Martínez-Rodrigo Arturo, García-Martínez Beatriz, Zunino Luciano, Alcaraz Raúl, Fernández-Caballero Antonio
Departamento de Sistemas Informáticos, Escuela Politécnica de Cuenca, Universidad de Castilla-La Mancha, Cuenca, Spain.
Instituto de Tecnologías Audiovisuales de Castilla-La Mancha, Universidad de Castilla-La Mancha, Cuenca, Spain.
Front Neuroinform. 2019 Jun 4;13:40. doi: 10.3389/fninf.2019.00040. eCollection 2019.
Distress is a critical problem in developed societies given its long-term negative effects on physical and mental health. The interest in studying this emotion has notably increased during last years, being electroencephalography (EEG) signals preferred over other physiological variables in this research field. In addition, the non-stationary nature of brain dynamics has impulsed the use of non-linear metrics, such as symbolic entropies in brain signal analysis. Thus, the influence of time-lag on brain patterns assessment has not been tested. Hence, in the present study two permutation entropies denominated Delayed Permutation Entropy and Permutation Min-Entropy have been computed for the first time at different time-lags to discern between emotional states of calmness and distress from EEG signals. Moreover, a number of curve-related features were also calculated to assess brain dynamics across different temporal intervals. Complementary information among these variables was studied through sequential forward selection and 10-fold cross-validation approaches. According to the results obtained, the multi-lag entropy analysis has been able to reveal new significant insights so far undiscovered, thus notably improving the process of distress recognition from EEG recordings.
鉴于痛苦对身心健康具有长期负面影响,它在发达社会中是一个关键问题。近年来,对这种情绪的研究兴趣显著增加,在该研究领域,脑电图(EEG)信号比其他生理变量更受青睐。此外,大脑动力学的非平稳特性推动了非线性指标的应用,如在脑信号分析中使用符号熵。因此,时间滞后对脑模式评估的影响尚未得到检验。因此,在本研究中,首次在不同时间滞后下计算了两种排列熵,即延迟排列熵和排列最小熵,以从EEG信号中辨别平静和痛苦的情绪状态。此外,还计算了一些与曲线相关的特征,以评估不同时间间隔内的脑动力学。通过顺序向前选择和10折交叉验证方法研究了这些变量之间的互补信息。根据所得结果,多滞后熵分析能够揭示迄今未被发现的新的重要见解,从而显著改善从EEG记录中识别痛苦的过程。