DocumentCode :
1146056
Title :
Effects of experimental and modeling errors on electrocardiographic inverse formulations
Author :
Cheng, Leo K. ; Bodley, John M. ; Pullan, Andrew J.
Author_Institution :
Bioeng. Inst., Auckland Univ., New Zealand
Volume :
50
Issue :
1
fYear :
2003
Firstpage :
23
Lastpage :
32
Abstract :
The inverse problem of electrocardiology aims to reconstruct the electrical activity occurring within the heart using information obtained noninvasively on the body surface. Potentials obtained on the torso surface can be used as input for the inverse problem and an electrical image of the heart obtained. There are a number of different inverse algorithms currently used to produce electrical images of the heart. By performing a detailed simulation study, we compare the performances of epicardial potential (Tikhonov, truncated singular value decomposition (TSVD), and Greensite) and myocardial activation-based (critical point) inverse simulations along with different methods of choosing the appropriate level of regularization (optimal, L-curve, composite residual and smoothing operator, zero-crossing) to apply to each of these inverse methods. We also examine the effects of a variety of signal error, material property error, geometric error and a combination of these errors on each of the electrocardiographic inverse algorithms. Results from the simulation study show that the activation-based method is able to produce solutions which are more accurate and stable than potential-based methods especially in the presence of correlated errors such as geometric uncertainty. In general, the Greensite-Tikhonov method produced the most realistic potential-based solutions while the zero-crossing and L-curve were the preferred method for determining the regularization parameter. The presence of signal or material property error has little effect on the inverse solutions when compared with the large errors which resulted from the presence of any geometric error. In the presence of combined Gaussian and correlated errors representing conditions which may be encountered in an experimental or clinical environment, there was less variability between potential-based solutions produced by each of the inverse algorithms.
Keywords :
Gaussian noise; boundary-elements methods; electrocardiography; inverse problems; medical signal processing; physiological models; signal reconstruction; singular value decomposition; Greensite method; Greensite-Tikhonov method; L-curve; Tikhonov method; composite residual; electrical activity; electrocardiographic inverse formulations; electrocardiology; epicardial potential activation-based simulations; experimental errors; geometric error; heart; inverse problem; material property error; modeling errors; myocardial activation-based simulations; optimal method; potential-based methods; regularization level; signal error; simulation study; smoothing operator; truncated singular value decomposition; zero-crossing method; Heart; Image reconstruction; Inverse problems; Material properties; Myocardium; Singular value decomposition; Smoothing methods; Solid modeling; Surface reconstruction; Torso; Algorithms; Animals; Body Surface Potential Mapping; Computer Simulation; Cross-Sectional Studies; Heart; Heart Conduction System; Imaging, Three-Dimensional; Models, Biological; Normal Distribution; Reproducibility of Results; Sensitivity and Specificity; Statistics as Topic; Stochastic Processes; Swine;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2002.807325
Filename :
1179128
Link To Document :
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