IF 3 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Lama A Aldakhil, Shuaa S Alharbi, Abdulrahman Aloraini, Haifa F Alhasson
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引用次数: 0

摘要

背景:乳腺癌诊断是一项全球性的健康挑战,需要创新方法来提高早期检测的准确性和效率。本研究探讨了基于注意力的深度学习模型与传统机器学习(ML)方法的整合,以对组织病理学乳腺癌图像进行分类。具体来说,该研究利用了高效通道空间注意力网络(ECSAnet),通过利用先进的注意力机制来加强跨空间和通道维度的特征提取,从而优化二元分类。方法使用 BreakHis 数据集进行了实验,该数据集包括乳腺肿瘤的组织病理学图像,分为良性和恶性,放大倍数分别为 40×、100×、200× 和 400×。对 ECSAnet 进行了独立评估,并结合决策树和逻辑回归等传统 ML 模型进行了评估。研究还分析了放大倍数对分类准确性、稳健性和泛化的影响。研究结果在准确性、稳健性和泛化方面,较低的放大级别始终优于较高的放大级别,尤其是在二元分类任务中。此外,将 ECSAnet 与传统的 ML 模型相结合还能提高分类性能,尤其是在较低放大倍率的情况下。这些发现凸显了基于注意力模型的诊断优势,以及根据诊断目标调整放大倍数的重要性。结论:本研究证明了基于注意力的深度学习模型(如 ECSAnet)在与传统 ML 方法相结合时改善乳腺癌诊断的潜力。研究结果强调了较低放大倍率的诊断效用,为未来研究混合架构和多模态方法进一步提高乳腺癌诊断水平奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Attention-Based Deep Learning in Binary Classification for Early-Stage Breast Cancer Diagnosis.

Background: Breast cancer diagnosis is a global health challenge, requiring innovative methods to improve early detection accuracy and efficiency. This study investigates the integration of attention-based deep learning models with traditional machine learning (ML) methods to classify histopathological breast cancer images. Specifically, the Efficient Channel-Spatial Attention Network (ECSAnet) is utilized, optimized for binary classification by leveraging advanced attention mechanisms to enhance feature extraction across spatial and channel dimensions. Methods: Experiments were conducted using the BreakHis dataset, which includes histopathological images of breast tumors categorized as benign or malignant across four magnification levels: 40×, 100×, 200×, and 400×. ECSAnet was evaluated independently and in combination with traditional ML models, such as Decision Trees and Logistic Regression. The study also analyzed the impact of magnification levels on classification accuracy, robustness, and generalization. Results: Lower magnification levels consistently outperformed higher magnifications in terms of accuracy, robustness, and generalization, particularly for binary classification tasks. Additionally, combining ECSAnet with traditional ML models improved classification performance, especially at lower magnifications. These findings highlight the diagnostic strengths of attention-based models and the importance of aligning magnification levels with diagnostic objectives. Conclusions: This study demonstrates the potential of attention-based deep learning models, such as ECSAnet, to improve breast cancer diagnostics when integrated with traditional ML methods. The findings emphasize the diagnostic utility of lower magnifications and provide a foundation for future research into hybrid architectures and multimodal approaches to further enhance breast cancer diagnosis.

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来源期刊
Diagnostics
Diagnostics Biochemistry, Genetics and Molecular Biology-Clinical Biochemistry
CiteScore
4.70
自引率
8.30%
发文量
2699
审稿时长
19.64 days
期刊介绍: Diagnostics (ISSN 2075-4418) is an international scholarly open access journal on medical diagnostics. It publishes original research articles, reviews, communications and short notes on the research and development of medical diagnostics. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodological details must be provided for research articles.
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