Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/38882
Title: Epitweetr: Early warning of public health threats using Twitter data
Authors: Espinosa, Laura
Wijermans, Ariana
Orchard, Francisco
Hohle, Michael
Czernichow, Thomas
COLETTI, Pietro 
HERMANS, Lisa 
FAES, Christel 
Kissling, Esther
Mollet, Thomas
Issue Date: 2022
Publisher: EUR CENTRE DIS PREVENTION & CONTROL
Source: Eurosurveillance, 27 (39) (Art N° 2200177)
Abstract: Background: The European Centre for Disease Prevention and Control (ECDC) systematically collates information from sources to rapidly detect early public health threats. The lack of a freely available, customisable and automated early warning tool using data from Twitter prompted the ECDC to develop epitweetr, which collects, geotocates and aggregates tweets generating signals and email alerts. Aim: This study aims to compare the performance of epitweetr to manually monitoring tweets for the purpose of early detecting public health threats. Methods: We calculated the general and specific positive predictive value (PPV) of signals generated by epitweetr between 19 October and 30 November 2020. Sensitivity, specificity, timeliness and accuracy and performance of tweet geolocation and signal detection algorithms obtained from epitweetr and the manual monitoring of 1,200 tweets were compared. Results: The epitweetr geolocation algorithm had an accuracy of 30.1% at national, and 25.9% at subnational levels. The signal detection algorithm had 3.0% general PPV and 74.6% specific PPV. Compared to manual monitoring, epitweetr had greater sensitivity (47.9% and 78.6%, respectively), and reduced PPV (97.9% and 74.6%, respectively). Median validation time difference between 16 common events detected by epitweetr and manual monitoring was -48.6 hours (IQR: -102.8 to -23.7). Conclusion: Epitweetr has shown sufficient performance as an early warning toot for public health threats using Twitter data. Since epitweetr is a free, open-source tool with configurable settings and a strong automated component, it is expected to increase in usability and usefulness to public health experts.
Notes: Espinosa, L (corresponding author), European Ctr Dis Prevent & Control ECDC, Stockholm, Sweden.
laura.espinosa@ecdc.europa.eu
Keywords: Twitter;early warning;epidemic intelligence;machine learning;public health;Algorithms;Data Collection;Humans;Public Health;Social Media
Document URI: http://hdl.handle.net/1942/38882
ISSN: 1025-496X
e-ISSN: 1560-7917
DOI: 10.2807/1560-7917.ES.2022.27.39.2200177
ISI #: 000870702900005
Rights: This is an open-access article distributed under the terms of the Creative Commons Attribution (CC BY 4.0) Licence. You may share and adapt the material, but must give appropriate credit to the source, provide a link to the licence and indicate if changes were made.
Category: A1
Type: Journal Contribution
Validations: ecoom 2023
Appears in Collections:Research publications

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