2022
DOI: 10.2196/42249
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Using Vocal Characteristics To Classify Psychological Distress in Adult Helpline Callers: Retrospective Observational Study

Abstract: Background Elevated psychological distress has demonstrated impacts on individuals’ health. Reliable and efficient ways to detect distress are key to early intervention. Artificial intelligence has the potential to detect states of emotional distress in an accurate, efficient, and timely manner. Objective The aim of this study was to automatically classify short segments of speech obtained from callers to national suicide prevention helpline services ac… Show more

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Cited by 8 publications
(2 citation statements)
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“…It provides objective measurements to improve disease classification, especially for trans-diagnostic symptoms. Currently, sensor technologies show positive results in the acute-setting [ 67 ] and in short-term situations [ 68 ].…”
Section: Asynchronous Technologies In Clinical Carementioning
confidence: 99%
See 1 more Smart Citation
“…It provides objective measurements to improve disease classification, especially for trans-diagnostic symptoms. Currently, sensor technologies show positive results in the acute-setting [ 67 ] and in short-term situations [ 68 ].…”
Section: Asynchronous Technologies In Clinical Carementioning
confidence: 99%
“…This retrospective observational study took short segments of speech from callers to the Australian National Suicide Prevention Helpline and was able to classify groups of speech according to high vs. low psychological distress with high accuracy associating vocal characteristics pertaining to loudness and roughness with higher psychological distress. This modality should therefore be further researched in different ethnic groups who may more commonly present with softer/masked vocal characteristics when in psychological distress [ 67 ]. Furthermore, this niche in AI interpretation may be of interest to explore for minority groups with limited English proficiency [ 71 ].…”
Section: Asynchronous Technologies In Clinical Carementioning
confidence: 99%