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Traditional training of surgical technical skills relies on mentorship from experienced surgeons, who continuously evaluate and change trainee performance to prevent errors and potential patient harm by providing verbal instructions. These educators may also pause the procedure, explaining the risks associated with the trainee's actions, and may personally demonstrate proper techniques to the students. Studies examining pausing while providing medical care outline that these approaches allow for learning.
An artificial intelligent (AI) tutoring system, the Intelligent Continuous Expertise Monitoring System (ICEMS), improves learning in a surgical simulated operation by providing trainees with verbal instructions upon error identification. However, the effect of including a pause during this AI teaching has not been studied. Therefore, the ICEMS post-error identification methodology has been altered to include a pause with the intelligent tutor voice instruction.
The aim of this study is to determine the effect of pausing on surgical skill acquisition and transfer among pre-medical and medical students. This will be done by comparing their performance in repeated simulated tumour resection tasks.
Full description
Background: Surgical skill assessment is shifting from a quantitative, time-based approach towards a qualitative evaluation of a trainee's competency. During surgical procedures, instructors continuously monitor trainee performance and utilize various teaching methods focused on enhancing acquisition of surgical skills. One such method includes pausing the operation, either to outline the risks associated with the trainee's performance or to personally demonstrate the best practice technique(s). Pausing in such situations has been shown to allow learners to re-assess best practice, interrupt negative momentum, and allow for learning. Specifically, pausing after an error can prevent introduction of new information that may affect one's ability to reflect on their error and reduce stress before continuing.
Rationale: The ICEMS, an AI tutoring system, was developed by our group using a Long-Short Term Memory deep learning algorithm to assess surgical performance and provide guidance. This was then integrated with the NeuroVR simulation platform. Using this AI system, the provision of verbal feedback on error identification demonstrated the potential of intelligent tutoring to improve learning in two previous randomized control trials (RCTs). However, these RCTs did not incorporate pausing methodology post-error identification. To further emulate the mentorship of an experienced surgeon in a clinical setting, the ICEMS platform has been modified to both initiate pausing when learner error is identified and provide a video demonstrating expert performance.
Research aims: To compare the effect of incorporating a pause after intelligent tutor instruction to intelligent tutor instruction alone on medical and pre-medical students' surgical skill acquisition and skill transfer.
Hypotheses:
Specific objectives:
Design: A three-arm single blinded randomized controlled trial of AI feedback with pausing methodology and an expert demonstration video versus AI feedback with only pausing methodology versus AI feedback alone.
Setting: Neurosurgical Simulation and Artificial Intelligence Learning Centre.
Participants: Students who are enrolled in a Quebec medical school in a preparatory year, and first and second year.
Task: Using the NeuroVR surgical simulator by CAE Healthcare, resect a simulated practice tumour six times and a complex simulated realistic brain tumour once using an Ultrasonic Aspirator and Bipolar pincers while minimizing bleeding and preserving the surrounding, simulated healthy brain structures.
Intervention: A 90-minute training session where participants will have seven simulated subpial tumour resection attempts (six repetitions of a simple practice scenario and one attempt at a complex realistic scenario). All participants will receive auditory feedback from the ICEMS but will differ in what follows:
Auditory feedback will be based on 4 metrics:
Main outcomes and measures:
The two co-primary outcomes are:
The secondary outcome is the differences in the strength of emotions elicited, measured before the practice scenario, immediately before the realistic scenario, and after completion of all attempts using the Duffy's Medical Emotional Scale (MES). Cognitive load will also be measured following completion of all tasks using Leppink's Cognitive Load Index (CLI). Both outcomes are measured using self-reports.
Statistical Analysis Plan: Participant data will be anonymized and stored. The ICEMS will assess the participant's surgical performance and provide a performance score at 0.2 second intervals throughout each repetition of the simulated surgical task. An average composite score will then be calculated for each repetition. Using ANCOVA, improvement in performance and participant learning will be assessed by comparing the composite score of the first practice scenario repetition (baseline) and the composite score of the sixth repetition (summative). Meanwhile, the composite score of the complex realistic scenario will be used to assess the transfer of learning using a one-way ANOVA. With an effect size of 0.25 and a significance of 0.05, a total sample size of 129 provides 80% power to detect a significant interaction.
Videos of participant performance in the complex realistic scenario will be evaluated by two blinded expert raters using the OSATS global rating scale. The OSATS score will be analyzed between groups using a one-way ANOVA to compare efficiency of learning and skill retention.
Emotional changes before, during, and after learning in the simulated scenarios will be evaluated using a two-way mixed ANOVA, while one-way ANOVA will be used to assess cognitive load after learning.
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129 participants in 3 patient groups
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Vanja Davidovic; Rolando F Del Maestro, MD, PhD
Data sourced from clinicaltrials.gov
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