Author/Authors :
Wang, Xinlei School of Computer Science and Technology - Jilin University - Changchun, China , Yang, Bo School of Computer Science and Technology - Jilin University - Changchun, China , Huang, Jing School of Computer Science and Technology - Jilin University - Changchun, China , Chen, Hechang School of Computer Science and Technology - Jilin University - Changchun, China , Gu, Xiao School of Computer Science and Technology - Jilin University - Changchun, China , Bai, Yuan School of Computer Science and Technology - Jilin University - Changchun, China , Du, Zhanwei School of Computer Science and Technology - Jilin University - Changchun, China
Abstract :
Malaria, a life-threatening infectious disease, spreads rapidly via parasites. Malaria prevention is more effective and efficient than
treatment. However, the existing surveillance systems used to prevent malaria are inadequate, especially in areas with limited or no
access to medical resources. In this paper, in order to monitor the spreading of malaria, we develop an intelligent surveillance
system based on our existing algorithms. First, a visualization function and active surveillance were implemented in order to
predict and categorize areas at high risk of infection. Next, socioeconomic and climatological characteristics were applied to the
proposed prediction model. Then, the redundancy of the socioeconomic attribute values was reduced using the stepwise regression
method to improve the accuracy of the proposed prediction model. The experimental results indicated that the proposed IASM
predicted malaria outbreaks more close to the real data and with fewer variables than other models. Furthermore, the proposed
model effectively identified areas at high risk of infection.
Keywords :
IASM , Surveillance , System , Malaria