Predicting Depression from Internet Behaviors by Time-Frequency Features

Changye Zhu, Baobin Li, Ang Li, T. Zhu
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引用次数: 14

Abstract

Early detection of depression is important to improve human well-being. This paper proposes a new method to detect depression through time-frequency analysis of Internet behaviors. We recruited 728 postgraduate students and obtained their scores on a depression questionnaire (Zung Self-rating Depression Scale, SDS) and digital records of Internet behaviors. By time-frequency analysis, we built classification models for differentiating higher SDS group from lower group and prediction models for identifying mental status of depressed group more precisely. Experimental results show classification and prediction models work well, and time-frequency features are effective in capturing the changes of mental health status. Results of this paper might be useful to improve the performance of public mental health services.
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网络行为的时频特征预测抑郁
早期发现抑郁症对改善人类福祉非常重要。本文提出了一种通过网络行为的时频分析来检测抑郁症的新方法。我们招募了728名研究生,获得了他们的抑郁问卷(Zung抑郁自评量表,SDS)和网络行为的数字记录。通过时频分析,建立了区分高SDS组和低SDS组的分类模型,以及更准确识别抑郁组心理状态的预测模型。实验结果表明,分类和预测模型效果良好,时频特征能有效捕捉心理健康状态的变化。本文的研究结果对提高公共精神卫生服务的绩效有一定的参考价值。
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