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Multi-Organ Gland Segmentation Using Deep Learning

机译:使用深度学习进行多器官腺分割

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摘要

Clinical morphological analysis of histopathology samples is an effective method in cancer diagnosis. Computational pathology methods can be employed to automate this analysis, providing improved objectivity and scalability. More specifically, computational techniques can be used in segmenting glands, which is an essential factor in cancer diagnosis. Automatic delineation of glands is a challenging task considering a large variability in glandular morphology across tissues and pathological subtypes. A deep learning based gland segmentation method can be developed to address the above task, but it requires a large number of accurate gland annotations from several tissue slides. Such a large dataset need to be generated manually by experienced pathologists, which is laborious, time-consuming, expensive, and suffers from the subjectivity of the annotator. So far, deep learning techniques have produced promising results on a few organ-specific gland segmentation tasks, however, the demand for organ-specific gland annotations hinder the extensibility of these techniques to other organs. This work investigates the idea of cross-domain (-organ type) approximation that aims at reducing the need for organ-specific annotations. Unlike parenchyma, the stromal component of tissues, that lies between the glands, is more consistent across several organs. It is hypothesized that an automatic method, that can precisely segment the stroma, would pave the way for a cross-organ gland segmentation. Two proposed Dense-U-Nets are trained on H&E strained colon adenocarcinoma samples focusing on the gland and stroma segmentation. The trained networks are evaluated on two independent datasets, they are, a H&E stained colon adenocarcinoma dataset and a H&E stained breast invasive cancer dataset. The trained network targeting the stroma segmentation performs similar to the network targeting the gland segmentation on the colon dataset. Whereas, the former approach performs significantly better compared to the latter approach on the breast dataset, showcasing the higher generalization capacity of the stroma segmentation approach. The networks are evaluated using Dice coefficient and Hausdorff distance computed between the ground truth gland masks and the predicted gland masks. The conducted experiments validate the efficacy of the proposed stoma segmentation approach toward multi-organ gland segmentation.
机译:组织病理学样本的临床形态分析是诊断癌症的有效方法。可以使用计算病理学方法来自动执行此分析,从而提供更高的客观性和可扩展性。更具体地,计算技术可以用于分割腺体,这是癌症诊断中的重要因素。考虑到跨组织和病理亚型的腺体形态差异很大,自动划定腺体是一项艰巨的任务。可以开发基于深度学习的腺体分割方法来解决上述任务,但是它需要来自多个组织切片的大量准确的腺体注释。如此大的数据集需要由经验丰富的病理学家手动生成,这很费力,费时,昂贵,并且存在注释者的主观性。到目前为止,深度学习技术已经在一些特定于器官的腺体分割任务上取得了可喜的成果,但是,对特定于器官的腺体注释的需求阻碍了这些技术向其他器官的扩展。这项工作研究了跨域(-器官类型)近似的想法,旨在减少对器官特定注释的需求。与薄壁组织不同,位于腺体之间的组织基质成分在多个器官之间更加一致。假设可以精确分割基质的自动方法将为跨器官腺的分割铺平道路。针对H&E应变的结肠腺癌样本训练了两个拟议的Dense-U-Net,重点是腺体和基质的分割。经过训练的网络在两个独立的数据集上进行评估,分别是H&E染色的结肠腺癌数据集和H&E染色的乳腺浸润癌数据集。针对基质分割的训练网络与针对结肠数据集上的腺分割的网络相似。而在乳腺数据集上,前一种方法的效果明显优于后一种方法,这表明基质分割方法具有更高的泛化能力。使用Dice系数和Hausdorff距离(在地面真腺屏蔽层和预测的腺屏蔽层之间计算)来评估网络。进行的实验验证了所提出的造口术分割方法对多器官腺体分割的功效。

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