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A cross-correlational analysis between electroencephalographic and end-tidal carbon dioxide signals: Methodological issues in the presence of missing data and real data results

机译:脑电图和潮​​气末二氧化碳信号之间的互相关分析:存在缺失数据和真实数据结果的方法论问题

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摘要

Electroencephalographic (EEG) irreducible artifacts are common and the removal of corrupted segments from the analysis may be required. The present study aims at exploring the effects of different EEG Missing Data Segment (MDS) distributions on cross-correlation analysis, involving EEG and physiological signals. The reliability of cross-correlation analysis both at single subject and at group level as a function of missing data statistics was evaluated using dedicated simulations. Moreover, a Bayesian-based approach for combining the single subject results at group level by considering each subject’s reliability was introduced. Starting from the above considerations, the cross-correlation function between EEG Global Field Power (GFP) in delta band and end-tidal CO2 (PETCO2) during rest and voluntary breath-hold was evaluated in six healthy subjects. The analysis of simulated data results at single subject level revealed a worsening of precision and accuracy in the cross-correlation analysis in the presence of MDS. At the group level, a large improvement in the results’ reliability with respect to single subject analysis was observed. The proposed Bayesian approach showed a slight improvement with respect to simple average results. Real data results were discussed in light of the simulated data tests and of the current physiological findings.
机译:脑电图(EEG)不可还原的伪影很常见,可能需要从分析中删除损坏的片段。本研究旨在探讨不同的脑电图缺失数据段(MDS)分布对涉及脑电图和生理信号的互相关分析的影响。使用专用模拟评估了在单个主题和小组级别上作为缺失数据统计函数的互相关分析的可靠性。此外,引入了一种基于贝叶斯的方法,该方法通过考虑每个主题的可靠性来在组级别组合单个主题的结果。从以上考虑出发,在六个健康受试者中评估了三角带中的EEG全球场强(GFP)与潮气末CO2(PETCO2)在休息和自愿屏气之间的互相关函数。在单个受试者水平上对模拟数据结果进行的分析表明,在存在MDS的情况下,互相关分析的准确性和准确性下降。在小组一级,与单个主题分析相比,结果的可靠性有了很大的提高。提出的贝叶斯方法相对于简单的平均结果显示出轻微的改进。根据模拟数据测试和当前的生理结果讨论了实际数据结果。

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