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Detecting contradictory COVID-19 drug efficacy claims from biomedical literature.

Sosa, Daniel; Suresh, Malavika; Potts, Christopher; Altman, Russ

Authors

Daniel Sosa

Christopher Potts

Russ Altman



Contributors

Anna Rogers
Editor

Jordan Boyd-Graber
Editor

Naoaki Okazaki
Editor

Abstract

The COVID-19 pandemic created a deluge of questionable and contradictory scientific claims about drug efficacy – an "infodemic" with lasting consequences for science and society. In this work, we argue that NLP models can help domain experts distill and understand the literature in this complex, high-stakes area. Our task is to automatically identify contradictory claims about COVID-19 drug efficacy. We frame this as a natural language inference problem and offer a new NLI dataset created by domain experts. The NLI framing allows us to create curricula combining existing datasets and our own. The resulting models are useful investigative tools. We provide a case study of how these models help a domain expert summarize and assess evidence concerning remdisivir and hydroxychloroquine.

Citation

SOSA, D.N., SURESH, M., POTTS, C. and ALTMAN, R.B. 2023. Detecting contradictory COVID-19 drug efficacy claims from biomedical literature. In Rogers, A., Boyd-Graber, J. and Okazaki, N. (eds.) Proceedings of the 61st Association for Computational Linguistics annual meeting 2023 (ACL 2023), 9-14 July 2023, Toronto, Candada. Stroudsburg, PA: ACL [online], volume 2: short papers, pages 694-713. Available from: https://doi.org/10.18653/v1/2023.acl-short.61

Conference Name 61st Association for Computational Linguistics annual meeting 2023 (ACL 2023)
Conference Location Toronto, Canada
Start Date Jul 9, 2023
End Date Jul 14, 2023
Acceptance Date Jun 9, 2023
Online Publication Date Sep 30, 2023
Publication Date Sep 30, 2023
Deposit Date Oct 5, 2023
Publicly Available Date Oct 5, 2023
Publisher ACL Association for Computational Linguistics
Volume 2
Pages 694-713
Book Title Proceedings of the 61st Association for Computational Linguistics annual meeting 2023 (ACL 2023)
ISBN 9781959429715
DOI https://doi.org/10.18653/v1/2023.acl-short.61
Keywords COVID-19 panademic; Drug efficacy
Public URL https://rgu-repository.worktribe.com/output/2098528

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