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Early prediction of major depression in adolescents using glottal wave characteristics and Teager Energy parameters

机译:利用光泽波特性和茶叶能量参数早期预测青少年的主要凹陷

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Previous studies of an automated detection of Major Depression in adolescents based on acoustic speech analysis identified the glottal and the Teager Energy features as the strongest correlates of depression. This study investigates the effectiveness of these features in an early prediction of Major Depression in adolescents using a fully automated speech analysis and classification system. The prediction was achieved through a binary classification of speech recordings from 15 adolescents who developed Major Depression within two years after these recordings were made and 15 adolescents who did not developed Major Depression within the same time period. The results provided a proof of concept that an acoustic speech analysis can be used in early prediction of depression. The glottal features made the strongest predictors of depression with 69% accuracy, 62% specificity and 76% sensitivity. The TEO feature derived from glottal wave also provided good results, specifically when calculated at the frequency range of 1.3 kHz to 5.5 kHz.
机译:以前基于声学语音分析的青少年重大凹陷自动检测的先前研究确定了抑郁症最强相关性的印刷和茶叶能量特征。本研究调查了使用全自动言语分析和分类系统在青少年主要凹陷早期预测中的有效性。通过从15名青少年的言语录音的语音录制的二进制分类来实现预测,在这些录音后两年内开发了主要抑郁症,并在同一时间段内没有开发了大萧条的15名青少年。结果提供了一种概念证据,即声学语音分析可以在抑郁症的早期预测中使用。最小的特征使抑郁症预测值最强,精度为69%,特异性62%和76%的灵敏度。来自最小值波的TEO特征也提供了良好的效果,特别是当在1.3 kHz至5.5 kHz的频率范围内计算时。

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