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Deep Features for Breast Cancer Histopathological Image Classification

机译:乳腺癌组织病理学图像分类的深度特征

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Breast cancer (BC) is a deadly disease, killing millions of people every year. Developing automated malignant BC detection system applied on patient's imagery can help dealing with this problem more efficiently, making diagnosis more scalable and less prone to errors. Not less importantly, such kind of research can be extended to other types of cancer, making even more impact to help saving lives. Recent results on BC recognition show that Convolution Neural Networks (CNN) can achieve higher recognition rates than hand-crafted feature descriptors, but the price to pay is an increase in complexity to develop the system, requiring longer training time and specific expertise to fine-tune the architecture of the CNN. DeCAF (or deep) features consist of an in-between solution it is based on reusing a previously trained CNN only as feature vectors, which is then used as input for a classifier trained only for the new classification task. In the light of this, we present an evaluation of DeCaf features for BC recognition, in order to better understand how they compare to the other approaches. The experimental evaluation shows that these features can be a viable alternative to fast development of high-accuracy BC recognition systems, generally achieving better results than traditional hand-crafted textural descriptors and outperforming task-specific CNNs in some cases.
机译:乳腺癌(BC)是一种致命的疾病,每年杀死数百万人。在患者图像上应用的自动化恶性BC检测系统可以帮助更有效地处理这个问题,使诊断更加可扩展,不太容易出错。不太重要的是,这种研究可以扩展到其他类型的癌症,使得更多的影响力来帮助挽救生命。 BC识别的最近结果表明,卷积神经网络(CNN)可以实现比手工制作的特征描述符更高的识别率,但支付的价格是开发系统的复杂性的增加,需要更长的培训时间和特定专业知识调整CNN的架构。 Decaf(或深)特征包括在介入的解决方案中,它基于仅作为特征向量重用的先前训练的CNN,然后用作仅为新分类任务培训的分类器的输入。鉴于此,我们对BC识别进行了评估,以便更好地理解它们与其他方法的比较。实验评估表明,这些特征可以是快速发展高精度BC识别系统的可行替代方案,通常在某些情况下实现比传统的手工制作的纹理描述符和特定于任务特定的CNN更好的结果。

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