The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia

—Lung cancer is the most prevalent cancer in the world, accounting for 12.2% of all newly diagnosed cases in 2020 and has the highest mortality rate due to its late diagnosis and poor symptom detection. Currently, there are 4,319 lung cancer deaths in Malaysia, representing 2.57 percent of all mort...

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Main Authors: Zakaria, Aliya Syaffa, Shafi, Muhammad Ammar, Mohd Zim, Mohd Arif, Mohd Razali, Siti Noor Asyikin
Format: Article
Language:English
Published: ijacsa 2023
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Online Access:http://eprints.uthm.edu.my/10060/1/J16130_cea67612256de5c7e9d725879c24c2f4.pdf
http://eprints.uthm.edu.my/10060/
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spelling my.uthm.eprints.100602023-10-11T03:22:40Z http://eprints.uthm.edu.my/10060/ The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia Zakaria, Aliya Syaffa Shafi, Muhammad Ammar Mohd Zim, Mohd Arif Mohd Razali, Siti Noor Asyikin T Technology (General) —Lung cancer is the most prevalent cancer in the world, accounting for 12.2% of all newly diagnosed cases in 2020 and has the highest mortality rate due to its late diagnosis and poor symptom detection. Currently, there are 4,319 lung cancer deaths in Malaysia, representing 2.57 percent of all mortality in 2020. The late diagnosis of lung cancer is common, which makes survival more difficult. In Malaysia, however, most cases are detected when the tumors have become too large, or cancer has spread to other body areas that cannot be removed surgically. This is a frequent situation due to the lack of public awareness among Malaysians regarding cancer-related symptoms. Malaysians must be acknowledged the highrisk symptoms of lung cancer to enhance the survival rate and reduce the mortality rate. This study aims to use a fuzzy linear regression model with heights of triangular fuzzy by Tanaka (1982), H-value ranging from 0.0 to 1.0, to predict high-risk symptoms of lung cancer in Malaysia. The secondary data is analyzed using the fuzzy linear regression model by collecting data from patients with lung cancer at Al-Sultan Abdullah Hospital (UiTM Hospital), Selangor. The results found that haemoptysis and chest pain has been proven to be the highest risk, among other symptoms obtained from the data analysis. It has been discovered that the H-value of 0.0 has the least measurement error, with mean square error (MSE) and root mean square error (RMSE) values of 1.455 and 1.206, respectively. ijacsa 2023 Article PeerReviewed text en http://eprints.uthm.edu.my/10060/1/J16130_cea67612256de5c7e9d725879c24c2f4.pdf Zakaria, Aliya Syaffa and Shafi, Muhammad Ammar and Mohd Zim, Mohd Arif and Mohd Razali, Siti Noor Asyikin (2023) The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia. International Journal of Advanced Computer Science and Applications,, 14 (5). pp. 586-593.
institution Universiti Tun Hussein Onn Malaysia
building UTHM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
url_provider http://eprints.uthm.edu.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
Zakaria, Aliya Syaffa
Shafi, Muhammad Ammar
Mohd Zim, Mohd Arif
Mohd Razali, Siti Noor Asyikin
The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia
description —Lung cancer is the most prevalent cancer in the world, accounting for 12.2% of all newly diagnosed cases in 2020 and has the highest mortality rate due to its late diagnosis and poor symptom detection. Currently, there are 4,319 lung cancer deaths in Malaysia, representing 2.57 percent of all mortality in 2020. The late diagnosis of lung cancer is common, which makes survival more difficult. In Malaysia, however, most cases are detected when the tumors have become too large, or cancer has spread to other body areas that cannot be removed surgically. This is a frequent situation due to the lack of public awareness among Malaysians regarding cancer-related symptoms. Malaysians must be acknowledged the highrisk symptoms of lung cancer to enhance the survival rate and reduce the mortality rate. This study aims to use a fuzzy linear regression model with heights of triangular fuzzy by Tanaka (1982), H-value ranging from 0.0 to 1.0, to predict high-risk symptoms of lung cancer in Malaysia. The secondary data is analyzed using the fuzzy linear regression model by collecting data from patients with lung cancer at Al-Sultan Abdullah Hospital (UiTM Hospital), Selangor. The results found that haemoptysis and chest pain has been proven to be the highest risk, among other symptoms obtained from the data analysis. It has been discovered that the H-value of 0.0 has the least measurement error, with mean square error (MSE) and root mean square error (RMSE) values of 1.455 and 1.206, respectively.
format Article
author Zakaria, Aliya Syaffa
Shafi, Muhammad Ammar
Mohd Zim, Mohd Arif
Mohd Razali, Siti Noor Asyikin
author_facet Zakaria, Aliya Syaffa
Shafi, Muhammad Ammar
Mohd Zim, Mohd Arif
Mohd Razali, Siti Noor Asyikin
author_sort Zakaria, Aliya Syaffa
title The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia
title_short The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia
title_full The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia
title_fullStr The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia
title_full_unstemmed The Use of Fuzzy Linear Regression Modeling to Predict High-risk Symptoms of Lung Cancer in Malaysia
title_sort use of fuzzy linear regression modeling to predict high-risk symptoms of lung cancer in malaysia
publisher ijacsa
publishDate 2023
url http://eprints.uthm.edu.my/10060/1/J16130_cea67612256de5c7e9d725879c24c2f4.pdf
http://eprints.uthm.edu.my/10060/
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