03731nas a2200361 4500000000100000008004100001260004400042653005700086653004800143653002900191653002000220653002400240653000900264653001400273653000800287653001600295653001300311653002500324100001400349700001200363700001300375700001300388700001600401700001000417700001300427700001400440245015800454856009400612300000800706490000700714520263400721022001403355 2023 d bSpringer Science and Business Media LLC10aPublic Health, Environmental and Occupational Health10aGeneral Business, Management and Accounting10aGeneral Computer Science10aCitizen Science10aAnopheles stephensi10adata10adashboard10aGIS10aOpen Source10aMosquito10aVector borne disease1 aUelmen JA1 aClark A1 aPalmer J1 aKohler J1 aVan Dyke LC1 aLow R1 aMapes CD1 aCarney RM00aGlobal mosquito observations dashboard (GMOD): creating a user-friendly web interface fueled by citizen science to monitor invasive and vector mosquitoes uhttps://ij-healthgeographics.biomedcentral.com/counter/pdf/10.1186/s12942-023-00350-7.pdf a1-90 v223 a
Background: Mosquitoes and the diseases they transmit pose a significant public health threat worldwide, causing more fatalities than any other animal. To effectively combat this issue, there is a need for increased public awareness and mosquito control. However, traditional surveillance programs are time-consuming, expensive, and lack scalability. Fortunately, the widespread availability of mobile devices with high-resolution cameras presents a unique opportunity for mosquito surveillance. In response to this, the Global Mosquito Observations Dashboard (GMOD) was developed as a free, public platform to improve the detection and monitoring of invasive and vector mosquitoes through citizen science participation worldwide.
Methods: GMOD is an interactive web interface that collects and displays mosquito observation and habitat data supplied by four datastreams with data generated by citizen scientists worldwide. By providing information on the locations and times of observations, the platform enables the visualization of mosquito population trends and ranges. It also serves as an educational resource, encouraging collaboration and data sharing. The data acquired and displayed on GMOD is freely available in multiple formats and can be accessed from any device with an internet connection.
Results: Since its launch less than a year ago, GMOD has already proven its value. It has successfully integrated and processed large volumes of real-time data (~ 300,000 observations), offering valuable and actionable insights into mosquito species prevalence, abundance, and potential distributions, as well as engaging citizens in community-based surveillance programs.
Conclusions: GMOD is a cloud-based platform that provides open access to mosquito vector data obtained from citizen science programs. Its user-friendly interface and data filters make it valuable for researchers, mosquito control personnel, and other stakeholders. With its expanding data resources and the potential for machine learning integration, GMOD is poised to support public health initiatives aimed at reducing the spread of mosquito-borne diseases in a cost-effective manner, particularly in regions where traditional surveillance methods are limited. GMOD is continually evolving, with ongoing development of powerful artificial intelligence algorithms to identify mosquito species and other features from submitted data. The future of citizen science holds great promise, and GMOD stands as an exciting initiative in this field.
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