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A deep learning algorithm proposal to automatic pharyngeal airway detection and segmentation on CBCT images

Çağla Sin, Nurullah Akkaya, Seçil Aksoy, Kaan Orhan, Ulaş Öz

2021Orthodontics and Craniofacial Research73 citationsDOIOpen Access PDF

Abstract

OBJECTIVES: This study aims to evaluate an automatic segmentation algorithm for pharyngeal airway in cone-beam computed tomography (CBCT) images using a deep learning artificial intelligence (AI) system. SETTING AND SAMPLE POPULATION: Archives of the CBCT images were reviewed, and the data of 306 subjects with the pharyngeal airway were included in this retrospective study. MATERIAL AND METHODS: A machine learning algorithm, based on Convolutional Neural Network (CNN), did the segmentation of the pharyngeal airway on serial CBCT images. Semi-automatic software (ITK-SNAP) was used to manually generate the airway, and the results were compared with artificial intelligence. Dice similarity coefficient (DSC) and Intersection over Union (IoU) were used as the accuracy of segmentation in comparing the measurements of human measurements and artificial intelligence algorithms. RESULTS: . For pharyngeal airway segmentation, a dice ratio of 0.919 and a weighted IoU of 0.993 is achieved. CONCLUSIONS: In this study, a successful AI algorithm that automatically segments the pharyngeal airway from CBCT images was created. It can be useful in the quick and easy calculation of pharyngeal airway volume from CBCT images for clinical application.

Topics & Concepts

AirwayArtificial intelligenceSegmentationComputer sciencePharynxConvolutional neural networkDeep learningImage segmentationSørensen–Dice coefficientCone beam computed tomographyPattern recognition (psychology)Computer visionMedicineComputed tomographyRadiologyAnatomySurgeryAdvanced Radiotherapy TechniquesAirway Management and Intubation TechniquesDental Radiography and Imaging
A deep learning algorithm proposal to automatic pharyngeal airway detection and segmentation on CBCT images | Litcius