Trends of "Artificial Intelligence, Machine Learning, Virtual Reality, and Radiomics in Urolithiasis" over the Last 30 Years (1994-2023) as Published in the Literature (PubMed): A Comprehensive Review.

Journal: Journal of endourology
PMID:

Abstract

To analyze the bibliometric publication trend on the application of "Artificial Intelligence (AI) and its subsets (Machine Learning-ML, Virtual reality-VR, Radiomics) in Urolithiasis" over 3 decades. We looked at the publication trends associated with AI and stone disease, including both clinical and surgical applications, and training in endourology. Through a MeshTerms research on PubMed, we performed a comprehensive review from 1994-2023 for all published articles on "AI, ML, VR, and Radiomics." Articles were then divided into three categories as follows: A-Clinical (Nonsurgical), B-Clinical (Surgical), and C-Training articles, and articles were then assigned to following three periods: Period-1 (1994-2003), Period-2 (2004-2013), and Period-3 (2014-2023). A total of 343 articles were noted (Groups A-129, B-163, and C-51), and trends increased from Period-1 to Period-2 at 123% ( = 0.009) and to period-3 at 453% ( = 0.003). This increase from Period-2 to Period-3 for groups A, B, and C was 476% ( = 0.019), 616% (0.001), and 185% ( < 0.001), respectively. Group A articles included rise in articles on "stone characteristics" (+2100%; = 0.011), "renal function" ( = 0.002), "stone diagnosis" (+192%), "prediction of stone passage" (+400%), and "quality of life" (+1000%). Group B articles included rise in articles on "URS" (+2650%, = 0.008), "PCNL"(+600%, = 0.001), and "SWL" (+650%, = 0.018). Articles on "Targeting" (+453%, < 0.001), "Outcomes" (+850%, = 0.013), and "Technological Innovation" ( = 0.0311) had rising trends. Group C articles included rise in articles on "PCNL" (+300%, = 0.039) and "URS" (+188%, = 0.003). Publications on AI and its subset areas for urolithiasis have seen an exponential increase over the last decade, with an increase in surgical and nonsurgical clinical areas, as well as in training. Future AI related growth in the field of endourology and urolithiasis is likely to improve training, patient centered decision-making, and clinical outcomes.

Authors

  • Carlotta Nedbal
    ASST Fatebenefratelli Sacco, Urology, Milan, Italy. carlottanedbal@gmail.com.
  • Clara Cerrato
    Department of Urology, Azienda Ospedaliera Universitaria Integrata Verona, University of Verona, Piazzale Stefani 1, 37126, Verona, Italy.
  • Victoria Jahrreiss
    Department of Urology, Comprehensive Cancer Center, Medical University of Vienna, Vienna General Hospital.
  • Amelia Pietropaolo
    Department of Urology, University Hospital Southampton, Tremona Road, Southampton, UK.
  • Andrea Benedetto Galosi
    Urology Unit, Faculty of Medicine, School of Urology, Azienda Ospedaliera Universitaria Delle Marche, 60127 Ancona, Italy.
  • Daniele Castellani
    Endourology Section, European Association of Urology, Arnhem, The Netherlands.
  • Bhaskar Kumar Somani
    Department of Urology, University Hospital Southampton, Tremona Road, Southampton, UK. bhaskarsomani@yahoo.com.