DocumentCode :
9418
Title :
Cardiac Electrophysiological Activation Pattern Estimation From Images Using a Patient-Specific Database of Synthetic Image Sequences
Author :
Prakosa, A. ; Sermesant, Maxime ; Allain, Pascal ; Villain, Nicolas ; Rinaldi, C. Aldo ; Rhode, Kawal ; Razavi, Rouzbeh ; Delingette, Herve ; Ayache, Nicholas
Author_Institution :
Inria, Asclepios Team, Sophia Antipolis, France
Volume :
61
Issue :
2
fYear :
2014
fDate :
Feb. 2014
Firstpage :
235
Lastpage :
245
Abstract :
While abnormal patterns of cardiac electrophysiological activation are at the origin of important cardiovascular diseases (e.g., arrhythmia, asynchrony), the only clinically available method to observe detailed left ventricular endocardial surface activation pattern is through invasive catheter mapping. However, this electrophysiological activation controls the onset of the mechanical contraction; therefore, important information about the electrophysiology could be deduced from the detailed observation of the resulting motion patterns. In this paper, we present the study of this inverse cardiac electrokinematic relationship. The objective is to predict the activation pattern knowing the cardiac motion from the analysis of cardiac image sequences. To achieve this, we propose to create a rich patient-specific database of synthetic time series of the cardiac images using simulations of a personalized cardiac electromechanical model, in order to study this complex relationship between electrical activity and kinematic patterns in the context of this specific patient. We use this database to train a machine-learning algorithm which estimates the depolarization times of each cardiac segment from global and regional kinematic descriptors based on displacements or strains and their derivatives. Finally, we use this learning to estimate the patient´s electrical activation times using the acquired clinical images. Experiments on the inverse electrokinematic learning are demonstrated on synthetic sequences and are evaluated on clinical data with promising results. The error calculated between our prediction and the invasive intracardiac mapping ground truth is relatively small (around 10 ms for ischemic patients and 20 ms for nonischemic patient). This approach suggests the possibility of noninvasive electrophysiological pattern estimation using cardiac motion imaging.
Keywords :
bioelectric potentials; cardiovascular system; catheters; diseases; electrocardiography; image sequences; learning (artificial intelligence); medical image processing; motion estimation; time series; arrhythmia; asynchrony; cardiac electrophysiological activation pattern estimation; cardiac image sequences; cardiac motion imaging; cardiac segment; cardiovascular diseases; depolarization times; electrical activity; error calculation; global kinematic descriptors; invasive catheter mapping; invasive intracardiac mapping ground truth; inverse cardiac electrokinematic relationship; inverse electrokinematic learning; ischemic patients; left ventricular endocardial surface activation pattern; machine-learning algorithm; mechanical contraction; motion patterns; patient electrical activation times; patient-specific database; personalized cardiac electromechanical model; regional kinematic descriptors; synthetic image sequences; synthetic time series; time 10 ms; time 20 ms; Databases; Image segmentation; Image sequences; Imaging; Kinematics; Myocardium; Strain; Cardiac electrophysiology; computer model; inverse problem; machine learning; non-invasive mapping; synthetic images;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2013.2281619
Filename :
6600804
Link To Document :
بازگشت