多类别结直肠癌组织病理学的高级深度学习:整合迁移学习和集成方法。

IF 2.9 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Quantitative Imaging in Medicine and Surgery Pub Date : 2025-03-03 Epub Date: 2025-02-26 DOI:10.21037/qims-24-1641
Qi Ke, Wun-She Yap, Yee Kai Tee, Yan Chai Hum, Hua Zheng, Yu-Jian Gan
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引用次数: 0

摘要

背景:癌症是一项重大的全球健康威胁,不断危及人们的福祉和生命。将深度学习应用于结直肠癌的诊断,可以提高早期检出率,从而显著降低结直肠癌患者的发病率和死亡率。我们的研究旨在优化深度学习模型在大肠癌组织病理图像分类中的性能,以帮助病理学家提高诊断准确性。方法:在本研究中,我们建立了基于深度卷积神经网络(cnn)的集成模型,用于结直肠癌组织病理图像的分类。该方法首先涉及对不同放大倍数的组织病理图像进行斑块裁剪、染色归一化、数据增强和数据平衡等数据预处理技术。随后,使用迁移学习方法对CNN模型进行微调和预训练,选择性能较好的模型作为基分类器构建集成模型。最后,使用集成模型预测最终的分类结果。为了评估所提出模型的有效性,我们在公开可用的结直肠癌数据集——肠镜活检组织病理学苏木精和伊红图像(EBHI)数据集上测试了它们的性能。结果:实验结果表明,由前5个分类器组成的集成模型在4种不同放大系数的子数据库上都取得了很好的分类精度。其中,在40倍放大的子集上,分类准确率最高达到99.11%;在100倍放大子集上,达到99.36%;在200倍放大子集上,为99.29%;在400倍放大率的子集上,它是98.96%。此外,所提出的集成模型在召回率、准确率和F1分数方面取得了优异的成绩。结论:所提出的集成模型在结直肠癌组织病理图像的EBHI数据集上获得了良好的分类性能。本研究结果可能有助于结直肠癌的早期发现和准确分类,从而有助于更精确的结直肠癌诊断分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced deep learning for multi-class colorectal cancer histopathology: integrating transfer learning and ensemble methods.

Background: Cancer is a major global health threat, constantly endangering people's well-being and lives. The application of deep learning in the diagnosis of colorectal cancer can improve early detection rates, thereby significantly reducing the incidence and mortality of colorectal cancer patients. Our study aims to optimize the performance of deep learning model in the classification of colorectal cancer histopathological images to assist pathologists in improving diagnostic accuracy.

Methods: In this study, we developed ensemble models based on deep convolutional neural networks (CNNs) for the classification of colorectal cancer histopathology images. The method first involved data preprocessing techniques such as patch cropping, stain normalization, data augmentation and data balancing on histopathology images with different magnifications. Subsequently, the CNN models were fine-tuned and pre-trained using transfer learning methods, and models with superior performance were then selected as the base classifiers to build the ensemble models. Finally, the ensemble models were used to predict the final classification outcomes. To evaluate the effectiveness of the proposed models, we tested their performance on a publicly available colorectal cancer dataset, Enteroscope Biopsy Histopathological Hematoxylin and Eosin Image (EBHI) dataset.

Results: Experimental results show that the proposed ensemble model, composed of the top five classifiers, achieved the promising classification accuracy across sub-databases with four different magnification factors. Specifically, on the 40× magnification subset, the highest classification accuracy reached 99.11%; on the 100× magnification subset, it reached 99.36%; on the 200× magnification subset, it was 99.29%; and on the 400× magnification subset, it was 98.96%. Additionally, the proposed ensemble model achieved exceptional results in recall, precision, and F1 score.

Conclusions: The proposed ensemble models obtained good classification performance on the EBHI dataset of histopathological images for colorectal cancer. The findings of this study may contribute to the early detection and accurate classification of colorectal cancer, thereby aiding in more precise diagnostic analysis of colorectal cancer.

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来源期刊
Quantitative Imaging in Medicine and Surgery
Quantitative Imaging in Medicine and Surgery Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.20
自引率
17.90%
发文量
252
期刊介绍: Information not localized
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