Validation of a novel, low-fidelity virtual reality simulator and an artificial intelligence
assessment approach for peg transfer laparoscopic training
Simulators are widely used in medical education, but objective and automatic assessment
is not feasible with low-fidelity simulators, which can be solved with artificial
intelligence (AI) and virtual reality (VR) solutions. The effectiveness of a custom-made
VR simulator and an AI-based evaluator of a laparoscopic peg transfer exercise was
investigated. Sixty medical students were involved in a single-blinded randomised
controlled study to compare the VR simulator with the traditional box trainer. A total
of 240 peg transfer exercises from the Fundamentals of Laparoscopic Surgery programme
were analysed. The experts and AI-based software used the same criteria for evaluation.
The algorithm detected pitfalls and measured exercise duration. Skill improvement
showed no significant difference between the VR and control groups. The AI-based evaluator
exhibited 95% agreement with the manual assessment. The average difference between
the exercise durations measured by the two evaluation methods was 2.61 s. The duration
of the algorithmic assessment was 59.47 s faster than the manual assessment. The VR
simulator was an effective alternative practice compared with the training box simulator.
The AI-based evaluation produced similar results compared with the manual assessment,
and it could significantly reduce the evaluation time. AI and VR could improve the
effectiveness of basic laparoscopic training.