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Specific Relationship between the Shape of the Readiness Potential Subjective Decision Time and Waiting Time Predicted by an Accumulator Model with Temporally Autocorrelated Input Noise

机译:准备状态的形状主观决策时间和等待时间之间的特定关系该等待时间由带有临时自相关输入噪声的累加器模型预测

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摘要

Self-initiated movements are reliably preceded by a gradual buildup of neuronal activity known as the readiness potential (RP). Recent evidence suggests that the RP may reflect subthreshold stochastic fluctuations in neural activity that can be modeled as a process of accumulation to bound. One element of accumulator models that has been largely overlooked in the literature is the stochastic term, which is traditionally modeled as Gaussian white noise. While there may be practical reasons for this choice, we have long known that noise in neural systems is not white – it is long-term correlated with spectral density of the form 1/fβ(with roughly 1 < β < 3) across a broad range of spatial scales. I explored the behavior of a leaky stochastic accumulator when the noise over which it accumulates is temporally autocorrelated. I also allowed for the possibility that the RP, as measured at the scalp, might reflect the input to the accumulator (i.e., its stochastic noise component) rather than its output. These two premises led to two novel predictions that I empirically confirmed on behavioral and electroencephalography data from human subjects performing a self-initiated movement task. In addition to generating these two predictions, the model also suggested biologically plausible levels of autocorrelation, consistent with the degree of autocorrelation in our empirical data and in prior reports. These results expose new perspectives for accumulator models by suggesting that the spectral properties of the stochastic input should be allowed to vary, consistent with the nature of biological neural noise.
机译:可靠地在自我启动的运动之前逐渐形成逐渐增强的神经元活动,即准备就绪电位(RP)。最近的证据表明,RP可能反映了神经活动的亚阈值随机波动,可以将其建模为积累到结合的过程。文献中经常忽略的累加器模型的一个要素是随机术语,传统上将其建模为高斯白噪声。尽管这样做可能有实际的原因,但我们早已知道神经系统中的噪声不是白色的-它与1 / f β形式的光谱密度长期相关(大约为1 <β<3)在广泛的空间尺度上。我研究了泄漏的随机蓄能器在其累积的噪声在时间上是自相关的行为。我还考虑了在头皮上测得的RP可能反映累加器的输入(即其随机噪声分量)而不是其输出的可能性。这两个前提导致了两个新颖的预测,根据经验,我从执行自发运动任务的人类受试者的行为和脑电图数据中得到了证实。除了产生这两个预测之外,该模型还提出了自相关的生物学上合理的水平,与我们的经验数据和先前报告中的自相关程度相一致。这些结果通过建议应该改变随机输入的频谱特性,从而揭示了蓄能器模型的新观点,这与生物神经噪声的本质是一致的。

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