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- [1] Adverse drug effect and personalized health mentions CLaC at SMM4H 2019, Tasks 1 and 4 SOCIAL MEDIA MINING FOR HEALTH APPLICATIONS (#SMM4H) WORKSHOP & SHARED TASK, 2019, : 123 - 126
- [2] Identification of Adverse Drug Reaction Mentions in Tweets-SMM4H Shared Task 2019 SOCIAL MEDIA MINING FOR HEALTH APPLICATIONS (#SMM4H) WORKSHOP & SHARED TASK, 2019, : 136 - 137
- [3] NLP@UNED at SMM4H 2019: Neural Networks Applied to Automatic Classifications of Adverse Effects Mentions in Tweets SOCIAL MEDIA MINING FOR HEALTH APPLICATIONS (#SMM4H) WORKSHOP & SHARED TASK, 2019, : 93 - 95
- [4] HITSZ-ICRC: A Report for SMM4H Shared Task 2019-Automatic Classification and Extraction of Adverse Drug Reactions in Tweets SOCIAL MEDIA MINING FOR HEALTH APPLICATIONS (#SMM4H) WORKSHOP & SHARED TASK, 2019, : 47 - 51
- [5] KFU NLP Team at SMM4H 2019 Tasks: Want to Extract Adverse Drugs Reactions from Tweets? BERT to The Rescue SOCIAL MEDIA MINING FOR HEALTH APPLICATIONS (#SMM4H) WORKSHOP & SHARED TASK, 2019, : 52 - 57
- [7] Towards text processing pipelines to identify adverse drug events-related tweets: University of Michigan @ SMM4H 2019 Task 1 SOCIAL MEDIA MINING FOR HEALTH APPLICATIONS (#SMM4H) WORKSHOP & SHARED TASK, 2019, : 107 - 109
- [9] IL-4/13 Blockade and sleep-related adverse drug reactions in over 37,000 Dupilumab reports from the World Health Organization Individual Case Safety reporting pharmacovigilance database (VigiBase™): a big data and machine learning analysis EUROPEAN REVIEW FOR MEDICAL AND PHARMACOLOGICAL SCIENCES, 2022, 26 (11) : 4074 - 4081