DocumentCode :
3107952
Title :
Latent Variable Dimensionality Reduction Using a Kullback-Leibler Criterion and Its Application to Predict Antidepressant Treatment Response
Author :
Khodayari-Rostamabad, Ahmad ; Reilly, J.P. ; Hasey, Gary M.
Author_Institution :
Dept. of Electr. & Comput. Eng., McMaster Univ., Hamilton, ON, Canada
fYear :
2013
fDate :
22-24 June 2013
Firstpage :
148
Lastpage :
151
Abstract :
In this paper, we propose a method for dimensionality reduction of high-dimensional input data in a binary classification problem. The method is based on selecting a few latent variables that maximize the Kullback-Leibler (KL) distance between the two class distributions, under the assumption that these distributions are multivariate Gaussian. Numerical performance is demonstrated by solving the challenging problem of classifying patients with major depressive disorder (MDD) into responders vs. non-responders to an anti-depressant treatment using pre-treatment resting electroencephalography (EEG) data. The extracted feature set measures consistent connectivity and includes the magnitude coherence features among all electrode pairs in a 3Hz to 30Hz bandwidth with 1Hz resolution. An overall 86% prediction performance indicates the effectiveness of the KLDR method in this application. This performance level was found to exceed that of other dimensionality reduction methods, namely the unsupervised principal component (PCA) and the supervised Fisher discriminant analysis (FDA) methods.
Keywords :
Gaussian distribution; data reduction; electroencephalography; feature extraction; medical signal processing; patient treatment; principal component analysis; signal classification; unsupervised learning; FDA; KLDR method; Kullback-Leibler criterion; Kullback-Leibler distance maximization; PCA; antidepressant treatment response prediction; bandwidth 1 Hz; bandwidth 3 Hz to 30 Hz; binary classification problem; electrode pairs; electroencephalography data; feature set extraction; feature set measurement; high-dimensional input data dimensionality reduction method; latent variable dimensionality reduction; machine learning applications; magnitude coherence features; major depressive disorder; multivariate Gaussian distribution; patient classification; supervised Fisher discriminant analysis method; unsupervised principal component method; Covariance matrices; Eigenvalues and eigenfunctions; Electroencephalography; Feature extraction; Principal component analysis; Training; Vectors; EEG; Kullback Leibler distance; dimensionality reduction; personalized psychiatry; prediction of response;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pattern Recognition in Neuroimaging (PRNI), 2013 International Workshop on
Conference_Location :
Philadelphia, PA
Type :
conf
DOI :
10.1109/PRNI.2013.46
Filename :
6603578
Link To Document :
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