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Recent Advances in Resting-State Electroencephalography Biomarkers for Autism Spectrum Disorder-A Review of Methodological and Clinical Challenges

机译:自闭症谱系障碍的静息状态脑电图生物标志物的最新进展-方法学和临床挑战的回顾

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BACKGROUND: Electroencephalography (EEG) has been used for almost a century to identify seizure-related disorders in humans, typically through expert interpretation of multichannel recordings. Attempts have been made to quantify EEG through frequency analyses and graphic representations. These "traditional" quantitative EEG analysis methods were limited in their ability to analyze complex and multivariate data and have not been generally accepted in clinical settings. There has been growing interest in identification of novel EEG biomarkers to detect early risk of autism spectrum disorder, to identify clinically meaningful subgroups, and to monitor targeted intervention strategies. Most studies to date have, however, used quantitative EEG approaches, and little is known about the emerging multivariate analytical methods or the robustness of candidate biomarkers in the context of the variability of autism spectrum disorder. METHODS: Here, we present a targeted review of methodological and clinical challenges in the search for novel resting-state EEG biomarkers for autism spectrum disorder. RESULTS: Three primary novel methodologies are discussed: (1) modified multiscale entropy, (2) coherence analysis, and (3) recurrence quantification analysis. Results suggest that these methods may be able to classify resting-state EEG as "autism spectrum disorder" or "typically developing", but many signal processing questions remain unanswered. CONCLUSIONS: We suggest that the move to novel EEG analysis methods is akin to the progress in neuroimaging from visual inspection, through region-of-interest analysis, to whole-brain computational analysis. Novel resting state EEG biomarkers will have to evaluate a range of potential demographic, clinical, and technical confounders including age, gender, intellectual ability, comorbidity, and medication, before these approaches can be translated into the clinical setting.
机译:背景技术:脑电图(EEG)已经使用了近一个世纪,通常通过专家对多通道录音的解释来识别人的癫痫相关疾病。已经尝试通过频率分析和图形表示来量化EEG。这些“传统的”定量EEG分析方法在分析复杂和多变量数据方面的能力受到限制,在临床环境中并未被普遍接受。人们对识别新型EEG生物标记物以检测自闭症谱系障碍的早期风险,识别具有临床意义的亚组以及监测靶向干预策略的兴趣日益浓厚。然而,迄今为止,大多数研究都使用了定量脑电图方法,而对于自闭症谱系障碍的变异性,新兴的多元分析方法或候选生物标志物的稳健性知之甚少。方法:在这里,我们提出了针对自闭症谱系障碍的新型静息态脑电生物标志物的方法学和临床挑战的针对性综述。结果:讨论了三种主要的新颖方法:(1)改进的多尺度熵,(2)相干分析和(3)递归量化分析。结果表明,这些方法可能能够将静息状态的脑电图归为“自闭症谱系障碍”或“典型发展中”,但许多信号处理问题仍未得到解答。结论:我们建议转向新型脑电图分析方法的过程类似于从视觉检查,感兴趣区域分析到全脑计算分析的神经影像学进展。在将这些方法转化为临床方法之前,新型的静止状态EEG生物标记物将必须评估一系列潜在的人口统计学,临床和技术混杂因素,包括年龄,性别,智力,合并症和药物治疗。

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