Background: Artificial intelligence (AI) has the potential to enhance patient safety in surgery, and all its aspects, including education and training, will derive considerable benefit from AI. In the present study, deep-learning models were used to predict the rates of proficiency acquisition in robot-assisted surgery (RAS), thereby providing surgical programs directors information on the levels of the innate ability of trainees to facilitate the implementation of flexible personalized training.Methods: 176 medical students, without prior experience with surgical simulators, were trained to reach proficiency in five tasks on a virtual simulator for RAS. Ensemble deep neural networks (DNN) models were developed and compared with other ensem...
Observational learning plays an important role in surgical skills training, following the traditiona...
Context No single large published randomized controlled trial (RCT) has confirmed the efficacy of vi...
Background: Robotic surgery simulation may provide a way for surgeons to acquire specific robotic su...
Background: Artificial intelligence (AI) has the potential to enhance patient safety in surgery, and...
With the rise of artificial intelligence and its integration with the healthcare sector, we see inno...
Winkler-Schwartz et al have set out to determine if some combination of machine learning algorithms ...
Objective: To assess whether previous training in surgery influences performance on da Vinci Skills ...
Artificial Intelligence (AI) plays an integral role in enhancing the quality of surgical simulation,...
Introduction The current study presents a deep learning framework to determine, in real-time, posit...
Purpose Manual feedback from senior surgeons observing less experienced trainees is a laborious task...
Simulation-based training is increasingly being used for assessment and training of psychomotor skil...
INTRODUCTION: Robot-assisted surgery is becoming increasingly adopted by multiple surgical specialti...
Robot-Assisted Surgery (RAS) has become increasingly important in modern surgical practice for its m...
Observational learning plays an important role in surgical skills training, following the traditiona...
Context No single large published randomized controlled trial (RCT) has confirmed the efficacy of vi...
Background: Robotic surgery simulation may provide a way for surgeons to acquire specific robotic su...
Background: Artificial intelligence (AI) has the potential to enhance patient safety in surgery, and...
With the rise of artificial intelligence and its integration with the healthcare sector, we see inno...
Winkler-Schwartz et al have set out to determine if some combination of machine learning algorithms ...
Objective: To assess whether previous training in surgery influences performance on da Vinci Skills ...
Artificial Intelligence (AI) plays an integral role in enhancing the quality of surgical simulation,...
Introduction The current study presents a deep learning framework to determine, in real-time, posit...
Purpose Manual feedback from senior surgeons observing less experienced trainees is a laborious task...
Simulation-based training is increasingly being used for assessment and training of psychomotor skil...
INTRODUCTION: Robot-assisted surgery is becoming increasingly adopted by multiple surgical specialti...
Robot-Assisted Surgery (RAS) has become increasingly important in modern surgical practice for its m...
Observational learning plays an important role in surgical skills training, following the traditiona...
Context No single large published randomized controlled trial (RCT) has confirmed the efficacy of vi...
Background: Robotic surgery simulation may provide a way for surgeons to acquire specific robotic su...