Assessing Laparoscopic Surgical Skills Using Similarity Network Models: A Pilot Study

Author:

Rastegari Elham1ORCID,Orn Donovan2,Zahiri Mohsen3,Nelson Carl4ORCID,Ali Hesham2,Siu Ka-Chun5ORCID

Affiliation:

1. Department of Business Intelligence and Analytics, Creighton University, Omaha, NE, USA

2. College of Information Science and Technology, University of Nebraska at Omaha, Omaha, NE, USA

3. Senior Research Scientist, BioSensics LLC, Watertown, MA, USA

4. Department of Mechanical and Materials Engineering, University of Nebraska-Lincoln, Lincoln, NE, USA

5. College of Allied Health Professions, University of Nebraska Medical Center, Omaha, NE, USA

Abstract

Background: Medical devices are becoming more complex, and doctors need to learn quickly how to use new medical tools. However, it is challenging to objectively assess the fundamental laparoscopic surgical skill level and determine skill readiness for advancement. There is a lack of objective models to compare performance between medical trainees and experienced doctors. Methods: This article discusses the use of similarity network models for individual tasks and a combination of tasks to show the level of similarity between residents and medical students while performing each task and their overall laparoscopic surgical skill level using a medical device (eg laparoscopic instruments). When a medical student is connected to most residents, that student is competent to the next training level. Performance of sixteen participants (5 residents and 11 students) while performing 3 tasks in 3 different training schedules is used in this study. Results: The promising result shows the general positive progression of students over 4 training sessions. Our results also indicate that students with different training schedules have different performance levels. Students’ progress in performing a task is quicker if the training sessions are held more closely compared to when the training sessions are far apart in time. Conclusions: This study provides a graph-based framework for evaluating new learners’ performance on medical devices and their readiness for advancement. This similarity network method could be used to classify students’ performance using similarity thresholds, facilitating decision-making related to training and progression through curricula.

Funder

University of Nebraska Medical Center

Publisher

SAGE Publications

Subject

Surgery

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