Diagnosis of COVID-19 from chest X-ray images using wavelets-based depthwise convolution network

Authors
Category Primary study
Year 2021
Coronavirus disease 2019 also known as COVID-19 has become a pandemic The disease is caused by a beta coronavirus called Severe Acute Respiratory Syndrome Coronavirus 2 (SARS-CoV-2) The severity of the disease can be understood by the massive number of deaths and affected patients globally If the diagnosis is fast-paced, the disease can be controlled in a better manner Laboratory tests are available for diagnosis, but they are bounded by available testing kits and time The use of radiological examinations that comprise Computed Tomography (CT) can be used for the diagnosis of the disease Specifically, chest X-Ray images can be analysed to identify the presence of COVID-19 in a patient In this paper, an automated method for the diagnosis of COVID-19 from the chest X-Ray images is proposed The method presents an improved depthwise convolution neural networkfor analysing the chest X-Ray images Wavelet decomposition is applied to integrate multiresolution analysis in the network The frequency sub-bands obtained from the input images are fed in the network for identifying the disease The network is designed to predict the class of the input image as normal, viral pneumonia, and COVID-19 The predicted output from the model is combined with Grad-CAM visualization for diagnosis A comparative study with the existing methods is also performed The metrics like accuracy, sensitivity, and F1-measure are calculated for performance evaluation The performance of the proposed method is better than the existing methodologies and thus can be used for the effective diagnosis of the disease © 2018 Tsinghua University Press
Epistemonikos ID: 635c507c11deebc85b1f91176aed77c0e93a7858
First added on: Apr 01, 2021