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The Harvard Automated Processing Pipeline for Electroencephalography (HAPPE): Standardized Processing Software for Developmental and High-Artifact Data

机译:哈佛自动化处理管道用于脑电图(HAPPEN):用于发育和高伪像数据的标准化处理软件

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摘要

Electroenchephalography (EEG) recordings collected with developmental populations present particular challenges from a data processing perspective. These EEGs have a high degree of artifact contamination and often short recording lengths. As both sample sizes and EEG channel densities increase, traditional processing approaches like manual data rejection are becoming unsustainable. Moreover, such subjective approaches preclude standardized metrics of data quality, despite the heightened importance of such measures for EEGs with high rates of initial artifact contamination. There is presently a paucity of automated resources for processing these EEG data and no consistent reporting of data quality measures. To address these challenges, we propose the Harvard Automated Processing Pipeline for EEG (HAPPE) as a standardized, automated pipeline compatible with EEG recordings of variable lengths and artifact contamination levels, including high-artifact and short EEG recordings from young children or those with neurodevelopmental disorders. HAPPE processes event-related and resting-state EEG data from raw files through a series of filtering, artifact rejection, and re-referencing steps to processed EEG suitable for time-frequency-domain analyses. HAPPE also includes a post-processing report of data quality metrics to facilitate the evaluation and reporting of data quality in a standardized manner. Here, we describe each processing step in HAPPE, perform an example analysis with EEG files we have made freely available, and show that HAPPE outperforms seven alternative, widely-used processing approaches. HAPPE removes more artifact than all alternative approaches while simultaneously preserving greater or equivalent amounts of EEG signal in almost all instances. We also provide distributions of HAPPE's data quality metrics in an 867 file dataset as a reference distribution and in support of HAPPE's performance across EEG data with variable artifact contamination and recording lengths. HAPPE software is freely available under the terms of the GNU General Public License at https://github.com/lcnhappe/happe.
机译:用发育人群收集的电切换(EEG)记录从数据处理角度出现了特殊的挑战。这些脑电图具有高度的伪影污染,通常是短记录长度。随着样本尺寸和EEG通道密度的增加,传统的处理方法,如手动数据抑制变得不可持续。此外,尽管初始工件污染的高速率提高了脑电图的措施的重要性,但这种主观方法可以推动数据质量的标准化度量。目前缺乏用于处理这些脑电图数据的自动资源,并没有一致的数据质量措施报告。为了解决这些挑战,我们提出了哈佛自动化处理管道作为EEG(Happe)作为标准化的自动化管道,与可变长度和伪影污染水平的EEG记录兼容,包括来自幼儿或具有神经发作的高级纪念记录的高伪像和短期记录障碍。 Happe通过RAW文件通过一系列过滤,伪像拒绝和重新引用步骤来处理适用于时频域分析的EEG的事件相关和休息状态EEG数据。 Happe还包括数据质量指标的后处理报告,以促进以标准化方式评估和报告数据质量。在这里,我们描述了Happe的每个处理步骤,使用我们自由可用的EEG文件进行示例分析,并显示Happle优于七种替代,广泛使用的处理方法。 Happe删除了除所有替代方法的内容更多的工件,同时在几乎所有实例中同时保留更大或等效的EEG信号。我们还提供867文件数据集中的Happe数据质量指标的分布作为参考分布,并支持具有可变伪影污染和录制长度的EEG数据的Happe的性能。 HATPS://github.com/lcnhappe/happe的GNU通用公共许可证的条款是自由的。

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