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Feature extraction and Cluster analysis of Pancreatic Pathological Image Based on Unsupervised Convolutional Neural Network

机译:基于无监督卷积神经网络的胰腺病理图像特征提取与聚类分析

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In recent years, computer-aided diagnosis based on machine learning, mainly based on Convolutional Neural Network (CNN) has been studied and developed rapidly. Those methods are not only helpful for classification, but also useful for feature extraction from given images, especially encoding image data into discrete representation helps us obtain new knowledge. Previous researches showed that CNN can by trainded for not only dection of cancers but also classification of gene expression subtypes. Although most of these studies are based on supervised learning that needs curated pathological knowledge, it is useful to extract characteristic features in the given images, using unsupervised machine learning in order to obtain new pathological findings. We applied cluster analysis using CNN which is trained based on adversarial training and maximization of mutual information and showed that it can classify those pathological images into discrete categories. Next, we applied our model for comparison of the two staining method in order to evaluate the degree of malignancy according to fibrosis and cell differentiation. The results showed that encoding of the histopathological image into discrete representations helps us to interpret tumor images.
机译:近年来,基于机器学习的计算机辅助诊断(主要基于卷积神经网络(CNN))已经得到了研究和快速发展。这些方法不仅有助于分类,而且还有助于从给定图像中提取特征,尤其是将图像数据编码为离散表示形式有助于我们获得新知识。先前的研究表明,CNN不仅可以训练癌症的病灶,而且可以训练基因表达亚型的分类。尽管这些研究大多数基于需要病态病理学知识的监督学习,但是使用无监督机器学习来获取给定图像的特征特征是有用的,以获得新的病理学发现。我们应用了基于CNN的聚类分析,该CNN是在对抗性训练和相互信息最大化的基础上训练的,并表明它可以将那些病理图像分类为离散的类别。接下来,我们将我们的模型用于两种染色方法的比较,以便根据纤维化和细胞分化来评估恶性程度。结果表明,将组织病理学图像编码为离散表示形式有助于我们解释肿瘤图像。

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