Self-supervised learning-based general laboratory progress pretrained model for cardiovascular event detection
Li-Chin Chen, Kuo-Hsuan Hung, Yi-Ju Tseng, Hsin-Yao Wang, Tse-Min Lu,, Wei-Chieh Huang, Yu Tsao

TL;DR
This study introduces a self-supervised learning-based generalized laboratory progress model for cardiovascular data, significantly improving event detection accuracy by transferring learned progression patterns across patient groups.
Contribution
The paper presents a novel two-stage training approach for a generalized laboratory progress model that enhances cardiovascular event detection through transfer learning.
Findings
Accuracy improved from 0.63 to 0.90 after transfer learning.
Substantial performance improvements over prior methods (p < 0.01).
Demonstrated effective transfer of disease progression knowledge.
Abstract
The inherent nature of patient data poses several challenges. Prevalent cases amass substantial longitudinal data owing to their patient volume and consistent follow-ups, however, longitudinal laboratory data are renowned for their irregularity, temporality, absenteeism, and sparsity; In contrast, recruitment for rare or specific cases is often constrained due to their limited patient size and episodic observations. This study employed self-supervised learning (SSL) to pretrain a generalized laboratory progress (GLP) model that captures the overall progression of six common laboratory markers in prevalent cardiovascular cases, with the intention of transferring this knowledge to aid in the detection of specific cardiovascular event. GLP implemented a two-stage training approach, leveraging the information embedded within interpolated data and amplify the performance of SSL. After GLP…
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Taxonomy
TopicsECG Monitoring and Analysis · Machine Learning in Healthcare · Artificial Intelligence in Healthcare
