Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia)

The bacterium Mycobacterium tuberculosis causes a viral infection affecting the lungs and liver. Tuberculosis (TB) is a significant public health concern in developing countries, where it is often associated with poverty, poor living conditions, and limited access to healthcare services. According t...

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Main Authors: Yaniza Shaira, Zakaria, Nur Afiqah, Ariffin, Azizul, Ahmad, Ruslan, Rainis, Aidy, M. Muslim, Wan Mohd Muhiyuddin, Wan Ibrahim
Format: Article
Language:English
Published: Universiti Kebangsaan Malaysia 2025
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Online Access:http://ir.unimas.my/id/eprint/47430/1/OPTIMI~2.PDF
http://ir.unimas.my/id/eprint/47430/
https://www.ukm.my/jsm/pdf_files/SM-PDF-54-1-2025/22.pdf
http://doi.org/10.17576/jsm-2025-5401-22
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spelling my.unimas.ir-474302025-01-31T07:52:31Z http://ir.unimas.my/id/eprint/47430/ Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia) Yaniza Shaira, Zakaria Nur Afiqah, Ariffin Azizul, Ahmad Ruslan, Rainis Aidy, M. Muslim Wan Mohd Muhiyuddin, Wan Ibrahim G Geography (General) GA Mathematical geography. Cartography H Social Sciences (General) HA Statistics The bacterium Mycobacterium tuberculosis causes a viral infection affecting the lungs and liver. Tuberculosis (TB) is a significant public health concern in developing countries, where it is often associated with poverty, poor living conditions, and limited access to healthcare services. According to the World Health Organization (2023), Tuberculosis continues to pose a substantial risk to public health on a global scale, with millions of people affected each year and around 1.5 million deaths in 2020. Healthcare providers often encounter significant challenges in addressing TB, leading to uncertain treatment outcomes. This study introduces a novel method for enhancing TB treatment using sophisticated machine learning techniques, particularly emphasizing the application of XGBoost and various predictive models in Penang State, Malaysia, to predict individual treatment outcomes based on clinical data. The models were trained using 2017 Penang data. Comparing predicted accuracy helps establish the optimum method. Clinical data was anonymized and analyzed. Decision tree accuracy is 63.7% using 2017 data. Logistic Regression is 63.3% accurate, while XGBoost is 66.3%. Hyperparameter-tuned XGBoost performs best at 68.1%. Comparing observed and expected results determines accuracy. TB result predictions are accurate using supervised learning. Calibrated ensemble models like XGBoost makes reliable predictions. Additional clinical characteristics may improve forecasts. The primary objective was to develop a reliable, clinically validated instrument that enhances TB treatments while optimizing resource efficiency across diverse healthcare environments. Universiti Kebangsaan Malaysia 2025-01-28 Article PeerReviewed PDF en http://ir.unimas.my/id/eprint/47430/1/OPTIMI~2.PDF Yaniza Shaira, Zakaria and Nur Afiqah, Ariffin and Azizul, Ahmad and Ruslan, Rainis and Aidy, M. Muslim and Wan Mohd Muhiyuddin, Wan Ibrahim (2025) Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia). Sains Malaysiana, 54 (1). pp. 3741-3752. ISSN 0126-6039 https://www.ukm.my/jsm/pdf_files/SM-PDF-54-1-2025/22.pdf http://doi.org/10.17576/jsm-2025-5401-22
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 G Geography (General)
GA Mathematical geography. Cartography
H Social Sciences (General)
HA Statistics
spellingShingle G Geography (General)
GA Mathematical geography. Cartography
H Social Sciences (General)
HA Statistics
Yaniza Shaira, Zakaria
Nur Afiqah, Ariffin
Azizul, Ahmad
Ruslan, Rainis
Aidy, M. Muslim
Wan Mohd Muhiyuddin, Wan Ibrahim
Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia)
description The bacterium Mycobacterium tuberculosis causes a viral infection affecting the lungs and liver. Tuberculosis (TB) is a significant public health concern in developing countries, where it is often associated with poverty, poor living conditions, and limited access to healthcare services. According to the World Health Organization (2023), Tuberculosis continues to pose a substantial risk to public health on a global scale, with millions of people affected each year and around 1.5 million deaths in 2020. Healthcare providers often encounter significant challenges in addressing TB, leading to uncertain treatment outcomes. This study introduces a novel method for enhancing TB treatment using sophisticated machine learning techniques, particularly emphasizing the application of XGBoost and various predictive models in Penang State, Malaysia, to predict individual treatment outcomes based on clinical data. The models were trained using 2017 Penang data. Comparing predicted accuracy helps establish the optimum method. Clinical data was anonymized and analyzed. Decision tree accuracy is 63.7% using 2017 data. Logistic Regression is 63.3% accurate, while XGBoost is 66.3%. Hyperparameter-tuned XGBoost performs best at 68.1%. Comparing observed and expected results determines accuracy. TB result predictions are accurate using supervised learning. Calibrated ensemble models like XGBoost makes reliable predictions. Additional clinical characteristics may improve forecasts. The primary objective was to develop a reliable, clinically validated instrument that enhances TB treatments while optimizing resource efficiency across diverse healthcare environments.
format Article
author Yaniza Shaira, Zakaria
Nur Afiqah, Ariffin
Azizul, Ahmad
Ruslan, Rainis
Aidy, M. Muslim
Wan Mohd Muhiyuddin, Wan Ibrahim
author_facet Yaniza Shaira, Zakaria
Nur Afiqah, Ariffin
Azizul, Ahmad
Ruslan, Rainis
Aidy, M. Muslim
Wan Mohd Muhiyuddin, Wan Ibrahim
author_sort Yaniza Shaira, Zakaria
title Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia)
title_short Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia)
title_full Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia)
title_fullStr Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia)
title_full_unstemmed Optimizing Tuberculosis Treatment Predictions: A Comparative Study of XGBoost with Hyperparameter in Penang, Malaysia (Mengoptimumkan Peramalan Rawatan Tuberkulosis: Suatu Kajian Perbandingan XGBoost dengan Hiperparameter di Penang, Malaysia)
title_sort optimizing tuberculosis treatment predictions: a comparative study of xgboost with hyperparameter in penang, malaysia (mengoptimumkan peramalan rawatan tuberkulosis: suatu kajian perbandingan xgboost dengan hiperparameter di penang, malaysia)
publisher Universiti Kebangsaan Malaysia
publishDate 2025
url http://ir.unimas.my/id/eprint/47430/1/OPTIMI~2.PDF
http://ir.unimas.my/id/eprint/47430/
https://www.ukm.my/jsm/pdf_files/SM-PDF-54-1-2025/22.pdf
http://doi.org/10.17576/jsm-2025-5401-22
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score 13.23648