DocumentCode
73703
Title
Multichannel Weighted Speech Classification System for Prediction of Major Depression in Adolescents
Author
Ooi, K.E.B. ; Lech, Margaret ; Allen, Nicholas B.
Author_Institution
Sch. of Electr. & Comput. Eng., R. Melbourne Inst. of Technol., Melbourne, VIC, Australia
Volume
60
Issue
2
fYear
2013
fDate
Feb. 2013
Firstpage
497
Lastpage
506
Abstract
Early identification of adolescents at high imminent risk for clinical depression could significantly reduce the burden of the disease. This study demonstrated that acoustic speech analysis and classification can be used to determine early signs of major depression in adolescents, up to two years before they meet clinical diagnostic criteria for the full-blown disorder. Individual contributions of four different types of acoustic parameters [prosodic, glottal, Teager´s energy operator (TEO), and spectral] to depression-related changes of speech characteristics were examined. A new computational methodology for the early prediction of depression in adolescents was developed and tested. The novel aspect of this methodology is in the introduction of multichannel classification with a weighted decision procedure. It was observed that single-channel classification was effective in predicting depression with a desirable specificity-to-sensitivity ratio and accuracy higher than chance level only when using glottal or prosodic features. The best prediction performance was achieved with the new multichannel method, which used four features (prosodic, glottal, TEO, and spectral). In the case of the person-based approach with two sets of weights, the new multichannel method provided a high accuracy level of 73% and the sensitivity-to-specificity ratio of 79%/67% for predicting future depression.
Keywords
diagnostic expert systems; medical computing; medical disorders; paediatrics; psychology; signal classification; speech processing; Teager energy operator; acoustic parameters; acoustic speech analysis; acoustic speech classification; adolescent depression; clinical depression; depression related speech changes; glottal parameter; major depression prediction; multichannel classification; multichannel weighted speech classification system; prosodic parameter; specificity-sensitivity ratio; spectral parameter; speech characteristics; weighted decision procedure; Accuracy; Acoustics; Feature extraction; Speech; Speech processing; Speech recognition; Statistics; Clinical depression; decision fusion; optimal weighting; prediction of depression; risk for depression; speech classification; Adolescent; Analysis of Variance; Child; Databases, Factual; Depressive Disorder, Major; Female; Humans; Male; Signal Processing, Computer-Assisted; Speech; Speech Acoustics;
fLanguage
English
Journal_Title
Biomedical Engineering, IEEE Transactions on
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/TBME.2012.2228646
Filename
6359792
Link To Document