Title of article :
Automated Classification of Severity in Cardiac Dyssynchrony Merging Clinical Data and Mechanical Descriptors
Author/Authors :
Santos-Díaz, Alejandro Bioengineering Department - Instituto Tecnologico y de Estudios Superiores de Monterrey - Campus Ciudad de Mexico - Mexico City, Mexico , Valdés-Cristerna, Raquel Electrical Engineering Department - Universidad Autonoma Metropolitana Iztapalapa - Mexico City, Mexico , Vallejo, Enrique Centro Medico ABC (American British Cowdray Hospital) - Mexico City, Mexico , Hernández, Salvador Nuclear Cardiology Department - Instituto Nacional de Cardiologıa “Ignacio Chavez” - Mexico City, Mexico , Jiménez-Ángeles, Luis Engineering in Biomedical Systems Department - Faculty of Engineering - Universidad Nacional Autonoma de Mexico - Mexico City, Mexico
Abstract :
Cardiac resynchronization therapy (CRT) improves functional classification among patients with left ventricle malfunction and
ventricular electric conduction disorders. However, a high percentage of subjects under CRT (20%–30%) do not show any
improvement. Nonetheless the presence of mechanical contraction dyssynchrony in ventricles has been proposed as an indicator
of CRT response. This work proposes an automated classification model of severity in ventricular contraction dyssynchrony. The
model includes clinical data such as left ventricular ejection fraction (LVEF), QRS and P-R intervals, and the 3 most significant
factors extracted from the factor analysis of dynamic structures applied to a set of equilibrium radionuclide angiography images
representing the mechanical behavior of cardiac contraction. A control group of 33 normal volunteers (28 ± 5 years, LVEF of
59.7% ± 5.8%) and a HF group of 42 subjects (53.12 ± 15.05 years, LVEF < 35%) were studied. The proposed classifiers had hit rates
of 90%, 50%, and 80% to distinguish between absent, mild, and moderate-severe interventricular dyssynchrony, respectively. For
intraventricular dyssynchrony, hit rates of 100%, 50%, and 90% were observed distinguishing between absent, mild, and moderatesevere, respectively.These results seem promising in using this automated method for clinical follow-up of patients undergoing CRT.
Keywords :
Dyssynchrony , Mechanical , CRT , Clinical
Journal title :
Computational and Mathematical Methods in Medicine