Automatic detection of coronavirus disease (COVID-19) using X-ray images and deep convolutional neural networks.

Ali Narin, Ceren Kaya, Ziynet Pamuk
Author Information
  1. Ali Narin: Department of Electrical and Electronics Engineering, Zonguldak Bulent Ecevit University, Zonguldak, 67100 Turkey.
  2. Ceren Kaya: Department of Biomedical Engineering, Zonguldak Bulent Ecevit University, Zonguldak, 67100 Turkey. ORCID
  3. Ziynet Pamuk: Department of Biomedical Engineering, Zonguldak Bulent Ecevit University, Zonguldak, 67100 Turkey.

Abstract

The 2019 novel coronavirus disease (COVID-19), with a starting point in China, has spread rapidly among people living in other countries and is approaching approximately 101,917,147 cases worldwide according to the statistics of World Health Organization. There are a limited number of COVID-19 test kits available in hospitals due to the increasing cases daily. Therefore, it is necessary to implement an automatic detection system as a quick alternative diagnosis option to prevent COVID-19 spreading among people. In this study, five pre-trained convolutional neural network-based models (ResNet50, ResNet101, ResNet152, InceptionV3 and Inception-ResNetV2) have been proposed for the detection of coronavirus pneumonia-infected patient using chest X-ray radiographs. We have implemented three different binary classifications with four classes (COVID-19, normal (healthy), viral pneumonia and bacterial pneumonia) by using five-fold cross-validation. Considering the performance results obtained, it has been seen that the pre-trained ResNet50 model provides the highest classification performance (96.1% accuracy for Dataset-1, 99.5% accuracy for Dataset-2 and 99.7% accuracy for Dataset-3) among other four used models.

Keywords

References

  1. Comput Methods Programs Biomed. 2020 Nov;196:105581 [PMID: 32534344]
  2. Int J Comput Assist Radiol Surg. 2018 Dec;13(12):1895-1903 [PMID: 30094778]
  3. Nature. 2015 May 28;521(7553):436-44 [PMID: 26017442]
  4. Pattern Anal Appl. 2021;24(3):1207-1220 [PMID: 33994847]
  5. Comput Methods Programs Biomed. 2020 Apr;187:104964 [PMID: 31262537]
  6. Eur J Clin Microbiol Infect Dis. 2020 Jul;39(7):1379-1389 [PMID: 32337662]
  7. Tissue Cell. 2019 Jun;58:76-83 [PMID: 31133249]
  8. Pattern Recognit Lett. 2020 Oct;138:638-643 [PMID: 32958971]
  9. PLoS One. 2018 Nov 27;13(11):e0207982 [PMID: 30481205]
  10. Med Hypotheses. 2020 Jul;140:109761 [PMID: 32344309]
  11. IEEE/ACM Trans Comput Biol Bioinform. 2021 Jan-Feb;18(1):94-102 [PMID: 32287004]
  12. Ing Rech Biomed. 2020 Jul 3;: [PMID: 32837679]
  13. Infect Dis Model. 2020 Feb 14;5:256-263 [PMID: 32110742]
  14. Euro Surveill. 2020 Feb;25(6): [PMID: 32070465]
  15. Phys Eng Sci Med. 2020 Jun;43(2):635-640 [PMID: 32524445]
  16. Appl Intell (Dordr). 2020 Oct 17;:1-14 [PMID: 34764554]
  17. Comput Biol Med. 2019 Oct;113:103387 [PMID: 31421276]
  18. Sci Rep. 2018 Mar 15;8(1):4165 [PMID: 29545529]
  19. J Med Biol Eng. 2020;40(3):462-469 [PMID: 32412551]
  20. J Biomol Struct Dyn. 2021 Sep;39(15):5682-5689 [PMID: 32619398]

Word Cloud

Created with Highcharts 10.0.0COVID-19pneumoniacoronavirusamongdetectionneuralusingX-rayaccuracydiseasepeoplecasespre-trainedconvolutionalmodelsResNet50radiographsfourperformance992019novelstartingpointChinaspreadrapidlylivingcountriesapproachingapproximately101917147worldwideaccordingstatisticsWorldHealthOrganizationlimitednumbertestkitsavailablehospitalsdueincreasingdailyThereforenecessaryimplementautomaticsystemquickalternativediagnosisoptionpreventspreadingstudyfivenetwork-basedResNet101ResNet152InceptionV3Inception-ResNetV2proposedpneumonia-infectedpatientchestimplementedthreedifferentbinaryclassificationsclassesnormalhealthyviralbacterialfive-foldcross-validationConsideringresultsobtainedseenmodelprovideshighestclassification961%Dataset-15%Dataset-27%Dataset-3usedAutomaticimagesdeepnetworksBacterialChestConvolutionalnetworkCoronavirusDeeptransferlearningViral

Similar Articles

Cited By