Home > Research > Publications & Outputs > The practicality of Malaysia dengue outbreak fo...

Links

Text available via DOI:

View graph of relations

The practicality of Malaysia dengue outbreak forecasting model as an early warning system

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

The practicality of Malaysia dengue outbreak forecasting model as an early warning system. / Ismail, Suzilah; Fildes, Robert; Ahmad, Rohani et al.
In: Infectious Disease Modelling, Vol. 7, No. 3, 30.09.2022, p. 510-525.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Ismail, S, Fildes, R, Ahmad, R, Wan Mohamad Ali, WN & Omar, T 2022, 'The practicality of Malaysia dengue outbreak forecasting model as an early warning system', Infectious Disease Modelling, vol. 7, no. 3, pp. 510-525. https://doi.org/10.1016/j.idm.2022.07.008

APA

Ismail, S., Fildes, R., Ahmad, R., Wan Mohamad Ali, W. N., & Omar, T. (2022). The practicality of Malaysia dengue outbreak forecasting model as an early warning system. Infectious Disease Modelling, 7(3), 510-525. https://doi.org/10.1016/j.idm.2022.07.008

Vancouver

Ismail S, Fildes R, Ahmad R, Wan Mohamad Ali WN, Omar T. The practicality of Malaysia dengue outbreak forecasting model as an early warning system. Infectious Disease Modelling. 2022 Sept 30;7(3):510-525. Epub 2022 Aug 19. doi: 10.1016/j.idm.2022.07.008

Author

Ismail, Suzilah ; Fildes, Robert ; Ahmad, Rohani et al. / The practicality of Malaysia dengue outbreak forecasting model as an early warning system. In: Infectious Disease Modelling. 2022 ; Vol. 7, No. 3. pp. 510-525.

Bibtex

@article{c8ea01d67cbd49a38e25b4ba17fa386d,
title = "The practicality of Malaysia dengue outbreak forecasting model as an early warning system",
abstract = "Dengue is a harmful tropical disease that causes death to many people. Currently, the dengue vaccine development is still at an early stage, and only intervention methods exist after dengue cases increase. Thus, previously, two scientific experimental field studies were conducted in producing a dengue outbreak forecasting model as an early warning system. Successfully, an Autoregressive Distributed Lag (ADL) Model was developed using three factors: the epidemiological, entomological, and environmental with an accuracy of 85%; but a higher percentage is required in minimizing the error for the model to be useful. Hence, this study aimed to develop a practical and cost-effective dengue outbreak forecasting model with at least 90% accuracy to be embedded in an early warning computer system using the Internet of Things (IoT) approach. Eighty-one weeks of time series data of the three factors were used in six forecasting models, which were Autoregressive Distributed Lag (ADL), Hierarchical Forecasting (Bottom-up and Optimal combination) and three Machine Learning methods: (Artificial Neural Network (ANN), Support Vector Machine (SVM) and Random Forest). Five error measures were used to evaluate the consistency performance of the models in order to ensure model performance. The findings indicated Random Forest outperformed the other models with an accuracy of 95% when including all three factors. But practically, collecting mosquito related data (the entomological factor) was very costly and time consuming. Thus, it was removed from the model, and the accuracy dropped to 92% but still high enough to be of practical use, i.e., beyond 90%. However, the practical ground operationalization of the early warning system also requires several rain gauges to be located at the dengue hot spots due to localized rainfall. Hence, further analysis was conducted in determining the location of the rain gauges. This has led to the recommendation that the rain gauges should be located about 3–4 km apart at the dengue hot spots to ensure the accuracy of the rainfall data to be included in the dengue outbreak forecasting model so that it can be embedded in the early warning system. Therefore, this early warning system can save lives, and prevention is better than cure.",
keywords = "dengue, rainfall, Machine learning, Early warning system, IoT",
author = "Suzilah Ismail and Robert Fildes and Rohani Ahmad and {Wan Mohamad Ali}, {Wan Najdah} and Topek Omar",
year = "2022",
month = sep,
day = "30",
doi = "10.1016/j.idm.2022.07.008",
language = "English",
volume = "7",
pages = "510--525",
journal = "Infectious Disease Modelling",
issn = "2468-0427",
publisher = "Elsevier",
number = "3",

}

RIS

TY - JOUR

T1 - The practicality of Malaysia dengue outbreak forecasting model as an early warning system

AU - Ismail, Suzilah

AU - Fildes, Robert

AU - Ahmad, Rohani

AU - Wan Mohamad Ali, Wan Najdah

AU - Omar, Topek

PY - 2022/9/30

Y1 - 2022/9/30

N2 - Dengue is a harmful tropical disease that causes death to many people. Currently, the dengue vaccine development is still at an early stage, and only intervention methods exist after dengue cases increase. Thus, previously, two scientific experimental field studies were conducted in producing a dengue outbreak forecasting model as an early warning system. Successfully, an Autoregressive Distributed Lag (ADL) Model was developed using three factors: the epidemiological, entomological, and environmental with an accuracy of 85%; but a higher percentage is required in minimizing the error for the model to be useful. Hence, this study aimed to develop a practical and cost-effective dengue outbreak forecasting model with at least 90% accuracy to be embedded in an early warning computer system using the Internet of Things (IoT) approach. Eighty-one weeks of time series data of the three factors were used in six forecasting models, which were Autoregressive Distributed Lag (ADL), Hierarchical Forecasting (Bottom-up and Optimal combination) and three Machine Learning methods: (Artificial Neural Network (ANN), Support Vector Machine (SVM) and Random Forest). Five error measures were used to evaluate the consistency performance of the models in order to ensure model performance. The findings indicated Random Forest outperformed the other models with an accuracy of 95% when including all three factors. But practically, collecting mosquito related data (the entomological factor) was very costly and time consuming. Thus, it was removed from the model, and the accuracy dropped to 92% but still high enough to be of practical use, i.e., beyond 90%. However, the practical ground operationalization of the early warning system also requires several rain gauges to be located at the dengue hot spots due to localized rainfall. Hence, further analysis was conducted in determining the location of the rain gauges. This has led to the recommendation that the rain gauges should be located about 3–4 km apart at the dengue hot spots to ensure the accuracy of the rainfall data to be included in the dengue outbreak forecasting model so that it can be embedded in the early warning system. Therefore, this early warning system can save lives, and prevention is better than cure.

AB - Dengue is a harmful tropical disease that causes death to many people. Currently, the dengue vaccine development is still at an early stage, and only intervention methods exist after dengue cases increase. Thus, previously, two scientific experimental field studies were conducted in producing a dengue outbreak forecasting model as an early warning system. Successfully, an Autoregressive Distributed Lag (ADL) Model was developed using three factors: the epidemiological, entomological, and environmental with an accuracy of 85%; but a higher percentage is required in minimizing the error for the model to be useful. Hence, this study aimed to develop a practical and cost-effective dengue outbreak forecasting model with at least 90% accuracy to be embedded in an early warning computer system using the Internet of Things (IoT) approach. Eighty-one weeks of time series data of the three factors were used in six forecasting models, which were Autoregressive Distributed Lag (ADL), Hierarchical Forecasting (Bottom-up and Optimal combination) and three Machine Learning methods: (Artificial Neural Network (ANN), Support Vector Machine (SVM) and Random Forest). Five error measures were used to evaluate the consistency performance of the models in order to ensure model performance. The findings indicated Random Forest outperformed the other models with an accuracy of 95% when including all three factors. But practically, collecting mosquito related data (the entomological factor) was very costly and time consuming. Thus, it was removed from the model, and the accuracy dropped to 92% but still high enough to be of practical use, i.e., beyond 90%. However, the practical ground operationalization of the early warning system also requires several rain gauges to be located at the dengue hot spots due to localized rainfall. Hence, further analysis was conducted in determining the location of the rain gauges. This has led to the recommendation that the rain gauges should be located about 3–4 km apart at the dengue hot spots to ensure the accuracy of the rainfall data to be included in the dengue outbreak forecasting model so that it can be embedded in the early warning system. Therefore, this early warning system can save lives, and prevention is better than cure.

KW - dengue

KW - rainfall

KW - Machine learning

KW - Early warning system

KW - IoT

U2 - 10.1016/j.idm.2022.07.008

DO - 10.1016/j.idm.2022.07.008

M3 - Journal article

C2 - 36091345

VL - 7

SP - 510

EP - 525

JO - Infectious Disease Modelling

JF - Infectious Disease Modelling

SN - 2468-0427

IS - 3

ER -