Towards Multimodal Dialog-Based Speech & Facial Biomarkers of Schizophrenia

Vanessa Richter, Michael Neumann, Hardik Kothare, Oliver Roesler, J. Liscombe, David Suendermann-Oeft, Sebastian Prokop, Anzalee Khan, C. Yavorsky, J. Lindenmayer, Vikram Ramanarayanan
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引用次数: 2

Abstract

We present a scalable multimodal dialog platform for the remote digital assessment and monitoring of schizophrenia. Patients diagnosed with schizophrenia and healthy controls interacted with Tina, a virtual conversational agent, as she guided them through a brief set of structured tasks, while their speech and facial video was streamed in real-time to a back-end analytics module. Patients were concurrently assessed by trained raters on validated clinical scales. We find that multiple speech and facial biomarkers extracted from these data streams show significant differences (as measured by effect sizes) between patients and controls, and furthermore, machine learning models built on such features can classify patients and controls with high sensitivity and specificity. We further investigate, using correlation analysis between the extracted metrics and standardized clinical scales for the assessment of schizophrenia symptoms, how such speech and facial biomarkers can provide further insight into schizophrenia symptomatology.
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基于多模态对话的精神分裂症语音和面部生物标志物研究
我们提出了一个可扩展的多模式对话平台,用于精神分裂症的远程数字评估和监测。被诊断为精神分裂症的患者和健康对照组与虚拟对话代理蒂娜进行互动,蒂娜指导他们完成一组简短的结构化任务,而他们的语音和面部视频则实时传输到后端分析模块。同时由训练有素的评分员根据有效的临床量表对患者进行评估。我们发现从这些数据流中提取的多个语音和面部生物标记物在患者和对照组之间显示出显着差异(通过效应大小测量),此外,基于这些特征构建的机器学习模型可以以高灵敏度和特异性对患者和对照组进行分类。我们进一步研究,使用提取的指标和用于评估精神分裂症症状的标准化临床量表之间的相关性分析,这些言语和面部生物标志物如何能够进一步了解精神分裂症症状学。
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