| Literature DB >> 30631704 |
Anna Skinner1, David Diller2, Rohit Kumar2, Jan Cannon-Bowers3, Roger Smith4, Alyssa Tanaka4, Danielle Julian4, Ray Perez5.
Abstract
BACKGROUND: Contemporary work in the design and development of intelligent training systems employs task analysis (TA) methods for gathering knowledge that is subsequently encoded into task models. These task models form the basis of intelligent interpretation of student performance within education and training systems. Also referred to as expert models, they represent the optimal way(s) of performing a training task. Within Intelligent Tutoring Systems (ITSs), real-time comparison of trainee task performance against the task model drives automated assessment and interactive support (such as immediate feedback) functionality. However, previous task analysis (TA) methods, including various forms of cognitive task analysis (CTA), may not be sufficient to support identification of the detailed design specifications required for the development of an ITS for a complex training task incorporating multiple underlying skill components, as well as multi-modal information presentation, assessment, and feedback modalities. Our current work seeks to develop an ITS for training Robotic Assisted Laparoscopic Surgery (RALS), a complex task domain that requires a coordinated utilization of integrated cognitive, psychomotor, and perceptual skills.Entities:
Keywords: Cognitive skills; Intelligent tutoring system; Multi-modal task; Perceptual skills; Psychomotor skills; Robot-assisted surgery; Simulation-based training; Task analysis; Task models
Year: 2018 PMID: 30631704 PMCID: PMC6310465 DOI: 10.1186/s40594-018-0108-5
Source DB: PubMed Journal: Int J STEM Educ ISSN: 2196-7822
Fundamentals of robotics surgery psychomotor skills tasks
Fig. 1RobotiX Mentor Simulation System
Fig. 2High-level design of RALS ITS
Fig. 3Task-flow diagram of a sub-step of an FRS task
Information captured in task decomposition table for sub-step A.2.3.6
| Description | Move needle under skin to stitch exit location using grasper A |
|---|---|
| Instructional | 1. Optimal needle orientation and motion |
| CommonErrors | 1. Instrument collision |
| OptimalStrategy | Bring needle tip in contact with the under side of the second target point by supinating hand A wrist slightly (if initial target is on top) or pronating hand A wrist slightly (if initial target is on bottom), maintaining perpendicular orientation and without driving needle too deep into the tissue |
| Non-optimal Strategies | 1. Align needle tip with the under side without supinating dominant hand. |
| Metrics | 1. Number of instrument-instrument collisions |
Quantitative characteristics of FRS task flow diagrams
| Task | #Steps | #Sub-steps | #Actions | Action Variety | Actions in loops |
|---|---|---|---|---|---|
| FRS Task 1 | 10 | 10 | 76 | 4 | 24% |
| FRS Task 2 | 4 | 13 | 85 | 6 | 20% |
| FRS Task 3 | 3 | 10 | 55 | 8 | 51% |
| FRS Task 4 | 7 | 7 | 35 | 7 | 20% |
| FRS Task 5 | 5 | 5 | 29 | 6 | 38% |
| FRS Task 6 | 5 | 10 | 40 | 7 | 28% |
Fig. 4Alternative technique suggested by an expert surgeon during MMTA validation