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2024 | OriginalPaper | Buchkapitel

Deep Learning Models for COVID-19 and Pneumonia Detection

verfasst von : K. Aditya Shastry, B. A. Manjunatha, M. Mohan, Nandan Kiran

Erschienen in: Advances in Computing and Information

Verlag: Springer Nature Singapore

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Abstract

In the recent years of development, deep learning (DL) is very useful in all fields with the growing availability of data. The main goal of DL technology is to make faster, reliable, and good decisions. Because of this ability, DL has found its use in healthcare, particularly with a focus on various types of medical images or images related to patients’ health. These fields have diagnostic processes that depend on gathering and processing large amounts of medical images. This work proposes a deep learning (DL) model based on “Convolutional Neural Network (CNN)” for identifying COVID-19 and Pneumonia using Chest X-Ray images. The result of this processing helps the radiologists to derive insights and make decisions to determine the correct diagnosis of the patient. This model helps in two ways. Firstly, to classify whether a chest X-ray shows any sort of variations with respect to COVID-19 and pneumonia or not. Secondly, to classify with the help of normal chest X-ray images. Experiments were carried out using InceptionV3 (IV3), and VGG16 models on the chest X-ray images. Results revealed that the VGG16 model outperformed IV3 model for COVID-19 and pneumonia identification on multiple performance metrics.

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Literatur
5.
Zurück zum Zitat Kermany DS, Goldbaum M, Cai W, Valentim CCS, Liang H, Baxter SL, McKeown A, Yang G, Wu X, Yan F, Dong J, Prasadha MK, Pei J, Ting MYL, Zhu J, Li C, Hewett S, Dong J, Ziyar I, Shi A, Zhang R, Zheng L, Hou R, Shi W, Fu X, Duan Y, Huu VAN, Wen C, Zhang ED, Zhang CL, Li O, Wang X, Singer MA, Sun X, Xu J, Tafreshi A, Anthony Lewis M, Xia H, Zhang K (2018) Identifying medical diagnoses and treatable diseases by image-based deep learning. Cell 172(5):1122–1131. https://doi.org/10.1016/j.cell.2018.02.010 Kermany DS, Goldbaum M, Cai W, Valentim CCS, Liang H, Baxter SL, McKeown A, Yang G, Wu X, Yan F, Dong J, Prasadha MK, Pei J, Ting MYL, Zhu J, Li C, Hewett S, Dong J, Ziyar I, Shi A, Zhang R, Zheng L, Hou R, Shi W, Fu X, Duan Y, Huu VAN, Wen C, Zhang ED, Zhang CL, Li O, Wang X, Singer MA, Sun X, Xu J, Tafreshi A, Anthony Lewis M, Xia H, Zhang K (2018) Identifying medical diagnoses and treatable diseases by image-based deep learning. Cell 172(5):1122–1131. https://​doi.​org/​10.​1016/​j.​cell.​2018.​02.​010
7.
Zurück zum Zitat Ferrari D, Milic J, Tonelli R, Ghinelli F, Meschiari M, Volpi S, Faltoni M, Franceschi G, Iadisernia V, Yaacoub D, Ciusa G, Bacca E, Rogati C, Tutone M, Burastero G, Raimondi A, Menozzi M, Franceschini E, Cuomo G, Corradi L, Orlando G, Santoro A, Digaetano M, Puzzolante C, Carli F, Borghi V, Bedini A, Fantini R, Tabbì L, Castaniere I, Busani S, Clini E, Girardis M, Sarti M, Cossarizza A, Mussini C, Mandreoli F, Missier P, Guaraldi G (2020) Machine learning in predicting respiratory failure in patients with COVID-19 pneumonia—challenges, strengths, and opportunities in a global health emergency. PLOS ONE 15:e0239172 Ferrari D, Milic J, Tonelli R, Ghinelli F, Meschiari M, Volpi S, Faltoni M, Franceschi G, Iadisernia V, Yaacoub D, Ciusa G, Bacca E, Rogati C, Tutone M, Burastero G, Raimondi A, Menozzi M, Franceschini E, Cuomo G, Corradi L, Orlando G, Santoro A, Digaetano M, Puzzolante C, Carli F, Borghi V, Bedini A, Fantini R, Tabbì L, Castaniere I, Busani S, Clini E, Girardis M, Sarti M, Cossarizza A, Mussini C, Mandreoli F, Missier P, Guaraldi G (2020) Machine learning in predicting respiratory failure in patients with COVID-19 pneumonia—challenges, strengths, and opportunities in a global health emergency. PLOS ONE 15:e0239172
8.
Zurück zum Zitat Elgendi M, Nasir MU, Tang Q, Fletcher RR, Howard N, Menon C, Ward R, Parker W, Nicolaou S (2020) The performance of deep neural networks in differentiating chest X-rays of COVID-19 patients from other bacterial and viral pneumonias. Front Med 7 Elgendi M, Nasir MU, Tang Q, Fletcher RR, Howard N, Menon C, Ward R, Parker W, Nicolaou S (2020) The performance of deep neural networks in differentiating chest X-rays of COVID-19 patients from other bacterial and viral pneumonias. Front Med 7
9.
Zurück zum Zitat Sharma A, Rani S, Gupta D (2020) Artificial intelligence-based classification of chest X-ray images into COVID-19 and other infectious diseases. Int J Biomed Imaging 2020:1–10CrossRef Sharma A, Rani S, Gupta D (2020) Artificial intelligence-based classification of chest X-ray images into COVID-19 and other infectious diseases. Int J Biomed Imaging 2020:1–10CrossRef
10.
Zurück zum Zitat Luján-García JE, Moreno-Ibarra MA, Villuendas-Rey Y, Yáñez-Márquez C (2020) Fast COVID-19 and pneumonia classification using chest X-ray images. Mathematics 8:1423 Luján-García JE, Moreno-Ibarra MA, Villuendas-Rey Y, Yáñez-Márquez C (2020) Fast COVID-19 and pneumonia classification using chest X-ray images. Mathematics 8:1423
11.
Zurück zum Zitat Liu C, Wang X, Liu C, Sun Q, Peng W (2020) Differentiating novel coronavirus pneumonia from general pneumonia based on machine learning. BioMedical Eng OnLine, 19 Liu C, Wang X, Liu C, Sun Q, Peng W (2020) Differentiating novel coronavirus pneumonia from general pneumonia based on machine learning. BioMedical Eng OnLine, 19
13.
Zurück zum Zitat Li L, Qin L, Xu Z, Yin Y, Wang X, Kong B, Bai J, Lu Y, Fang Z, Song Q, Cao K, Liu D, Wang G, Xu Q, Fang X, Zhang S, Xia J, Xia J (2020) Using artificial intelligence to detect COVID19 and community-acquired pneumonia based on pulmonary CT: evaluation of the diagnostic accuracy. Radiology 296:E65–E71CrossRef Li L, Qin L, Xu Z, Yin Y, Wang X, Kong B, Bai J, Lu Y, Fang Z, Song Q, Cao K, Liu D, Wang G, Xu Q, Fang X, Zhang S, Xia J, Xia J (2020) Using artificial intelligence to detect COVID19 and community-acquired pneumonia based on pulmonary CT: evaluation of the diagnostic accuracy. Radiology 296:E65–E71CrossRef
14.
Zurück zum Zitat Harmon SA, Sanford TH, Xu S, Turkbey EB, Roth H, Xu Z, Yang D, Myronenko A, Anderson V, Amalou A, Blain M, Kassin M, Long D, Varble N, Walker SM, Bagci U, Ierardi AM, Stellato E, Plensich GG, Franceschelli G, Girlando C, Irmici G, Labella D, Hammoud D, Malayeri A, Jones E, Summers RM, Choyke PL, Xu D, Flores M, Tamura K, Obinata H, Mori H, Patella F, Cariati M, Carrafiello G, An P, Wood BJ, Turkbey B (2020) Artificial intelligence for the detection of COVID-19 pneumonia on chest CT using multinational datasets. Nat Commun 11 Harmon SA, Sanford TH, Xu S, Turkbey EB, Roth H, Xu Z, Yang D, Myronenko A, Anderson V, Amalou A, Blain M, Kassin M, Long D, Varble N, Walker SM, Bagci U, Ierardi AM, Stellato E, Plensich GG, Franceschelli G, Girlando C, Irmici G, Labella D, Hammoud D, Malayeri A, Jones E, Summers RM, Choyke PL, Xu D, Flores M, Tamura K, Obinata H, Mori H, Patella F, Cariati M, Carrafiello G, An P, Wood BJ, Turkbey B (2020) Artificial intelligence for the detection of COVID-19 pneumonia on chest CT using multinational datasets. Nat Commun 11
Metadaten
Titel
Deep Learning Models for COVID-19 and Pneumonia Detection
verfasst von
K. Aditya Shastry
B. A. Manjunatha
M. Mohan
Nandan Kiran
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-7622-5_7

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