Abstract

BackgroundScreening for suicidal ideation in high-risk groups such as U.S. veterans is crucial for early detection and suicide prevention. Currently, screening is based on clinical interviews or self-report measures. Both approaches rely on subjects to disclose their suicidal thoughts. Innovative approaches are necessary to develop objective and clinically applicable assessments. Speech has been investigated as an objective marker to understand various mental states including suicidal ideation. In this work, we developed a machine learning and natural language processing classifier based on speech markers to screen for suicidal ideation in US veterans.MethodologyVeterans submitted 588 narrative audio recordings via a mobile app in a real-life setting. In addition, participants 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.ResultsA combined set of 15 acoustic and linguistic features of speech were identified by the ensemble feature selection. Random Forest classifier, using the selected set of features, correctly identified suicidal ideation in veterans with 86% sensitivity, 70% specificity, and an area under the receiver operating characteristic curve (AUC) of 80%.ConclusionsSpeech analysis of audios collected from veterans in everyday life settings using smartphones offers a promising approach for suicidal ideation detection. A machine learning classifier may eventually help clinicians identify and monitor high-risk veterans.

Highlights

  • Suicide prevention remains a challenging clinical issue, especially among Veterans

  • Speech analysis of audios collected from veterans in everyday life settings using smartphones offers a promising approach for suicidal ideation detection

  • We showed that speech analysis is a promising approach for detecting suicidal ideation in veterans

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Summary

Introduction

Suicide prevention remains a challenging clinical issue, especially among Veterans. According to the most recent data from the United States Department of Veterans Affairs (VA), 17 veterans on average die from suicide per day and rates continue to rise [1].After controlling for factors like age and gender, Veterans faced a 1.5 times greater riskBelouali et al BioData Mining (2021) 14:11 for suicide compared to adult civilians. From 2005 to 2017, the suicide rate in the US civilian population increased 22.4%, while rates among Veterans increased more than 49% [1] To help address such alarming rates, there is an urgent need to develop objective and clinically applicable assessments for detecting high-risk individuals. Screening high-risk groups such as veterans for suicidal thoughts is crucial for early detection and prevention [4]. Screening for suicidal ideation in high-risk groups such as U.S veterans is crucial for early detection and suicide prevention. Screening is based on clinical interviews or self-report measures Both approaches rely on subjects to disclose their suicidal thoughts. We developed a machine learning and natural language processing classifier based on speech markers to screen for suicidal ideation in US veterans

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