An Adversarial Domain Separation Framework for Septic Shock Early
Prediction Across EHR Systems
- URL: http://arxiv.org/abs/2010.13952v1
- Date: Mon, 26 Oct 2020 23:41:33 GMT
- Title: An Adversarial Domain Separation Framework for Septic Shock Early
Prediction Across EHR Systems
- Authors: Farzaneh Khoshnevisan and Min Chi
- Abstract summary: We propose a general domain adaptation (DA) framework that tackles two categories of discrepancies in EHRs collected from different medical systems.
We evaluate our framework for early diagnosis of an extremely challenging condition, septic shock, using two real-world EHRs from distinct medical systems in the U.S.
- Score: 7.058760708627898
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 categories of
discrepancies by maintaining one globally-shared invariant latent
representation across all systems} through an adversarial learning process,
while also allocating a domain-specific model for each system to extract local
latent representations that cannot and should not be unified across systems.
Moreover, our proposed framework is based on variational recurrent neural
network (VRNN) because of its ability to capture complex temporal dependencies
and handling missing values in time-series data. We evaluate our framework for
early diagnosis of an extremely challenging condition, septic shock, using two
real-world EHRs from distinct medical systems in the U.S. The results show that
by separating globally-shared from domain-specific representations, our
framework significantly improves septic shock early prediction performance in
both EHRs and outperforms the current state-of-the-art DA models.
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