The effect of machine learning tools for evidence synthesis on resource use and time-to-completion: protocol for a retrospective pilot study
Permanent link
https://hdl.handle.net/10037/28536Date
2023-01-17Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Muller, Ashley; Berg, Rigmor; Meneses Echavez, Jose Francisco; Ames, Heather Melanie R; Borge, Tiril Cecilie; Jacobsen Jardim, Patricia Sofia; Cooper, Chris; Rose, Christopher JamesAbstract
Methods This protocol describes how we will answer two research questions using a retrospective study design: Is there a difference in resources used to produce reviews using recommended ML versus not using ML, and is there a difference in time-to-completion? We will also compare recommended ML use to non-recommended ML use that merely adds ML use to existing procedures. We will retrospectively include all reviews conducted at our institute from 1 August 2020, corresponding to the commission of the first review in our institute that used ML.
Conclusion The results of this study will allow us to quantitatively estimate the effect of ML adoption on resource use and time-to-completion, providing our organization and others with better information to make high-level organizational decisions about ML.