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Assessment of learning curves on a simulated neurosurgical task using metrics selected by artificial intelligence

Nicole Ledwos, Nykan Mirchi, Recai Yilmaz, Alexander Winkler-Schwartz, Anika Sawni, Ali M. Fazlollahi, Vincent Bissonnette, Khalid Bajunaid, Abdulrahman J. Sabbagh, Rolando F. Del Maestro

2022Journal of neurosurgery32 citationsDOI

Abstract

OBJECTIVE: Understanding the variation of learning curves of experts and trainees for a given surgical procedure is important in implementing formative learning paradigms to accelerate mastery. The study objectives were to use artificial intelligence (AI)-derived metrics to determine the learning curves of participants in 4 groups with different expertise levels who performed a series of identical virtual reality (VR) subpial resection tasks and to identify learning curve differences among the 4 groups. METHODS: A total of 50 individuals participated, 14 neurosurgeons, 4 neurosurgical fellows and 10 senior residents (seniors), 10 junior residents (juniors), and 12 medical students. All participants performed 5 repetitions of a subpial tumor resection on the NeuroVR (CAE Healthcare) platform, and 6 a priori-derived metrics selected using the K-nearest neighbors machine learning algorithm were used to assess participant learning curves. Group learning curves were plotted over the 5 trials for each metric. A mixed, repeated-measures ANOVA was performed between the first and fifth trial. For significant interactions (p < 0.05), post hoc Tukey's HSD analysis was conducted to determine the location of the significance. RESULTS: Overall, 5 of the 6 metrics assessed had a significant interaction (p < 0.05). The 4 groups, neurosurgeons, seniors, juniors, and medical students, showed an improvement between the first and fifth trial on at least one of the 6 metrics evaluated. CONCLUSIONS: Learning curves generated using AI-derived metrics provided novel insights into technical skill acquisition, based on expertise level, during repeated VR-simulated subpial tumor resections, which will allow educators to develop more focused formative educational paradigms for neurosurgical trainees.

Topics & Concepts

Formative assessmentLearning curveTask (project management)MedicineArtificial intelligenceMachine learningMedical physicsVariance (accounting)MEDLINEComputer scienceTask analysisHuman–computer interactionComputer-Assisted InstructionEducational measurementDeep learningSelection (genetic algorithm)Computer assisted learningApplications of artificial intelligenceSurgical Simulation and TrainingArtificial Intelligence in Healthcare and EducationSimulation-Based Education in Healthcare
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