From Motion to Meaning: Biomechanics-Informed Neural Network for Explainable Cardiovascular Disease Identification
Comte Valentin, Gemma Piella, Mario Ceresa, Miguel A. Gonzalez Ballester

TL;DR
This paper presents a biomechanics-informed neural network that enhances cardiac image registration and disease classification, providing explainability and high accuracy in diagnosing cardiovascular diseases from cardiac MRI data.
Contribution
It introduces a physics-informed deep learning approach combining image registration with biomechanical modeling for explainable cardiac disease diagnosis.
Findings
Achieved Dice scores above 0.9 for cardiac structures.
Classified cardiovascular diseases with 98-100% accuracy.
Provided biomechanical insights to support clinical decision-making.
Abstract
Cardiac diseases are among the leading causes of morbidity and mortality worldwide, which requires accurate and timely diagnostic strategies. In this study, we introduce an innovative approach that combines deep learning image registration with physics-informed regularization to predict the biomechanical properties of moving cardiac tissues and extract features for disease classification. We utilize the energy strain formulation of Neo-Hookean material to model cardiac tissue deformations, optimizing the deformation field while ensuring its physical and biomechanical coherence. This explainable approach not only improves image registration accuracy, but also provides insights into the underlying biomechanical processes of the cardiac tissues. Evaluation on the Automated Cardiac Diagnosis Challenge (ACDC) dataset achieved Dice scores of 0.945 for the left ventricular cavity, 0.908 for…
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Taxonomy
TopicsElasticity and Material Modeling · Cardiovascular Function and Risk Factors · Congenital heart defects research
MethodsLogistic Regression · Sparse Evolutionary Training · Feature Selection
