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Semi-automating abstract screening with a natural language model pretrained on biomedical literature.

Sheryl Hui Xian NgKiok Liang TeowGary Yee AngWoan Shin TanAllyn Hum
Published in: Systematic reviews (2023)
We demonstrate the performance and workload impact of incorporating a natural language model, pretrained on citations of biomedical literature, on a workflow of abstract screening for studies on prognostic factors in end-stage lung disease. The model was optimized on one-third of the abstracts, and model performance on the remaining abstracts was reported. Performance of the model, in terms of sensitivity, precision, F1 and inter-rater agreement, was moderate in comparison with other published models. However, incorporating it into the screening workflow, with the second reviewer screening only abstracts with conflicting decisions, translated into a 65% reduction in the number of abstracts screened by the second reviewer. Subsequent work will look at incorporating the pre-trained BERT model into screening workflows for other studies prospectively, as well as improving model performance.
Keyphrases
  • systematic review
  • prognostic factors
  • randomized controlled trial
  • high intensity
  • body composition
  • resistance training