An Improved Multi-Output Gaussian Process RNN with Real-Time Validation for Early Sepsis Detection
Abstract
Sepsis is a poorly understood and potentially life-threatening complication
that can occur as a result of infection. Early detection and treatment improves
patient outcomes, and as such it poses an important challenge in medicine. In
this work, we develop a flexible classifier that leverages streaming lab
results, vitals, and medications to predict sepsis before it occurs. We model
patient clinical time series with multi-output Gaussian processes, maintaining
uncertainty about the physiological state of a patient while also imputing
missing values. The mean function takes into account the effects of medications
administered on the trajectories of the physiological variables. Latent
function values from the Gaussian process are then fed into a deep recurrent
neural network to classify patient encounters as septic or not, and the overall
model is trained end-to-end using back-propagation. We train and validate our
model on a large dataset of 18 months of heterogeneous inpatient stays from the
Duke University Health System, and develop a new "real-time" validation scheme
for simulating the performance of our model as it will actually be used. Our
proposed method substantially outperforms clinical baselines, and improves on a
previous related model for detecting sepsis. Our model's predictions will be
displayed in a real-time analytics dashboard to be used by a sepsis rapid
response team to help detect and improve treatment of sepsis.
Type
Journal articlePermalink
https://hdl.handle.net/10161/25613Collections
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Show full item recordScholars@Duke
Armando Diego Bedoya
Assistant Professor of Medicine

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