Automatic Lymph Node Classification with Convolutional Neural Network

Ason Uthatham, Nutcha Yodrabum, Chanya Sinmaroeng, Taravichet Titijaroonroj
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引用次数: 1

Abstract

Manual lymph node classification is a tedious and time-consuming task. It requires a histopathologist to discriminate a lymph node from other look-alike kinds of tissues. The lymph node is easily misunderstood with other tissues because its shape and color might be similar to the others tissue around it. To automate this task, we present an automatic lymph node classification with convolutional neural network (CNN). In addition, we compared eight existing CNNs to ensure that we discover the best architecture for discriminating lymph node. DenseNet architecture provided the highest performance among AlexNet, VGG, GoogLeNet, ResNet, SqueezeNet, MobileNet, and EfficientNet, the highest accuracy at 0.994 and an F1score of 0.996. DenseNet accomplished the highest performance from two advantages: (i) fewer parameters and (ii) Dense connectivity.
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基于卷积神经网络的淋巴结自动分类
手工淋巴结分类是一项繁琐而耗时的任务。它需要组织病理学家将淋巴结与其他类似的组织区分开来。淋巴结很容易被误认为是其他组织,因为它的形状和颜色可能与周围的其他组织相似。为了自动化这项任务,我们提出了一个卷积神经网络(CNN)的自动淋巴结分类。此外,我们比较了八种现有的cnn,以确保我们发现了区分淋巴结的最佳架构。在AlexNet、VGG、GoogLeNet、ResNet、SqueezeNet、MobileNet和EfficientNet中,DenseNet架构的性能最高,准确率为0.994,F1score为0.996。DenseNet通过两个优势实现了最高性能:(i)更少的参数和(ii)密集的连接。
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