Escuela de Ingenieria y Ciencias, Tecnologico de Monterrey, Calle del Puente 222, Col. Ejidos de Huipulco, 14380, Mexico City, Mexico.
Metab Brain Dis. 2017 Oct;32(5):1553-1569. doi: 10.1007/s11011-017-0036-y. Epub 2017 Jun 9.
Epileptic encephalopathies (EE) is a term coined by the International League Against Epilepsy (ILAE) to refer to a group of epilepsies in which the ictal and interictal abnormalities may contribute to progressive cerebral dysfunction. Among them, two affect mainly children and are very difficult to deal with, Doose and Lennox-Gastaut syndromes, (DS and LGS, respectively). So far (Zavala-Yoe et al., J Integr Neurosci 15(2):205-223, 2015a and works of ours there), quantitative analysis of single case studies of EE have been performed. All of them are manifestations of drug resistant epileptic encephalopathies (DREES) and as known, such disorders require a lot of EEG studies through all patient's life. As a consequence, dozens of EEG records are stored by parents and neurologists as time goes by. However, taking into account all this massive information, our research questions (keeping colloquial wording by parents) arise: a) Which zone of the brain has been the most affected so far? b) On which year was the child better? c) How bad is our child with respect to others? We must reflect that despite clinical assessment of the EEG has undergone standardization by establishment of guidelines such as the recently published guidelines of the American Clinical Neurophysiology Society (Tsuchida et al., J Clin Neurophysiol 4(33):301-302, 2016), qualitative EEG will never be as objective as quantitative EEG, since it depends largely on the education and experience of the conducting neurophysiologist (Grant et al., Epilepsy Behav 2014(32):102-107, 2014, Rating, Z Epileptologie, Springer Med 27(2):139-142, 2014). We already answered quantitatively the above mentioned questions in the references of ours given above where we provided entropy curves and an entropy index which encompasses the complexity of bunches of EEG making possible to deal with massive data and to make objective comparisons among some patients simultaneously. However, we have refined that index here and we also offer another two measures which are spatial and dynamic. Moreover, from those indices we also provide what we call a temporal dynamic complexity path which shows in a standard 10-20 system head diagram the evolution of the lowest complexity per brain zone with respect to the EEG period. These results make it possible to compare quantitatively/graphically the progress of several patients at the same time, answering the questions posed above. The results obtained showed that we can associate low spatio-temporal entropy indices to multiple seizures events in several patients at the same time as well as tracking seizure progress in space and time with our entropy path, coinciding with neurophysiologists observations.
癫痫性脑病(EE)是国际抗癫痫联盟(ILAE)创造的一个术语,用于指代一组癫痫,其中发作期和发作间期的异常可能导致进行性脑功能障碍。其中,两种主要影响儿童且难以治疗的是杜斯和朗格-加斯托综合征(分别为 DS 和 LGS)。到目前为止(Zavala-Yoe 等人,J 整合神经科学 15(2):205-223,2015a 和我们的相关工作),已经对 EE 的单病例研究进行了定量分析。所有这些都是耐药性癫痫性脑病(DREES)的表现,众所周知,这种疾病需要对患者的整个生命周期进行大量的脑电图研究。因此,随着时间的推移,父母和神经科医生会存储数十份脑电图记录。然而,考虑到所有这些大量信息,我们提出了以下研究问题(保留父母的口语化措辞):a)迄今为止,大脑的哪个区域受到的影响最大?b)孩子在哪一年表现更好?c)与其他人相比,我们的孩子病情如何?我们必须反思,尽管脑电图的临床评估已经通过制定指南(例如最近发表的美国临床神经生理学学会指南(Tsuchida 等人,J 临床神经生理学 4(33):301-302,2016))进行了标准化,但定性脑电图永远不会像定量脑电图那样客观,因为它在很大程度上取决于进行神经生理学检查的人员的教育和经验(Grant 等人,癫痫行为 2014(32):102-107,2014,评级,Z 癫痫学,施普林格医学 27(2):139-142,2014)。我们已经在上面提到的参考文献中定量回答了上述问题,我们提供了熵曲线和熵指数,该指数包含了脑电图的复杂性,使我们能够处理大量数据并同时对一些患者进行客观比较。然而,我们在这里对该指数进行了改进,还提供了另外两个空间和动态的测量方法。此外,我们还从这些指数中提供了我们所谓的时间动态复杂性路径,该路径以标准的 10-20 系统头图显示了每个脑区的最低复杂性随脑电图周期的演变。这些结果使我们能够同时定量/图形化地比较多个患者的进展,回答上述问题。所得到的结果表明,我们可以同时将低时空熵指数与多个患者的多次发作事件相关联,并使用我们的熵路径跟踪发作在空间和时间上的进展,这与神经生理学家的观察结果一致。