Abstract
Abstract
Background
The increasing demand and changing trends in rhinoplasty surgery emphasize the need for effective doctor–patient communication, for which Artificial Intelligence (AI) could be a valuable tool in managing patient expectations during pre-operative consultations.
Objective
To develop an AI-based model to simulate realistic postoperative rhinoplasty outcomes.
Methods
We trained a Generative Adversarial Network (GAN) using 3,030 rhinoplasty patients’ pre- and postoperative images. One-hundred-one study participants were presented with 30 pre-rhinoplasty patient photographs followed by an image set consisting of the real postoperative versus the GAN-generated image and asked to identify the GAN-generated image.
Results
The study sample (48 males, 53 females, mean age of 31.6 ± 9.0 years) correctly identified the GAN-generated images with an accuracy of 52.5 ± 14.3%. Male study participants were more likely to identify the AI-generated images compared with female study participants (55.4% versus 49.6%; p = 0.042).
Conclusion
We presented a GAN-based simulator for rhinoplasty outcomes which used pre-operative patient images to predict accurate representations that were not perceived as different from real postoperative outcomes.
Level of Evidence III
This journal requires that authors assign a level of evidence to each article. For a full description of these Evidence-Based Medicine ratings, please refer to the Table of Contents or the online Instructions to Authors www.springer.com/00266.
Funder
Universitätsklinikum Regensburg
Publisher
Springer Science and Business Media LLC
Reference18 articles.
1. Grand View Research (2020) Rhinoplasty market size, share & trends analysis report by treatment type (augmentation, reduction), by technique, by region (North America, Europe, APAC, Latin America, MEA), and segment forecasts, 2021–2028
2. American Society of Plastic Surgeons (ASPS) (2023) 2022 ASPS procedural statistics release. https://www.plasticsurgery.org/documents/News/Statistics/2022/plastic-surgery-statistics-report-2022.pdf. Accessed 9 Feb 2024
3. Knoedler S, Knoedler L, Wu M et al (2023) Incidence and risk factors of postoperative complications after rhinoplasty: a multi-institutional ACS-NSQIP analysis. J Craniofac Surg 34:1722–1726
4. Knoedler L, Odenthal J, Prantl L et al (2023) Artificial intelligence-enabled simulation of gluteal augmentation: a helpful tool in preoperative outcome simulation? J Plast Reconstr Aesthet Surg 80:94–101
5. Chartier C, Gfrerer L, Knoedler L, Austen WG Jr (2023) Artificial intelligence-enabled evaluation of pain sketches to predict outcomes in headache surgery. Plast Reconstr Surg 151:405–411