Disease detection or public opinion reflection? Content analysis of tweets, other social media, and online newspapers during the measles outbreak in The Netherlands in 2013
about
"Pandemic Public Health Paradox": Time Series Analysis of the 2009/10 Influenza A / H1N1 Epidemiology, Media Attention, Risk Perception and Public Reactions in 5 European CountriesGarbage in, Garbage Out: Data Collection, Quality Assessment and Reporting Standards for Social Media Data Use in Health Research, Infodemiology and Digital Disease DetectionContrasting academic and lay press print coverage of the 2013-2016 Ebola Virus Disease outbreak.Too Far to Care? Measuring Public Attention and Fear for Ebola Using Twitter.Agenda Setting for Health Promotion: Exploring an Adapted Model for the Social Media Era.The Measles Vaccination Narrative in Twitter: A Quantitative Analysis."Mommy Blogs" and the Vaccination Exemption Narrative: Results From A Machine-Learning Approach for Story Aggregation on Parenting Social Media Sites.Variations in Facebook Posting Patterns Across Validated Patient Health Conditions: A Prospective Cohort Study.Communicating infectious disease prevalence through graphics: Results from an international survey.A Platform for Crowdsourced Foodborne Illness Surveillance: Description of Users and Reports.Uncharted Waters: Communicating Health Risks During the 2014 West Virginia Water Crisis.Facebook and Twitter vaccine sentiment in response to measles outbreaks.Data and systems for medication-related text classification and concept normalization from Twitter: insights from the Social Media Mining for Health (SMM4H)-2017 shared taskExploratory Spatiotemporal Analysis in Risk Communication during the MERS Outbreak in South Korea
P2860
Q28602570-0C8A7F41-D588-4EF1-A9E7-13F2D0924DB1Q31049494-C9BAC9BA-3567-4403-92AC-217A09F4D29BQ33825309-7AA1F53D-2C4F-4360-A4D5-518494FAC114Q33843909-6B10CDC0-04E9-4D7D-A260-68F34E27D477Q36907119-025DB3B0-40EC-4E06-AA30-351092F791B3Q36907123-65BD108D-7E7E-4A2A-A82F-D7753C7A90C7Q37479302-032F40F5-0216-4493-8C03-DD4CE6D21C0EQ37597001-EF62C3D7-5CB7-4BBD-B32D-540C680B684EQ38158541-FC328455-A9A0-44E8-9D59-7E78BD0007DAQ38369941-30EBF176-6F81-49AD-835B-E811B4971075Q46216695-507C5277-5C2C-4BD3-8565-36109841224DQ46264244-873B5077-2018-4DD3-9594-92B2759D969CQ57056737-E7507318-B7A3-476F-9788-F91763B6AFE4Q57411866-56E51ED8-1E0C-4EAB-B20C-EB6CA591D22F
P2860
Disease detection or public opinion reflection? Content analysis of tweets, other social media, and online newspapers during the measles outbreak in The Netherlands in 2013
description
2015 nî lūn-bûn
@nan
2015 թուականի Մայիսին հրատարակուած գիտական յօդուած
@hyw
2015 թվականի մայիսին հրատարակված գիտական հոդված
@hy
2015年の論文
@ja
2015年論文
@yue
2015年論文
@zh-hant
2015年論文
@zh-hk
2015年論文
@zh-mo
2015年論文
@zh-tw
2015年论文
@wuu
name
Disease detection or public op ...... eak in The Netherlands in 2013
@ast
Disease detection or public op ...... eak in The Netherlands in 2013
@en
Disease detection or public op ...... eak in The Netherlands in 2013
@nl
type
label
Disease detection or public op ...... eak in The Netherlands in 2013
@ast
Disease detection or public op ...... eak in The Netherlands in 2013
@en
Disease detection or public op ...... eak in The Netherlands in 2013
@nl
prefLabel
Disease detection or public op ...... eak in The Netherlands in 2013
@ast
Disease detection or public op ...... eak in The Netherlands in 2013
@en
Disease detection or public op ...... eak in The Netherlands in 2013
@nl
P2093
P2860
P50
P921
P356
P1476
Disease detection or public op ...... eak in The Netherlands in 2013
@en
P2093
Emma Broekhuizen
Hester De Melker
Irene Anhai Harmsen
Liesbeth Mollema
Robert Ruiter
Rutger Clijnk
Theo Paulussen
P2860
P356
10.2196/JMIR.3863
P407
P50
P577
2015-05-26T00:00:00Z