| Literature DB >> 29295108 |
Xiaoyi Chen1, Myrtille Deldossi2, Rim Aboukhamis3, Carole Faviez4, Badisse Dahamna5, Pierre Karapetiantz1, Armelle Guenegou-Arnoux1, Yannick Girardeau6, Sylvie Guillemin-Lanne2, Agnès Lillo-Le-Louët3, Nathalie Texier4, Anita Burgun1, Sandrine Katsahian1.
Abstract
Suspected adverse drug reactions (ADR) reported by patients through social media can be a complementary source to current pharmacovigilance systems. However, the performance of text mining tools applied to social media text data to discover ADRs needs to be evaluated. In this paper, we introduce the approach developed to mine ADR from French social media. A protocol of evaluation is highlighted, which includes a detailed sample size determination and evaluation corpus constitution. Our text mining approach provided very encouraging preliminary results with F-measures of 0.94 and 0.81 for recognition of drugs and symptoms respectively, and with F-measure of 0.70 for ADR detection. Therefore, this approach is promising for downstream pharmacovigilance analysis.Entities:
Keywords: Data Mining; Pharmacovigilance; Social Media
Mesh:
Year: 2017 PMID: 29295108
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630