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Breast Cancer Multi-classification from Histopathological Images with Structured Deep Learning Model

机译:具有结构化深度学习模型的组织病理学图像对乳腺癌的多分类

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摘要

Automated breast cancer multi-classification from histopathological images plays a key role in computer-aided breast cancer diagnosis or prognosis. Breast cancer multi-classification is to identify subordinate classes of breast cancer (Ductal carcinoma, Fibroadenoma, Lobular carcinoma, etc.). However, breast cancer multi-classification from histopathological images faces two main challenges from: (1) the great difficulties in breast cancer multi-classification methods contrasting with the classification of binary classes (benign and malignant), and (2) the subtle differences in multiple classes due to the broad variability of high-resolution image appearances, high coherency of cancerous cells, and extensive inhomogeneity of color distribution. Therefore, automated breast cancer multi-classification from histopathological images is of great clinical significance yet has never been explored. Existing works in literature only focus on the binary classification but do not support further breast cancer quantitative assessment. In this study, we propose a breast cancer multi-classification method using a newly proposed deep learning model. The structured deep learning model has achieved remarkable performance (average 93.2% accuracy) on a large-scale dataset, which demonstrates the strength of our method in providing an efficient tool for breast cancer multi-classification in clinical settings.
机译:从组织病理学图像自动进行的乳腺癌多分类在计算机辅助乳腺癌的诊断或预后中起着关键作用。乳腺癌的多分类是为了识别乳腺癌的下属类别(杜氏癌,纤维腺瘤,小叶癌等)。然而,根据组织病理学图像对乳腺癌进行多分类面临以下两个主要挑战:(1)与二元分类(良性和恶性)相比,乳腺癌多分类方法存在很大的困难;以及(2)由于高分辨率图像外观的广泛变化,癌细胞的高相干性以及广泛的颜色分布不均一性,因此可以分为多个类别。因此,根据组织病理学图像对乳腺癌进行自动分类具有重要的临床意义,但从未进行过探索。文献中的现有著作仅关注二元分类,但不支持进一步的乳腺癌定量评估。在这项研究中,我们提出了使用新提出的深度学习模型的乳腺癌多分类方法。结构化深度学习模型在大规模数据集上取得了出色的性能(平均准确度为93.2%),这证明了我们的方法在为临床环境中的乳腺癌多分类提供有效工具方面的优势。

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