https://doi.org/10.1038/s41746-025-01833-6
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