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Abstract #3787

A CMR-based multi-modality fusion machine learning approach for predicting left ventricular reverse remodeling in dilated cardiomyopathy

AO Kan1, Jiankun Dai2, Jie Shi2, and Lianggeng Gong1
1The Second Affiliated Hospital of Nanchang University, Nanchang, China, 2GE Healthcare, Beijing, China

Synopsis

Keywords: Diagnosis/Prediction, Machine Learning/Artificial Intelligence, Machine learning; Cardiac magnetic resonance; Multi-modality; Dilated cardiomyopathy; Left ventricular reverse remodeling

Motivation: Few multi-modality machine learning (ML) classifiers combine cardiac magnetic resonance (CMR) imaging with clinical data for predicting LVRR in DCM patients, limiting improvements in patient outcomes and management.

Goal(s): To develop an ML classifier using multi-modality data, including CMR, to predict LVRR in initial DCM patients.

Approach: 129 DCM patients with complete clinical and CMR data were collected. Feature selection identified relevant variables, and an LR-based nomogram was constructed and evaluated.

Results: The nomogram achieved an AUC of 0.857 in the test cohort, incorporating late gadolinium enhancement pattern, global longitudinal peak strain, aldosterone antagonist, and severe mitral regurgitation.

Impact: The CMR-based multi-modality nomogram has a superior ability in the prediction of LVRR in DCM patients.

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