利用卷积神经网络和注意力机制诊断乳腺癌的综合系统

Deepti Sharma, Rajneesh Kumar, Anurag Jian
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引用次数: 0

摘要

在大多数恶性肿瘤中,乳腺癌是致命的,每年约有 50 万人死于乳腺癌。被称为浸润性导管癌(IDC)的乳腺癌亚型出奇地常见。病理学家在判断患者是否患有乳腺癌时,通常会重点检查含有 IDC 的区域。虽然这种癌症极其致命,但如果得到及时诊断和治疗,存活率和预期寿命都会大大提高。根据乳腺癌患者的分期,治疗策略也有所不同。在这项研究中,我们对从 Kaggle 获取的公开乳腺组织病理学图像数据集采用了一种分类方法。为了便于检索,我们限制了该数据集中图像的 IDC 区域。乳腺癌 IDC 数据集包含 277,524 条记录,其中 78,786 条为阳性记录。利用 IDC 乳腺癌数据集对 277524 张图像进行分类,分别得到 78786 个阳性 IDC 和 198738 个阴性 IDC。作者引入了一种新的深度卷积神经网络架构和注意力分类机制。该模型在 IDC 识别方面达到了最先进的准确水平,为今后的研究树立了新的标杆。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated system for breast cancer diagnosis using convolution neural network and attention mechanism
In most malignancies, breast cancer is fatal, accounting for approximately 500,000 annual deaths. The subtype of breast cancer known as Invasive Ductal Carcinoma (IDC) is surprisingly common. Pathologists commonly focus on IDC-containing regions when trying to determine if a patient has breast cancer. Although extremely fatal, survival rates and expected lifespans improve dramatically with prompt diagnosis and treatment. The treatment strategy also varies based on the breast cancer patient’s stage. In this research, we use a classification method for a publically available dataset of breast histopathology images obtained from the Kaggle. The IDC regions of the images in this dataset have been restricted for easy retrieval. The breast cancer IDC data set contains 277,524 records, of which 78,786 are positive. The 277,524 images were classified using an IDC breast cancer dataset, with 78,786 positive IDC and 198,738 negative IDC, respectively. The authors introduce a new architecture of deep convolutional neural networks and attention mechanism for classification. The model achieves state-of-the-art levels of accuracy for IDC identification, setting a new benchmark for future studies.
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