Sparse Multi-Output Gaussian Processes for Medical Time Series Prediction
Li-Fang Cheng, Gregory Darnell, Bianca Dumitrascu, Corey Chivers,, Michael E Draugelis, Kai Li, Barbara E Engelhardt

TL;DR
This paper introduces MedGP, a Bayesian nonparametric Gaussian process model designed for real-time prediction of patient health status using large-scale electronic health records, improving accuracy and interpretability in medical monitoring.
Contribution
The work develops a structured sparse Gaussian process kernel for efficient, high-dimensional, multi-covariate time series modeling in healthcare, enabling real-time, interpretable predictions without time series alignment.
Findings
MedGP outperforms baseline methods in online prediction accuracy.
The model quantifies confidence regions in predictions.
It infers interpretable relationships among clinical covariates.
Abstract
In the scenario of real-time monitoring of hospital patients, high-quality inference of patients' health status using all information available from clinical covariates and lab tests is essential to enable successful medical interventions and improve patient outcomes. Developing a computational framework that can learn from observational large-scale electronic health records (EHRs) and make accurate real-time predictions is a critical step. In this work, we develop and explore a Bayesian nonparametric model based on Gaussian process (GP) regression for hospital patient monitoring. We propose MedGP, a statistical framework that incorporates 24 clinical and lab covariates and supports a rich reference data set from which relationships between observed covariates may be inferred and exploited for high-quality inference of patient state over time. To do this, we develop a highly structured…
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Taxonomy
TopicsMachine Learning in Healthcare · Gaussian Processes and Bayesian Inference · Heart Rate Variability and Autonomic Control
