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Automated Gleason grading of prostate cancer using transfer learning from general-purpose deep-learning networks

机译:从通用深度学习网络中使用转移学习的前列腺癌自动化Glason分级

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摘要

Two deep-learning algorithms designed to classify images according to the Gleason grading system that used transfer learning from two well-known general-purpose image classification networks (AlexNet and GoogleNet) were trained on Hematoxylin–Eosin histopathology stained microscopy images with prostate cancer. The dataset consisted of 439 images asymmetrically distributed in four Gleason grading groups. Mean and standard deviation accuracy for AlexNet derivate network was of 61.17±7 and for GoogleNet derivate network was of 60.9±7.4. The similar results obtained by the two networks with very different architecture, together with the normal distribution of classification error for both algorithms show that we have reached a maximum classification rate on this dataset. Taking into consideration all the constraints, we conclude that the resulted networks could assist pathologists in this field, providing first or second opinions on Gleason grading, thus presenting an objective opinion in a grading system which has showed in time a great deal of interobserver variability.
机译:旨在根据从两个公知的通用图像分类网络(AlexNet和Googlenet)的Gleason分级系统进行分类的深度学习算法在苏木精 - 嗜酸酯组织病理学染色的显微镜图像上培训,具有前列腺癌。数据集包括在四个Gleason分级组中不对称分布的439个图像。 AlexNet Derivate网络的平均值和标准偏差精度为61.17±7,对于Googlenet衍生网络为60.9±7.4。通过这两个网络具有非常不同的架构获得的,是与分类错误的两种算法的正态分布一起类似的结果表明,我们已经达到了这个数据集最大的分类率。考虑到所有的限制,我们得出结论,所产生的网络可以帮助该领域的病理学家,为Glason分级提供第一或第二次观点,从而在分级系统中展示了一个有很大的Interobserver变异性的评分系统的观点。

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