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Pregled bibliografske jedinice broj: 1252695

An evaluation of DistillerSR’s machine learning- based prioritization tool for title/abstract screening – impact on reviewer-relevant outcomes


Hamel, C.; Kelly, S. E.; Thavorn, K.; Rice, D. B.; Wells, G. A.; Hutton, B.
An evaluation of DistillerSR’s machine learning- based prioritization tool for title/abstract screening – impact on reviewer-relevant outcomes // BMC Medical Research Methodology, 20 (2020), 1; 256, 10 doi:10.1186/s12874-020-01129-1 (međunarodna recenzija, članak, znanstveni)


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Naslov
An evaluation of DistillerSR’s machine learning- based prioritization tool for title/abstract screening – impact on reviewer-relevant outcomes

Autori
Hamel, C. ; Kelly, S. E. ; Thavorn, K. ; Rice, D. B. ; Wells, G. A. ; Hutton, B.

Izvornik
BMC Medical Research Methodology (1471-2288) 20 (2020), 1; 256, 10

Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni

Ključne riječi
Artificial intelligence ; Systematic reviews ; Natural language processing ;

Sažetak
Background Systematic reviews often require substantial resources, partially due to the large number of records identified during searching. Although artificial intelligence may not be ready to fully replace human reviewers, it may accelerate and reduce the screening burden. Using DistillerSR (May 2020 release), we evaluated the performance of the prioritization simulation tool to determine the reduction in screening burden and time savings. Methods Using a true recall @ 95%, response sets from 10 completed systematic reviews were used to evaluate: (i) the reduction of screening burden ; (ii) the accuracy of the prioritization algorithm ; and (iii) the hours saved when a modified screening approach was implemented. To account for variation in the simulations, and to introduce randomness (through shuffling the references), 10 simulations were run for each review. Means, standard deviations, medians and interquartile ranges (IQR) are presented. Results Among the 10 systematic reviews, using true recall @ 95% there was a median reduction in screening burden of 47.1% (IQR: 37.5 to 58.0%). A median of 41.2% (IQR: 33.4 to 46.9%) of the excluded records needed to be screened to achieve true recall @ 95%. The median title/abstract screening hours saved using a modified screening approach at a true recall @ 95% was 29.8 h (IQR: 28.1 to 74.7 h). This was increased to a median of 36 h (IQR: 32.2 to 79.7 h) when considering the time saved not retrieving and screening full texts of the remaining 5% of records not yet identified as included at title/abstract. Among the 100 simulations (10 simulations per review), none of these 5% of records were a final included study in the systematic review. The reduction in screening burden to achieve true recall @ 95% compared to @ 100% resulted in a reduced screening burden median of 40.6% (IQR: 38.3 to 54.2%). Conclusions The prioritization tool in DistillerSR can reduce screening burden. A modified or stop screening approach once a true recall @ 95% is achieved appears to be a valid method for rapid reviews, and perhaps systematic reviews. This needs to be further evaluated in prospective reviews using the estimated recall.

Izvorni jezik
Engleski

Znanstvena područja
Temeljne medicinske znanosti, Informacijske i komunikacijske znanosti



POVEZANOST RADA


Ustanove:
Medicinski fakultet, Split

Poveznice na cjeloviti tekst rada:

doi

Citiraj ovu publikaciju:

Hamel, C.; Kelly, S. E.; Thavorn, K.; Rice, D. B.; Wells, G. A.; Hutton, B.
An evaluation of DistillerSR’s machine learning- based prioritization tool for title/abstract screening – impact on reviewer-relevant outcomes // BMC Medical Research Methodology, 20 (2020), 1; 256, 10 doi:10.1186/s12874-020-01129-1 (međunarodna recenzija, članak, znanstveni)
Hamel, C., Kelly, S., Thavorn, K., Rice, D., Wells, G. & Hutton, B. (2020) An evaluation of DistillerSR’s machine learning- based prioritization tool for title/abstract screening – impact on reviewer-relevant outcomes. BMC Medical Research Methodology, 20 (1), 256, 10 doi:10.1186/s12874-020-01129-1.
@article{article, author = {Hamel, C. and Kelly, S. E. and Thavorn, K. and Rice, D. B. and Wells, G. A. and Hutton, B.}, year = {2020}, pages = {10}, DOI = {10.1186/s12874-020-01129-1}, chapter = {256}, keywords = {Artificial intelligence, Systematic reviews, Natural language processing, }, journal = {BMC Medical Research Methodology}, doi = {10.1186/s12874-020-01129-1}, volume = {20}, number = {1}, issn = {1471-2288}, title = {An evaluation of DistillerSR’s machine learning- based prioritization tool for title/abstract screening – impact on reviewer-relevant outcomes}, keyword = {Artificial intelligence, Systematic reviews, Natural language processing, }, chapternumber = {256} }
@article{article, author = {Hamel, C. and Kelly, S. E. and Thavorn, K. and Rice, D. B. and Wells, G. A. and Hutton, B.}, year = {2020}, pages = {10}, DOI = {10.1186/s12874-020-01129-1}, chapter = {256}, keywords = {Artificial intelligence, Systematic reviews, Natural language processing, }, journal = {BMC Medical Research Methodology}, doi = {10.1186/s12874-020-01129-1}, volume = {20}, number = {1}, issn = {1471-2288}, title = {An evaluation of DistillerSR’s machine learning- based prioritization tool for title/abstract screening – impact on reviewer-relevant outcomes}, keyword = {Artificial intelligence, Systematic reviews, Natural language processing, }, chapternumber = {256} }

Časopis indeksira:


  • Current Contents Connect (CCC)
  • Web of Science Core Collection (WoSCC)
    • Science Citation Index Expanded (SCI-EXP)
    • SCI-EXP, SSCI i/ili A&HCI
  • Scopus
  • MEDLINE


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