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Cited 3 time in webofscience Cited 5 time in scopus
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Diagnosis of obstructive sleep apnea with prediction of flow characteristics according to airway morphology automatically extracted from medical images: Computational fluid dynamics and artificial intelligence approach

Authors
류수지김준홍유희진HWI DONG JUNG장석원Jeong Jin Park홍순혁HYUNGJU CHOyoon jeong ChoiJONGEUN CHOIJoon Sang Lee
Issue Date
Sep-2021
Publisher
ELSEVIER IRELAND LTD
Keywords
Obstructive sleep apnea syndrome; Auto-segmentation; Upper-airway morphology; Computational fluid dynamics
Citation
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, v.208, pp 106243-1 - 106243-13
Journal Title
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE
Volume
208
Start Page
106243-1
End Page
106243-13
URI
https://yscholarhub.yonsei.ac.kr/handle/2021.sw.yonsei/6397
DOI
10.1016/j.cmpb.2021.106243
ISSN
0169-2607
Abstract
Background: Obstructive sleep apnea syndrome (OSAS) is being observed in an increasing number of cases. It can be diagnosed using several methods such as polysomnography. Objectives: To overcome the challenges of time and cost faced by conventional diagnostic methods, this paper proposes computational fluid dynamics (CFD) and machine-learning approaches that are derived from the upper-airway morphology with automatic segmentation using deep learning. Method: We adopted a 3D UNet deep-learning model to perform medical image segmentation. 3D UNet prevents the feature-extraction loss that may occur by concatenating layers and extracts the anteroposte- rior coordination and width of the airway morphology. To create flow characteristics of the upper airway training data, we analyzed the changes in flow characteristics according to the upper-airway morphol- ogy using CFD. A multivariate Gaussian process regression (MVGPR) model was used to train the flow characteristic values. The trained MVGPR enables the prompt prediction of the aerodynamic features of the upper airway without simulation. Unlike conventional regression methods, MVGPR can be trained by considering the correlation between the flow characteristics. As a diagnostic step, a support vector machine (SVM) with predicted aerodynamic and biometric features was used in this study to classify pa- tients as healthy or suffering from moderate OSAS. SVM is beneficial as it is easy to learn even with a small dataset, and it can diagnose various flow characteristics as factors while enhancing the feature via the kernel function. As the patient dataset is small, the Monte Carlo cross-validation was used to validate the trained model. Furthermore, to overcome the imbalanced data problem, the oversampling method was applied. Result: The segmented upper-airway results of the high-resolution and low-resolution models present overall average dice coefficients of 0.76 ±0.041 and 0.74 ±0.052, respectively.
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College of Engineering > Mechanical Engineering > 1. Journal Articles
치과대학 > 치과대학 교정과학교실 > 1. Journal Articles
College of Medicine > 의과대학 이비인후과학교실 > 1. Journal Articles
치과대학 > 치과대학 구강악안면외과학교실 > 1. Journal Articles

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