2020 International Conference on Advanced Science and Engineering (ICOASE) 2020
DOI: 10.1109/icoase51841.2020.9436614
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COVID-19 Diagnosis from Chest X-ray Images Using Deep Learning Approach

Abstract: Coronavirus (COVID-19) disease is an infectious disease caused by the newly and deadly pneumonia type identified Coronavirus2 (SARS-CoV-2). A real-time Reverse Transcription Polymerase Chain Reaction (RT-PCR) is the main method and has been regarded as the gold standard for diagnosing the COVID-19. Strict requirements and the limited supply of RT-PCR kits for the laboratory environment leads to delay in the accurate diagnosis of patients in addition to the test takes 4-6 hours to obtain the results. To tackle … Show more

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Cited by 11 publications
(12 citation statements)
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“…Similarly, the best performing method among the existing methods has a classification accuracy of 94.53% by Qaqos et al. [30] which is not significantly higher (0.22%) compared to the accuracy of the proposed model. Even though, the proposed model has competitive performance with the model by Qaqos [30] , it is complemented with the XAI framework, which will help the model’s output more trust-able and understandable to the end-user, which is not available with Qaqos et al.…”
Section: Resultsmentioning
confidence: 77%
See 3 more Smart Citations
“…Similarly, the best performing method among the existing methods has a classification accuracy of 94.53% by Qaqos et al. [30] which is not significantly higher (0.22%) compared to the accuracy of the proposed model. Even though, the proposed model has competitive performance with the model by Qaqos [30] , it is complemented with the XAI framework, which will help the model’s output more trust-able and understandable to the end-user, which is not available with Qaqos et al.…”
Section: Resultsmentioning
confidence: 77%
“… Ref Cases Classes Method Accuracy (%) XAI Params. (in Millions) [20] TB = 4248 Normal = 453 2 Transfer learning with AlexNet and GoogLeNet 85.68 No AlexNet = 61 GoogleNet = 7 [33] Normal = 8851 Covid19 = 180 Pneumonia = 6054 3 Ensemble of Xception and ResNet50 91.40 No Xception Net = 22 ResNet = 11 [52] Normal = 310 PneumoniaB = 330 PneumoniaV = 327 COVID-19 = 284 4 CNN-based CoroNet 89.60 No CNN = 33.97 [30] Normal = 1583 COVID-19 = 576 Pneumonia = 4273 TB = 155 4 Custom CNN 94.53 No CNN = 34.73 [15] Normal = 310 PneumoniaB = 330 PneumoniaV = 327 COVID-19 = 284 4 Attention based VGG 85.43 No VGG-16 = 18 VGG-19 = 21.2 …”
Section: Resultsmentioning
confidence: 99%
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“…The presented COVIDz framework yielded a classification accuracy of 99.64% and an F-score of 99.20%. Noor and Kareem used a deep CNN to build a COVID-19 diagnosis approach that showed over 94% classification accuracies in three different tasks [14]. Meanwhile, the attention-based deep neural networks also attained benchmark performances in COVID-19 detection from X-ray images [15].…”
Section: Normalmentioning
confidence: 99%