Ouyang Guang, Sommer Werner, Zhou Changsong
Department of Physics, Hong Kong Baptist University, Kowloon Tong, Hong Kong; Centre for Nonlinear Studies and The Beijing-Hong Kong-Singapore Joint Centre for Nonlinear and Complex Systems (Hong Kong), Institute of Computational and Theoretical Studies, Hong Kong Baptist University, Kowloon Tong, Hong Kong; Department of Psychology, Ernst Moritz Arndt Universität Greifswald, Germany.
Department of Psychology, Humboldt-Universität zu Berlin, D-10099 Berlin, Germany.
Int J Psychophysiol. 2016 Nov;109:9-20. doi: 10.1016/j.ijpsycho.2016.09.015. Epub 2016 Sep 28.
Stimulus-locked averaged event-related potentials (ERPs) are among the most frequently used signals in Cognitive Neuroscience. However, the late, cognitive or endogenous ERP components are often variable in latency from trial to trial in a component-specific way, compromising the stability assumption underlying the averaging scheme. Here we show that trial-to-trial latency variability of ERP components not only blurs the average ERP waveforms, but may also attenuate existing or artificially induce condition effects in amplitude. Hitherto this problem has not been well investigated. To tackle this problem, a method to measure and compensate component-specific trial-to-trial latency variability is required. Here we first systematically analyze the problem of single trial latency variability for condition effects based on simulation. Then, we introduce a solution by applying residue iteration decomposition (RIDE) to experimental data. RIDE separates different clusters of ERP components according to their time-locking to stimulus onsets, response times, or neither, based on an algorithm of iterative subtraction. We suggest to reconstruct ERPs by re-aligning the component clusters to their most probable single trial latencies. We demonstrate that RIDE-reconstructed ERPs may recover amplitude effects that are diminished or exaggerated in conventional averages by trial-to-trial latency jitter. Hence, RIDE-corrected ERPs may be a valuable tool in conditions where ERP effects may be compromised by latency variability.
刺激锁定平均事件相关电位(ERP)是认知神经科学中最常用的信号之一。然而,晚期的、认知性或内源性ERP成分在每次试验中的潜伏期往往以成分特异性的方式变化,这损害了平均方案所基于的稳定性假设。在这里,我们表明ERP成分的逐次试验潜伏期变异性不仅会模糊平均ERP波形,还可能会减弱现有的或人为诱导的幅度条件效应。迄今为止,这个问题尚未得到充分研究。为了解决这个问题,需要一种测量和补偿成分特异性逐次试验潜伏期变异性的方法。在这里,我们首先基于模拟系统地分析了条件效应的单次试验潜伏期变异性问题。然后,我们通过将残差迭代分解(RIDE)应用于实验数据来引入一种解决方案。RIDE基于迭代减法算法,根据ERP成分与刺激起始、反应时间或两者都不相关的时间锁定情况,将不同的ERP成分簇分开。我们建议通过将成分簇重新对齐到它们最可能的单次试验潜伏期来重建ERP。我们证明,RIDE重建的ERP可以恢复因逐次试验潜伏期抖动而在传统平均值中减小或夸大的幅度效应。因此,在ERP效应可能因潜伏期变异性而受损的情况下,RIDE校正的ERP可能是一种有价值的工具。