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A jackknife approach to quantifying single-trial correlation between covariance-based metrics undefined on a single-trial basis

机译:一种折刀方法,用于量化在单次试验中未定义的基于协方差的度量之间的单次试验相关性

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摘要

The quantification of covariance between neuronal activities (functional connectivity) requires the observation of correlated changes and therefore multiple observations. The strength of such neuronal correlations may itself undergo moment-by-moment fluctuations, which might e.g. lead to fluctuations in single-trial metrics such as reaction time (RT), or may co-fluctuate with the correlation between activity in other brain areas. Yet, quantifying the relation between moment-by-moment co-fluctuations in neuronal correlations is precluded by the fact that neuronal correlations are not defined per single observation. The proposed solution quantifies this relation by first calculating neuronal correlations for all leave-one-out subsamples (i.e. the jackknife replications of all observations) and then correlating these values. Because the correlation is calculated between jackknife replications, we address this approach as jackknife correlation (JC). First, we demonstrate the equivalence of JC to conventional correlation for simulated paired data that are defined per observation and therefore allow the calculation of conventional correlation. While the JC recovers the conventional correlation precisely, alternative approaches, like sorting-and-binning, result in detrimental effects of the analysis parameters. We then explore the case of relating two spectral correlation metrics, like coherence, that require multiple observation epochs, where the only viable alternative analysis approaches are based on some form of epoch subdivision, which results in reduced spectral resolution and poor spectral estimators. We show that JC outperforms these approaches, particularly for short epoch lengths, without sacrificing any spectral resolution. Finally, we note that the JC can be applied to relate fluctuations in any smooth metric that is not defined on single observations.
机译:神经元活动(功能连通性)之间协方差的量化需要观察相关变化,因此需要多次观察。这样的神经元相关性的强度本身可能会经历瞬间的波动,这可能是例如。导致单次试验指标(例如反应时间(RT))波动,或者可能与其他大脑区域活动之间的相关性共同波动。然而,由于神经元相关性不是每个观察都定义的事实,因此无法量化神经元相关性中的每一瞬间的共同波动之间的关系。提出的解决方案通过首先为所有留一法子样本(即所有观测值的折刀重复)计算神经元相关性然后对这些值进行相关性来量化这种关系。由于相关性是在折刀复制之间进行计算的,因此我们将此方法称为折刀相关性(JC)。首先,我们针对每个观察定义的模拟配对数据证明了JC与常规相关性的等效性,因此可以计算常规相关性。尽管JC精确地恢复了常规的相关性,但是诸如分类和合并之类的替代方法却导致了分析参数的不利影响。然后,我们探讨了涉及两个光谱相关性度量(如相干性)的情况,这需要多个观察时期,其中唯一可行的替代分析方法是基于某种形式的时期细分,这会导致光谱分辨率降低和光谱估计量降低。我们表明,JC在不牺牲任何光谱分辨率的情况下胜过这些方法,特别是对于短时长。最后,我们注意到JC可以用于关联未在单个观测值上定义的任何平滑指标中的波动。

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