基于HRV的抑郁症诊断新算法:一种神经模糊方法

Zhen-Xing Zhang, Xue-Wei Tian, J. Lim
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引用次数: 22

摘要

最近的研究表明,抑郁症的严重程度与心率变异性(HRV)之间存在显著关系。本文提出了一种基于神经模糊方法的分类算法,利用HRV的两个时域和四个频域特征,利用加权模糊隶属函数(NEWFM)的神经模糊网络将抑郁症患者与对照组区分开来。HRV数据收集自10名抑郁症患者和同等数量的健康对照。每位受试者佩戴无线动态心电图仪,接受13分钟的多模态情感内容刺激,可诱发多种情绪。从13分钟的心电图信号中转换并记录HRV活动。以95%的可靠准确率提取出6个HRV特征作为NEWFM输入特征进行抑郁症分类。通过非重叠区域分布测量方法,从6个特征中评估HRV的RR区间(SDNN)和甚低频(VLF)的标准差为良好特征。这两个特征在抑郁症诊断组和健康组之间存在显著差异,提示抑郁症与自主神经系统之间存在显著关联。该算法将在智能手机应用程序中作为抑郁监测系统实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New algorithm for the depression diagnosis using HRV: A neuro-fuzzy approach
Recent research indicates a significant relationship between the severity of depression and heart rate variability (HRV). This paper presents a neuro-fuzzy approach-based classification algorithm, which distinguishes patients with depression from controls by a neuro-fuzzy network with a weighted fuzzy membership function (NEWFM) using the two time domain and four frequency domain features of HRV. The HRV data were collected from 10 patients with depression and an equal number of healthy controls. Wearing a wireless Holter monitor, each subject underwent a 13-minute multimodal affective contents stimulus, which can induce a variety of emotions. HRV activity was transformed and recorded from periods of 13-minute ECG signals. With a reliable accuracy rate of 95%, the six HRV features were extracted and used as NEWFM input features for depression classification. The standard deviation of the RR intervals (SDNN) and very low frequency (VLF) of HRV were evaluated as good features-from six features-by a non-overlap area distribution measurement method. The two features reflected conspicuous differences between the depression diagnosed and the healthy subjects, which indicates a significant association between depression and the autonomic nervous system. The proposed algorithm will be implemented as a depression monitoring system in a Smartphone application.
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