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Multi-classification of Breast Cancer Histology Images by Using a Fine-Tuning Strategy

机译:通过微调策略对乳腺癌组织学图像进行多分类

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The adoption of automatic systems to support the diagnosis of breast cancer from histology images analysis is rapidly becoming more widespread. Most of the works in literature focus principally on a two-class problem, namely benign and malignant tumors. However, the development of multi-classification approaches would also be greatly appreciated in order to support the determination of an ideal therapeutic schedule for the treatment of breast cancer. The multi-classification of histology images is particularly challenging due to the broad variability of appearance of the image, the great differences in the spatial arrangement of the histological structures, and the heterogeneity in the color distribution. In this work, a fine-tuning strategy of ResNet, a residual convolutional neural network, is presented to address the problem of multi-classification for breast cancer histology images in normal tissue, benign lesions, in situ carcinomas and invasive carcinomas. We have combined three configurations of ResNet, differing from each other in terms of the number of layers, by using a maximum probability rule to balance out their individual weaknesses during the testing. The proposed approach achieved a remarkable performance on the images provided for the Grand Challenge on Breast Cancer Histology Images (BACH), within the context of the International Conference ICIAR 2018.
机译:通过组织学图像分析来支持乳腺癌诊断的自动系统的采用正在迅速普及。文献中的大多数作品主要集中在两类问题上,即良性和恶性肿瘤。然而,为了支持确定治疗乳腺癌的理想治疗方案,也将极大地赞赏多分类方法的发展。组织学图像的多分类特别具有挑战性,这是由于图像外观的广泛变化,组织学结构的空间排列的巨大差异以及颜色分布的异质性。在这项工作中,提出了ResNet(一种残差卷积神经网络)的微调策略,以解决正常组织,良性病变,原位癌和浸润性癌中乳腺癌组织学图像的多分类问题。通过使用最大概率规则来平衡测试过程中它们各自的弱点,我们组合了ResNet的三种配置,它们在层数方面互不相同。在国际会议ICIAR 2018的背景下,拟议的方法在为乳腺癌组织学图像挑战赛(BACH)提供的图像上取得了卓越的性能。

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