基于深度学习网络集成的横纹肌肉瘤组织学分类

Saloni Agarwal, M. Abaker, Xinyi Zhang, O. Daescu, D. Barkauskas, E. Rudzinski, P. Leavey
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引用次数: 2

摘要

已经开发了大量的机器学习方法来识别组织学图像中的主要肿瘤类型,但对肿瘤亚型的自动分类知之甚少。横纹肌肉瘤(Rhabdomyosarcoma, RMS)是儿童中最常见的软组织癌,有几种亚型,最常见的是胚胎型、肺泡型和梭形细胞型。将RMS分类为正确的亚型是至关重要的,因为已知亚型对不同的治疗方案有反应。人工分类需要很高的专业知识,并且由于组织病理图像的细微变化而耗时。在本文中,我们介绍并比较了基于机器学习的架构,用于横纹肌肉瘤的三种主要亚型的自动分类,从整个幻灯片图像(WSI)。出于训练目的,我们只知道分配给WSI的类别,没有对图像进行手动注释,而大多数与肿瘤分类相关的工作都需要对WSI进行手动区域或细胞核注释。为了预测新的WSI的类别,我们首先将其划分为块,预测每个块的类别,然后使用软投票的阈值将块级别预测转换为WSI级别预测。在一个大而多样的测试数据集上,我们获得了94.87%的WSI肿瘤亚型分类准确率。我们在5倍的wsi放大水平下实现了如此精确的分类,与使用20倍或10倍的相关工作不同。我们的方法的一个直接优点是,由于图像分辨率较低,训练和测试都可以更快地进行计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rhabdomyosarcoma Histology Classification using Ensemble of Deep Learning Networks
A significant number of machine learning methods have been developed to identify major tumor types in histology images, yet much less is known about automatic classification of tumor subtypes. Rhabdomyosarcoma (RMS), the most common type of soft tissue cancer in children, has several subtypes, the most common being Embryonal, Alveolar, and Spindle Cell. Classifying RMS to the right subtype is critical, since subtypes are known to respond to different treatment protocols. Manual classification requires high expertise and is time consuming due to subtle variance in appearance of histopathology images. In this paper, we introduce and compare machine learning based architectures for automatic classification of Rhabdomyosarcoma into the three major subtypes, from whole slide images (WSI). For training purpose, we only know the class assigned to a WSI, having no manual annotations on the image, while most related work on tumor classification requires manual region or nuclei annotations on WSIs. To predict the class of a new WSI we first divide it into tiles, predict the class of each tile, then use thresholding with soft voting to convert tile level predictions to WSI level prediction. We obtain 94.87% WSI tumor subtype classification accuracy on a large and diverse test dataset. We achieve such accurate classification at 5X magnification level of WSIs, departing from related work, that uses 20X or 10X for best results. A direct advantage of our method is that both training and testing can be performed much faster computationally due to the lower image resolution.
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