Can Artificial Intelligence Accurately Detect Urinary Stones? A Systematic Review.

Journal: Journal of endourology
PMID:

Abstract

To perform a systematic review on artificial intelligence (AI) performances to detect urinary stones. A PROSPERO-registered (CRD473152) systematic search of Scopus, Web of Science, Embase, and PubMed databases was performed to identify original research articles pertaining to AI stone detection or measurement, using search terms ("automatic" OR "machine learning" OR "convolutional neural network" OR "artificial intelligence" OR "detection" AND "stone volume"). Risk-of-bias (RoB) assessment was performed according to the Cochrane RoB tool, the Joanna Briggs Institute Checklist for nonrandomized studies, and the Checklist for Artificial Intelligence in Medical Imaging (CLAIM). Twelve studies were selected for the final review, including three multicenter and nine single-center retrospective studies. Eleven studies completed at least 50% of the CLAIM checkpoints and only one presented a high RoB. All included studies aimed to detect kidney (5/12, 42%), ureter (2/12, 16%), or urinary (5/12, 42%) stones on noncontrast computed tomography (NCCT), but 42% intended to automate measurement. Stone distinction from vascular calcification interested two studies. All studies used AI machine learning network training and internal validation, but a single one provided an external validation. Trained networks achieved stone detection, with sensitivity, specificity, and accuracy rates ranging from 58.7% to 100%, 68.5% to 100%, and 63% to 99.95%, respectively. Detection Dice score ranged from 83% to 97%. A high correlation between manual and automated stone volume ( = 0.95) was noted. Differentiate distal ureteral stones and phleboliths seemed feasible. AI processes can achieve automated urinary stone detection from NCCT. Further studies should provide urinary stone detection coupled with phlebolith distinction and an external validation, and include anatomical abnormalities and urologic foreign bodies (ureteral stent and nephrostomy tubes) cases.

Authors

  • Frédéric Panthier
    Endolase lab, GRC20, Sorbonne Université and PIMM-Arts et Métiers Paris Tech, Paris, France.
  • Alberto Melchionna
    Department of Urology, Westmoreland Street Hospital, UCLH NHS Foundation Trust, London, United Kingdom.
  • Hugh Crawford-Smith
    Department of Urology, Westmoreland Street Hospital, UCLH NHS Foundation Trust, London, United Kingdom.
  • Yiannis Phillipou
    Department of Urology, Westmoreland Street Hospital, UCLH NHS Foundation Trust, London, United Kingdom.
  • Simon Choong
    Department of Urology, Westmoreland Street Hospital, UCLH NHS Foundation Trust, London, United Kingdom.
  • Vimoshan Arumuham
    Department of Urology, Westmoreland Street Hospital, UCLH NHS Foundation Trust, London, United Kingdom.
  • Sian Allen
    Department of Urology, Westmoreland Street Hospital, UCLH NHS Foundation Trust, London, United Kingdom.
  • Clare Allen
    Department of Radiology, University College London Hospital, London, UK.
  • Daron Smith
    Institute of Urology, University College Hospital London, London, UK.