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Deep positive-unlabeled learning for region of interest localization in breast tissue images

机译:乳腺组织图像中利息定位区域深度积极的

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Rapid digitization of whole-slide images (WSIs) with slide scanners, along with the advancements in deep learning strategies has empowered the development of computerized image analysis algorithms for automated diagnosis, prognosis, and prediction of various types of cancers in digital pathology. These analyses can be enhanced and expedited by confining them to relevant tumor region on the large-sized and multi-resolution WSIs. The detection of tumor-region-of-interest (TRoI) on WSTs can facilitate to automatically measure the tumor size as well as to compute the distance to the resection margin. It can also ease the process of identifying high-power-fields (HPFs), which arc essential towards the grading of tumor proliferation scores. In practice, pathologists select these regions by visual inspection of WSIs, which is a cumbersome, time-consuming process and affected by inter- and intra- pathologist variability. State-of-the-art deep learning-based methods perform well on the TRoI detection task by using supervised algorithms, however, they require accurate TRoI and non-TRoI annotations to train the algorithms. Acquiring such annotations is a tedious task and incurs observational variability. In this work, we propose a positive and unlabeled learning approach that uses a few examples of HPF regions (positive annotations) to localize the invasive TRoIs on breast cancer WSIs. We use unsupervised deep autoencoders with Gaussian Mixture Model-based clustering to identify the TRoI in a patch-wise manner. The algorithm is developed using 90 HPF-annotated WSIs and is validated on 30 fully-annotated WSIs. It. yielded a Dice coefficient of 75.219c, a true positive rate of 78.62% and a true negative rate of 97.48% in terms of pixel-by-pixel evaluation compared to the pathologists annotations. Significant correspondence between the results of the proposed algorithm and the state-of-the-art supervised ConvNet indicates the efficacy of the proposed algorithm.
机译:全幻灯片图像(WSIS)与滑动扫描器的快速数字化,以在深学习策略的进步已经沿授权的计算机化图像分析算法用于自动诊断,预后,和各种类型的在数字病理学癌症的预测发展。这些分析可以得到提升,通过将它们限制在相关的肿瘤区域上的大尺寸和多分辨率峰会加快。肿瘤区域的感兴趣(TROI)对武器系统训练的检测可以促进自动地测量肿瘤的大小,以及以计算的切缘的距离。它也可以缓解识别高电场(HPFS),该电弧向肿瘤增殖分数的分级必不可少的过程。在实践中,由病理学家峰会目视检查,这是一个麻烦的,耗时的过程和受病理学家间和分子内的变异选择这些区域。国家的最先进的深基础的学习的方法通过使用监督算法的特洛伊检测任务表现良好,但是,他们需要准确特洛伊和非特洛伊注释训练算法。收购这样的标注是一个繁琐的任务,即被观察变化。在这项工作中,我们建议采用HPF区域(正注释)的几个例子来本地化乳腺癌的信息社会世界峰会的侵入三河积极的和未标记的学习方法。我们使用基于模型的高斯混合聚类无监督的深层自动编码识别补丁式的方式的特洛伊。该算法采用90 HPF标注的信息社会世界峰会制定并于30完全注释的信息社会世界峰会进行验证。它。得到75.219c的骰子系数,78.62的%A真阳性率和97.48%的像素的逐像素的评估方面相比病理学家注释的真阴性率。所提出的算法的结果和所述状态的最先进之间显著对应监督ConvNet表示该算法的效力。

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