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Acoustic and language analysis of speech for suicide ideation among US veterans

Authors :
Mary Ann Dutton
Samir Gupta
Anas Belouali
Vaibhav Sourirajan
Nathaniel Allen
Jiawei Yu
Adil Alaoui
Matthew J. Reinhard
Publication Year :
2020
Publisher :
Cold Spring Harbor Laboratory, 2020.

Abstract

U.S. veterans are 1.5 times more likely to die by suicide than Americans who never served in the military. Considering such high rates, there is an urgent need to develop innovative approaches for objective and clinically applicable assessments to detect individuals at high risk. We hypothesize that speech in suicidal veterans has a range of distinctive acoustic and linguistic features. The purpose of this work is to build an automated machine learning and natural language processing tool to screen for suicidality. Veterans made 588 narrative audio recordings via a mobile app in a real-life setting. In addition, veterans completed self-report psychiatric scales and questionnaires. Recordings were analyzed to extract voice characteristics including prosodic, phonation, and glottal. The audios were also transcribed to extract textual features for linguistic analysis. We evaluated the acoustic and linguistic features using both statistical significance and ensemble feature selection. We also examined the performance of different machine learning algorithms on multiple combinations of features to classify suicidal and non-suicidal audios. Random Forest classifier correctly identified suicidal ideation in veterans based on the combined set of acoustic and linguistic features of speech with 86% sensitivity, 70% specificity, and an area under the receiver operating characteristic curve (AUC) of 80%. Speech analysis of audios collected from veterans in everyday life settings using smartphones is a promising approach for suicidal ideation detection. A machine learning classifier may eventually help clinicians identify and monitor high-risk veterans.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....9f99b6af76c0187e630c90c824617cae
Full Text :
https://doi.org/10.1101/2020.07.08.20147504