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neural network architecture for differentiating covid19 and viral pneumonia
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نویسنده
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mammadzada r.r.
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منبع
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problems of information society - 2022 - دوره : 13 - شماره : 2 - صفحه:84 -88
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چکیده
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Covid 19 has wreaked havoc on the world when in some countries had cases in ten thousand each day thus, leading to a load on the healthcare system. meaning that doctors and nurses had to spend more time on diagnostics. therefore, one of the methods for reducing this load was to use a neural network for differentiating between covid and pneumonia cases. this citation showcase how neural networks can be used to detect lung x-rays having covid and pneumonia. recall, precision, and f1-score measures are utilized to optimize the adaptive brightness of the images, selection process, resizing, and tune the neural network architecture parameters or hyperparameters. classification quality metrics values over 91% depicted a decisive difference between radiographic images of patients having covid-19 and pneumonia. making it possible to make a model with strong forecasting capacity without pre-training on data from the 3rd party or engaging ready-to-use complicated neural network models. it can be the next step for the advancement of reliable and sensitive covid-19 diagnostics.
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کلیدواژه
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image processing ,x-ray ,classification ,convolutional neural network ,covid-19
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آدرس
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azerbaijan state university of oil and industry, azerbaijan
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پست الکترونیکی
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mammadzadarufat@gmail.com
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Authors
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