| Literature DB >> 34042803 |
Carole Faviez1, Pierre Foulquié2, Xiaoyi Chen1, Adel Mebarki2, Sophie Quennelle1,3, Nathalie Texier2, Sandrine Katsahian1,4, Stéphane Schuck2, Anita Burgun1,5,6.
Abstract
The exhaustive automatic detection of symptoms in social media posts is made difficult by the presence of colloquial expressions, misspellings and inflected forms of words. The detection of self-reported symptoms is of major importance for emergent diseases like the Covid-19. In this study, we aimed to (1) develop an algorithm based on fuzzy matching to detect symptoms in tweets, (2) establish a comprehensive list of Covid-19-related symptoms and (3) evaluate the fuzzy matching for Covid-19-related symptom detection in French tweets. The Covid-19-related symptom list was built based on the aggregation of different data sources. French Covid-19-related tweets were automatically extracted using a dedicated data broker during the first wave of the pandemic in France. The fuzzy matching parameters were finetuned using all symptoms from MedDRA and then evaluated on a subset of 5000 Covid-19-related tweets in French for the detection of symptoms from our Covid-19-related list. The fuzzy matching improved the detection by the addition of 42% more correct matches with an 81% precision.Entities:
Keywords: Content analysis; Covid-19; fuzzy matching; social media; symptoms
Mesh:
Year: 2021 PMID: 34042803 DOI: 10.3233/SHTI210308
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630