From Motion to Meaning: Biomechanics-Informed Neural Network for Explainable Cardiovascular Disease Identification
Journal:
arXiv
Published Date:
Jul 8, 2025
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 the right
ventricular cavity, and 0.905 for the myocardium. Subsequently, we estimate the
local strains within the moving heart and extract a detailed set of features
used for cardiovascular disease classification. We evaluated five
classification algorithms, Logistic Regression, Multi-Layer Perceptron, Support
Vector Classifier, Random Forest, and Nearest Neighbour, and identified the
most relevant features using a feature selection algorithm. The best performing
classifier obtained a classification accuracy of 98% in the training set and
100% in the test set of the ACDC dataset. By integrating explainable artificial
intelligence, this method empowers clinicians with a transparent understanding
of the model's predictions based on cardiac mechanics, while also significantly
improving the accuracy and reliability of cardiac disease diagnosis, paving the
way for more personalized and effective patient care.