SPAILGMar 1, 2024

Multi-modal Heart Failure Risk Estimation based on Short ECG and Sampled Long-Term HRV

arXiv:2403.15408v120 citationsh-index: 28Inf Fusion
Originality Incremental advance
AI Analysis

This work addresses the need for accessible and cost-effective heart failure risk assessment for patients, though it appears incremental as it builds on existing survival models and ECG technology.

The paper tackled the problem of early detection of heart failure by proposing multi-modal approaches that combine 30-second ECG recordings and approximate long-term HRV data to estimate hospitalization risk, achieving a concordance index of 0.8537 and demonstrating transferability to Apple Watch data.

Cardiovascular diseases, including Heart Failure (HF), remain a leading global cause of mortality, often evading early detection. In this context, accessible and effective risk assessment is indispensable. Traditional approaches rely on resource-intensive diagnostic tests, typically administered after the onset of symptoms. The widespread availability of electrocardiogram (ECG) technology and the power of Machine Learning are emerging as viable alternatives within smart healthcare. In this paper, we propose several multi-modal approaches that combine 30-second ECG recordings and approximate long-term Heart Rate Variability (HRV) data to estimate the risk of HF hospitalization. We introduce two survival models: an XGBoost model with Accelerated Failure Time (AFT) incorporating comprehensive ECG features and a ResNet model that learns from the raw ECG. We extend these with our novel long-term HRVs extracted from the combination of ultra-short-term beat-to-beat measurements taken over the day. To capture their temporal dynamics, we propose a survival model comprising ResNet and Transformer architectures (TFM-ResNet). Our experiments demonstrate high model performance for HF risk assessment with a concordance index of 0.8537 compared to 14 survival models and competitive discrimination power on various external ECG datasets. After transferability tests with Apple Watch data, our approach implemented in the myHeartScore App offers cost-effective and highly accessible HF risk assessment, contributing to its prevention and management.

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