Publication | Open Access
Improving burn depth assessment for pediatric scalds by AI based on semantic segmentation of polarized light photography images
33
Citations
23
References
2021
Year
Artificial IntelligenceConvolutional Neural NetworkEngineeringDigital PathologySurgeryBurn Depth AssessmentImage AnalysisPattern RecognitionSemantic SegmentationRadiologyMachine VisionMedical ImagingVisual DiagnosisBurn Wound DepthsBurn ManagementMedical Image ComputingDeep LearningOptical Image RecognitionComputer VisionComputer-aided DiagnosisWound HealingPediatric ScaldsMedicineImage SegmentationEmergency Medicine
This paper illustrates the efficacy of an artificial intelligence (AI) (a convolutional neural network, based on the U-Net), for the burn-depth assessment using semantic segmentation of polarized high-performance light camera images of burn wounds. The proposed method is evaluated for paediatric scald injuries to differentiate four burn wound depths: superficial partial-thickness (healing in 0-7 days), superficial to intermediate partial-thickness (healing in 8-13 days), intermediate to deep partial-thickness (healing in 14-20 days), deep partial-thickness (healing after 21 days) and full-thickness burns, based on observed healing time. In total 100 burn images were acquired. Seventeen images contained all 4 burn depths and were used to train the network. Leave-one-out cross-validation reports were generated and an accuracy and dice coefficient average of almost 97% was then obtained. After that, the remaining 83 burn-wound images were evaluated using the different network during the cross-validation, achieving an accuracy and dice coefficient, both on average 92%. This technique offers an interesting new automated alternative for clinical decision support to assess and localize burn-depths in 2D digital images. Further training and improvement of the underlying algorithm by e.g., more images, seems feasible and thus promising for the future.
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