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An EM-based semi-supervised deep learning approach for semantic segmentation of histopathological images from radical prostatectomies

机译:基于EM基半监督的自由基前列腺切除术的组织病理学图像的语义分割的深度学习方法

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摘要

Automated Gleason grading is an important preliminary step for quantitative histopathological feature extraction. Different from the traditional task of classifying small pre-selected homogeneous regions, semantic segmentation provides pixel-wise Gleason predictions across an entire slide. Deep learning based segmentation models can automatically learn visual semantics from data, which alleviates the need for feature engineering. However, performance of deep learning models is limited by the scarcity of large-scale fully annotated datasets, which can be both expensive and time-consuming to create. One way to address this problem is to leverage external weakly labeled datasets to augment models trained on the limited data. In this paper, we developed an expectation maximization-based approach constrained by an approximated prior distribution in order to extract useful representations from a large number of weakly labeled images generated from low-magnification annotations. This method was utilized to improve the performance of a model trained on a limited fully annotated dataset. Our semi-supervised approach trained with 135 fully annotated and 1800 weakly annotated tiles achieved a mean Jaccard Index of 49.5% on an independent test set, which was 14% higher than the initial model trained only on the fully annotated dataset. (C) 2018 Elsevier Ltd. All rights reserved.
机译:自动化Gleason分级是定量组织病理学特征提取的重要初步步骤。不同于分类小预选均匀区域的传统任务,语义分割在整个幻灯片上提供像素明智的格里森预测。基于深度学习的分段模型可以自动从数据中学习视觉语义,减轻了对特征工程的需求。然而,深度学习模型的性能受到大规模完全注释数据集的稀缺的限制,这可能既昂贵又耗时。解决此问题的一种方法是利用外部弱标记的数据集来增加在有限数据上培训的增强模型。在本文中,我们开发了由近似的先前分布限制的基于最大化的基于方法,以便从低倍率注释产生的大量弱标记的图像中提取有用的表示。利用该方法来改善在有限的完全注释数据集上培训的模型的性能。我们的半监督方法培训,有135个完全注释和1800个弱销毁瓷砖在独立的测试集中实现了49.5%的平均Jaccard指数,比仅在完全注释的数据集上培训的初始模型高出14%。 (c)2018年elestvier有限公司保留所有权利。

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