An Adversarial Domain Separation Framework for Septic Shock Early Prediction Across EHR Systems
Farzaneh Khoshnevisan, Min Chi

TL;DR
This paper introduces an adversarial domain separation framework using VRNNs to improve early prediction of septic shock across different EHR systems by addressing heterogeneity and systematic biases.
Contribution
It presents a novel adversarial domain separation approach that maintains shared and system-specific representations, enhancing model robustness across diverse EHR datasets.
Findings
Significantly improves septic shock early prediction accuracy.
Outperforms existing domain adaptation models.
Effective in real-world multi-system EHR data.
Abstract
Modeling patient disease progression using Electronic Health Records (EHRs) is critical to assist clinical decision making. While most of prior work has mainly focused on developing effective disease progression models using EHRs collected from an individual medical system, relatively little work has investigated building robust yet generalizable diagnosis models across different systems. In this work, we propose a general domain adaptation (DA) framework that tackles two categories of discrepancies in EHRs collected from different medical systems: one is caused by heterogeneous patient populations (covariate shift) and the other is caused by variations in data collection procedures (systematic bias). Prior research in DA has mainly focused on addressing covariate shift but not systematic bias. In this work, we propose an adversarial domain separation framework that addresses both…
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