Abstract

Novel coronavirus (COVID-19) has been endangering human health and life since 2019. The timely quarantine, diagnosis, and treatment of infected people are the most necessary and important work. The most widely used method of detecting COVID-19 is real-time polymerase chain reaction (RT-PCR). Along with RT-PCR, computed tomography (CT) has become a vital technique in diagnosing and managing COVID-19 patients. COVID-19 reveals a number of radiological signatures that can be easily recognized through chest CT. These signatures must be analyzed by radiologists. It is, however, an error-prone and time-consuming process. Deep Learning-based methods can be used to perform automatic chest CT analysis, which may shorten the analysis time. The aim of this study is to design a robust and rapid medical recognition system to identify positive cases in chest CT images using three Ensemble Learning-based models. There are several techniques in Deep Learning for developing a detection system. In this paper, we employed Transfer Learning. With this technique, we can apply the knowledge obtained from a pre-trained Convolutional Neural Network (CNN) to a different but related task. In order to ensure the robustness of the proposed system for identifying positive cases in chest CT images, we used two Ensemble Learning methods namely Stacking and Weighted Average Ensemble (WAE) to combine the performances of three fine-tuned Base-Learners (VGG19, ResNet50, and DenseNet201). For Stacking, we explored 2-Levels and 3-Levels Stacking. The three generated Ensemble Learning-based models were trained on two chest CT datasets. A variety of common evaluation measures (accuracy, recall, precision, and F1-score) are used to perform a comparative analysis of each method. The experimental results show that the WAE method provides the most reliable performance, achieving a high recall value which is a desirable outcome in medical applications as it poses a greater risk if a true infected patient is not identified.

Highlights

  • The timely quarantine, diagnosis, and treatment of infected people are the most necessary and important work

  • In order to reduce the errors in COVID-19 detection, we propose a 2-Levels Stacking approach by combining the outputs of three fine-tuned models

  • Precision is defined as the Positive Predictive Rate (PPR) and it is useful in limiting the spread of COVID-19 infection

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Summary

Introduction

The timely quarantine, diagnosis, and treatment of infected people are the most necessary and important work. Deep Learning-based methods can be used to perform automatic chest CT analysis, which may shorten the analysis time. In order to ensure the robustness of the proposed system for identifying positive cases in chest CT images, we used two Ensemble Learning methods namely Stacking and Weighted Average Ensemble (WAE) to combine the performances of three fine-tuned Base-Learners (VGG19, ResNet, and DenseNet201). To stop the spread of the COVID-19 infection, the timely quarantine, diagnosis, and treatment of infected people are the most necessary and important work. As every hospital has CT imaging machines, COVID-19 detection based on CT imaging can be applied efficiently as a way to test infected patients, but it does require expert diagnosis and additional time.

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