Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis

The traditional expert system (TES) in the medical field commonly uses a certainty factor (CF) rule-based algorithm that can be calculated several symptoms to determine the inference solutions. The main issue for this TES included a prediction for some particular disease likelihood in the cases of n...

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Main Authors: Rosyid Ridlo, Al Hakim, Yanuar Zulardiansyah, Arief, Agung, Pangestu, Hexa Apriliana, Hidayah, Aditia Putra, Hamid, Aviasenna, Andriand, Nur Fauzi, Sulaiman, Machnun, Arif, Majmmoud Hussein, A. Alrahman
Format: Article
Language:English
Published: Faculty of Engineering and Computer Science, Universitas Islam Indagiri, Tembilahan Riau, Indonesia 2023
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Online Access:http://ir.unimas.my/id/eprint/43820/2/Predict.pdf
http://ir.unimas.my/id/eprint/43820/
http://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/2542
https://doi.org/10.32520/stmsi.v12i2.2542
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spelling my.unimas.ir.438202023-12-21T07:01:16Z http://ir.unimas.my/id/eprint/43820/ Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis Rosyid Ridlo, Al Hakim Yanuar Zulardiansyah, Arief Agung, Pangestu Hexa Apriliana, Hidayah Aditia Putra, Hamid Aviasenna, Andriand Nur Fauzi, Sulaiman Machnun, Arif Majmmoud Hussein, A. Alrahman TK Electrical engineering. Electronics Nuclear engineering The traditional expert system (TES) in the medical field commonly uses a certainty factor (CF) rule-based algorithm that can be calculated several symptoms to determine the inference solutions. The main issue for this TES included a prediction for some particular disease likelihood in the cases of new patients. CF is calculated based on symptoms related to clinical signs in patients’ diagnoses. For some reason, this TES probably won’t predict uncertain things, such as particular disease likelihood of some diseases. So, supervised learning, such as linear regression, can solve this problem. We tried to analyse the existing TES for thyroid disorders due to modelling the regression equation to predict the thyroid abnormality particular disease likelihood, based on the symptoms’ CF value and its confidence level. We used multiple linear regression (MLR) and multiple polynomial regression (MPR) to analyse the best regression model to solve the problem. The results show that the MPR model indicates the best regression model for predicting particular disease likelihood of thyroid abnormality, supported by R-squared 94.7%, R-squared adjusted 94.4%, F-value 265.925, and p-value < 0.05, which are higher than MLR model. Our study proposed a foundation for expert system development by focusing more on machine learning expert system (MLES) analysis approaches than TES. Faculty of Engineering and Computer Science, Universitas Islam Indagiri, Tembilahan Riau, Indonesia 2023-05-03 Article PeerReviewed text en http://ir.unimas.my/id/eprint/43820/2/Predict.pdf Rosyid Ridlo, Al Hakim and Yanuar Zulardiansyah, Arief and Agung, Pangestu and Hexa Apriliana, Hidayah and Aditia Putra, Hamid and Aviasenna, Andriand and Nur Fauzi, Sulaiman and Machnun, Arif and Majmmoud Hussein, A. Alrahman (2023) Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis. SISTEMASI : Jurnal Sistem Informasi, 12 (2). pp. 415-424. ISSN 2540-9719 http://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/2542 https://doi.org/10.32520/stmsi.v12i2.2542
institution Universiti Malaysia Sarawak
building Centre for Academic Information Services (CAIS)
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Sarawak
content_source UNIMAS Institutional Repository
url_provider http://ir.unimas.my/
language English
topic TK Electrical engineering. Electronics Nuclear engineering
spellingShingle TK Electrical engineering. Electronics Nuclear engineering
Rosyid Ridlo, Al Hakim
Yanuar Zulardiansyah, Arief
Agung, Pangestu
Hexa Apriliana, Hidayah
Aditia Putra, Hamid
Aviasenna, Andriand
Nur Fauzi, Sulaiman
Machnun, Arif
Majmmoud Hussein, A. Alrahman
Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis
description The traditional expert system (TES) in the medical field commonly uses a certainty factor (CF) rule-based algorithm that can be calculated several symptoms to determine the inference solutions. The main issue for this TES included a prediction for some particular disease likelihood in the cases of new patients. CF is calculated based on symptoms related to clinical signs in patients’ diagnoses. For some reason, this TES probably won’t predict uncertain things, such as particular disease likelihood of some diseases. So, supervised learning, such as linear regression, can solve this problem. We tried to analyse the existing TES for thyroid disorders due to modelling the regression equation to predict the thyroid abnormality particular disease likelihood, based on the symptoms’ CF value and its confidence level. We used multiple linear regression (MLR) and multiple polynomial regression (MPR) to analyse the best regression model to solve the problem. The results show that the MPR model indicates the best regression model for predicting particular disease likelihood of thyroid abnormality, supported by R-squared 94.7%, R-squared adjusted 94.4%, F-value 265.925, and p-value < 0.05, which are higher than MLR model. Our study proposed a foundation for expert system development by focusing more on machine learning expert system (MLES) analysis approaches than TES.
format Article
author Rosyid Ridlo, Al Hakim
Yanuar Zulardiansyah, Arief
Agung, Pangestu
Hexa Apriliana, Hidayah
Aditia Putra, Hamid
Aviasenna, Andriand
Nur Fauzi, Sulaiman
Machnun, Arif
Majmmoud Hussein, A. Alrahman
author_facet Rosyid Ridlo, Al Hakim
Yanuar Zulardiansyah, Arief
Agung, Pangestu
Hexa Apriliana, Hidayah
Aditia Putra, Hamid
Aviasenna, Andriand
Nur Fauzi, Sulaiman
Machnun, Arif
Majmmoud Hussein, A. Alrahman
author_sort Rosyid Ridlo, Al Hakim
title Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis
title_short Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis
title_full Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis
title_fullStr Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis
title_full_unstemmed Predict The Thyroid Abnormality Particular Disease Likelihood of The Symptoms’ Certainty Factor Value and Its Confidence Level: A Regression Model Analysis
title_sort predict the thyroid abnormality particular disease likelihood of the symptoms’ certainty factor value and its confidence level: a regression model analysis
publisher Faculty of Engineering and Computer Science, Universitas Islam Indagiri, Tembilahan Riau, Indonesia
publishDate 2023
url http://ir.unimas.my/id/eprint/43820/2/Predict.pdf
http://ir.unimas.my/id/eprint/43820/
http://sistemasi.ftik.unisi.ac.id/index.php/stmsi/article/view/2542
https://doi.org/10.32520/stmsi.v12i2.2542
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score 13.188404