基于随机深度卷积神经网络的组织病理学图像分类

Yanan Yang, F. Farhat, Yunzhe Xue, F. Shih, Usman Roshan
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引用次数: 0

摘要

全切片图像的分类对肿瘤的认识和诊断具有重要意义。病理学家通常必须处理大量的病理图像,这些图像可能有数百或数千张,这需要时间,而且容易出现人工错误。本文研究了一种基于随机深度卷积神经网络(RDCNN)的自动化方法。在以前的工作中,该网络已经显示出对图像相似度的高精度。我们推测,对于组织病理学图像,相似性可能在图像的准确分类中起重要作用。我们在四个病理图像数据集上对RDCNN与训练好的深度卷积神经网络VGG16和ResNet50进行了比较。我们发现RDCNN在四个数据集上给出了平均最高的准确率。在两个数据集上,RDCNN的准确率明显更高,在其他数据集上具有可比性。我们检查了ISIC和Gleason数据集中随机选择的最相似的图像,并发现与ResNet50和VGG16相比,RDCNN特征空间中的大多数相似图像确实属于同一类别。对于这样的组织病理学数据集,相似性也意味着相同的类成员,我们可以期望RDCNN是高度准确和有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Histopathology Images with Random Depthwise Convolutional Neural Networks
The classification of whole slide images plays an important role in understanding and diagnosing cancer. Pathologists typically have to work through numerous pathology images that can be in the order of hundreds or thousands which takes time and is prone to manual error. Here we investigate an automated method based on a random depthwise convolutional neural network (RDCNN). In previous work this network has shown to achieve high accuracies for image similarity. We conjecture that for histopathology images similarity may play an important role in accurate classification of the images. We evaluate RDCNN against trained deep convolutional neural networks VGG16 and ResNet50 on four pathology image datasets. We find RDCNN to give the average highest accuracy across the four datasets. On two datasets RDCNN is significantly higher in accuracy and comparable in the others. We examine top similar images to a randomly selected one in the ISIC and Gleason datasets and see that it indeed most of the similar images belong to the same category as the query in the RDCNN feature space compared to ResNet50 and VGG16. For such histopathology datasets where similarity also implies same class membership we can expect RDCNN to be highly accurate and useful.
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