| Literature DB >> 33156361 |
I-Hsuan Alan Chen1,2,3, Ahmed Ghazi4, Ashwin Sridhar5, Danail Stoyanov6, Mark Slack7, John D Kelly8,6,5, Justin W Collins9,10,11.
Abstract
INTRODUCTION: Robot-assisted surgery is becoming increasingly adopted by multiple surgical specialties. There is evidence of inherent risks of utilising new technologies that are unfamiliar early in the learning curve. The development of standardised and validated training programmes is crucial to deliver safe introduction. In this review, we aim to evaluate the current evidence and opportunities to integrate novel technologies into modern digitalised robotic training curricula.Entities:
Keywords: 3D printed models; Eye tracking; Machine learning; Patient safety; Proficiency-based progression; Robotic-assisted surgery; Surgical education; Telementoring; Training
Mesh:
Year: 2020 PMID: 33156361 PMCID: PMC8405494 DOI: 10.1007/s00345-020-03467-7
Source DB: PubMed Journal: World J Urol ISSN: 0724-4983 Impact factor: 4.226
Fig. 1Defining standardised objective performance metrics is an ideal starting point
Fig. 2Development of educational video content
Fig. 3A telementoring hub could potentially be linked to multiple hospitals, both nationally and internationally
Comparison of the different surgical training models
| Model | Strengths | Weaknesses |
|---|---|---|
| Task deconstruction models | Address metrics and are cost effective, e.g. chicken gizzard model for vesico-urethral anastmosis | Limited development to comprehensively address metrics, benchmarks and error management |
| Porcine model | Flexible training model for tissue handling | Expensive |
| Not human anatomy | ||
| No human pathology | ||
| Limited accessibility | ||
| Canine cadaver model | Flexible training model for tissue handling | Not human anatomy |
| No human pathology | ||
| Limited accessibility | ||
| Human cadaver model | Flexible training model | Expensive |
| Lacks pathology and does not bleed | ||
| Limited accessibility | ||
| 3D printed models [ | Flexible training model | Currently, high development costs (lowered if printed casts rather than printed models) |
| Can incorporate pathology and vascularisation | ||
| Increasingly realistic tissue handling | Models that address specific defined metrics need to be developed | |
| Can incorporate metrics and benchmarks [ | ||
| VR simulation | Advanced procedural training models available (e.g. robotic prostatectomy, hysterectomy) | Current scope/range/image quality limited |
| AR simulation | Potential to develop | Limited development |
Fig. 4Construction of nerve-sparing robot-assisted radical prostatectomy (NS-RARP) simulation platform
Fig. 5Demonstration of positive margin (a) and bladder neck (b) in NS-RARP simulation platform