Machine learning algorithms are occupying a larger space in medical and urology applications. However, typical medical physicians are not trained on these technologies and do not master the possibilities offered by these tools, to imagine their applications in the medical field. This manuscript is indented to be a guide in the use of machine learning in different urology applications, and to demystify the available machine learning and artificial intelligence algorithms. This manuscript reviews some of their applications and potential applications to the medical and urology field.
Multiple works are published on the use of machine learning in urology, with performance demonstrated to be noninferior to human experts on multiple occasions. However, the major part of the machine learning publications in urology applications are concentrated on diagnosis and/or prognosis. Advanced machine learning algorithms based on agentic artificial intelligence, able to perform decisions and causality-based treatment optimization, are rarely put to use in urology. The democratization of advanced machine learning technologies in the medical fields can accelerate the adoption of these techniques, and potentially improve the patient care through relevant suggestive decision making.
This work aims to demystify the machine learning tools for medical applications, facilitate decision making and adoption of the correct tools for the correct applications, and places a roadmap for the future of machine learning in the enhancement of patient care in urology.
Current opinion in urology. 2025 Sep 25 [Epub ahead of print]
Chady Ghnatios, Rose Mary Attieh, Frederic Panthier
University of North Florida, Jacksonville, Florida, USA; Endourology Technology Section, European Association of Urology, Arnhem, The Netherlands., Mayo Clinic, Jacksonville, Florida, USA., Endourology Technology Section, European Association of Urology, Arnhem, The Netherlands; Department of Urology, Tenon Hospital, AP-HP, Paris, France; GRC Urolithiasis 20, Sorbonne University, Paris, France; PIMM Laboratory, UMR 8006 CNRS, Arts et Métiers Paris Tech, Paris, France; Progressive Endourological Association for Research and Leading Solutions, Paris, France.