Objectively Quantifying Pediatric Psychiatric Severity Using Artificial Intelligence, Voice Recognition Technology, and Universal Emotions: Pilot Study for Artificial Intelligence-Enabled Innovation to Address Youth Mental Health Crisis

被引:1
|
作者
Caulley, Desmond
Alemu, Yared [1 ,2 ,5 ,6 ]
Burson, Sedara [1 ]
Bautista, Elizabeth Cardenas [1 ,2 ]
Tadesse, Girmaw Abebe [3 ]
Kottmyer, Christopher
Aeschbach, Laurent
Cheungvivatpant, Bryan
Sezgin, Emre [4 ]
机构
[1] Georgia Inst Technol, Sch Elect & Comp Engn, Atlanta, GA USA
[2] TQIntelligence Inc, Atlanta, GA USA
[3] Morehouse Sch Med, Dept Psychiat & Behav Sci, Computat Psych Program, Atlanta, GA USA
[4] Microsoft AI Good Res Lab, Nairobi, Kenya
[5] Nationwide Childrens Hosp, Abigail Wexner Res Inst, Columbus, OH USA
[6] TQIntelligence Inc, 75 Fifth St NW Suite 2407, Atlanta, GA 30308 USA
来源
JMIR RESEARCH PROTOCOLS | 2023年 / 12卷
基金
美国国家科学基金会;
关键词
pediatric; trauma; voice AI; machine learning; mental health; predictive modeling; artificial intelligence; social determinants of health; speech-recognition; adverse childhood experiences; trauma and emotional distress; voice marker; speech biomarker; pediatrics; at-risk youth;
D O I
10.2196/51912
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Providing Psychotherapy, particularly for youth, is a pressing challenge in the health care system. Traditional methods are resource-intensive, and there is a need for objective benchmarks to guide therapeutic interventions. Automated emotion detection from speech, using artificial intelligence, presents an emerging approach to address these challenges. Speech can carry vital information about emotional states, which can be used to improve mental health care services, especially when the person is suffering. Objective: This study aims to develop and evaluate automated methods for detecting the intensity of emotions (anger, fear, sadness, and happiness) in audio recordings of patients' speech. We also demonstrate the viability of deploying the models. Our model was validated in a previous publication by Alemu et al with limited voice samples. This follow-up study used significantly more voice samples to validate the previous model.Methods: We used audio recordings of patients, specifically children with high adverse childhood experience (ACE) scores; the average ACE score was 5 or higher, at the highest risk for chronic disease and social or emotional problems; only 1 in 6 have a score of 4 or above. The patients' structured voice sample was collected by reading a fixed script. In total, 4 highly trained therapists classified audio segments based on a scoring process of 4 emotions and their intensity levels for each of the 4 different emotions. We experimented with various preprocessing methods, including denoising, voice-activity detection, and diarization. Additionally, we explored various model architectures, including convolutional neural networks (CNNs) and transformers. We trained emotion-specific transformer-based models and a generalized CNN-based model to predict emotion intensities.Results: The emotion-specific transformer-based model achieved a test-set precision and recall of 86% and 79%, respectively, for binary emotional intensity classification (high or low). In contrast, the CNN-based model, generalized to predict the intensity of 4 different emotions, achieved test-set precision and recall of 83% for each. Conclusions: Automated emotion detection from patients' speech using artificial intelligence models is found to be feasible, leading to a high level of accuracy. The transformer-based model exhibited better performance in emotion-specific detection, while the CNN-based model showed promise in generalized emotion detection. These models can serve as valuable decision-support tools for pediatricians and mental health providers to triage youth to appropriate levels of mental health care services.International Registered Report Identifier (IRRID): RR1-10.2196/51912
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页数:11
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