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Real-time identification of cardiac substrate anomalies Author : Philippe Haldermans Promoters : dr. Ronald Westra dr. ir. Ralf Peeters dr. ir. Ralf Peeters 13th September 2004
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Contents Motivation Forward modelling Inverse methods Results Conclusions
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Motivation Atrium fibrillation (AF) – cell triggers – wave maintenance by substrate anomalies New spatial-temporal data better image of wave propagation (movie) movie
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Objective Can we develop a method that is able to identify substrate anomalies, using the new spatial-temporal data?
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Forward modelling (1) Biophysically detailed models + Luo-Rudy, Beeler-Reuter, … – Complicated for inverse method Cellular automata + Simple and fast, especially for normal propagation – Absence of parameters for inverse estimation
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Forward modelling (2) Fitzhugh-Nagumo model – Partial differential equation – –
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Forward modelling (3) –Discretized in time and space Space : symmetric estimation Time : normal estimation
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Experiments (1) Types of waves: – Planar – Spherical – Spiral Different sorts of tissue: –Isotropic Anisotropic –Homogeneous Inhomogeneous
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Experiments (2) Refractory period Re-entering waves –Spiral waves (spiral.avi) spiral.avi –Figure-8 reentry (figure8.avi) (figure8.avi) Laws of physics –Rotations –Snellius’ law
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Inverse methods Rewriting equations linear in the parameters Iterative linear least squares estimation Proof of usefulness – Robustness for rounding errors – Effect of noisy data
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Results (1) Simulated data: – Good estimation of the parameters – Method holds even with noisy data – Able to find anomalies (tissue) (demo) tissuedemotissuedemo Data movies – Proved in theory estimation works – Practical problems with matlab
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Results (2) Real data : – First dataset (movie) (movie) shows normal propagation method finds smooth surface (tissue) (tissue) –Second dataset (movie) (movie) fibrillatory propagation no anomalies in the conductivity (tissue) (tissue) example of other problem : cell triggering?
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Other inverse methods (1) Bayesian approach – estimation of the uncertainty – groups of solutions – prior distribution & likelihood function posterior distribution – can be used as first estimation for other methods
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Other inverse methods (2) Regularization – Moore-Penrose pseudo-inverse Problems with : –Small singular values + noisy data Possible solutions : – Truncated singular value decomposition – Tikhonov regularization
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Conclusions Identify spatial anomalies in the conductivity Fitzhugh-Nagumo Realistic properties Estimation method works + is robust Real data – able to give conductivity – these examples show no problems in the conductivity
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Recommendations (1) Other forward model – Biologically more detailled – Other properties Different inverse method – Bayesian, regularization, … – Combination: least squares with Bayesian
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Recommendations (2) Real data – More datasets – More information about the data Combination with the spatial-temporal data measurement real-time identification
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