病理学网:利用深度学习和可解释的人工智能增强乳腺癌分类。

IF 3.6 3区 医学 Q2 ONCOLOGY
American journal of cancer research Pub Date : 2025-02-15 eCollection Date: 2025-01-01 DOI:10.62347/XKFN1793
Kalappanaickenpatty Suriaprakasam Manojee, Athiappan Rajiv Kannan
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引用次数: 0

摘要

乳腺癌是一种影响全球妇女的疾病,因此早期和精确的分类是提高生存率的最佳治疗方法。然而,乳腺癌分类在可扩展性、固定大小的输入图像以及对有限数据集的过拟合等方面存在困难。为了解决这些问题,本研究提出了一种用于乳腺癌分类的病理网络模型,该模型克服了颜色归一化的可扩展性问题,将门控循环单元(GRU)网络与U-Net架构集成在一起,无需调整大小和计算效率即可处理图像,并解决了过拟合问题。该模型使用自动参考图像选择和Reinhard方法进行颜色标准化来收集和规范化组织病理学图像。同时,利用增强自适应非局部均值(EANLM)滤波去噪以保持图像特征。这些预处理图像经过语义分割,以隔离图像的特定部分,然后使用改进的灰度共生矩阵(I-GLCM)进行特征提取,以揭示图像中的精细图案和纹理。这些特征作为与GRU网络集成的分类U-Net模型的输入,以提高模型的性能。最后,对分类结果进行扩展,并使用XAI对模型的预测进行清晰的可视化解释。所提出的病理网络模型使用了100X BreakHis数据集,在乳腺癌分类中达到了98.90%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Patho-Net: enhancing breast cancer classification using deep learning and explainable artificial intelligence.

Breast cancer is a disorder affecting women globally, and hence an early and precise classification is the best possible treatment to increase the survival rate. However, the breast cancer classification faced difficulties in scalability, fixed-size input images, and overfitting on limited datasets. To tackle these issues, this work proposes a Patho-Net model for breast cancer classification that overcomes the problems of scalability in color normalization, integrates the Gated Recurrent Unit (GRU) network with the U-Net architecture to process images without the need for resizing and computational efficiency, and addresses the overfitting problems. The proposed model collects and normalizes histopathology images using automated reference image selection with the Reinhard method for color standardization. Also, the Enhanced Adaptive Non-Local Means (EANLM) filtering is utilized for noise removal to preserve image features. These preprocessed images undergo semantic segmentation to isolate specific parts of an image, followed by feature extraction using an Improved Gray Level Co-occurrence Matrix (I-GLCM) to reveal fine patterns and textures in images. These features serve as input into the classification U-Net model integrated with GRU networks to improve the model performance. Finally, the classification result is expanded, and XAI is used for clear visual explanations of the model's predictions. The proposed Patho-Net model, which uses the 100X BreakHis dataset, achieves an accuracy of 98.90% in the classification of breast cancer.

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来源期刊
自引率
3.80%
发文量
263
期刊介绍: The American Journal of Cancer Research (AJCR) (ISSN 2156-6976), is an independent open access, online only journal to facilitate rapid dissemination of novel discoveries in basic science and treatment of cancer. It was founded by a group of scientists for cancer research and clinical academic oncologists from around the world, who are devoted to the promotion and advancement of our understanding of the cancer and its treatment. The scope of AJCR is intended to encompass that of multi-disciplinary researchers from any scientific discipline where the primary focus of the research is to increase and integrate knowledge about etiology and molecular mechanisms of carcinogenesis with the ultimate aim of advancing the cure and prevention of this increasingly devastating disease. To achieve these aims AJCR will publish review articles, original articles and new techniques in cancer research and therapy. It will also publish hypothesis, case reports and letter to the editor. Unlike most other open access online journals, AJCR will keep most of the traditional features of paper print that we are all familiar with, such as continuous volume, issue numbers, as well as continuous page numbers to retain our comfortable familiarity towards an academic journal.
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