Optimal filters for ERP research II: Recommended settings for seven common ERP components.

Psychophysiology Pub Date : 2024-06-01 Epub Date: 2024-01-28 DOI:10.1111/psyp.14530
Guanghui Zhang, David R Garrett, Steven J Luck
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Abstract

In research with event-related potentials (ERPs), aggressive filters can substantially improve the signal-to-noise ratio and maximize statistical power, but they can also produce significant waveform distortion. Although this tradeoff has been well documented, the field lacks recommendations for filter cutoffs that quantitatively address both of these competing considerations. To fill this gap, we quantified the effects of a broad range of low-pass filter and high-pass filter cutoffs for seven common ERP components (P3b, N400, N170, N2pc, mismatch negativity, error-related negativity, and lateralized readiness potential) recorded from a set of neurotypical young adults. We also examined four common scoring methods (mean amplitude, peak amplitude, peak latency, and 50% area latency). For each combination of component and scoring methods, we quantified the effects of filtering on data quality (noise level and signal-to-noise ratio) and waveform distortion. This led to recommendations for optimal low-pass and high-pass filter cutoffs. We repeated the analyses after adding artificial noise to provide recommendations for data sets with moderately greater noise levels. For researchers who are analyzing data with similar ERP components, noise levels, and participant populations, using the recommended filter settings should lead to improved data quality and statistical power without creating problematic waveform distortion.

企业资源规划研究的最佳过滤器 II:企业资源规划七个常见组成部分的建议设置。
在事件相关电位(ERPs)研究中,激进的滤波器可以大幅提高信噪比并最大限度地提高统计功率,但同时也会产生明显的波形失真。尽管这种权衡已被充分记录下来,但该领域仍缺乏对滤波器截止值的建议,以定量解决这两个相互竞争的考虑因素。为了填补这一空白,我们对一组神经畸形青壮年记录的七个常见 ERP 成分(P3b、N400、N170、N2pc、错配负性、错误相关负性和侧化准备电位)进行了定量分析,结果显示了多种低通滤波器和高通滤波器截止点的影响。我们还研究了四种常见的评分方法(平均振幅、峰值振幅、峰值潜伏期和 50% 区域潜伏期)。对于每种成分和评分方法的组合,我们都量化了过滤对数据质量(噪声水平和信噪比)和波形失真的影响。由此,我们提出了最佳低通和高通滤波器截止点的建议。在加入人工噪音后,我们重复进行了分析,为噪音水平中等偏上的数据集提供了建议。对于正在分析具有类似 ERP 成分、噪声水平和参与者群体的数据的研究人员来说,使用推荐的滤波器设置应能提高数据质量和统计能力,而不会造成波形失真问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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