Improving Diffusion Models for ECG Imputation with an Augmented Template Prior
Alexander Jenkins, Zehua Chen, Fu Siong Ng, Danilo Mandic

TL;DR
This paper introduces PulseDiff, a novel probabilistic model for ECG imputation that uses personalized templates and confidence scoring to improve accuracy over existing methods, especially for short-interval missing data.
Contribution
PulseDiff uniquely combines personalized pulsative templates, beat-level stochastic shifts, and health-aware confidence scores to enhance ECG imputation with diffusion models.
Findings
PulseDiff outperforms baseline models on the PTBXL dataset.
It improves short-interval missing data imputation.
It is comparable to deterministic models for long-interval data loss.
Abstract
Pulsative signals such as the electrocardiogram (ECG) are extensively collected as part of routine clinical care. However, noisy and poor-quality recordings are a major issue for signals collected using mobile health systems, decreasing the signal quality, leading to missing values, and affecting automated downstream tasks. Recent studies have explored the imputation of missing values in ECG with probabilistic time-series models. Nevertheless, in comparison with the deterministic models, their performance is still limited, as the variations across subjects and heart-beat relationships are not explicitly considered in the training objective. In this work, to improve the imputation and forecasting accuracy for ECG with probabilistic models, we present a template-guided denoising diffusion probabilistic model (DDPM), PulseDiff, which is conditioned on an informative prior for a range of…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Mental Health Research Topics
MethodsDiffusion
