Literature DB >> 34919321

Machine learning in systematic reviews: Comparing automated text clustering with Lingo3G and human researcher categorization in a rapid review.

Ashley Elizabeth Muller1, Heather Melanie R Ames1,2, Patricia Sofia Jacobsen Jardim1, Christopher James Rose1.   

Abstract

Systematic reviews are resource-intensive. The machine learning tools being developed mostly focus on the study identification process, but tools to assist in analysis and categorization are also needed. One possibility is to use unsupervised automatic text clustering, in which each study is automatically assigned to one or more meaningful clusters. Our main aim was to assess the usefulness of an automated clustering method, Lingo3G, in categorizing studies in a simplified rapid review, then compare performance (precision and recall) of this method compared to manual categorization. We randomly assigned all 128 studies in a review to be coded by a human researcher blinded to cluster assignment (mimicking two independent researchers) or by a human researcher non-blinded to cluster assignment (mimicking one researcher checking another's work). We compared time use, precision and recall of manual categorization versus automated clustering. Automated clustering and manual categorization organized studies by population and intervention/context. Automated clustering failed to identify two manually identified categories but identified one additional category not identified by the human researcher. We estimate that automated clustering has similar precision to both blinded and non-blinded researchers (e.g., 88% vs. 89%), but higher recall (e.g., 89% vs. 84%). Manual categorization required 49% more time than automated clustering. Using a specific clustering algorithm, automated clustering can be helpful with categorization of and identifying patterns across studies in simpler systematic reviews. We found that the clustering was sensitive enough to group studies according to linguistic differences that often corresponded to the manual categories.
© 2021 The Authors. Research Synthesis Methods published by John Wiley & Sons Ltd.

Entities:  

Keywords:  Lingo3G; clustering; machine learning; scoping reviews; systematic review

Mesh:

Year:  2021        PMID: 34919321     DOI: 10.1002/jrsm.1541

Source DB:  PubMed          Journal:  Res Synth Methods        ISSN: 1759-2879            Impact factor:   5.273


  1 in total

1.  Automating risk of bias assessment in systematic reviews: a real-time mixed methods comparison of human researchers to a machine learning system.

Authors:  Patricia Sofia Jacobsen Jardim; Christopher James Rose; Heather Melanie Ames; Jose Francisco Meneses Echavez; Stijn Van de Velde; Ashley Elizabeth Muller
Journal:  BMC Med Res Methodol       Date:  2022-06-08       Impact factor: 4.612

  1 in total

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