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Optimized color decomposition of localized whole slide images and convolutional neural network for intermediate prostate cancer classification

机译:局部整体幻灯片图像和卷积神经网络的优化颜色分解,中间前列腺癌分类

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This paper presents a fully automatic approach to grade intermediate prostate malignancy with hematoxylin & eosin-stained whole slide images. Deep learning architectures such as convolutional neural networks have been utilized in the domain of histopathology for automated carcinoma detection and classification. However, few work show its power in discriminating intermediate Gleason patterns, due to sporadic distribution of prostate glands on stained surgical section samples. We propose optimized hematoxylin decomposition on localized images, followed by convolutional neural network to classify Gleason patterns 3+4 and 4+3 without handcrafted features or gland segmentation. Crucial glands morphology and structural relationship of nuclei are extracted twice in different color space by the multi-scale strategy to mimic pathologists' visual examination. Our novel classification scheme evaluated on 169 whole slide images yielded a 70.41% accuracy and corresponding area under the receiver operating characteristic curve of 0.7247.
机译:本文介绍了血液杂志和曙红染色的整个幻灯片图像的级别中间前列腺恶性肿瘤的全自动方法。诸如卷积神经网络等深度学习架构已被利用在自动癌检测和分类的组织病理学域中。然而,由于前列腺散发在染色的手术部分样品上的散发性分布,很少有工作表明其具有辨别中间体肠道模式的力量。我们向局部图像提出了优化的血毒性分解,然后是卷积神经网络,分类Gleason模式3 + 4和4 + 3,而无需手工制作功能或腺体分割。通过多尺度策略在不同颜色空间中提取两次核的关键腺体形态和结构关系,以模仿病理学家的视觉检查。我们在169个整个幻灯片图像中评估了我们的新型分类方案,在接收器操作特性曲线下产生了70.41%的精度和相应区域,为0.7247。

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