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首页> 外文期刊>Epilepsia: Journal of the International League against Epilepsy >Real-time differentiation of nonconvulsive status epilepticus from other encephalopathies using quantitative EEG analysis: a pilot study.
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Real-time differentiation of nonconvulsive status epilepticus from other encephalopathies using quantitative EEG analysis: a pilot study.

机译:定量脑电图分析可实时区分非惊厥性癫痫状态与其他脑病。

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PURPOSE: Distinguishing nonconvulsive status epilepticus (NCSE) from some nonepileptic encephalopathies is a challenging problem. In many situations, NCSE and nonepileptic encephalopathies are indistinguishable by clinical symptoms and can produce very similar electroencephalography (EEG) patterns. Misdiagnosis or delay to diagnosis of NCSE may increase the rate of morbidity and mortality. METHODS: We developed a fast-differentiating algorithm using quantitative EEG analysis to distinguish NCSE patients from patients with toxic/metabolic encephalopathy (TME). EEG recordings were collected from 11 patients, including 6 with NCSE and 5 with TME. Three nonlinear dynamic measures were used in the proposed algorithm: the maximum short-term Lyapunov exponent (STLmax), phase of attractor (phase/angular frequency), and approximate entropy (ApEn). A further refined metric derived from STLmax and phase of attractor (the mean distance to EEG epoch samples from their centroid in the feature space) was also utilized as a criterion. Paired t tests were carried out to further clarify the separation between the EEG patterns of NCSE and TME. RESULTS: Computational results showed that the performance of the proposed algorithm was sufficient to distinguish NCSE from TME. The results were consistent in all subjects in our study. CONCLUSIONS: The study presents evidence that the maximum short-term Lyapunov exponents (STLmax) and phase of attractors (phase/angular frequency) can be useful in assisting clinical diagnosis of NCSE. Findings presented in this article provide a promising indication that the proposed algorithm may correctly distinguish NCSE from TME. Although the exact mechanism of this association remains unknown, the authors suggest that epileptic activity is highly associated with and can be modeled by dynamic systems.
机译:目的:区分非惊厥性癫痫持续状态(NCSE)与一些非癫痫性脑病是一个具有挑战性的问题。在许多情况下,NCSE和非癫痫性脑病不能通过临床症状加以区分,并且可以产生非常相似的脑电图(EEG)模式。误诊或延迟诊断NCSE可能会增加发病率和死亡率。方法:我们使用定量脑电图分析开发了一种快速区分算法,以区分NCSE患者和中毒性/代谢性脑病(TME)患者。从11例患者中收集了EEG记录,其中6例为NCSE,5例为TME。提出的算法中使用了三种非线性动态度量:最大短期Lyapunov指数(STLmax),吸引子的相位(相位/角频率)和近似熵(ApEn)。从STLmax和吸引子的相位(特征空间中距它们的质心到EEG历时样本的平均距离)得出的进一步改进的度量也用作标准。进行配对t检验以进一步阐明NCSE和TME的EEG模式之间的分离。结果:计算结果表明,所提算法的性能足以区分NCSE和TME。在我们研究的所有受试者中,结果都是一致的。结论:研究提供了证据,最大短期李雅普诺夫指数(STLmax)和吸引子的相位(相位/角频率)可用于辅助NCSE的临床诊断。本文中的发现提供了一个有希望的迹象,表明所提出的算法可以正确地区分NCSE和TME。尽管这种关联的确切机制仍是未知的,但作者认为癫痫活动与动态系统高度相关并且可以通过动态系统进行建模。

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