A novel exponential loss function for pathological lymph node image classification

Guoping Xu, Hanqiang Cao, J. Udupa, Chunyi Yue, Youli Dong, Li Cao, D. Torigian
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引用次数: 7

Abstract

Recent progress in deep learning, especially deep convolutional neural networks (DCNNs), has led to significant improvement in natural image classification. However, research is still ongoing in the domain of medical image analysis in part due to the shortage of annotated data sets for training DCNNs, the imbalanced number of positive and negative samples, and the difference between medical images and natural images. In this paper, two strategies are proposed to train a DCNN for pathological lymph node image classification. Firstly, the transfer learning strategy is used to deal with the shortage of training samples. Second, a novel exponential loss function is presented for the imbalance in training samples. Four state-of-the-art DCNNs (GoogleNet, ResNet101, Xception, and MobileNetv2) are tested. The experiments demonstrate that the two strategies are effective to improve the performance of pathological lymph node image classification in terms of accuracy and sensitivity with a mean of 0.13% and 1.50%, respectively, for the four DCNNs. In particular, the proposed exponential loss function improved the sensitivity by 3.9% and 4.0% for Xception and ResNet101, respectively.
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一种新的指数损失函数用于病理淋巴结图像分类
深度学习的最新进展,特别是深度卷积神经网络(DCNNs),已经导致了自然图像分类的显著改进。然而,医学图像分析领域的研究仍在进行中,部分原因是缺乏用于训练DCNNs的带注释数据集,正负样本数量不平衡,以及医学图像与自然图像之间的差异。本文提出了两种策略来训练用于病理淋巴结图像分类的DCNN。首先,利用迁移学习策略解决训练样本不足的问题。其次,针对训练样本的不平衡性,提出了一种新的指数损失函数。四种最先进的DCNNs (GoogleNet, ResNet101, Xception和MobileNetv2)进行了测试。实验表明,这两种策略都能有效提高病理淋巴结图像分类的准确率和灵敏度,4种DCNNs的准确率和灵敏度平均分别为0.13%和1.50%。特别是,所提出的指数损失函数对Xception和ResNet101的灵敏度分别提高了3.9%和4.0%。
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