Multi-Classification Network for Identifying COVID-19 Cases Using Deep Convolutional Neural Networks

Sajib Sarker, Ling Tan, Wenjie Ma, Shanshan Rong, Osibo Benjamin Kwapong, Oscar Famous Darteh
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引用次数: 3

Abstract

The novel coronavirus 2019 (COVID-19) rapidly spreading around the world and turns into a pandemic situation, consequently, detecting the coronavirus (COVID-19) affected patients are now the most critical task for medical specialists. The deficiency of medical testing kits leading to huge complexity in detecting COVID-19 patients worldwide, resulting in the number of infected cases is expanding. Therefore, a significant study is necessary about detecting COVID-19 patients using an automated diagnosis method, which hinders the spreading of coronavirus. In this paper, the study suggests a Deep Convolutional Neural Network-based multi-classification framework (COVMCNet) using eight different pre-trained architectures such as VGG16, VGG19, ResNet50V2, DenseNet201, InceptionV3, MobileNet, InceptionResNetV2, Xception which are trained and tested on the X-ray images of COVID-19, Normal, Viral Pneumonia, and Bacterial Pneumonia. The results from 4-class (Normal vs. COVID-19 vs. Viral Pneumonia vs. Bacterial Pneumonia) demonstrated that the pre-trained model DenseNet201 provides the highest classification performance (accuracy: 92.54%, precision: 93.05%, recall: 92.81%, F1-score: 92.83%, specificity: 97.47%). Notably, the DenseNet201 (4-class classification) pre-trained model in the proposed COV-MCNet framework showed higher accuracy compared to the rest seven models. Important to mention that the proposed COV-MCNet model showed comparatively higher classification accuracy based on the small number of pre-processed datasets that specifies the designed system can produce superior results when more data become available. The proposed multi-classification network (COV-MCNet) significantly speeds up the existing radiology based method which will be helpful for the medical community and clinical specialists to early diagnosis the COVID-19 cases during this pandemic.
基于深度卷积神经网络的COVID-19病例多分类网络识别
新型冠状病毒2019 (COVID-19)在全球迅速蔓延并演变为大流行,因此,检测感染冠状病毒(COVID-19)的患者是目前医学专家最重要的任务。由于医疗检测工具的不足,在全球范围内检测COVID-19患者的工作非常复杂,导致感染人数不断增加。因此,有必要对阻止新冠病毒传播的自动诊断方法进行重要研究。本文采用VGG16、VGG19、ResNet50V2、DenseNet201、InceptionV3、MobileNet、InceptionResNetV2、Xception等8种不同的预训练架构,在COVID-19、正常肺炎、病毒性肺炎和细菌性肺炎的x射线图像上进行训练和测试,提出了一种基于深度卷积神经网络的多分类框架(COVMCNet)。4个类别(Normal vs. COVID-19 vs.病毒性肺炎vs.细菌性肺炎)的结果表明,预训练模型DenseNet201具有最高的分类性能(准确率:92.54%,准确率:93.05%,召回率:92.81%,f1评分:92.83%,特异性:97.47%)。值得注意的是,与其他7个模型相比,所提出的COV-MCNet框架中的DenseNet201(4类分类)预训练模型具有更高的准确性。值得一提的是,本文提出的COV-MCNet模型在少量预处理数据集的基础上显示出相对较高的分类精度,这说明当有更多数据可用时,设计的系统可以产生更好的结果。提出的多分类网络(COV-MCNet)大大加快了现有的基于放射学的方法,有助于医学界和临床专家在本次大流行期间对COVID-19病例进行早期诊断。
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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