Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification

Abstract Breast cancer poses a significant threat to women’s health. Early diagnosis using pathological images is crucial for effective treatment planning. However, the low resolution of pathological images poses significant challenges for the extraction of valid information, while their high comple...

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Main Authors: Qinyi Zhang, Honglei Gao, Wenhao Li, Zhipeng Xu, Ting Ouyang, Zongyun Gu
Format: Article
Language:English
Published: Nature Portfolio 2025-06-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-04344-2
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author Qinyi Zhang
Honglei Gao
Wenhao Li
Zhipeng Xu
Ting Ouyang
Zongyun Gu
author_facet Qinyi Zhang
Honglei Gao
Wenhao Li
Zhipeng Xu
Ting Ouyang
Zongyun Gu
author_sort Qinyi Zhang
collection DOAJ
description Abstract Breast cancer poses a significant threat to women’s health. Early diagnosis using pathological images is crucial for effective treatment planning. However, the low resolution of pathological images poses significant challenges for the extraction of valid information, while their high complexity greatly increases the difficulty of image analysis. To address these challenges, this paper introduces an innovative classification method for breast cancer histopathological images, combining enhanced nuclear information with an Enhanced Vision Transformer (EVT) model using wavelet position embedding. The quintessence of the proposed method resides in its capacity to efficiently extract both biological and foundational image features from pathological images. This is accomplished by initially enhancing nuclear information through the application of segmentation models and sophisticated image processing techniques. Subsequently, wavelet positional embedding within the EVT model is leveraged to precisely capture key information embedded within the images. Experimental outcomes have demonstrated that our method attains an accuracy rate of 94.61% and an AUC value of 99.07% on the BreaKHis dataset, significantly outperforming other baseline network models in terms of classification efficacy. Furthermore, through visual representation, this study underscores the significance of nuclear information enhancement and wavelet position transformation in the EVT model, thereby further confirming the effectiveness and effectiveness of the method we proposed.
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spelling doaj-art-ca393cc8264541c0b13faf35b4fd7b8b2025-08-20T02:05:38ZengNature PortfolioScientific Reports2045-23222025-06-0115111610.1038/s41598-025-04344-2Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classificationQinyi Zhang0Honglei Gao1Wenhao Li2Zhipeng Xu3Ting Ouyang4Zongyun Gu5College of Medical Information Engineering, Anhui University of Chinese MedicineCollege of Medical Information Engineering, Anhui University of Chinese MedicineCollege of Medical Information Engineering, Anhui University of Chinese MedicineCollege of Medical Information Engineering, Anhui University of Chinese MedicineCollege of Medical Information Engineering, Anhui University of Chinese MedicineCollege of Medical Information Engineering, Anhui University of Chinese MedicineAbstract Breast cancer poses a significant threat to women’s health. Early diagnosis using pathological images is crucial for effective treatment planning. However, the low resolution of pathological images poses significant challenges for the extraction of valid information, while their high complexity greatly increases the difficulty of image analysis. To address these challenges, this paper introduces an innovative classification method for breast cancer histopathological images, combining enhanced nuclear information with an Enhanced Vision Transformer (EVT) model using wavelet position embedding. The quintessence of the proposed method resides in its capacity to efficiently extract both biological and foundational image features from pathological images. This is accomplished by initially enhancing nuclear information through the application of segmentation models and sophisticated image processing techniques. Subsequently, wavelet positional embedding within the EVT model is leveraged to precisely capture key information embedded within the images. Experimental outcomes have demonstrated that our method attains an accuracy rate of 94.61% and an AUC value of 99.07% on the BreaKHis dataset, significantly outperforming other baseline network models in terms of classification efficacy. Furthermore, through visual representation, this study underscores the significance of nuclear information enhancement and wavelet position transformation in the EVT model, thereby further confirming the effectiveness and effectiveness of the method we proposed.https://doi.org/10.1038/s41598-025-04344-2Pathological breast cancer imageClassificationSegmentationEnhanced nuclear information fusionVisual transformer
spellingShingle Qinyi Zhang
Honglei Gao
Wenhao Li
Zhipeng Xu
Ting Ouyang
Zongyun Gu
Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification
Scientific Reports
Pathological breast cancer image
Classification
Segmentation
Enhanced nuclear information fusion
Visual transformer
title Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification
title_full Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification
title_fullStr Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification
title_full_unstemmed Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification
title_short Enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification
title_sort enhanced nuclear information fusion and visual transformer for pathological breast cancer image classification
topic Pathological breast cancer image
Classification
Segmentation
Enhanced nuclear information fusion
Visual transformer
url https://doi.org/10.1038/s41598-025-04344-2
work_keys_str_mv AT qinyizhang enhancednuclearinformationfusionandvisualtransformerforpathologicalbreastcancerimageclassification
AT hongleigao enhancednuclearinformationfusionandvisualtransformerforpathologicalbreastcancerimageclassification
AT wenhaoli enhancednuclearinformationfusionandvisualtransformerforpathologicalbreastcancerimageclassification
AT zhipengxu enhancednuclearinformationfusionandvisualtransformerforpathologicalbreastcancerimageclassification
AT tingouyang enhancednuclearinformationfusionandvisualtransformerforpathologicalbreastcancerimageclassification
AT zongyungu enhancednuclearinformationfusionandvisualtransformerforpathologicalbreastcancerimageclassification