| Literature DB >> 27191153 |
Onicio B Leal-Neto1, George S Dimech2, Marlo Libel3, Wanderson Oliveira4, Juliana Perazzo Ferreira1.
Abstract
This study aimed to describe the digital disease detection and participatory surveillance in different countries. The systems or platforms consolidated in the scientific field were analyzed by describing the strategy, type of data source, main objectives, and manner of interaction with users. Eleven systems or platforms, developed from 1996 to 2016, were analyzed. There was a higher frequency of data mining on the web and active crowdsourcing as well as a trend in the use of mobile applications. It is important to provoke debate in the academia and health services for the evolution of methods and insights into participatory surveillance in the digital age.Entities:
Mesh:
Year: 2016 PMID: 27191153 PMCID: PMC4902089 DOI: 10.1590/S1518-8787.2016050006201
Source DB: PubMed Journal: Rev Saude Publica ISSN: 0034-8910 Impact factor: 2.106
Description of the systems or platforms of digital detection of diseases.
| Title | Country, base year | Strategy type | Data source | Main objectives | Interaction platform |
|---|---|---|---|---|---|
| ProMED | USA, 1996 | A | Secondary | Collecting data in cyberspace related to diseases and conditions. | Website and mobile application |
| GPHIN | Canada, 1997 | A | Secondary | Collecting data in cyberspace related to diseases and conditions. | Website |
| InfluenzaNet | The Netherlands and Belgium, 2003 Portugal, 2005 Italy, 2008 UK, 2009 | B | Primary | Collecting information on influenza-like illness data, made available to the population. | Website and mobile application |
| HealthMap | USA, 2006 | A, B | Primary and secondary | Spatializing epidemiologically relevant information, made available to the population via web. | Website and mobile application* |
| MedISys | Italy, 2007 | A | Secondary | Collecting data in cyberspace related to diseases and conditions. | Website |
| Salud Boricua | USA (for Puerto Rico only), 2008 | B | Primary | Spatializing information on acute febrile syndrome (dengue fever, influenza, leptospirosis) data, made available to the population. | Website |
| Flu Near You | USA, 2011 | B | Primary | Spatializing information on influenza-like illness data, made available to the population. | Website and mobile application |
|
| Brazil, 2011 | B | Primary | Spatializing information on data related to dengue fever. | Website |
|
| Brazil, 2011 | C | Primary | Spatializing tweets related to dengue fever. | Website |
|
| Brazil, 2014 | A, B | Primary and secondary | Detecting possible changes in the epidemiological pattern of acute disease occurrence in 12 Brazilian host cities during the 2014 FIFA World Cup. | Website and mobile application |
|
| Brazil, 2016 | B | Primary and secondary | Detecting in advance aggregates of cases of diarrhoeal, respiratory, and exanthematic syndromes in Brazil. | Website and mobile application |
A: Mining of epidemiologically relevant data on the web; B: Participatory surveillance (Active crowdsourcing); C: Data mining on Twitter (Passive crowdsourcing)
* Made by the application Outbreaks Near Me.