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Detect depression from communication: how computer vision, signal processing, and sentiment analysis join forces

机译:从通信检测抑郁症:电脑远景、信号处理和情感分析加入军队

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Background: Depression is a common illness worldwide. Traditional procedures have generated controversy and criticism, such as accuracy and agreement on consistency of depression diagnosis and assessment among clinicians. More objective biomarkers are needed for better treatment evaluation and monitoring. Hypothesis: Depression will leave recognizable markers in a patient's acoustic, linguistic, and facial patterns, all of which have demonstrated increasing promise for more objectively evaluating and predicting a patient's mental state. Methods: We applied a multi-modality fusion model to combine the audio, video, and text modalities to identify the biomarkers that are predictive of depression with consideration of gender differences. Results: We identified promising biomarkers from a successive search on feature extraction analysis for each modality. We found that gender disparity in vocal and facial expressions plays an important role in detecting depression. Conclusion: Audio, video and text biomarkers provided the possibility of detecting depression in addition to traditional clinical assessments. Biomarkers detected for gender-dependent analysis were not identical, indicating that gender can affect the depression manifestations.
机译:背景:抑郁症是一种常见的疾病在全球范围内。争议和批评,如准确性和抑郁症的诊断一致性协议临床医生和评估。生物标记物需要更好的待遇评估和监控。将病人的可辨认的标记声音、语言和面部模式,所有的已证明增加承诺更客观的评价和预测病人的精神状态。多模融合模型结合音频,视频和文本模式识别生物标记物预测抑郁的考虑性别差异。从连续发现有前途的生物标志物为每个搜索特征提取分析形态。和面部表情中发挥着重要作用检测抑郁症。和文本生物标志物的可能性除了传统的检测抑郁症临床评估。性别分析并不相同,表明性别会影响抑郁manifestations。

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