Support vector machine to improve physiologic hot flash measures: Application to the ambulatory setting
Abstract
Most midlife women have hot flashes. The conventional criterion (≥2 μmho rise/30 s) for classifying hot flashes physiologically has shown poor performance. We improved this performance in the laboratory with Support Vector Machines (SVMs), a pattern classification method. We aimed to compare conventional to SVM methods to classify hot flashes in the ambulatory setting. Thirty-one women with hot flashes underwent 24 h of ambulatory sternal skin conductance monitoring. Hot flashes were quantified with conventional (≥2 μmho/30 s) and SVM methods. Conventional methods had low sensitivity (sensitivity=.57, specificity=.98, positive predictive value (PPV)=.91, negative predictive value (NPV)=.90, F1=.60), with performance lower with higher body mass index (BMI). SVMs improved this performance (sensitivity=.87, specificity=.97, PPV=.90, NPV=.96, F1=.88) and reduced BMI variation. SVMs can improve ambulatory physiologic hot flash measures.
BibTeX
@article{Thurston-2010-120789,author = {R. C. Thurston and J. Hernandez and J. M. Del Rio and F. De la Torre},
title = {Support vector machine to improve physiologic hot flash measures: Application to the ambulatory setting},
journal = {Psychophysiology},
year = {2010},
month = {December},
volume = {48},
number = {7},
pages = {1015 - 1021},
}