TY - GEN
T1 - Non-Invasive Suicide Risk Prediction Through Speech Analysis
AU - Amiriparian, Shahin
AU - Gerczuk, Maurice
AU - Lutz, Justina
AU - Strube, Wolfgang
AU - Papazova, Irina
AU - Hasan, Alkomiet
AU - Kathan, Alexander
AU - Schuller, Björn W.
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - The delayed access to specialized psychiatric assessments and care for patients at risk of suicidal tendencies in emergency departments creates a notable gap in timely intervention, hindering the provision of adequate mental health support during critical situations. To address this, we present a non-invasive, speech-based approach for automatic suicide risk assessment. For our study, we collected a novel speech recording dataset from 20 patients. We extract three sets of features, including wav2vec, interpretable speech and acoustic features, and deep learning-based spectral representations. We proceed by conducting a binary classification to assess suicide risk in a leave-one-subject-out fashion. Our most effective speech model achieves a balanced accuracy of 66.2%. Moreover, we show that integrating our speech model with a series of patients' metadata, such as the history of suicide attempts or access to firearms, improves the overall result. The metadata integration yields a balanced accuracy of 94.4%, marking an absolute improvement of 28.2%, demonstrating the efficacy of our proposed approaches for automatic suicide risk assessment in emergency medicine.
AB - The delayed access to specialized psychiatric assessments and care for patients at risk of suicidal tendencies in emergency departments creates a notable gap in timely intervention, hindering the provision of adequate mental health support during critical situations. To address this, we present a non-invasive, speech-based approach for automatic suicide risk assessment. For our study, we collected a novel speech recording dataset from 20 patients. We extract three sets of features, including wav2vec, interpretable speech and acoustic features, and deep learning-based spectral representations. We proceed by conducting a binary classification to assess suicide risk in a leave-one-subject-out fashion. Our most effective speech model achieves a balanced accuracy of 66.2%. Moreover, we show that integrating our speech model with a series of patients' metadata, such as the history of suicide attempts or access to firearms, improves the overall result. The metadata integration yields a balanced accuracy of 94.4%, marking an absolute improvement of 28.2%, demonstrating the efficacy of our proposed approaches for automatic suicide risk assessment in emergency medicine.
KW - emergency medicine
KW - foundation models
KW - metadata fusion
KW - speech processing
KW - suicide risk assessment
UR - http://www.scopus.com/inward/record.url?scp=85216205463&partnerID=8YFLogxK
U2 - 10.1109/EHB64556.2024.10805581
DO - 10.1109/EHB64556.2024.10805581
M3 - Conference contribution
AN - SCOPUS:85216205463
T3 - 2024 12th E-Health and Bioengineering Conference, EHB 2024
BT - 2024 12th E-Health and Bioengineering Conference, EHB 2024
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 12th E-Health and Bioengineering Conference, EHB 2024
Y2 - 14 November 2024 through 15 November 2024
ER -