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Internet-Based Birth-Cohort Studies: Is This the Future for Epidemiology?

Authors :
Firestone, Ridvan
Cheng, Soo
Pearce, Neil
Douwes, Jeroen
Merletti, Franco
Pizzi, Costanza
Pivetta, Emanuele
Rusconi, Franca
Richiardi, Lorenzo
Source :
JMIR Research Protocols, Vol 4, Iss 2, p e71 (2015)
Publication Year :
2015
Publisher :
JMIR Publications, 2015.

Abstract

BackgroundInternational collaborative cohorts the NINFEA and the ELF studies are mother-child cohorts that use the internet for recruitment and follow-up of their members. The cohorts investigated the association of early life exposures and a wide range of non-communicable diseases. ObjectiveThe objective is to report the research methodology, with emphasis on the advantages and limitations offered by an Internet-based design. These studies were conducted in Turin, Italy and Wellington, New Zealand. MethodsThe cohorts utilized various online/offline methods to recruit participants. Pregnant women who became aware volunteered, completed an online questionnaire, thus obtaining baseline information. ResultsThe NINFEA study has recruited 7003 pregnant women, while the ELF study has recruited 2197 women. The cohorts targeted the whole country, utilizing a range of support processes to reduce the attrition rate of the participants. For the NINFEA and ELF cohorts, online participants were predominantly older (35% and 28.9%, respectively), highly educated (55.6% and 84.9%, respectively), and were in their final trimester of pregnancy (48.5% and 53.6%, respectively). ConclusionsInternet-based cohort epidemiological studies are feasible, however, it is clear that participants are self-selective samples, as is the case for many birth cohorts. Internet-based cohort studies are potentially cost-effective and novel methodology for conducting long-term epidemiology research. However, from our experience, participants tend to be self-selective. In marked time, if the cohorts are to form part of a larger research program they require further use and exploration to address biases and overcome limitations.

Details

Language :
English
ISSN :
19290748 and 66563453
Volume :
4
Issue :
2
Database :
Directory of Open Access Journals
Journal :
JMIR Research Protocols
Publication Type :
Academic Journal
Accession number :
edsdoj.965e51e665634537ad1a96063219ed46
Document Type :
article
Full Text :
https://doi.org/10.2196/resprot.3873