TELKOMNIKA Telecommunication, Computing, Electronics and Control
Artificial intelligent techniques applied for detection COVID-19 based on chest medical imaging
Dublin Core
Title
TELKOMNIKA Telecommunication, Computing, Electronics and Control
Artificial intelligent techniques applied for detection COVID-19 based on chest medical imaging
Artificial intelligent techniques applied for detection COVID-19 based on chest medical imaging
Subject
Artificial intelligence
COVID-19
FFBPN
Medical imaging
Rasbperry pi
SVM
COVID-19
FFBPN
Medical imaging
Rasbperry pi
SVM
Description
One of the ways to detect coronavirus disease of 2019 (COVID-19) is X-rays, computerized tomography (CT). This paper aims to detect
COVID-19 from CT images without any user intervention. The proposed
algorithm consists of 5 stages. These stages include; the first stage aims to collect data from hospitals and internet websites, the second stage
is pre-processing stage to remove noise and convert it from red green blue (RGB) to grayscale and then improve image quality, the third is the segmentation stage which included threshold and region-growing
segmentation methods. The fourth stage is used to extract important characteristics, and the last stage is classification CT images using feed forward back propagation network (FFBPN) and support vector machines (SVM) and compare the results 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. Region-growing method was reliable to
separate COVID-19 infected from healthy regions. The FFBPN has given the best results for detecting and classifying COVID-19. The results of the
proposed methodology are rapid and accurate in detecting COVID-19. The output from classifier is displayed on the Rasbperry Pi that included
weather if patient is infected or not and the severity of COVID-19 infection.
COVID-19 from CT images without any user intervention. The proposed
algorithm consists of 5 stages. These stages include; the first stage aims to collect data from hospitals and internet websites, the second stage
is pre-processing stage to remove noise and convert it from red green blue (RGB) to grayscale and then improve image quality, the third is the segmentation stage which included threshold and region-growing
segmentation methods. The fourth stage is used to extract important characteristics, and the last stage is classification CT images using feed forward back propagation network (FFBPN) and support vector machines (SVM) and compare the results 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. Region-growing method was reliable to
separate COVID-19 infected from healthy regions. The FFBPN has given the best results for detecting and classifying COVID-19. The results of the
proposed methodology are rapid and accurate in detecting COVID-19. The output from classifier is displayed on the Rasbperry Pi that included
weather if patient is infected or not and the severity of COVID-19 infection.
Creator
Nawres Aref Alwash, Hussain Kareem Khleaf
Publisher
Universitas Ahmad Dahlan
Date
April 2022
Contributor
Sri Wahyuni
Rights
ISSN: 1693-6930
Format
PDF
Language
English
Type
Text
Files
Collection
Citation
Nawres Aref Alwash, Hussain Kareem Khleaf, “TELKOMNIKA Telecommunication, Computing, Electronics and Control
Artificial intelligent techniques applied for detection COVID-19 based on chest medical imaging,” Repository Horizon University Indonesia, accessed November 21, 2024, https://repository.horizon.ac.id/items/show/4919.
Artificial intelligent techniques applied for detection COVID-19 based on chest medical imaging,” Repository Horizon University Indonesia, accessed November 21, 2024, https://repository.horizon.ac.id/items/show/4919.