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基于卷积深度学习网络的白细胞识别系统。

White blood cells identification system based on convolutional deep neural learning networks.

机构信息

Department of Biomedical Engineering, Cairo University, Egypt; Department of Biomedical Engineering, HTI, Egypt.

Department of Computer Science, University of Illinois at Springfield, Springfield, IL, USA.

出版信息

Comput Methods Programs Biomed. 2019 Jan;168:69-80. doi: 10.1016/j.cmpb.2017.11.015. Epub 2017 Nov 16.

Abstract

BACKGROUND AND OBJECTIVES

White blood cells (WBCs) differential counting yields valued information about human health and disease. The current developed automated cell morphology equipments perform differential count which is based on blood smear image analysis. Previous identification systems for WBCs consist of successive dependent stages; pre-processing, segmentation, feature extraction, feature selection, and classification. There is a real need to employ deep learning methodologies so that the performance of previous WBCs identification systems can be increased. Classifying small limited datasets through deep learning systems is a major challenge and should be investigated.

METHODS

In this paper, we propose a novel identification system for WBCs based on deep convolutional neural networks. Two methodologies based on transfer learning are followed: transfer learning based on deep activation features and fine-tuning of existed deep networks. Deep acrivation featues are extracted from several pre-trained networks and employed in a traditional identification system. Moreover, a novel end-to-end convolutional deep architecture called "WBCsNet" is proposed and built from scratch. Finally, a limited balanced WBCs dataset classification is performed through the WBCsNet as a pre-trained network.

RESULTS

During our experiments, three different public WBCs datasets (2551 images) have been used which contain 5 healthy WBCs types. The overall system accuracy achieved by the proposed WBCsNet is (96.1%) which is more than different transfer learning approaches or even the previous traditional identification system. We also present features visualization for the WBCsNet activation which reflects higher response than the pre-trained activated one.

CONCLUSION

a novel WBCs identification system based on deep learning theory is proposed and a high performance WBCsNet can be employed as a pre-trained network.

摘要

背景与目的

白细胞(WBC)分类计数可提供有关人类健康和疾病的有价值信息。目前开发的自动化细胞形态学设备可基于血涂片图像分析进行分类计数。以前的 WBC 识别系统由连续的依赖阶段组成,包括预处理、分割、特征提取、特征选择和分类。因此,非常有必要采用深度学习方法,以提高以前的 WBC 识别系统的性能。通过深度学习系统对小数据集进行分类是一个主要挑战,应该进行研究。

方法

在本文中,我们提出了一种基于深度卷积神经网络的新型 WBC 识别系统。采用两种基于迁移学习的方法:基于深度激活特征的迁移学习和现有深度网络的微调。从几个预训练网络中提取深度激活特征,并将其应用于传统识别系统中。此外,还提出并构建了一种名为“WBCsNet”的新型端到端卷积深度架构。最后,通过 WBCsNet 作为预训练网络对有限的平衡 WBCs 数据集进行分类。

结果

在我们的实验中,使用了三个不同的公共 WBC 数据集(2551 张图像),其中包含 5 种健康的 WBC 类型。所提出的 WBCsNet 的总体系统准确率为(96.1%),优于不同的迁移学习方法,甚至优于以前的传统识别系统。我们还展示了 WBCsNet 激活的特征可视化,其激活响应比预训练的激活响应更高。

结论

提出了一种基于深度学习理论的新型 WBC 识别系统,并可以使用高性能的 WBCsNet 作为预训练网络。

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