Title :
Monitoring Epidemic Alert Levels by Analyzing Internet Search Volume
Author :
Xichuan Zhou ; Qin Li ; Zhenglin Zhu ; Han Zhao ; Hao Tang ; Yujie Feng
Author_Institution :
Coll. of Commun. Eng., Chongqing Univ., Chongqing, China
Abstract :
The prevention of infectious diseases is a global health priority area. The early detection of possible epidemics is the first and important defense line against infectious diseases. However, conventional surveillance systems, e.g., the Centers for Disease Control and Prevention (CDC), rely on clinical data. The CDC publishes the surveillance results weeks after epidemic outbreaks. To improve the early detection of epidemic outbreaks, we designed a syndromic surveillance system to predict the epidemic trends based on disease-related Google search volume. Specifically, we first represented the epidemic trend with multiple alert levels to reduce the noise level. Then, we predicted the epidemic alert levels using a continuous density HMM, which incorporated the intrinsic characteristic of the disease transmission for alert level estimation. Respective models are built to monitor both national and regional epidemic alert levels of the U.S. The proposed system can provide real-time surveillance results, which are weeks before the CDC´s reports. This paper focusses on monitoring the infectious disease in the U.S., however, we believe similar approach may be used to monitor epidemics for the developing countries as well.
Keywords :
Internet; bioinformatics; epidemics; hidden Markov models; medical computing; search engines; alert level estimation; continuous density HMM; disease related Google search volume; disease transmission; early epidemic outbreak detection; epidemic alert level monitoring; epidemic trend representation; epidemic trends; hidden Markov model; infectious disease prevention; internet search volume analysis; possible epidemic detection; syndromic surveillance system; Accuracy; Diseases; Estimation; Google; Hidden Markov models; Market research; Surveillance; Hidden Markov model (HMM); infectious disease; outbreak surveillance; search engine; Centers for Disease Control and Prevention (U.S.); Epidemics; Hepatitis; Humans; Internet; Markov Chains; Models, Theoretical; Public Health Surveillance; Search Engine; Terminology as Topic; United States;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2012.2228264