A statistical framework for evaluating convolutional neural networks. Application to colon cancer

L. Popa
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引用次数: 2

Abstract

"Purpose: Explore the efficiency of two convolutional neural networks in helping physicians in establishing colon cancer diagnosis from histopathological image scans. Methods: The dataset used in this study contains 357 histopathological image slides that ranged from benign cases to colon cancer grade three. The slides were collected by doctors at the Emergency Hospital of Craiova, Romania. The study proposes a statistical framework that studies the performances of two convolutional neural networks AlexNet and GoogleNet. Results: AlexNet has revealed a competitive accuracy in comparison with GoogleNet. To prove the robustness of the AlexNet in fair terms, we have performed a thorough statistical analysis of its performance. Conclusions: On this particular dataset which contains histopathological image scans regarding colon cancer, the convolutional neural network AlexNet proved to be superior to GoogleNet. "
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评估卷积神经网络的统计框架。结肠癌的应用
目的:探讨两种卷积神经网络在帮助医生从组织病理图像扫描中建立结肠癌诊断中的效率。方法:本研究中使用的数据集包含357个组织病理学图像切片,范围从良性病例到三级结肠癌。这些载玻片是由罗马尼亚克拉约瓦急救医院的医生收集的。本研究提出了一个统计框架来研究两个卷积神经网络AlexNet和GoogleNet的性能。结果:与GoogleNet相比,AlexNet显示出了具有竞争力的准确性。为了公平地证明AlexNet的鲁棒性,我们对其性能进行了彻底的统计分析。结论:在这个包含结肠癌组织病理学图像扫描的特定数据集上,卷积神经网络AlexNet被证明优于GoogleNet。”
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来源期刊
CiteScore
1.10
自引率
10.00%
发文量
18
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