Leveraging Natural Language Processing and Machine Learning Methods for Adverse Drug Event Detection in Electronic Health/Medical Records: A Scoping Review
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DOI: 10.1007/s40264-024-01505-6
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- Sharon E. Davis & Luke Zabotka & Rishi J. Desai & Shirley V. Wang & Judith C. Maro & Kevin Coughlin & José J. Hernández-Muñoz & Danijela Stojanovic & Nigam H. Shah & Joshua C. Smith, 2023. "Use of Electronic Health Record Data for Drug Safety Signal Identification: A Scoping Review," Drug Safety, Springer, vol. 46(8), pages 725-742, August.
- Yuan Luo & William K. Thompson & Timothy M. Herr & Zexian Zeng & Mark A. Berendsen & Siddhartha R. Jonnalagadda & Matthew B. Carson & Justin Starren, 2017. "Natural Language Processing for EHR-Based Pharmacovigilance: A Structured Review," Drug Safety, Springer, vol. 40(11), pages 1075-1089, November.
- Patricia García-Abeijon & Catarina Costa & Margarita Taracido & Maria Teresa Herdeiro & Carla Torre & Adolfo Figueiras, 2023. "Factors Associated with Underreporting of Adverse Drug Reactions by Health Care Professionals: A Systematic Review Update," Drug Safety, Springer, vol. 46(7), pages 625-636, July.
- Abhyuday Jagannatha & Feifan Liu & Weisong Liu & Hong Yu, 2019. "Overview of the First Natural Language Processing Challenge for Extracting Medication, Indication, and Adverse Drug Events from Electronic Health Record Notes (MADE 1.0)," Drug Safety, Springer, vol. 42(1), pages 99-111, January.
- Heba Edrees & Wenyu Song & Ania Syrowatka & Aurélien Simona & Mary G. Amato & David W. Bates, 2022. "Intelligent Telehealth in Pharmacovigilance: A Future Perspective," Drug Safety, Springer, vol. 45(5), pages 449-458, May.
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