From narrative descriptions to MedDRA: automagically encoding adverse drug reactions

Journal of Biomedical Informatics - Tập 84 - Trang 184-199 - 2018
Carlo Combi1, Margherita Zorzi1, Gabriele Pozzani2, Ugo Moretti2, Elena Arzenton2
1Department of Computer Science, University of Verona, Italy
2Department of Diagnostics and Public Health, University of Verona, Italy

Tài liệu tham khảo

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