Title
Risk assessment of sleeping disorder breathing based on upper airway centerline evaluation
Abstract
One of the most important breathing disorders in childhood is obstructive sleep apnea syndrome which affects 2-3% of children, and the reported failure rate of surgical treatment was as high as 54%. A possible reason in respiratory complications is having reduced dimensions of the upper airway which are further compressed when muscle tone is decreased during sleep. In this study, we use Cone-beam computed tomography (CBCT) to assess the location or cause of the airway obstruction. To date, all studies analyzing the upper airway in subjects with Sleeping Disorder Breathing were based on linear, area, or volumetric measurements, which are global computations and can easily ignore local significance. Skeletonization was initially introduced as a 3D modeling technique by which representative medial points of a model are extracted to generate centerlines for evaluations. Although centerlines have been commonly used in guiding surgical procedures, our novelty lies in comparing its geometric properties before and after surgeries. We apply 3D data refinement, registration and projection steps to quantify and localize the geometric deviation in target airway regions. Through cross validation with corresponding subjects' therapy data, we expect to quantify the tolerance threshold beyond which reduced dimensions of the upper airway are not clinically significant. The ultimate goal is to utilize this threshold to identify patients at risk of complications. Outcome from this research will also help establish a predictive model for training and to estimate treatment success based on airway measurements prior to intervention. Preliminary results demonstrate the feasibility of our approach.
Year
DOI
Venue
2013
10.1117/12.2006687
Proceedings of SPIE
Keywords
Field
DocType
sleeping disorder breathing,upper airway,centerline evaluation,skeletonization
Obstructive sleep apnea,Computer vision,Risk assessment,Muscle tone,Skeletonization,Artificial intelligence,Breathing,Physical medicine and rehabilitation,Airway obstruction,Airway,Cross-validation,Physics
Conference
Volume
ISSN
Citations 
8670
0277-786X
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
noura alsufyani100.34
rui shen212.39
Irene Cheng32815.73
paul w major401.35