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detection of covid-19 from radiology modalities and identification of prognosis patterns
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نویسنده
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jayalakshmi g. ,khalaf haitham abbas ,farhadi abolfazl ,al-barzinji shokhan m. ,mahmood sawsan dheyaa ,najim saif al-din ,hutaihit maha a. ,nejrs salwa mohammed ,al.mahdawi raghda salam ,abdulbaqi azmi shawkat
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منبع
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international journal of nonlinear analysis and applications - 2022 - دوره : 13 - شماره : 1 - صفحه:1351 -1365
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چکیده
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Sars-cov-2 and the consequential covid-19 virus is one of the major concerns of the 21st century. pertaining to the novelty of the disease, it became necessary to discover the efficacy of deep learning techniques in the quick and consistent discovery of covid-19 based on chest x-ray and ct scan image analysis. in this related work, prognostic tool using regression was designed for patients with covid-19 and recognizing prediction patterns to make available important prognostic information on mortality or severity in covid-19 patients. and reliable convolutional neural network (cnn) architecture models (densenet, vgg16, resnet, inception net) to institute whether it would work preeminent in terms of accuracy as well as efficiency with image datasets with transfer learning. cnn with transfer learning were functional to accomplish the involuntary recognition of covid-19 from numerary chest x-ray and ct scan images. the experimental results emphasize that selected models, which is formerly broadly tuned through suitable parameters, executes in extensive levels of covid-19 discovery against pneumonia or normal or lung opacity through the precision of up to 87% for x-ray and 91% intended for ct scans.
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کلیدواژه
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convolutional neural network ,transfer learning ,covid-19 ,x-ray ,ctscan ,deep learning
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آدرس
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v r siddhartha engineering college, department of it, india, university of anbar, college of medicine, iraq, islamic azad university, shirvan branch, department of nursing sciences, iran, university of anbar, college of computer science and information technology, department of computer science, iraq, university of tikrit, college of engineering, department of electricity engineering, iraq, university of anbar, college of computer science and information technology, department of computer science, iraq, university of diyala, collage of engineering, department of communication engineering, iraq, ministry of higher education, directorate of private university education, iraq, university of diyala, collage of engineering, department of computer engineering, iraq, university of anbar, college of computer science and information technology, department of computer science, iraq
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پست الکترونیکی
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azmi_msc@uoanbar.edu.iq
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Authors
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