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Deep Learning Based Airway Segmentation Using Key Point Prediction

Jin-Young Park, Jae Joon Hwang, Jihye Ryu, Inhye Nam, Sol-A Kim, Bong‐Hae Cho, Sang‐Hun Shin, Jae‐Yeol Lee

2021Applied Sciences20 citationsDOIOpen Access PDF

Abstract

The purpose of this study was to investigate the accuracy of the airway volume measurement by a Regression Neural Network-based deep-learning model. A set of manually outlined airway data was set to build the algorithm for fully automatic segmentation of a deep learning process. Manual landmarks of the airway were determined by one examiner using a mid-sagittal plane of cone-beam computed tomography (CBCT) images of 315 patients. Clinical dataset-based training with data augmentation was conducted. Based on the annotated landmarks, the airway passage was measured and segmented. The accuracy of our model was confirmed by measuring the following between the examiner and the program: (1) a difference in volume of nasopharynx, oropharynx, and hypopharynx, and (2) the Euclidean distance. For the agreement analysis, 61 samples were extracted and compared. The correlation test showed a range of good to excellent reliability. A difference between volumes were analyzed using regression analysis. The slope of the two measurements was close to 1 and showed a linear regression correlation (r2 = 0.975, slope = 1.02, p < 0.001). These results indicate that fully automatic segmentation of the airway is possible by training via deep learning of artificial intelligence. Additionally, a high correlation between manual data and deep learning data was estimated.

Topics & Concepts

Artificial intelligenceDeep learningSagittal planeSegmentationComputer scienceCorrelationData setTest setLinear regressionArtificial neural networkAirwayPattern recognition (psychology)MedicineMachine learningMathematicsRadiologySurgeryGeometryObstructive Sleep Apnea ResearchRadiomics and Machine Learning in Medical ImagingTracheal and airway disorders
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