GRU-TV: Time- and velocity-aware GRU for patient representation on
multivariate clinical time-series data
- URL: http://arxiv.org/abs/2205.04892v1
- Date: Wed, 4 May 2022 20:13:59 GMT
- Title: GRU-TV: Time- and velocity-aware GRU for patient representation on
multivariate clinical time-series data
- Authors: Ningtao Liu, Ruoxi Gao, Jing Yuan, Calire Park, Shuwei Xing, and
Shuiping Gou
- Abstract summary: We propose an improved gated recurrent unit (GRU), namely time- and velocity-aware GRU (GRU-TV)
In proposed GRU-TV, the neural ordinary differential equations (ODEs) and velocity perception mechanism are used to perceive the time interval between records in the time-series data and changing rate of the patient's physiological status.
- Score: 2.2340450916439543
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Electronic health records (EHRs) provide a rich repository to track a
patient's health status. EHRs seek to fully document the patient's
physiological status, and include data that is is high dimensional,
heterogeneous, and multimodal. The significant differences in the sampling
frequency of clinical variables can result in high missing rates and uneven
time intervals between adjacent records in the multivariate clinical
time-series data extracted from EHRs. Current studies using clinical
time-series data for patient characterization view the patient's physiological
status as a discrete process described by sporadically collected values, while
the dynamics in patient's physiological status are time-continuous. In
addition, recurrent neural networks (RNNs) models widely used for patient
representation learning lack the perception of time intervals and velocity,
which limits the ability of the model to represent the physiological status of
the patient.
In this paper, we propose an improved gated recurrent unit (GRU), namely
time- and velocity-aware GRU (GRU-TV), for patient representation learning of
clinical multivariate time-series data in a time-continuous manner. In proposed
GRU-TV, the neural ordinary differential equations (ODEs) and velocity
perception mechanism are used to perceive the time interval between records in
the time-series data and changing rate of the patient's physiological status,
respectively. Experimental results on two real-world clinical EHR
datasets(PhysioNet2012, MIMIC-III) show that GRU-TV achieve state-of-the-art
performance in computer aided diagnosis (CAD) tasks, and is more advantageous
in processing sampled data.
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