TY - JOUR
T1 - Artificial intelligence model as predictor for dengue outbreaks
AU - Raja, Dhesi Baha
AU - Mallol, Rainier
AU - Ting, Choo Yee
AU - Kamaludin, Fadzilah
AU - Ahmad, Rohani
AU - Ismail, Suzilah
AU - Jayaraj, Vivek Jason
AU - Sundram, Bala Murali
N1 - Publisher Copyright:
© 2019, Malaysian Public Health Physicians Association.
PY - 2019/4/1
Y1 - 2019/4/1
N2 - Dengue is an increasing threat in Malaysia, particularly in the more densely populated regions of the country. We present an Artificial Intelligence driven model in predicting Aedes outbreak, using predictors of weather variables and vector indices sourced from the Ministry of Health. Analysis and predictions to estimate Aedes populations were conducted, with its results being used to infer the possibility of dengue outbreaks at pre-determined localities around the Klang Valley, Malaysia. A Bayesian Network machine learning technique was employed, with the model being trained using predictor variables such as temperature, rainfall, date of onset and notification, and vector indices such as the Ae. albopictus count, Ae. aegypti count and larval count. The interfaces of the system were developed using the C# language for Server-side configuration and programming, and HTML, CSS and JavaScript for the Client Side programming. The model was then used to predict the population of Aedes at periods of 7, 14, and 30 days. Using the Bayesian Network technique utilising the above predictor variables we proposed a finalised model with predictive accuracy ranging from 79%-84%. This model was developed into a Graphical User Interface, which was purposed to assist and educate the general public of regions at risk of developing dengue outbreak. This remains a valuable case-study on the importance of public data in the context of combating a public health risk via the development of models for predicting outbreaks of dengue which will hopefully spur further sharing of data by all parties in combating public health threats.
AB - Dengue is an increasing threat in Malaysia, particularly in the more densely populated regions of the country. We present an Artificial Intelligence driven model in predicting Aedes outbreak, using predictors of weather variables and vector indices sourced from the Ministry of Health. Analysis and predictions to estimate Aedes populations were conducted, with its results being used to infer the possibility of dengue outbreaks at pre-determined localities around the Klang Valley, Malaysia. A Bayesian Network machine learning technique was employed, with the model being trained using predictor variables such as temperature, rainfall, date of onset and notification, and vector indices such as the Ae. albopictus count, Ae. aegypti count and larval count. The interfaces of the system were developed using the C# language for Server-side configuration and programming, and HTML, CSS and JavaScript for the Client Side programming. The model was then used to predict the population of Aedes at periods of 7, 14, and 30 days. Using the Bayesian Network technique utilising the above predictor variables we proposed a finalised model with predictive accuracy ranging from 79%-84%. This model was developed into a Graphical User Interface, which was purposed to assist and educate the general public of regions at risk of developing dengue outbreak. This remains a valuable case-study on the importance of public data in the context of combating a public health risk via the development of models for predicting outbreaks of dengue which will hopefully spur further sharing of data by all parties in combating public health threats.
KW - Aedes
KW - Aegypti
KW - Albopictus
KW - Bayesian Network
KW - C#
KW - Dengue
KW - Predictive Model
UR - http://www.scopus.com/inward/record.url?scp=85071395032&partnerID=8YFLogxK
M3 - Article
AN - SCOPUS:85071395032
SN - 1675-0306
VL - 19
SP - 103
EP - 108
JO - Malaysian Journal of Public Health Medicine
JF - Malaysian Journal of Public Health Medicine
IS - 2
ER -