» Articles » PMID: 29190281

Internet-based Biosurveillance Methods for Vector-borne Diseases: Are They Novel Public Health Tools or Just Novelties?

Overview
Date 2017 Dec 1
PMID 29190281
Citations 13
Authors
Affiliations
Soon will be listed here.
Abstract

Internet-based surveillance methods for vector-borne diseases (VBDs) using "big data" sources such as Google, Twitter, and internet newswire scraping have recently been developed, yet reviews on such "digital disease detection" methods have focused on respiratory pathogens, particularly in high-income regions. Here, we present a narrative review of the literature that has examined the performance of internet-based biosurveillance for diseases caused by vector-borne viruses, parasites, and other pathogens, including Zika, dengue, other arthropod-borne viruses, malaria, leishmaniasis, and Lyme disease across a range of settings, including low- and middle-income countries. The fundamental features, advantages, and drawbacks of each internet big data source are presented for those with varying familiarity of "digital epidemiology." We conclude with some of the challenges and future directions in using internet-based biosurveillance for the surveillance and control of VBD.

Citing Articles

Leveraging machine learning approaches for predicting potential Lyme disease cases and incidence rates in the United States using Twitter.

Boligarla S, Laison E, Li J, Mahadevan R, Ng A, Lin Y BMC Med Inform Decis Mak. 2023; 23(1):217.

PMID: 37845666 PMC: 10578027. DOI: 10.1186/s12911-023-02315-z.


An effective internet-based system for surveillance and elimination of triatomine insects: AlertaChirimacha.

Tamayo L, Condori-Pino C, Sanchez Z, Goncalves R, Malaga Chavez F, Castillo-Neyra R PLoS Negl Trop Dis. 2023; 17(10):e0011694.

PMID: 37844066 PMC: 10602375. DOI: 10.1371/journal.pntd.0011694.


Twitter trends in #Parasitology determined by text mining and topic modelling.

Ellis J, Reichel M Curr Res Parasitol Vector Borne Dis. 2023; 4:100138.

PMID: 37670843 PMC: 10475476. DOI: 10.1016/j.crpvbd.2023.100138.


Using Google Health Trends to investigate COVID-19 incidence in Africa.

Fulk A, Romero-Alvarez D, Abu-Saymeh Q, Saint Onge J, Peterson A, Agusto F PLoS One. 2022; 17(6):e0269573.

PMID: 35671301 PMC: 9173636. DOI: 10.1371/journal.pone.0269573.


COVID-Scraper: An Open-Source Toolset for Automatically Scraping and Processing Global Multi-Scale Spatiotemporal COVID-19 Records.

Lan H, Sha D, Srirenganathan Malarvizhi A, Liu Y, Li Y, Meister N IEEE Access. 2021; 9:84783-84798.

PMID: 34812396 PMC: 8545187. DOI: 10.1109/ACCESS.2021.3085682.


References
1.
Brownstein J, Freifeld C . HealthMap: the development of automated real-time internet surveillance for epidemic intelligence. Euro Surveill. 2007; 12(11):E071129.5. DOI: 10.2807/esw.12.48.03322-en. View

2.
Olson D, Konty K, Paladini M, Viboud C, Simonsen L . Reassessing Google Flu Trends data for detection of seasonal and pandemic influenza: a comparative epidemiological study at three geographic scales. PLoS Comput Biol. 2013; 9(10):e1003256. PMC: 3798275. DOI: 10.1371/journal.pcbi.1003256. View

3.
Barboza P, Vaillant L, Mawudeku A, Nelson N, Hartley D, Madoff L . Evaluation of epidemic intelligence systems integrated in the early alerting and reporting project for the detection of A/H5N1 influenza events. PLoS One. 2013; 8(3):e57252. PMC: 3589479. DOI: 10.1371/journal.pone.0057252. View

4.
Yang S, Kou S, Lu F, Brownstein J, Brooke N, Santillana M . Advances in using Internet searches to track dengue. PLoS Comput Biol. 2017; 13(7):e1005607. PMC: 5519005. DOI: 10.1371/journal.pcbi.1005607. View

5.
Cleaton J, Viboud C, Simonsen L, Hurtado A, Chowell G . Characterizing Ebola Transmission Patterns Based on Internet News Reports. Clin Infect Dis. 2015; 62(1):24-31. PMC: 4678106. DOI: 10.1093/cid/civ748. View