Title :
Gaussian Process-Based Feature Selection for Wavelet Parameters: Predicting Acute Hypotensive Episodes from Physiological Signals
Author :
Dernoncourt, Franck ; Veeramachaneni, Kalyan ; O´Reilly, Una-May
Author_Institution :
MIT CSAIL ALFA, Cambridge, MA, USA
Abstract :
Physiological signals such as blood pressure might contain key information to predict a medical condition, but are challenging to mine. Wavelets possess the ability to unveil location-specific features within signals but there exists no principled method to choose the optimal scales and time shifts. We present a scalable, robust system to find the best wavelet parameters using Gaussian processes (GPs). We demonstrate our system by assessing wavelets as predictors for the occurrence of acute hypotensive episodes (AHEs) using over 1 billion blood pressure beats. We obtain an AUROC of 0.79 with wavelet features only, and the false positive rate when the true positive rate is fixed at 0.90 is reduced by 14% when the wavelet feature is used in conjunction with other statistical features. Furthermore, the use of GPs reduces the selection effort by a factor of 3 compared with a naive grid search.
Keywords :
Gaussian processes; blood pressure measurement; diseases; feature selection; medical signal processing; AUROC; Gaussian process-based feature selection; acute hypotensive episode prediction; blood pressure beat; grid search; physiological signal; statistical feature; time shift; wavelet feature; wavelet parameter; Blood pressure; Continuous wavelet transforms; Gaussian processes; Kernel; Lead; Physiology; Standards; Gaussian process; Wavelets; acute hypotensive episodes; blood pressure; distributed system; feature selection; signal processing;
Conference_Titel :
Computer-Based Medical Systems (CBMS), 2015 IEEE 28th International Symposium on
Conference_Location :
Sao Carlos
DOI :
10.1109/CBMS.2015.88