Using automation to produce a ‘living map’ of the COVID-19 research literature

The COVID-19 pandemic has disrupted life worldwide and presented unique challenges in the health evidencesynthesis space. The urgent nature of the pandemic required extreme rapidity for keeping track of research, andthis presented a unique opportunity for long-proposed automation systems to be deplo...

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Veröffentlicht in:Journal of the European Association for Health Information and Libraries 2021-06, Vol.17 (2), p.11-15
Hauptverfasser: Shemilt, Ian, Arno, Anneliese, Thomas, James, Lorenc, Theo, Khouja, Claire C, Raine, Gary, Sutcliffe, Katy, D'Souza, Preethy, Wright, Kath, Sowden, Amanda
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Sprache:eng
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Zusammenfassung:The COVID-19 pandemic has disrupted life worldwide and presented unique challenges in the health evidencesynthesis space. The urgent nature of the pandemic required extreme rapidity for keeping track of research, andthis presented a unique opportunity for long-proposed automation systems to be deployed and evaluated. Wecompared the use of novel automation technologies with conventional manual screening; and Microsoft AcademicGraph (MAG) with the MEDLINE and Embase databases locating the emerging research evidence. We foundthat a new workflow involving machine learning to identify relevant research in MAG achieved a much higherrecall with lower manual effort than using conventional approaches.
ISSN:1841-0715
1841-0715
DOI:10.32384/jeahil17469