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1.
Sci Total Environ ; 612: 1293-1299, 2018 Jan 15.
Article in English | MEDLINE | ID: mdl-28898935

ABSTRACT

Hand, foot and mouth disease (HFMD) has been recognized as a significant public health threat and poses a tremendous challenge to disease control departments. To date, the relationship between meteorological factors and HFMD has been documented, and public interest of disease has been proven to be trackable from the Internet. However, no study has explored the combination of these two factors in the monitoring of HFMD. Therefore, the main aim of this study was to develop an effective monitoring model of HFMD in Guangzhou, China by utilizing historical HFMD cases, Internet-based search engine query data and meteorological factors. To this end, a case study was conducted in Guangzhou, using a network-based generalized additive model (GAM) including all factors related to HFMD. Three other models were also constructed using some of the variables for comparison. The results suggested that the model showed the best estimating ability when considering all of the related factors.


Subject(s)
Hand, Foot and Mouth Disease/epidemiology , Weather , Child , Child, Preschool , China/epidemiology , Cities , Humans , Incidence , Infant , Infant, Newborn , Models, Statistical , Search Engine
2.
PLoS Comput Biol ; 12(6): e1004876, 2016 06.
Article in English | MEDLINE | ID: mdl-27271698

ABSTRACT

The estimation of disease prevalence in online search engine data (e.g., Google Flu Trends (GFT)) has received a considerable amount of scholarly and public attention in recent years. While the utility of search engine data for disease surveillance has been demonstrated, the scientific community still seeks ways to identify and reduce biases that are embedded in search engine data. The primary goal of this study is to explore new ways of improving the accuracy of disease prevalence estimations by combining traditional disease data with search engine data. A novel method, Biased Sentinel Hospital-based Area Disease Estimation (B-SHADE), is introduced to reduce search engine data bias from a geographical perspective. To monitor search trends on Hand, Foot and Mouth Disease (HFMD) in Guangdong Province, China, we tested our approach by selecting 11 keywords from the Baidu index platform, a Chinese big data analyst similar to GFT. The correlation between the number of real cases and the composite index was 0.8. After decomposing the composite index at the city level, we found that only 10 cities presented a correlation of close to 0.8 or higher. These cities were found to be more stable with respect to search volume, and they were selected as sample cities in order to estimate the search volume of the entire province. After the estimation, the correlation improved from 0.8 to 0.864. After fitting the revised search volume with historical cases, the mean absolute error was 11.19% lower than it was when the original search volume and historical cases were combined. To our knowledge, this is the first study to reduce search engine data bias levels through the use of rigorous spatial sampling strategies.


Subject(s)
Bias , Data Interpretation, Statistical , Databases, Factual , Hand, Foot and Mouth Disease/epidemiology , Search Engine/methods , Sentinel Surveillance , Clinical Trials Data Monitoring Committees , Humans , Prevalence , Reproducibility of Results , Risk Assessment/methods , Sensitivity and Specificity
3.
Parasit Vectors ; 8: 146, 2015 Mar 07.
Article in English | MEDLINE | ID: mdl-25888910

ABSTRACT

BACKGROUND: To reveal the spatio-temporal distribution of malaria vectors in the national malaria surveillance sites from 2005 to 2010 and provide reference for the current National Malaria Elimination Programme (NMEP) in China. METHODS: A 6-year longitudinal surveillance on density of malaria vectors was carried out in the 62 national malaria surveillance sites. The spatial and temporal analyses of the four primary vectors distribution were conducted by the methods of kernel k-means and the cluster distribution of the most widely distribution vector of An.sinensis was identified using the empirical mode decomposition (EMD). RESULTS: Totally 4 species of Anopheles mosquitoes including An.sinensis, An.lesteri, An.dirus and An.minimus were captured with significant difference of distribution as well as density. An. sinensis was the most widely distributed, accounting for 96.25% of all collections, and its distribution was divided into three different clusters with a significant increase of density observed in the second cluster which located mostly in the central parts of China. CONCLUSION: This study first described the spatio-temporal distribution of malaria vectors based on the nationwide surveillance during 2005-2010, which served as a baseline for the ongoing national malaria elimination program.


Subject(s)
Animal Distribution/physiology , Anopheles/physiology , Insect Vectors/physiology , Malaria/transmission , Animals , China/epidemiology , Cluster Analysis , Female , Humans , Longitudinal Studies , Malaria/epidemiology , Population Density , Population Surveillance , Spatio-Temporal Analysis , Time Factors
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