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Copyright ©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
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], 2016Mandibular osteotomyOsteotomy accuracy and intraoperative deviationsSurgical navigation and osteotomy guidanceAugmented reality-based surgical navigationSignificant improvement in osteotomy precision
Qu et al[17], 2015Distraction osteogenesisPostoperative symmetry and distractor placementEnhancing distractor placement accuracyMachine learning-enhanced augmented realityEnhanced postoperative symmetry and reduced operative time
Le et al[18], 2023DIEP flap reconstructionPerforator detection accuracy compared to CTAPreoperative vascular imagingDeep learning-based vascular mappingHigh accuracy in perforator detection
Hummelink et al[19], 2019DIEP flap breast reconstructionEffectiveness of 3D vascular mappingImproved intraoperative vascular mapping3D convolutional neural networksReduced operative time and improved flap selection
Pereira et al[20], 2018Perforator identification in anterolateral thigh flapsAgreement between thermographic imaging and CTAValidation of AI-assisted thermographyComputer vision for thermographic analysisHigh correlation between AI-based and CTA imaging
Zhu et al[21], 2018Mandibular osteotomyPrecision in osteotomy executionAugmented reality guidance for surgeryNeural network-based surgical guidanceImproved accuracy in osteotomies
Kim et al[22], 2019Robotic-assisted microsurgeryEnhancements in microsurgical precisionMicrosurgical planning and robotic assistanceRobotic-assisted AI algorithmsSignificant improvements in microsurgical execution
Brenac et al[23], 2024Perforator flap harvestAccuracy in perforator visualizationAI-assisted imaging for intraoperative planningAI-powered vascular imagingGreater accuracy in vascular visualization
Ejaz et al[24], 2024Flap viability and perfusion assessmentDetection of ischemic areas in free flapsPredicting flap ischemiaSensor-based deep learning modelsEarly ischemia detection and improved intervention success
Avila et al[25], 2024Postoperative wound assessmentWound classification accuracy and prediction of healing outcomesPostoperative monitoring and complication assessmentConvolutional neural networksHigh accuracy in wound classification and healing prediction
Dhawan et al[26], 2024AI-driven risk predictionPostoperative risk prediction using clinical variablesPersonalized risk stratificationRisk assessment models using machine learningImproved risk prediction accuracy
Chen et al[40], 2024Wound healing assessmentHealing time prediction based on wound morphologyDeep learning-driven wound classificationDeep learning for wound classificationAI accurately predicted wound healing times
Bukret et al[27], 2021Aesthetic surgery risk predictionAccuracy of AI models in predicting aesthetic surgery complicationsMachine learning for surgical risk assessmentMachine learning-based risk modelsReduced complications through AI-based risk models
Borsting et al[28], 2019Rhinoplasty outcome predictionPredictive success of AI models in rhinoplasty outcomesOutcome prediction in rhinoplastyDeep learning outcome prediction modelsHigh predictive accuracy of rhinoplasty outcomes
Farid et al[29], 2024Breast reconstruction planningOptimization of surgical techniques in breast reconstructionPredictive modeling for reconstructionNeural network predictive modelingEnhanced decision-making in breast reconstruction planning