Title :
Lungprints: An alternative view in multiple-stream time-series analysis of bioimpedance signals
Author :
Zifan, A. ; Liatsis, P.
Author_Institution :
Inf. Eng. & Med. Imaging Group, City Univ., London, UK
Abstract :
In this paper we introduce Lungprints, which are 2D barcode-pattern like images representing ventilation characteristics of a patient. Recent advances in impedance imaging, namely electrical impedance tomography (EIT), allow for the development of an inexpensive, non-ionizing and non-invasive way of monitoring lung ventilation. Various methods have been proposed for the characterization of temporal lung tissue behaviour during ventilation using EIT. Impedance images are built in real time (13 frames/sec) by processing the measured voltage-streams on the thoracic surface. However, impedance recovery is a highly non-linear ill-posed inverse problem, thus the generated images are highly fuzzy and blurry. The latter characteristics impede robust and precise feature extraction and quantification, which could be used as suitable features for lung signal analysis and diagnosis. In this light, we propose an automatic pipeline for lung bioimpedance signal representation and analysis using rapid lungprint classification. We train a single-class vector machine (SVM) classifier, which estimates the parameters of the class from a dictionary of features, composed of moments extracted from a multi-scale representation of healthy patient lungprints onto a translation invariant set of atoms, namely stationary wavelets. Results show the appropriateness of the proposed method in automatic lung signal representation and classification and its potential advantages not only as a bed-side lung monitoring tool, but in other areas such as multiple stream time-series analysis where data streams exhibit cyclic behavior.
Keywords :
biological tissues; cellular biophysics; electric impedance imaging; feature extraction; image classification; image representation; inverse problems; lung; medical image processing; patient monitoring; support vector machines; time series; 2D barcode-pattern like image representing ventilation characteristics; SVM; automatic lung signal classification; automatic lung signal representation; automatic pipeline; bed-side lung monitoring tool; bioimpedance signals; electrical impedance tomography; feature extraction; healthy patient lungprints; highly nonlinear ill-posed inverse problem; impedance imaging; lung bioimpedance signal representation; lung signal analysis; lung signal diagnosis; multiple-stream time-series analysis; multiscale representation; noninvasive monitoring lung ventilation; rapid lungprint classification; single-class vector machine classifier; stationary wavelets; thoracic surface; translation invariant set; Feature extraction; Impedance; Lungs; Streaming media; Support vector machines; Tomography; Voltage measurement; Lungprints; impedance tomography; support vector machines; translation invariant wavelets;
Conference_Titel :
Systems, Signals and Image Processing (IWSSIP), 2012 19th International Conference on
Conference_Location :
Vienna
Print_ISBN :
978-1-4577-2191-5