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Exploiting Convolutional Neural Networks and Preprocessing Techniques for HEp-2 Cell Classification in Immunofluorescence Images

机译:利用免疫荧光图像中HEP-2细胞分类的卷积神经网络和预处理技术

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Autoimmune diseases are the third cause of mortality in the world. The identification of anti-nuclear antibody (ANA) via Immunofluorescence (IIF) test in human epithelial type-2 cells (HEp-2) is a conventional method to support the diagnosis of such diseases. In the present work, three popular Convolutional Neural Networks (CNNs) are evaluated for this task: LeNet-5, AlexNet, and GoogLeNet. We also assess the impact of six different pre-processing strategies on the performance of these CNNs. Additionally, data augmentation based on the rotation of the training set images after the pre-processing strategies was evaluated. Our work is the first to consider AlexNet and GoogLeNet models for the proposed analysis and classification of HEp-2 cells images, besides the LeNet-5. Experimental results allow to conclude that neither pre-processing strategies were essential to improve accuracy values of the CNNs. However, when data augmentation is considered, contrast enhancement followed by data centralization is significant in order to achieve good results. Additionally, our results were compared with results from other state-of-art papers. Our best results were achieved by GoogLeNet architecture trained with images with no pre-processing and no data augmentation, resulting in 98.17% of accuracy, which outperforms the results presented in other works in literature.
机译:自身免疫性疾病是世界上死亡率的第三个原因。通过免疫荧光(IIF)试验在人上皮型-2细胞(Hep-2)中鉴定抗核抗体(ANA)是支持这种疾病诊断的常规方法。在本作工作中,为此任务评估了三个流行的卷积神经网络(CNNS):Lenet-5,AlexNet和Googlenet。我们还评估了六种不同的预处理策略对这些CNN的性能的影响。另外,在评估预处理策略后,基于训练集图像的旋转的数据增强。我们的作品是第一个考虑亚历纳州和Googlenet模型,用于Lenet-5除了LENET-5之外的HEP-2细胞图像的分析和分类。实验结果允许得出结论,预处理策略都没有必要提高CNN的精度值。但是,当考虑数据增强时,对比度增强后跟数据集中是显着的,以实现良好的结果。此外,我们的结果与来自其他最先进的论文的结果进行了比较。我们的最佳结果是通过培训没有预处理和无数据增强的图像培训的Googlenet架构实现的,从而实现了98.17 %的准确性,这胜过了文献中其他作品所呈现的结果。

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