DocumentCode
3609498
Title
Asthma Pattern Identification via Continuous Diaphragm Motion Monitoring
Author
Liu, Menghan ; Huang, Ming-Chun
Author_Institution
Department of Electrical Engineering and Computer Science, Case Western Reserve University, Cleveland, OH
Volume
1
Issue
2
fYear
2015
Firstpage
76
Lastpage
84
Abstract
Ultrasound imaging has been widely used in bio-medical imaging diagnosis for a long history because of its merits: no radiation, high penetration depth, and real-time imagingcapability. In this paper, we propose an ultrasound-based system that monitors respiratory status of asthma subjects via detecting of diaphragm movement. This system implements Chan-Vese algorithm to accurately segment diaphragm area from ultrasound image sequences and extracts 1D breathing waveform by computing mutual information (MI) between two consecutive ultrasound frames. In addition, four types of respiratory signals are identified: normal breath, fast breath, apnoea, and cough, which are related to four symptoms of asthma attack and defined as the breathing templates used for early asthma detection. In experiments, the proposed system is evaluated with a public dataset from “Ultrasound image gallery” which contains nine ultrasound videos and our dataset collected by “Interson Seemore” probe which contains five ultrasound videos in the diaphragm area. The results show that Chan-Vese segmentation method is superior to the other three algorithms: adaptive thresholding, EM/MPM, and Fuzzy C Means (FCM), and MI is a feasible method to extract accurate respiratory signal and clear information of the phase of respiratory cycle from 2D images.
Keywords
Asthma; Biomedical monitoring; Image segmentation; Image sequences; Lungs; Ultrasonic imaging; Asthma Pattern; Image Segmentation; Respiration Signal Extraction; Ultrasound; asthma pattern; image segmentation; respiration signal extraction;
fLanguage
English
Journal_Title
Multi-Scale Computing Systems, IEEE Transactions on
Publisher
ieee
Type
jour
DOI
10.1109/TMSCS.2015.2496214
Filename
7312456
Link To Document