Literature DB >> 31363890

ML and MAP estimation of parameters for the Kalman filter and smoother applied to electrocardiographic imaging.

Taha Erenler1, Yesim Serinagaoglu Dogrusoz2.   

Abstract

In electrocardiographic imaging (ECGI), one solves the inverse problem of electrocardiography (ECG) to reconstruct equivalent cardiac sources based on the body surface potential measurements and a mathematical model of the torso. Due to attenuation and spatial smoothing within the torso, this inverse problem is ill-posed. Among many regularization approaches used in the ECG literature to overcome this ill-posedness, statistical techniques have received great attention because of their flexibility to represent the data, and ability to provide performance evaluation tools for quantification of uncertainties and errors in the model. However, despite their potential to accurately reconstruct the equivalent cardiac sources, one major challenge in these methods is how to best utilize the prior information available in terms of training data. In this paper, we address the question of how to define the prior probability distributions (pdf) of the sources and the error terms so that we can obtain more accurate and robust inverse solutions. We employ two methods, maximum likelihood (ML) and maximum a posteriori (MAP), for estimating the model parameters such as the prior pdfs, error pdfs, and the state-transition matrix, based on the same training data. These model parameters are then used for the state-space representation and estimation of the epicardial potentials, which constitute the equivalent cardiac sources in this study. The performances of ML- and MAP-based model parameter estimation methods are evaluated qualitatively and quantitatively at various noise levels and geometric disturbances using two different simulated datasets. Bayesian MAP estimation, which is also a well-known statistical inversion technique, and Tikhonov regularization, which can be formulated as a special and simplified version of Bayesian MAP estimation, have been included here for comparison with the Kalman filtering method. Our results show that the state-space approach outperforms Bayesian MAP estimation in all cases; ML yields accurate results when the test and training beats come from the same physiological model, but MAP is superior to ML, especially if the test and training beats are from different physiological models. Graphical Abstract ML and MAP estimation of parameters for the Kalman filter and smoother applied to electrocardiographic imaging.

Entities:  

Keywords:  Bayesian estimation; Electrocardiographic imaging; Inverse electrocardiography; Kalman filter; Maximum a posteriori; Maximum likelihood

Mesh:

Year:  2019        PMID: 31363890     DOI: 10.1007/s11517-019-02018-6

Source DB:  PubMed          Journal:  Med Biol Eng Comput        ISSN: 0140-0118            Impact factor:   2.602


  38 in total

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Journal:  IEEE Trans Biomed Eng       Date:  2005-06       Impact factor: 4.538

2.  Multiple sparse priors for the M/EEG inverse problem.

Authors:  Karl Friston; Lee Harrison; Jean Daunizeau; Stefan Kiebel; Christophe Phillips; Nelson Trujillo-Barreto; Richard Henson; Guillaume Flandin; Jérémie Mattout
Journal:  Neuroimage       Date:  2007-10-10       Impact factor: 6.556

3.  A Bayesian approach to introducing anatomo-functional priors in the EEG/MEG inverse problem.

Authors:  S Baillet; L Garnero
Journal:  IEEE Trans Biomed Eng       Date:  1997-05       Impact factor: 4.538

4.  ECG-Based Reconstruction of Heart Position and Orientation with Bayesian Optimization.

Authors:  Jaume Coll-Font; Setareh Ariafar; Dana H Brooks
Journal:  Comput Cardiol (2010)       Date:  2018-04-05

5.  Sensitivity of Noninvasive Cardiac Electrophysiological Imaging to Variations in Personalized Anatomical Modeling.

Authors:  Azar Rahimi
Journal:  IEEE Trans Biomed Eng       Date:  2015-01-21       Impact factor: 4.538

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Authors:  J C Mosher; M E Spencer; R M Leahy; P S Lewis
Journal:  Electroencephalogr Clin Neurophysiol       Date:  1993-05

7.  Physiological-model-constrained noninvasive reconstruction of volumetric myocardial transmembrane potentials.

Authors:  Linwei Wang; Heye Zhang; Ken C L Wong; Huafeng Liu; Pengcheng Shi
Journal:  IEEE Trans Biomed Eng       Date:  2009-06-16       Impact factor: 4.538

8.  Application of L1-norm regularization to epicardial potential solution of the inverse electrocardiography problem.

Authors:  Subham Ghosh; Yoram Rudy
Journal:  Ann Biomed Eng       Date:  2009-03-06       Impact factor: 3.934

9.  Noninvasive reconstruction of cardiac electrical activity: update on current methods, applications and challenges.

Authors:  M J M Cluitmans; R L M Peeters; R L Westra; P G A Volders
Journal:  Neth Heart J       Date:  2015-06       Impact factor: 2.380

10.  Lp-norm regularization in volumetric imaging of cardiac current sources.

Authors:  Azar Rahimi; Jingjia Xu; Linwei Wang
Journal:  Comput Math Methods Med       Date:  2013-11-20       Impact factor: 2.238

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