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Cancer Detection in Histopathology Whole-Slide Images using Conditional Random Fields on Deep Embedded Spaces

机译:使用深度嵌入空间中的条件随机场在组织病理学全幻灯片图像中检测癌症

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Advanced image analysis can lead to automated examination to histopatholgy images which is essential for objective and fast cancer diagnosis. Recently deep learning methods, in particular Convolutional Neural Networks (CNNs). have shown exceptionally successful performance on medical image analysis as well as computational histopathology. Because Whole-Slide Images (WSIs) have a very large size, the CNN models arc commonly applied to classify WSIs per patch. Although a CNN is trained on a large part of the input space, the spatial dependencies between patches are ignored and the inference is performed only on appearance of the individual patches. Therefore, prediction on the neighboring regions can be inconsistent. In this paper, we apply Conditional Random Fields (CRFs) over latent spaces of a trained deep CNN in order to jointly assign labels to the patches. In our approach, extracted compact features from intermediate layers of a CNN are considered as observations in a fully-connected CRF model. This leads to performing inference on a wider context rather than appearance of individual patches. Experiments show an improvement of approximately 3.9% on average FROC score for tumorous region detection in histopathology WSIs. Our proposed model, trained on the Camelyon17~1 ISBI challenge dataset, won the 2nd place with a kappa score of 0.8759 in patient-level pathologic lymph node classification for breast cancer detection.
机译:先进的图像分析可以自动检查组织病理学图像,这对于客观快速诊断癌症至关重要。最近的深度学习方法,特别是卷积神经网络(CNN)。在医学图像分析和计算组织病理学上显示出异常成功的表现。由于全幻灯片图像(WSI)的尺寸非常大,因此CNN模型通常用于对每个补丁的WSI进行分类。尽管CNN在大部分输入空间上训练,但补丁之间的空间相关性会被忽略,并且仅在出现单个补丁时才进行推断。因此,对相邻区域的预测可能会不一致。在本文中,我们将条件随机字段(CRF)应用于经过训练的深层CNN的潜在空间,以便将标签共同分配给补丁。在我们的方法中,从CNN中间层提取的紧凑特征被视为完全连接的CRF模型中的观测值。这导致在更广泛的上下文中而不是单个补丁的出现上进行推理。实验表明,组织病理学WSI中肿瘤区域检测的平均FROC得分提高了约3.9%。我们提出的模型在Camelyon17〜1 ISBI挑战数据集上进行了训练,在用于乳腺癌检测的患者水平病理淋巴结分类中,kappa得分为0.8759,获得了第二名。

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