Detection of Covid-19 based on chest medical imaging and artificial intelligence techniques

Joint Authors

Husayn, Karim
Allush, Nawras A.

Source

Engineering and Technology Journal

Issue

Vol. 39, Issue 10 (31 Oct. 2021), pp.1588-1600, 13 p.

Publisher

University of Technology

Publication Date

2021-10-31

Country of Publication

Iraq

No. of Pages

13

Main Subjects

Electronic engineering

Topics

Abstract EN

The emergence of COVID-19 disease in the world has moved the wheel of scientific research in order to detect it in the best method, and the fastest of these methods is the use of Artificial Intelligence (AI) techniques to help medical professionals detect COVID-19.

The proposed topic is aim to develop algorithm based on combination between image processing techniques with artificial intelligence to diagnose COVID-19.

The proposed algorithm consists of five stages to detect and classify COVID-19 from Computer Tomography (CT) images.

These stages include; The first of these stages is to collect data from hospitals as real data and from Kaggle website for patients and healthy people, then the stage before removing the noise and converting it from RGB to grayscale, then we improve the image, segmentation and formalities, the other stage is a stage used to extract the important characteristics, and the last stage is the classification of images CT scan using Feed Forward Back Propagation Network (FFBPN) and Support Vector Machine (SVM )and compare the result between them and see if the person is infected or healthy.

This study was implemented in MATLAB software.

The results showed that the noise cancellation technology using anisotropic filtering gave the best results.

As for the optimization technology, only the brightness of the images has been increased.

At the stage of segmentation of the area of lung injection using the area transplant method, the best results are detection of COVID-19 from other healthy tissues.

The FFBPN gave the best results for detecting and classifying COVID-19 as well as determining whether a person has been infected or not.

The results of the proposed methodology in accurate and rapid detection of COVID-19 in the lung.

The contribution of this paper is to help medical staff detect COVID-19 without human The emergence of COVID-19 disease in the world has moved the wheel of scientific research in order to detect it in the best method, and the fastest of these methods is the use of Artificial Intelligence (AI) techniques to help medical professionals detect COVID-19.

The proposed topic is aim to develop algorithm based on combination between image processing techniques with artificial intelligence to diagnose COVID-19.

The proposed algorithm consists of five stages to detect and classify COVID-19 from Computer Tomography (CT) images.

These stages include; The first of these stages is to collect data from hospitals as real data and from Kaggle website for patients and healthy people, then the stage before removing the noise and converting it from RGB to grayscale, then we improve the image, segmentation and formalities, the other stage is a stage used to extract the important characteristics, and the last stage is the classification of images CT scan using Feed Forward Back Propagation Network (FFBPN) and Support Vector Machine (SVM )and compare the result between them and see if the person is infected or healthy.

This study was implemented in MATLAB software.

The results showed that the noise cancellation technology using anisotropic filtering gave the best results.

As for the optimization technology, only the brightness of the images has been increased.

At the stage of segmentation of the area of lung injection using the area transplant method, the best results are detection of COVID-19 from other healthy tissues.

The FFBPN gave the best results for detecting and classifying COVID-19 as well as determining whether a person has been infected or not.

The results of the proposed methodology in accurate and rapid detection of COVID-19 in the lung.

The contribution of this paper is to help medical staff detect COVID-19 without human intervention.

American Psychological Association (APA)

Allush, Nawras A.& Husayn, Karim. 2021. Detection of Covid-19 based on chest medical imaging and artificial intelligence techniques. Engineering and Technology Journal،Vol. 39, no. 10, pp.1588-1600.
https://search.emarefa.net/detail/BIM-1281507

Modern Language Association (MLA)

Allush, Nawras A.& Husayn, Karim. Detection of Covid-19 based on chest medical imaging and artificial intelligence techniques. Engineering and Technology Journal Vol. 39, no. 10 (2021), pp.1588-1600.
https://search.emarefa.net/detail/BIM-1281507

American Medical Association (AMA)

Allush, Nawras A.& Husayn, Karim. Detection of Covid-19 based on chest medical imaging and artificial intelligence techniques. Engineering and Technology Journal. 2021. Vol. 39, no. 10, pp.1588-1600.
https://search.emarefa.net/detail/BIM-1281507

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references : p. 1599-1600

Record ID

BIM-1281507