A Hybrid Ensemble Learning with Generative Adversarial Networks for HEp-2 Cell Image Classification

Asaad Anaam, M. A. Al-antari, A. Gofuku
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引用次数: 1

Abstract

The Indirect Immunofluorescence (IIF) on Human Epithelial (HEp-2) cells is considered the hallmark protocol of the Anti-Nuclear Antibodies (ANAs) testing for diagnosing autoimmune diseases. The usual practice of visual slide inspection under the fluorescence microscope suffers from low throughput and high labor-subjectivity. Therefore, developing an efficient framework for automatic HEp-2 cell image classification is necessary for overcoming such manual protocol shortcomings. In this paper, a novel HEp-2 cell image classification framework is proposed based on ensemble deep learning with generative adversarial networks (GANs). An efficient Info-WGANGP approach is adopted for data augmentation by generating new HEp-2 cell images and enlarging the size of the training set. Meanwhile, an ensemble deep learning strategy is implemented to build a backbone network obtaining a potent combination of the deep features using three well-known deep convolutional networks, i.e., DCRNet, DSRNet, and HEpNet. The evaluation experiments on the publicly available I3A dataset demonstrate promising classification results in terms of average classification accuracy (ACA) with 98.82% and mean class accuracy (MCA) with 98.91% outperforming the latest deep learning approaches. The proposed classification framework seems to be applicable for supporting human experts in making accurate and rapid diagnosis decisions of the HEp-2 cell patterns.
基于生成对抗网络的HEp-2细胞图像分类混合集成学习
人上皮细胞(HEp-2)上的间接免疫荧光(IIF)被认为是诊断自身免疫性疾病的抗核抗体(ANAs)检测的标志性方案。常规的荧光显微镜下的肉眼玻片检查存在着低通量和高劳动主观性的问题。因此,开发一种高效的HEp-2细胞图像自动分类框架是克服手工协议缺点的必要条件。本文提出了一种基于集成深度学习和生成对抗网络(GANs)的HEp-2细胞图像分类框架。采用一种高效的Info-WGANGP方法,通过生成新的HEp-2细胞图像和扩大训练集的大小来增强数据。同时,利用三种著名的深度卷积网络DCRNet、DSRNet和HEpNet,采用集成深度学习策略构建了一个骨干网络,获得了深度特征的有效组合。在公开可用的I3A数据集上的评估实验表明,在平均分类精度(ACA)为98.82%和平均类精度(MCA)为98.91%方面,分类结果优于最新的深度学习方法。所提出的分类框架似乎适用于支持人类专家对HEp-2细胞模式做出准确和快速的诊断决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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