基于深度特征提取的Pap-Smear图像分类的比较研究

Wafa Mousser, S. Ouadfel
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引用次数: 18

摘要

宫颈癌是世界上主要的公共卫生问题之一。即使它是最可预防的癌症之一,早期筛查可靠的巴氏涂片检查是治愈的关键。基于宫颈细胞的形态和质地,细胞病理学家依靠手工制作的特征来确定细胞是正常的还是异常的。在医学成像中,深度学习可以生成更复杂且难以用描述方式详细描述的特征。这些相关特征可以提高分类的准确性。在本研究中,我们使用深度神经网络从Pap-smear图像中提取特征,并将这些提取的特征作为优化MLP分类器的输入。我们研究了四种不同的预训练模型作为特征提取器对Pap-smear图像进行分类的能力。在DTU/HERLEV数据库上进行的实验和对比表明,对于Pap-smear图像分类,ResNet50的准确率比VGGs和InceptionV3高出15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Feature Extraction for Pap-Smear Image Classification: A Comparative Study
Cervical cancer is one of the major public health problems in the world. Even if it is one of the most preventable cancers, the early screening with reliable Pap-smear test is the key to curing. Based on the morphology and the texture of the cervix cells, Cytopathologists rely on hand-crafted features to determine whether a cellule is normal or abnormal. In medical imaging, deep learning can generate features that are more sophisticated and difficult to elaborate in descriptive means. These relevant features allow improving the classification's accuracy. In this study, we use deep neural networks to extract features from Pap-smear images and provide these extracted features as inputs for optimized MLP classifier. We study the ability of the four different pre-trained models as feature extractors toward classifying Pap-smear images. Experiments performed on the DTU/HERLEV Database and comparison show that for the Pap-smear image classification, the ResNet50 exceeds the VGGs and the InceptionV3 by 15% of accuracy.
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