Predicting Individual Physiologically Acceptable States for Discharge from a Pediatric Intensive Care Unit

12/18/2017
by   Cameron Carlin, et al.
0

Objective: Predict patient-specific vitals deemed medically acceptable for discharge from a pediatric intensive care unit (ICU). Design: The means of each patient's hr, sbp and dbp measurements between their medical and physical discharge from the ICU were computed as a proxy for their physiologically acceptable state space (PASS) for successful ICU discharge. These individual PASS values were compared via root mean squared error (rMSE) to population age-normal vitals, a polynomial regression through the PASS values of a Pediatric ICU (PICU) population and predictions from two recurrent neural network models designed to predict personalized PASS within the first twelve hours following ICU admission. Setting: PICU at Children's Hospital Los Angeles (CHLA). Patients: 6,899 PICU episodes (5,464 patients) collected between 2009 and 2016. Interventions: None. Measurements: Each episode data contained 375 variables representing vitals, labs, interventions, and drugs. They also included a time indicator for PICU medical discharge and physical discharge. Main Results: The rMSEs between individual PASS values and population age-normals (hr: 25.9 bpm, sbp: 13.4 mmHg, dbp: 13.0 mmHg) were larger than the rMSEs corresponding to the polynomial regression (hr: 19.1 bpm, sbp: 12.3 mmHg, dbp: 10.8 mmHg). The rMSEs from the best performing RNN model were the lowest (hr: 16.4 bpm; sbp: 9.9 mmHg, dbp: 9.0 mmHg). Conclusion: PICU patients are a unique subset of the general population, and general age-normal vitals may not be suitable as target values indicating physiologic stability at discharge. Age-normal vitals that were specifically derived from the medical-to-physical discharge window of ICU patients may be more appropriate targets for 'acceptable' physiologic state for critical care patients. Going beyond simple age bins, an RNN model can provide more personalized target values.

READ FULL TEXT
research
01/23/2017

Dynamic Mortality Risk Predictions in Pediatric Critical Care Using Recurrent Neural Networks

Viewing the trajectory of a patient as a dynamical system, a recurrent n...
research
01/15/2019

Predicting Individual Responses to Vasoactive Medications in Children with Septic Shock

Objective: Predict individual septic children's personalized physiologic...
research
03/23/2017

The Dependence of Machine Learning on Electronic Medical Record Quality

There is growing interest in applying machine learning methods to Electr...
research
11/06/2020

Predicting special care during the COVID-19 pandemic: A machine learning approach

More than ever COVID-19 is putting pressure on health systems all around...
research
03/10/2023

Classifying the evolution of COVID-19 severity on patients with combined dynamic Bayesian networks and neural networks

When we face patients arriving to a hospital suffering from the effects ...
research
03/09/2023

Computable Phenotypes to Characterize Changing Patient Brain Dysfunction in the Intensive Care Unit

In the United States, more than 5 million patients are admitted annually...

Please sign up or login with your details

Forgot password? Click here to reset