Published on in Vol 25 (2023)

Preprints (earlier versions) of this paper are available at https://preprints.jmir.org/preprint/42789, first published .
Evaluating the Ability of Open-Source Artificial Intelligence to Predict Accepting-Journal Impact Factor and Eigenfactor Score Using Academic Article Abstracts: Cross-sectional Machine Learning Analysis

Evaluating the Ability of Open-Source Artificial Intelligence to Predict Accepting-Journal Impact Factor and Eigenfactor Score Using Academic Article Abstracts: Cross-sectional Machine Learning Analysis

Evaluating the Ability of Open-Source Artificial Intelligence to Predict Accepting-Journal Impact Factor and Eigenfactor Score Using Academic Article Abstracts: Cross-sectional Machine Learning Analysis

Carmelo Macri   1 , MBBS ;   Stephen Bacchi   2 , DPhil ;   Sheng Chieh Teoh   2 , BSc ;   Wan Yin Lim   3 , MBChB ;   Lydia Lam   2 ;   Sandy Patel   3 , MBBS ;   Mark Slee   4 , DPhil ;   Robert Casson   2 , DPhil ;   WengOnn Chan   2 , MPhil

1 Discipline of Ophthalmology and Visual Sciences, The University of Adelaide, Adelaide, Australia

2 Department of Ophthalmology, The Royal Adelaide Hospital, Adelaide, Australia

3 Department of Radiology, The Royal Adelaide Hospital, Adelaide, Australia

4 College of Medicine and Public Health, Flinders University, Adelaide, Australia

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