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©The Author(s) 2025.
Artif Intell Med Imaging. Sep 8, 2025; 6(2): 108028
Published online Sep 8, 2025. doi: 10.35711/aimi.v6.i2.108028
Published online Sep 8, 2025. doi: 10.35711/aimi.v6.i2.108028
Table 1 Summary of studies on artificial intelligence applications in medical imaging for plastic surgery, detailing the surgical procedure, outcomes measured, artificial intelligence utilization, type of artificial intelligence used, and key findings
Ref. | Surgical procedure | Outcome measured | AI used for | Type of AI used | Results |
Zhu et al[21], 2016 | Mandibular osteotomy | Osteotomy accuracy and intraoperative deviations | Surgical navigation and osteotomy guidance | Augmented reality-based surgical navigation | Significant improvement in osteotomy precision |
Qu et al[17], 2015 | Distraction osteogenesis | Postoperative symmetry and distractor placement | Enhancing distractor placement accuracy | Machine learning-enhanced augmented reality | Enhanced postoperative symmetry and reduced operative time |
Le et al[18], 2023 | DIEP flap reconstruction | Perforator detection accuracy compared to CTA | Preoperative vascular imaging | Deep learning-based vascular mapping | High accuracy in perforator detection |
Hummelink et al[19], 2019 | DIEP flap breast reconstruction | Effectiveness of 3D vascular mapping | Improved intraoperative vascular mapping | 3D convolutional neural networks | Reduced operative time and improved flap selection |
Pereira et al[20], 2018 | Perforator identification in anterolateral thigh flaps | Agreement between thermographic imaging and CTA | Validation of AI-assisted thermography | Computer vision for thermographic analysis | High correlation between AI-based and CTA imaging |
Zhu et al[21], 2018 | Mandibular osteotomy | Precision in osteotomy execution | Augmented reality guidance for surgery | Neural network-based surgical guidance | Improved accuracy in osteotomies |
Kim et al[22], 2019 | Robotic-assisted microsurgery | Enhancements in microsurgical precision | Microsurgical planning and robotic assistance | Robotic-assisted AI algorithms | Significant improvements in microsurgical execution |
Brenac et al[23], 2024 | Perforator flap harvest | Accuracy in perforator visualization | AI-assisted imaging for intraoperative planning | AI-powered vascular imaging | Greater accuracy in vascular visualization |
Ejaz et al[24], 2024 | Flap viability and perfusion assessment | Detection of ischemic areas in free flaps | Predicting flap ischemia | Sensor-based deep learning models | Early ischemia detection and improved intervention success |
Avila et al[25], 2024 | Postoperative wound assessment | Wound classification accuracy and prediction of healing outcomes | Postoperative monitoring and complication assessment | Convolutional neural networks | High accuracy in wound classification and healing prediction |
Dhawan et al[26], 2024 | AI-driven risk prediction | Postoperative risk prediction using clinical variables | Personalized risk stratification | Risk assessment models using machine learning | Improved risk prediction accuracy |
Chen et al[40], 2024 | Wound healing assessment | Healing time prediction based on wound morphology | Deep learning-driven wound classification | Deep learning for wound classification | AI accurately predicted wound healing times |
Bukret et al[27], 2021 | Aesthetic surgery risk prediction | Accuracy of AI models in predicting aesthetic surgery complications | Machine learning for surgical risk assessment | Machine learning-based risk models | Reduced complications through AI-based risk models |
Borsting et al[28], 2019 | Rhinoplasty outcome prediction | Predictive success of AI models in rhinoplasty outcomes | Outcome prediction in rhinoplasty | Deep learning outcome prediction models | High predictive accuracy of rhinoplasty outcomes |
Farid et al[29], 2024 | Breast reconstruction planning | Optimization of surgical techniques in breast reconstruction | Predictive modeling for reconstruction | Neural network predictive modeling | Enhanced decision-making in breast reconstruction planning |
- Citation: Yamin MA, Raquepo TM, Tobin M, Posso AN, Cauley RP. Applications and challenges of artificial intelligence in plastic surgery imaging: A narrative review. Artif Intell Med Imaging 2025; 6(2): 108028
- URL: https://www.wjgnet.com/2644-3260/full/v6/i2/108028.htm
- DOI: https://dx.doi.org/10.35711/aimi.v6.i2.108028