TY - JOUR
T1 - The technological future of percutaneous nephrolithotomy
T2 - A Young Academic Urologists Endourology and Urolithiasis Working Group update
AU - Hameed, B. M.Zeeshan
AU - Shah, Milap
AU - Pietropaolo, Amelia
AU - De Coninck, Vincent
AU - Naik, Nithesh
AU - Skolarikos, Andreas
AU - Somani, Bhaskar K.
N1 - Publisher Copyright:
© 2023 Lippincott Williams and Wilkins. All rights reserved.
PY - 2023/3/1
Y1 - 2023/3/1
N2 - Purpose of reviewWith 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 findingsThis 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.SummaryFuture research on PCNL should focus more on generalizability and adaptability of technological advancements in terms of training and improvement of patient outcomes.
AB - Purpose of reviewWith 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 findingsThis 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.SummaryFuture research on PCNL should focus more on generalizability and adaptability of technological advancements in terms of training and improvement of patient outcomes.
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U2 - 10.1097/MOU.0000000000001070
DO - 10.1097/MOU.0000000000001070
M3 - Review article
C2 - 36622261
AN - SCOPUS:85147095729
SN - 0963-0643
VL - 33
SP - 90
EP - 94
JO - Current Opinion in Urology
JF - Current Opinion in Urology
IS - 2
ER -