Abstract

Coronavirus disease (COVID-19) spreads from one person to another rapidly. A recently discovered coronavirus causes it. COVID-19 has proven to be challenging to detect and cure at an early stage all over the world. Patients showing symptoms of COVID-19 are resulting in hospitals becoming overcrowded, which is becoming a significant challenge. Deep learning’s contribution to big data medical research has been enormously beneficial, offering new avenues and possibilities for illness diagnosis techniques. To counteract the COVID-19 outbreak, researchers must create a classifier distinguishing between positive and negative corona-positive X-ray pictures. In this paper, the Apache Spark system has been utilized as an extensive data framework and applied a Deep Transfer Learning (DTL) method using Convolutional Neural Network (CNN) three architectures —InceptionV3, ResNet50, and VGG19—on COVID-19 chest X-ray images. The three models are evaluated in two classes, COVID-19 and normal X-ray images, with 100 percent accuracy. But in COVID/Normal/pneumonia, detection accuracy was 97 percent for the inceptionV3 model, 98.55 percent for the ResNet50 Model, and 98.55 percent for the VGG19 model, respectively.

Highlights

  • The primary instance of COVID-19 was accounted for in Wuhan, China [1]

  • We propose a novel approach with logistic regression for features extraction and Convolutional Neural Network (CNN)-based architectures of pre-trained VGG19, InceptionV3, and ResNet50 to detect

  • The Databricks Workspace was utilized for testing [67]. It is an analytics stage based on Apache Spark

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Summary

Introduction

The primary instance of COVID-19 was accounted for in Wuhan, China [1]. The virus marked a pandemic on 11 March 2020 [2]. On 14 September 2021, the WHO recorded. As of 12 September 2021, an aggregate of. 5,534,977,637 vaccine doses had been distributed [3,4]. There is pressure on testing laboratories due to the global epidemiological condition

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