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DCAN : Deep contour-aware networks for object instance segmentation from histology images

机译:DCAN:深度轮廓感知网络,用于从组织学图像中分割对象实例

摘要

In histopathological image analysis, the morphology of histological structures, such as glands and nuclei, has been routinely adopted by pathologists to assess the malignancy degree of adenocarcinomas. Accurate detection and segmentation of these objects of interest from histology images is an essential prerequisite to obtain reliable morphological statistics for quantitative diagnosis. While manual annotation is error-prone, time-consuming and operator-dependant, automated detection and segmentation of objects of interest from histology images can be very challenging due to the large appearance variation, existence of strong mimics, and serious degeneration of histological structures. In order to meet these challenges, we propose a novel deep contour-aware network (DCAN) under a unified multi-task learning framework for more accurate detection and segmentation. In the proposed network, multi-level contextual features are explored based on an end-to-end fully convolutional network (FCN) to deal with the large appearance variation. We further propose to employ an auxiliary supervision mechanism to overcome the problem of vanishing gradients when training such a deep network. More importantly, our network can not only output accurate probability maps of histological objects, but also depict clear contours simultaneously for separating clustered object instances, which further boosts the segmentation performance. Our method ranked the first in two histological object segmentation challenges, including 2015 MICCAI Gland Segmentation Challenge and 2015 MICCAI Nuclei Segmentation Challenge. Extensive experiments on these two challenging datasets demonstrate the superior performance of our method, surpassing all the other methods by a significant margin.
机译:在组织病理学图像分析中,病理学家通常采用组织学结构(如腺体和细胞核)的形态来评估腺癌的恶性程度。从组织学图像中准确检测和分割这些感兴趣的对象是获得可靠的形态统计数据进行定量诊断的必要前提。尽管手动注释容易出错,耗时且取决于操作员,但是由于外观变化大,存在强烈的模拟物以及组织结构严重退化,因此从组织学图像中自动检测和分割感兴趣的对象可能非常具有挑战性。为了应对这些挑战,我们在统一的多任务学习框架下提出了一种新颖的深度轮廓感知网络(DCAN),以实现更准确的检测和分割。在提出的网络中,基于端到端全卷积网络(FCN)探索了多级上下文特征,以应对较大的外观变化。我们还建议采用辅助监督机制来克服训练这种深层网络时梯度消失的问题。更重要的是,我们的网络不仅可以输出准确的组织学对象概率图,还可以同时描绘清晰的轮廓线以分离聚类对象实例,从而进一步提高了分割性能。我们的方法在两个组织学对象分割挑战中排名第一,包括2015 MICCAI腺体分割挑战和2015 MICCAI核分割挑战。在这两个具有挑战性的数据集上进行的大量实验证明了我们方法的优越性能,远远超过了所有其他方法。

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