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Optimal set of EEG features for emotional state classification and trajectory visualization in Parkinson's disease

机译:帕金森氏病的情绪状态分类和轨迹可视化的最佳EEG功能集

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In addition to classic motor signs and symptoms, individuals with Parkinson's disease (PD) are characterized by emotional deficits. Ongoing brain activity can be recorded by electroencephalograph (EEG) to discover the links between emotional states and brain activity. This study utilized machine-learning algorithms to categorize emotional states in PD patients compared with healthy controls (HC) using EEG. Twenty non-demented PD patients and 20 healthy age-, gender-, and education level-matched controls viewed happiness, sadness, fear, anger, surprise, and disgust emotional stimuli while fourteen-channel EEG was being recorded. Multimodal stimulus (combination of audio and visual) was used to evoke the emotions. To classify the EEG-based emotional states and visualize the changes of emotional states overtime, this paper compares four kinds of EEG features for emotional state classification and proposes an approach to track the trajectory of emotion changes with manifold learning. From the experimental results using our EEG data set, we found that (a) bispectrum feature is superior to other three kinds of features, namely power spectrum, wavelet packet and nonlinear dynamical analysis; (b) higher frequency bands (alpha, beta and gamma) play a more important role in emotion activities than lower frequency bands (delta and theta) in both groups and; (c) the trajectory of emotion changes can be visualized by reducing subject-independent features with manifold learning. This provides a promising way of implementing visualization of patient's emotional state in real time and leads to a practical system for noninvasive assessment of the emotional impairments associated with neurological disorders. (C) 2014 Elsevier B.V. All rights reserved.
机译:除了典型的运动体征和症状外,患有帕金森氏病(PD)的人还表现为情绪低落。脑电图(EEG)可以记录正在进行的大脑活动,以发现情绪状态与大脑活动之间的联系。这项研究利用机器学习算法对PD患者与使用EEG的健康对照(HC)相比的情绪状态进行了分类。在记录十四个通道的脑电图时,有20名非痴呆的PD患者和20位年龄,性别和教育水平相匹配的健康对照者看到了幸福,悲伤,恐惧,愤怒,惊奇和厌恶的情绪刺激。多模式刺激(听觉和视觉的结合)被用来唤起人们的情绪。为了对基于EEG的情绪状态进行分类并可视化随时间变化的情绪状态,本文比较了四种EEG特征用于情绪状态分类,并提出了一种通过多种学习跟踪情绪变化轨迹的方法。从使用我们的脑电数据集的实验结果中,我们发现:(a)双谱特征优于其他三种特征,即功率谱,小波包和非线性动力学分析; (b)在两组中,较高的频段(α,β和γ)在情感活动中起着比较低的频段(δ和theta)更重要的作用;并且(c)可以通过多种学习减少与主题无关的特征来形象化情绪变化的轨迹。这为实时实现患者情绪状态的可视化提供了一种有前途的方式,并导致了一种用于对与神经系统疾病相关的情绪障碍进行无创评估的实用系统。 (C)2014 Elsevier B.V.保留所有权利。

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