1. Classification model based on strain measurements to identify patients with arrhythmogenic cardiomyopathy with left ventricular involvement.
- Author
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Vives-Gilabert Y, Zorio E, Sanz-Sánchez J, Calvillo-Batllés P, Millet J, and Castells F
- Subjects
- Adult, Aged, Algorithms, Bayes Theorem, Cluster Analysis, Female, Humans, Magnetic Resonance Imaging, Cine, Male, Middle Aged, Myocardium pathology, Principal Component Analysis, Reproducibility of Results, Sensitivity and Specificity, Stress, Mechanical, Ventricular Dysfunction, Left physiopathology, Ventricular Function, Left, Arrhythmias, Cardiac diagnosis, Cardiomyopathies diagnosis, Diagnosis, Computer-Assisted methods, Heart Ventricles physiopathology
- Abstract
Background and Objective: A heterogenous expression characterizes arrhythmogenic cardiomyopathy (AC). The evaluation of regional wall movement included in the current Task Force Criteria is only qualitative and restricted to the right ventricle. However, a strain-based approach could precisely quantify myocardial deformation in both ventricles. We aim to define and modelize the strain behavior of the left ventricle in AC patients with left ventricular (LV) involvement by applying algorithms such as Principal Component Analysis (PCA), clustering and naïve Bayes (NB) classifiers., Methods: Thirty-six AC patients with LV involvement and twenty-three non-affected family members (controls) were enrolled. Feature-tracking analysis was applied to cine cardiac magnetic resonance imaging to assess strain time series from a 3D approach, to which PCA was applied. A Two-Step clustering algorithm separated the patients' group into clusters according to their level of LV strain impairment. A statistical characterization between controls and the new AC subgroups was done. Finally, a NB classifier was built and new data from a small evolutive dataset was predicted., Results: 60% of AC-LV patients showed mildly affected strain and 40% severely affected strain. Both groups and controls exhibited statistically significant differences, especially when comparing controls and severely affected AC-LV patients. The classification accuracy of the strain NB classifier reached 82.76%. The model performance was as good as to classify the individuals with a 100% sensitivity and specificity for severely impaired strain patients, 85.7% and 81.1% for mildly impaired strain patients, and 69.9% and 91.4% for normal strain, respectively. Even when the severely affected LV-AC group was excluded, LV strain showed a good accuracy to differentiate patients and controls. The prediction of the evolutive dataset revealed a progressive alteration of strain in time., Conclusions: Our LV strain classification model may help to identify AC patients with LV involvement, at least in a setting of a high pretest probability, such as family screening., Competing Interests: Declaration of Competing Interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Copyright © 2019. Published by Elsevier B.V.)
- Published
- 2020
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