The technological future of percutaneous nephrolithotomy: a Young Academic Urologists Endourology and Urolithiasis Working Group update

Author:

Hameed B.M. Zeeshan123,Shah Milap34,Pietropaolo Amelia25,De Coninck Vincent67,Naik Nithesh289,Skolarikos Andreas10,Somani Bhaskar K.5

Affiliation:

1. Department of Urology, Father Muller Medical College, Mangalore, Karnataka, India

2. European Association of Urology – Young Academic Urologists (EAU-YAU) Urolithiasis and Endourology Working Group, Arnhem, The Netherlands

3. iTRUE (International Training and Research in Uro-Oncology and Endourology) Group, Manipal, Karnataka

4. Department of Urology, Aarogyam Speciality Hospital, Ahmedabad, India

5. Department of Urology, University Hospital Southampton, Southampton, UK

6. Department of Urology, AZ Klina, Brasschaat, Belgium

7. Progressive Endourological Association for Research and Leading Solutions (PEARLS), Paris, France

8. Department of Mechanical and Industrial Engineering, Manipal Institute of Technology, Manipal Academy of Higher Education

9. Curiouz TechLab Private Limited, Manipal Government of Karnataka Bioincubator, Manipal, Karnataka, India

10. Department of Urology, National and Kapodistrian University of Athens, Athens, Greece

Abstract

Purpose of review With advancements in surgical technology along with procedural techniques, this article throws light on the latest developments and applications of artificial intelligence (AI), extended reality, 3D (three-dimensional) printing and robotics in percutaneous nephrolithotomy (PCNL). Recent findings This review highlights the applications of AI in PCNL over the past 2 years. Mostly studies have been reported on development of machine learning (ML) based predicting models and identification of stone composition using deep learning convolutional neural network (DL-CNN). But owing to the complexity of the models and lack of generalizability, it is still not incorporated in the routine clinical practice. Extended reality based simulation and training models have enabled trainees to enhance their skills and shorten the learning curve. Similar advantages have been reported with the use of 3D printed models when used to train young and novice endourologists to improve their skills in percutaneous access (PCA). Applications of robotics in PCNL look promising but are still in nascent stages. Summary Future research on PCNL should focus more on generalizability and adaptability of technological advancements in terms of training and improvement of patient outcomes.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Urology

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