Neuromarkers based on EEG Statistics in Time and Frequency Domains to Detect Tinnitus

Q4 Engineering
Ricardo A. Salido-Ruiz, Sulema Torres-Ramos, Aurora Espinoza-Valdez, Luz María Alonso-Valerdi, Israel Román-Godínez, David I. Ibarra-Zarate
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引用次数: 0

Abstract

Tinnitus detection and characterization requires a carefully elaborated diagnosis mainly owing to its heterogeneity nature. The present investigation aims to find features in Electroencephalographic (EEG) signals from time and frequency domain analysis that could distinguish between healthy and tinnitus sufferers with different levels of hearing loss. For this purpose, 24 volunteers were recruited and equally divided into four groups: 1) controls, 2) slow tinnitus, 3) middle tinnitus and 4) high tinnitus. EEG signals were registered in two states, with eyes closed and opened for 60 seconds. EEG analysis was focused on two bandwidths: delta and alpha band. For time domain, the EEG features estimated were mean, standard deviation, kurtosis, maximum peak, skewness and shape. For frequency domain, the EEG features obtained were mean, skewness, power spectral density. Normality of EEG data was evaluated by the Lilliefors test, and as a result, the nonparametric technique Kruskal-Wallis H statistic to test significance was applied. Results show that EEG features are more differentiable between tinnitus sufferers and controls in frequency domain than in time domain. EEG features from tinnitus patients with high HL are significantly different from the rest of the groups in alpha frequency band activity when shape and skewness are computed.
基于脑电图时域和频域统计的神经标志物检测耳鸣
耳鸣的检测和表征需要仔细阐述诊断,主要是由于其异质性。本研究旨在从脑电图信号的时域和频域分析中寻找能够区分不同程度听力损失的健康人与耳鸣患者的特征。为此,招募了24名志愿者,将他们平均分为四组:1)对照组,2)慢耳鸣组,3)中度耳鸣组,4)重度耳鸣组。脑电图信号记录在两种状态下,闭上眼睛和睁开眼睛60秒。脑电图分析集中在两个带宽:δ和α波段。在时域上,估计的脑电信号特征包括均值、标准差、峰度、最大峰、偏度和形状。在频域,得到的脑电信号特征包括均值、偏度、功率谱密度。采用Lilliefors检验评价脑电数据的正态性,并采用非参数技术Kruskal-Wallis H统计量检验显著性。结果表明,耳鸣患者和对照组的脑电图特征在频域上比在时域上更容易区分。当计算形状和偏度时,高HL耳鸣患者的脑电图特征在α频带活动上与其他组有显著差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Revista Mexicana de Ingenieria Biomedica
Revista Mexicana de Ingenieria Biomedica Engineering-Biomedical Engineering
CiteScore
0.60
自引率
0.00%
发文量
0
期刊介绍: La Revista Mexicana de Ingeniería Biomédica (The Mexican Journal of Biomedical Engineering, RMIB, for its Spanish acronym) is a publication oriented to the dissemination of papers of the Mexican and international scientific community whose lines of research are aligned to the improvement of the quality of life through engineering techniques. The papers that are considered for being published in the RMIB must be original, unpublished, and first rate, and they can cover the areas of Medical Instrumentation, Biomedical Signals, Medical Information Technology, Biomaterials, Clinical Engineering, Physiological Models, and Medical Imaging as well as lines of research related to various branches of engineering applied to the health sciences.
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