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Bootstrap Signal-to-Noise Confidence Intervals: An Objective Method for Subject Exclusion and Quality Control in ERP Studies

机译:Bootstrap信噪比置信区间:ERP研究中受试者排除和质量控制的客观方法

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摘要

Analysis of event-related potential (ERP) data includes several steps to ensure that ERPs meet an appropriate level of signal quality. One such step, subject exclusion, rejects subject data if ERP waveforms fail to meet an appropriate level of signal quality. Subject exclusion is an important quality control step in the ERP analysis pipeline as it ensures that statistical inference is based only upon those subjects exhibiting clear evoked brain responses. This critical quality control step is most often performed simply through visual inspection of subject-level ERPs by investigators. Such an approach is qualitative, subjective, and susceptible to investigator bias, as there are no standards as to what constitutes an ERP of sufficient signal quality. Here, we describe a standardized and objective method for quantifying waveform quality in individual subjects and establishing criteria for subject exclusion. The approach uses bootstrap resampling of ERP waveforms (from a pool of all available trials) to compute a signal-to-noise ratio confidence interval (SNR-CI) for individual subject waveforms. The lower bound of this SNR-CI (SNRLB) yields an effective and objective measure of signal quality as it ensures that ERP waveforms statistically exceed a desired signal-to-noise criterion. SNRLB provides a quantifiable metric of individual subject ERP quality and eliminates the need for subjective evaluation of waveform quality by the investigator. We detail the SNR-CI methodology, establish the efficacy of employing this approach with Monte Carlo simulations, and demonstrate its utility in practice when applied to ERP datasets.
机译:事件相关电位(ERP)数据的分析包括几个步骤,以确保ERP满足信号质量的适当水平。如果ERP波形不能满足适当水平的信号质量,则这样的步骤(对象排除)将拒绝对象数据。排除对象是ERP分析流程中重要的质量控制步骤,因为它可以确保统计推断仅基于那些表现出清晰诱发的大脑反应的对象。最关键的质量控制步骤通常是通过调查员对主题级别的ERP进行目视检查来简单地执行的。这种方法是定性的,主观的,并且容易受到研究者的偏见,因为对于构成足够信号质量的ERP没有标准。在这里,我们描述了一种标准化客观的方法,用于量化单个对象的波形质量并建立排除对象的标准。该方法使用ERP波形的自举重采样(来自所有可用试验的集合)来计算单个主题波形的信噪比置信区间(SNR-CI)。 SNR-CI(SNRLB)的下限可以确保对ERP波形统计上超过所需的信噪比标准,从而可以有效,客观地衡量信号质量。 SNRLB提供了单个主题ERP质量的量化指标,并且消除了研究人员对波形质量进行主观评估的需要。我们详细介绍了SNR-CI方法,通过蒙特卡洛模拟建立了使用这种方法的功效,并展示了将其应用于ERP数据集的实际应用。

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