Milne Elizabeth
Sheffield Autism Research Lab, Department of Psychology, The University of Sheffield Sheffield, UK.
Front Psychol. 2011 Mar 30;2:51. doi: 10.3389/fpsyg.2011.00051. eCollection 2011.
Intra-participant variability in clinical conditions such as autistic spectrum disorder (ASD) is an important indicator of pathophysiological processing. The data reported here illustrate that trial-by-trial variability can be reliably measured from EEG, and that intra-participant EEG variability is significantly greater in those with ASD than in neuro-typical matched controls. EEG recorded at the scalp is a linear mixture of activity arising from muscle artifacts and numerous concurrent brain processes. To minimize these additional sources of variability, EEG data were subjected to two different methods of spatial filtering. (i) The data were decomposed using infomax independent component analysis, a method of blind source separation which un-mixes the EEG signal into components with maximally independent time-courses, and (ii) a surface Laplacian transform was performed (current source density interpolation) in order to reduce the effects of volume conduction. Data are presented from 13 high functioning adolescents with ASD without co-morbid ADHD, and 12 neuro-typical age-, IQ-, and gender-matched controls. Comparison of variability between the ASD and neuro-typical groups indicated that intra-participant variability of P1 latency and P1 amplitude was greater in the participants with ASD, and inter-trial α-band phase coherence was lower in the participants with ASD. These data support the suggestion that individuals with ASD are less able to synchronize the activity of stimulus-related cell assemblies than neuro-typical individuals, and provide empirical evidence in support of theories of increased neural noise in ASD.
诸如自闭症谱系障碍(ASD)等临床病症中的个体内部变异性是病理生理过程的重要指标。此处报告的数据表明,可以从脑电图(EEG)可靠地测量逐次试验变异性,并且ASD患者的个体内部EEG变异性显著高于神经典型匹配对照组。头皮记录的EEG是肌肉伪迹和众多并发脑过程产生的活动的线性混合。为了最小化这些额外的变异性来源,EEG数据采用了两种不同的空间滤波方法。(i)使用信息最大化独立成分分析对数据进行分解,这是一种盲源分离方法,可将EEG信号分解为具有最大独立时间进程的成分,(ii)进行表面拉普拉斯变换(电流源密度插值)以减少体积传导的影响。数据来自13名无共病注意力缺陷多动障碍(ADHD)的高功能ASD青少年以及12名年龄、智商和性别匹配的神经典型对照组。ASD组和神经典型组之间变异性的比较表明,ASD患者的P1潜伏期和P1波幅的个体内部变异性更大,而ASD患者的试验间α波段相位相干性更低。这些数据支持了以下观点:与神经典型个体相比,ASD个体在同步与刺激相关的细胞集合活动方面能力较弱,并为ASD中神经噪声增加的理论提供了实证证据。