Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary

Diabetes mellitus, particularly known as type 2 diabetes, is a significant public health concern in Malaysia. The increasing prevalence of this chronic disease necessitates the development of effective diagnosis and recommender systems to reduce its impact on public healthcare. This project aims to...

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Main Author: Mohd Zamary, Nurul Aida
Format: Thesis
Language:English
Published: 2024
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Online Access:https://ir.uitm.edu.my/id/eprint/96521/1/96521.pdf
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spelling my-uitm-ir.965212024-06-06T06:38:02Z Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary 2024 Mohd Zamary, Nurul Aida Algorithms Diabetes mellitus, particularly known as type 2 diabetes, is a significant public health concern in Malaysia. The increasing prevalence of this chronic disease necessitates the development of effective diagnosis and recommender systems to reduce its impact on public healthcare. This project aims to develop a decision-making support model for diabetes diagnosis and treatment recommendation using the decision tree algorithm. The objectives include studying the requirements of the decision tree in the diagnosis and recommendation system, developing a prototype for the system, and evaluating the accuracy of the decision tree algorithm. The phase of this project is divided into data preprocessing, implementation of the decision tree algorithm, and evaluation of the algorithm and prototype. The decision tree algorithm demonstrated good performance in classifying diabetes mellitus and providing treatment recommendations with accuracy of 98.15% and 98.03%, respectively. To evaluate the model, the model accuracy, precision, recall, F1- score, and confusion matrix were used. The decision tree model in this project is also compared to Naive Bayes and AdaBoost. The decision tree model shows good performance for this decision-making support model. The development of this decisionmaking support model holds significant implications for the early diagnosis and effective management of diabetes mellitus. By providing accurate classification and treatment recommendations, this model has the potential to improve patient outcomes and reduce the time for decision-making in the healthcare industry. The project successfully achieved its objectives by analyzing the literature, developing the decision tree algorithm, and evaluating the accuracy of the model. The findings underscore the potential of decisionmaking support models for improving diabetes diagnosis and treatment recommendation systems. 2024 Thesis https://ir.uitm.edu.my/id/eprint/96521/ https://ir.uitm.edu.my/id/eprint/96521/1/96521.pdf text en public degree Universiti Teknologi MARA, Terengganu Faculty of Computer and Mathematical Sciences Mahiddin, Normadiah
institution Universiti Teknologi MARA
collection UiTM Institutional Repository
language English
advisor Mahiddin, Normadiah
topic Algorithms
spellingShingle Algorithms
Mohd Zamary, Nurul Aida
Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary
description Diabetes mellitus, particularly known as type 2 diabetes, is a significant public health concern in Malaysia. The increasing prevalence of this chronic disease necessitates the development of effective diagnosis and recommender systems to reduce its impact on public healthcare. This project aims to develop a decision-making support model for diabetes diagnosis and treatment recommendation using the decision tree algorithm. The objectives include studying the requirements of the decision tree in the diagnosis and recommendation system, developing a prototype for the system, and evaluating the accuracy of the decision tree algorithm. The phase of this project is divided into data preprocessing, implementation of the decision tree algorithm, and evaluation of the algorithm and prototype. The decision tree algorithm demonstrated good performance in classifying diabetes mellitus and providing treatment recommendations with accuracy of 98.15% and 98.03%, respectively. To evaluate the model, the model accuracy, precision, recall, F1- score, and confusion matrix were used. The decision tree model in this project is also compared to Naive Bayes and AdaBoost. The decision tree model shows good performance for this decision-making support model. The development of this decisionmaking support model holds significant implications for the early diagnosis and effective management of diabetes mellitus. By providing accurate classification and treatment recommendations, this model has the potential to improve patient outcomes and reduce the time for decision-making in the healthcare industry. The project successfully achieved its objectives by analyzing the literature, developing the decision tree algorithm, and evaluating the accuracy of the model. The findings underscore the potential of decisionmaking support models for improving diabetes diagnosis and treatment recommendation systems.
format Thesis
qualification_level Bachelor degree
author Mohd Zamary, Nurul Aida
author_facet Mohd Zamary, Nurul Aida
author_sort Mohd Zamary, Nurul Aida
title Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary
title_short Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary
title_full Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary
title_fullStr Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary
title_full_unstemmed Diagnosis and recommender system for diabetes patient using decision tree / Nurul Aida Mohd Zamary
title_sort diagnosis and recommender system for diabetes patient using decision tree / nurul aida mohd zamary
granting_institution Universiti Teknologi MARA, Terengganu
granting_department Faculty of Computer and Mathematical Sciences
publishDate 2024
url https://ir.uitm.edu.my/id/eprint/96521/1/96521.pdf
_version_ 1804889992521056256