抑郁症语音自动检测系统的分析综述

IF 1.9 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
A. Velichko, A. Karpov
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引用次数: 2

摘要

近年来,医学和科学技术界对抑郁症自动检测的兴趣与日俱增。抑郁症是影响人类生活的最普遍的精神疾病之一。在这篇综述中,我们介绍并分析了抑郁症检测的最新研究。详细说明了与抑郁症定义相关的基本概念,该综述包括单模式和多模式语料库,其中包含被诊断为抑郁症的信息提供者和非抑郁症患者的对照组的记录。综述了抑郁症自动检测系统的理论和实践研究进展。最后一种包括单模式和多模式系统。回顾的系统的一部分解决了预测抑郁症严重程度(非抑郁症、轻度、中度和重度)的回归分类的挑战,另一部分则解决了预测抑郁存在(如果一个人是否抑郁)的二元分类问题。提出了三种交际模式(音频、视频、文本信息)的信息特征计算方法的原始分类。定义了在每种模态和所有模态中检测抑郁症的新方法。在综述的研究中,最流行的抑郁症检测方法是神经网络。调查表明,抑郁症的主要特征是影响所有交际方式的心理运动迟缓,与情感价值观的效价、激活和支配密切相关,抑郁症与攻击性呈负相关。发现的相关性证实了情感障碍和人类情绪状态之间的相互关系。在许多综述论文中观察到的趋势是,结合模式可以提高抑郁症检测系统的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analytical review of automatic systems for depression detection by speech
In recent years the interest in automatic depression detection has grown within medical and scientific-technical communities. Depression is one of the most widespread mental illnesses that affects human life. In this review we present and analyze the latest researches devoted to depression detection. Basic notions related to the definition of depression were specified, the review includes both unimodal and multimodal corpora containing records of informants diagnosed with depression and control groups of non-depressed people. Theoretical and practical researches which present automated systems for depression detection were reviewed. The last ones include unimodal as well as multimodal systems. A part of reviewed systems addresses the challenge of regressive classification predicting the degree of depression severity (non-depressed, mild, moderate and severe), and another part solves a problem of binary classification predicting the presence of depression (if a person is depressed or not). An original classification of methods for computing of informative features for three communicative modalities (audio, video, text information) is presented. New methods for depression detection in every modality and all modalities in total are defined. The most popular methods for depression detection in reviewed studies are neural networks. The survey has shown that the main features of depression are psychomotor retardation that affects all communicative modalities and strong correlation with affective values of valency, activation and domination, also there has been observed an inverse correlation between depression and aggression. Discovered correlations confirm interrelation of affective disorders and human emotional states. The trend observed in many reviewed papers is that combining modalities improves the results of depression detection systems.
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来源期刊
Intelligenza Artificiale
Intelligenza Artificiale COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
3.50
自引率
6.70%
发文量
13
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