Jacob Jisu Elsa, Cherian Ajith, Gopakumar K, Iype Thomas, Yohannan Doris George, Divya K P
Department of Electronics and Communication Engineering, SCT College of Engineering, Thiruvananthapuram, Kerala, India.
Department of Neurology, SCTIMST, Thiruvananthapuram, Kerala, India.
Neurol Res Int. 2018 May 29;2018:8192820. doi: 10.1155/2018/8192820. eCollection 2018.
Chaotic analysis is a relatively novel area in the study of physiological signals. Chaotic features of electroencephalogram have been analyzed in various disease states like epilepsy, Alzheimer's disease, sleep disorders, and depression. All these diseases have primary involvement of the brain. Our study examines the chaotic parameters in metabolic encephalopathy, where the brain functions are involved secondary to a metabolic disturbance. Our analysis clearly showed significant lower values for chaotic parameters, correlation dimension, and largest Lyapunov exponent for EEG in patients with metabolic encephalopathy compared to normal EEG. The chaotic features of EEG have been shown in previous studies to be an indicator of the complexity of brain dynamics. The smaller values of chaotic features for encephalopathy suggest that normal complexity of brain function is reduced in encephalopathy. To the best knowledge of the authors, no similar work has been reported on metabolic encephalopathy. This finding may be useful to understand the neurobiological phenomena in encephalopathy. These chaotic features are then utilized as feature sets for Support Vector Machine classifier to identify cases of encephalopathy from normal healthy subjects yielding high values of accuracy. Thus, we infer that chaotic measures are EEG parameters sensitive to functional alterations of the brain, caused by encephalopathy.
混沌分析是生理信号研究中一个相对较新的领域。脑电图的混沌特征已在癫痫、阿尔茨海默病、睡眠障碍和抑郁症等各种疾病状态下进行了分析。所有这些疾病都主要累及大脑。我们的研究考察了代谢性脑病中的混沌参数,在代谢性脑病中,脑功能是继发于代谢紊乱而受到影响的。我们的分析清楚地表明,与正常脑电图相比,代谢性脑病患者脑电图的混沌参数、关联维数和最大李雅普诺夫指数的值显著更低。先前的研究表明,脑电图的混沌特征是脑动力学复杂性的一个指标。脑病患者混沌特征值较小表明脑病中脑功能的正常复杂性降低。据作者所知,尚未有关于代谢性脑病的类似研究报道。这一发现可能有助于理解脑病中的神经生物学现象。然后,这些混沌特征被用作支持向量机分类器的特征集,以从正常健康受试者中识别脑病病例,准确率较高。因此,我们推断混沌测量是对脑病引起的脑功能改变敏感的脑电图参数。