TL;DR
This paper introduces SPSSOT, a semi-supervised transfer learning framework using optimal transport and self-paced ensemble to improve early sepsis detection across hospitals with limited labeled data.
Contribution
The paper proposes a novel transfer learning method combining optimal transport and self-paced ensemble for effective cross-hospital sepsis detection.
Findings
SPSSOT outperforms existing methods by 1-3% in AUC.
Effective utilization of unlabeled data improves detection accuracy.
Method demonstrates robustness across two clinical datasets.
Abstract
Leveraging machine learning techniques for Sepsis early detection and diagnosis has attracted increasing interest in recent years. However, most existing methods require a large amount of labeled training data, which may not be available for a target hospital that deploys a new Sepsis detection system. More seriously, as treated patients are diversified between hospitals, directly applying a model trained on other hospitals may not achieve good performance for the target hospital. To address this issue, we propose a novel semi-supervised transfer learning framework based on optimal transport theory and self-paced ensemble for Sepsis early detection, called SPSSOT, which can efficiently transfer knowledge from the source hospital (with rich labeled data) to the target hospital (with scarce labeled data). Specifically, SPSSOT incorporates a new optimal transport-based semi-supervised…
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