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Nonlinear EEG biomarker profiles for autism and absence epilepsy

机译:用于自闭症和失神癫痫的非线性EEG生物标志物特征

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BackgroundAlthough autism and epilepsy are considered to be different disorders, epileptiform EEG activity is common in people with autism even when overt seizures are not present. The relatively high comorbidity between autism and all epilepsy syndromes suggests the possibility of common underlying neurophysiological mechanisms. Although many different epilepsies may be comorbid with autism, absence epilepsy is a generalized epilepsy syndrome with seizures that appear as staring spells, with no motor signs and no focal lesions, making it more difficult to diagnose. Application of nonlinear methods for EEG signal analysis may enable characterization of brain activity that can help to delineate neurophysiological commonalities and differences between autism and epilepsy. Multiscale entropy and recurrence quantitative analysis (RQA) were computed from EEG signals derived from children with autism or absence epilepsy and compared with the goal of finding significant and potentially clinically useful biomarkers neurophysiological differences between these two childhood disorders. MethodsMultiscale entropy and a multiscale version of RQA were computed from EEG data obtained from 92 children were collected in two different settings at Boston Children’s Hospital. Short segments of alert resting state EEG were selected for analysis. A complexity index derived from entropy and RQA methods was computed from each of 19 standard EEG channels for all subjects using publicly available software. Statistical comparisons were made between the groups. Machine learning classifiers were also used to determine which derived features were most significantly different among the groups, and to determine classification specificity and sensitivity. ResultsSignificant differences were found between absence, autism, and control groups in a number of different scalp locations and the values of complexity index. Autism values appeared to be intermediate between epilepsy and control in many locations, and differences between controls and absence patients were more widely distributed across scalp locations. Classification algorithms were able to distinguish absence epilepsy and autism cases from controls with high (>95%) accuracy. Importantly, two independent control groups, although they were derived from different settings and with different equipment were statistically indistinguishable. ConclusionsSignficant neurophysiological differences were found between absence, autism, and control cases. In most scalp regions, autism values were intermediate between the control values and absence values, suggesting several future research studies. Nonlinear EEG signal analysis, together with classification methods, may provide complementary information to visual EEG analysis and clinical assessment in epilepsy and autism, and may provide useful information for research on pediatric neurodevelopmental and neurological disorders. Additional research may enable neurophysiological biomarker profiles to be derived from these techniques for clinical use.
机译:背景尽管自闭症和癫痫病被认为是不同的疾病,但是即使没有明显的癫痫发作,自闭症患者的癫痫样脑电图活动也很常见。自闭症和所有癫痫综合征之间较高的合并症提示可能存在共同的潜在神经生理机制。尽管许多不同的癫痫病可能会伴有自闭症,但失神癫痫病是一种普遍性的癫痫综合症,癫痫发作呈凝视状,没有运动征象和局灶性病变,因此更难以诊断。非线性方法在脑电信号分析中的应用可能有助于表征大脑活动,这有助于描述神经生理学的共性以及自闭症和癫痫病之间的差异。根据自闭症或无癫痫病患儿的脑电信号计算多尺度熵和复发定量分析(RQA),并将其与发现这两种儿童期疾病之间重要且潜在临床有用的生物标志物神经生理学差异的目标进行比较。方法从在波士顿儿童医院两个不同场所收集的92名儿童的脑电数据计算出多尺度熵和RQA的多尺度版本。选择警报静息状态脑电图的短段进行分析。使用公开可用的软件,从所有受试者的19条标准EEG通道中的每条通道计算出的熵和RQA方法得出的复杂性指数。两组之间进行统计比较。机器学习分类器还用于确定组之间哪些衍生特征最明显不同,并确定分类的特异性和敏感性。结果发现,在许多不同的头皮位置,缺乏症,自闭症和对照组与复杂性指数的值之间存在显着差异。自闭症的值似乎在许多地方介于癫痫和对照之间,并且对照和缺席患者之间的差异更广泛地分布在头皮上。分类算法能够以较高的准确度(> 95%)区分出失神癫痫和自闭症病例。重要的是,尽管两个独立的对照组来自不同的环境和不同的设备,但在统计学上是无法区分的。结论在失神,自闭症和对照病例之间发现了明显的神经生理学差异。在大多数头皮区域,自闭症值介于对照值和缺失值之间,这表明有待进一步研究。非线性EEG信号分析以及分类方法,可以为癫痫和自闭症的视觉EEG分析和临床评估提供补充信息,并可以为研究小儿神经发育和神经系统疾病提供有用的信息。进一步的研究可以使神经生理学生物标志物谱从这些技术中获得临床应用。

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