Higher Order Dynamic Mode Decomposition: from Fluid Dynamics to Heart Disease Analysis
Nourelhouda Groun, Maria Villalba-Orero, Enrique Lara-Pezzi, Eusebio, Valero, Jesus Garicano-Mena, and Soledad Le Clainche

TL;DR
This study applies Higher Order Dynamic Mode Decomposition (HODMD), a fluid dynamics technique, to echocardiography images for pattern recognition and disease classification, demonstrating its robustness in identifying cardiac and respiratory features.
Contribution
First application of HODMD to echocardiography data for cardiac disease analysis, showcasing its effectiveness in pattern recognition and noise reduction.
Findings
HODMD captures heart and respiratory frequencies from echocardiography videos.
The method distinguishes between healthy and diseased cardiac conditions.
HODMD is robust with limited snapshot data.
Abstract
In this work, we study in detail the performance of Higher Order Dynamic Mode Decomposition (HODMD) technique when applied to echocardiography images. HODMD is a data-driven method generally used in fluid dynamics and in the analysis of complex non-linear dynamical systems modeling several complex industrial applications. In this paper we apply HODMD, for the first time to the authors knowledge, for patterns recognition in echocardiography, specifically, echocardiography data taken from several mice, either in healthy conditions or afflicted by different cardiac diseases. We exploit the HODMD advantageous properties in dynamics identification and noise cleaning to identify the relevant frequencies and coherent patterns for each one of the diseases. The echocardiography datasets consist of video loops taken with respect to a long axis view (LAX) and a short axis view (SAX), where each…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Fault Detection and Control Systems · Cardiovascular Function and Risk Factors
