Title :
Unsupervised Vector Quantization for Robust Lung State Estimation of an EIT Image Sequence
Author :
Horler, Philipp ; Schuster, Guido ; Bonderer, Reto
Author_Institution :
Dept. of Electr. Eng., HSR Univ. of Appl. Sci., Rapperswil, Switzerland
Abstract :
Every year, several ten thousand patients die on mechanical ventilation. This happens because the lungs can currently not be monitored adequately in real-time, and thus sub optimal ventilator settings can cause severe lung tissue damage. Electrical Impedance Tomography (EIT) produces a real-time image sequence of the breathing lungs. So far, no automatic method has been available to detect the physiological regional lung states. We propose an algorithm that clusters the raw pixel based data of the EIT image sequence into clinically relevant regions with similar physiological behavior. Our implementation is very robust regarding bad signal quality due to low signal to noise ratio (SNR). It is also highly efficient in terms of computational complexity by considering additional physiological knowledge. The functionality of the algorithm has been verified using EIT data of a human subject with acute lung failure at various Positive End-Expiratory Pressure (PEEP) levels. The results are in agreement with the study protocol. This method brings EIT treatment one step closer towards protective ventilation therapy.
Keywords :
biological tissues; computational complexity; computerised tomography; electric impedance imaging; image sequences; lung; medical image processing; patient treatment; pattern clustering; pneumodynamics; real-time systems; vector quantisation; EIT data; EIT image sequence; EIT treatment; PEEP levels; SNR; automatic method; breathing lungs; computational complexity; electrical impedance tomography; lung failure; lung tissue damage; physiological regional lung state detection; pixel-based data clusters; positive end-expiratory pressure levels; protective ventilation therapy; real-time image sequence; robust lung state estimation; signal quality; signal to noise ratio; suboptimal ventilator settings; unsupervised vector quantization; Biomedical monitoring; Clustering algorithms; Heuristic algorithms; Lungs; Tomography; Vector quantization; Vectors; Computer Aided Diagnostics; Dynamic Programming; EIT; Lung Imaging; Vector Quantization;
Conference_Titel :
Computer-Based Medical Systems (CBMS), 2014 IEEE 27th International Symposium on
Conference_Location :
New York, NY
DOI :
10.1109/CBMS.2014.106