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一种用于胸部X光新冠病毒肺炎诊断的、带有优化胶囊网络的预训练卷积神经网络。

A pre-trained convolutional neural network with optimized capsule networks for chest X-rays COVID-19 diagnosis.

作者信息

AbouEl-Magd Lobna M, Darwish Ashraf, Snasel Vaclav, Hassanien Aboul Ella

机构信息

Computer Science Department, Misr Higher Institute, Mansoura, Egypt.

Scientific Research Group in Egypt (www.egyptscience.net), Giza, Egypt.

出版信息

Cluster Comput. 2023;26(2):1389-1403. doi: 10.1007/s10586-022-03703-2. Epub 2022 Aug 23.

Abstract

Coronavirus disease (COVID-19) is rapidly spreading worldwide. Recent studies show that radiological images contain accurate data for detecting the coronavirus. This paper proposes a pre-trained convolutional neural network (VGG16) with Capsule Neural Networks (CapsNet) to detect COVID-19 with unbalanced data sets. The CapsNet is proposed due to its ability to define features such as perspective, orientation, and size. Synthetic Minority Over-sampling Technique (SMOTE) was employed to ensure that new samples were generated close to the sample center, avoiding the production of outliers or changes in data distribution. As the results may change by changing capsule network parameters (Capsule dimensionality and routing number), the Gaussian optimization method has been used to optimize these parameters. Four experiments have been done, (1) CapsNet with the unbalanced data sets, (2) CapsNet with balanced data sets based on class weight, (3) CapsNet with balanced data sets based on SMOTE, and (4) CapsNet hyperparameters optimization with balanced data sets based on SMOTE. The performance has improved and achieved an accuracy rate of 96.58% and an F1- score of 97.08%, a competitive optimized model compared to other related models.

摘要

冠状病毒病(COVID-19)正在全球迅速传播。最近的研究表明,放射图像包含用于检测冠状病毒的准确数据。本文提出了一种带有胶囊神经网络(CapsNet)的预训练卷积神经网络(VGG16),用于在不平衡数据集上检测COVID-19。提出CapsNet是因为它能够定义诸如视角、方向和大小等特征。采用合成少数过采样技术(SMOTE)来确保在样本中心附近生成新样本,避免产生异常值或数据分布变化。由于改变胶囊网络参数(胶囊维度和路由数)可能会改变结果,因此使用高斯优化方法来优化这些参数。进行了四项实验,(1)使用不平衡数据集的CapsNet,(2)基于类别权重的平衡数据集的CapsNet,(3)基于SMOTE的平衡数据集的CapsNet,以及(4)基于SMOTE的平衡数据集的CapsNet超参数优化。性能有所提高,准确率达到96.58%,F1分数达到97.08%,与其他相关模型相比是一个具有竞争力的优化模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2da3/9397163/452dc4e4fc64/10586_2022_3703_Fig1_HTML.jpg

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