4.6 Article

CoQUAD: a COVID-19 question answering dataset system, facilitating research, benchmarking, and practice

Journal

BMC BIOINFORMATICS
Volume 23, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12859-022-04751-6

Keywords

COVID-19; Transformer model; Question answering system; Pipeline; CORD-19; LitCOVID; Long-COVID; Post-COVID-19

Funding

  1. Canadian Institutes of Health Research's Institute of Health Services and Policy Research (CIHR-IHSPR) as part of the Equitable AI and Public Health cohort
  2. Public Health Ontario

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CoQUAD is a question-answering system that utilizes natural language processing techniques to mine COVID-19 literature, helping researchers find the most recent findings and answer related questions.
Background Due to the growing amount of COVID-19 research literature, medical experts, clinical scientists, and researchers frequently struggle to stay up to date on the most recent findings. There is a pressing need to assist researchers and practitioners in mining and responding to COVID-19-related questions on time. Methods This paper introduces CoQUAD, a question-answering system that can extract answers related to COVID-19 questions in an efficient manner. There are two datasets provided in this work: a reference-standard dataset built using the CORD-19 and LitCOVID initiatives, and a gold-standard dataset prepared by the experts from a public health domain. The CoQUAD has a Retriever component trained on the BM25 algorithm that searches the reference-standard dataset for relevant documents based on a question related to COVID-19. CoQUAD also has a Reader component that consists of a Transformer-based model, namely MPNet, which is used to read the paragraphs and find the answers related to a question from the retrieved documents. In comparison to previous works, the proposed CoQUAD system can answer questions related to early, mid, and post-COVID-19 topics. Results Extensive experiments on CoQUAD Retriever and Reader modules show that CoQUAD can provide effective and relevant answers to any COVID-19-related questions posed in natural language, with a higher level of accuracy. When compared to state-of-the-art baselines, CoQUAD outperforms the previous models, achieving an exact match ratio score of 77.50% and an F1 score of 77.10%. Conclusion CoQUAD is a question-answering system that mines COVID-19 literature using natural language processing techniques to help the research community find the most recent findings and answer any related questions.

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