Article

Patient Outcome Prediction with Heart Rate Variability and Vital Signs

Journal of Signal Processing Systems (impact factor: 0.67). 04/2012; 64(2):265-278. DOI:10.1007/s11265-010-0480-y pp.265-278
Source: DBLP

ABSTRACT The ability to predict patient outcomes is important for clinical triage, which is the process of assessing severity and assigning
appropriate priority of treatment for large numbers of patients. In this study, we present an automatic prognosis system for
patient outcome prediction with heart rate variability (HRV) and traditional vital signs. Support vector machine (SVM) and
extreme learning machine (ELM) are employed as predictors, and SVM with linear kernel is reported to perform the best in general.
In the experiments, the combination of HRV measures and vital signs is found to be more closely associated with patient outcome
than either HRV or vital signs. Moreover, two new segment based methods are proposed to improve the predictive accuracy, where
several sets of HRV measures are calculated from non-overlapped segments for each patient and final decision is made through
the majority voting rule. The results reveal that the segment based methods are able to enhance the prediction performance
significantly.

KeywordsPatient outcomes–Mortality–Heart rate variability–ECG–Segment based methods

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Keywords

automatic prognosis system
 
clinical triage
 
ELM
 
heart rate variability
 
HRV measures
 
KeywordsPatient outcomes–Mortality–Heart rate variability–ECG–Segment
 
large numbers
 
linear kernel
 
majority voting rule
 
new segment
 
non-overlapped segments
 
patient outcome
 
patient outcome prediction
 
patient outcomes
 
patients
 
prediction performance
 
predictive accuracy
 
Support vector machine
 
traditional vital signs
 
vital signs
 

Nan Liu