Literature DB >> 33226549

Prediction of response to cardiac resynchronization therapy using a multi-feature learning method.

Alban Gallard1, Arnaud Hubert1, Erwan Donal2,3, Alfredo I Hernandez1, Otto Smiseth4, Jens-Uwe Voigt5, Virginie Le Rolle1, Christophe Leclercq1, Auriane Bidaut1, Elena Galli1.   

Abstract

We hypothesized that a multiparametric evaluation, based on the combination of electrocardiographic and echocardiographic parameters, could enhance the appraisal of the likelihood of reverse remodeling and prognosis of favorable clinical evolution to improve the response of cardiac resynchronization therapy (CRT). Three hundred and twenty-three heart failure patients were retrospectively included in this multicenter study. 221 patients (68%) were responders, defined by a decrease in left ventricle end-systolic volume ≥15% at the 6-month follow-up. In addition, strain data coming from echocardiography were analyzed with custom-made signal processing methods. Integrals of regional longitudinal strain signals from the beginning of the cardiac cycle to strain peak and to the instant of aortic valve closure were analyzed. QRS duration, septal flash and different other features manually extracted were also included in the analysis. The random forest (RF) method was applied to analyze the relative feature importance, to select the most significant features and to build an ensemble classifier with the objective of predicting response to CRT. The set of most significant features was composed of Septal Flash, E, E/A, E/EA, QRS, left ventricular end-diastolic volume and eight features extracted from strain curves. A Monte Carlo cross-validation method with 100 runs was applied, using, in each run, different random sets of 80% of patients for training and 20% for testing. Results show a mean area under the curve (AUC) of 0.809 with a standard deviation of 0.05. A multiparametric approach using a combination of echo-based parameters of left ventricular dyssynchrony and QRS duration helped to improve the prediction of the response to cardiac resynchronization therapy.

Entities:  

Keywords:  2D longitudinal strain; Cardiac resynchronization therapy; Heart failure; Machine learning; Speckle-tracking echocardiography

Mesh:

Year:  2020        PMID: 33226549     DOI: 10.1007/s10554-020-02083-1

Source DB:  PubMed          Journal:  Int J Cardiovasc Imaging        ISSN: 1569-5794            Impact factor:   2.357


  3 in total

Review 1.  Avoiding non-responders to cardiac resynchronization therapy: a practical guide.

Authors:  Claude Daubert; Nathalie Behar; Raphaël P Martins; Philippe Mabo; Christophe Leclercq
Journal:  Eur Heart J       Date:  2017-05-14       Impact factor: 29.983

2.  Machine learning for neuroimaging with scikit-learn.

Authors:  Alexandre Abraham; Fabian Pedregosa; Michael Eickenberg; Philippe Gervais; Andreas Mueller; Jean Kossaifi; Alexandre Gramfort; Bertrand Thirion; Gaël Varoquaux
Journal:  Front Neuroinform       Date:  2014-02-21       Impact factor: 4.081

Review 3.  Moving beyond regression techniques in cardiovascular risk prediction: applying machine learning to address analytic challenges.

Authors:  Benjamin A Goldstein; Ann Marie Navar; Rickey E Carter
Journal:  Eur Heart J       Date:  2017-06-14       Impact factor: 29.983

  3 in total
  2 in total

Review 1.  Echocardiographic Advances in Dilated Cardiomyopathy.

Authors:  Andrea Faggiano; Carlo Avallone; Domitilla Gentile; Giovanni Provenzale; Filippo Toriello; Marco Merlo; Gianfranco Sinagra; Stefano Carugo
Journal:  J Clin Med       Date:  2021-11-25       Impact factor: 4.241

2.  Desynchronization Strain Patterns and Contractility in Left Bundle Branch Block through Computer Model Simulation.

Authors:  Kimi Owashi; Marion Taconné; Nicolas Courtial; Antoine Simon; Mireille Garreau; Alfredo Hernandez; Erwan Donal; Virginie Le Rolle; Elena Galli
Journal:  J Cardiovasc Dev Dis       Date:  2022-02-06
  2 in total

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