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A matching pursuit algorithm for inferring tonic sympathetic arousal from spontaneous skin conductance fluctuations

机译:一种从自然皮肤电导率波动推断滋补交感唤醒的匹配追踪算法

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摘要

Tonic sympathetic arousal is often inferred from spontaneous fluctuations in skin conductance, and this relies on assumptions about the shape of these fluctuations and how they are generated. We have previously furnished a psychophysiological model for this relation, and an efficient and reliable inversion method to estimate tonic arousal from given data in the framework of dynamic causal modeling (DCM). Here, we provide a fast alternative inversion method in the form of a matching pursuit (MP) algorithm. Analyzing simulated data, this algorithm approximates the true underlying arousal up to about 10 spontaneous fluctuations per minute of data. For empirical data, we assess predictive validity as the ability to differentiate two known psychological arousal states. Predictive validity is comparable between the methods for three datasets, and also comparable to visual peak scoring. Computation time of the MP algorithm is 2–3 orders of magnitude faster for the MP than the DCM algorithm. In summary, the new MP algorithm provides a fast and reliable alternative to DCM inversion for SF data, in particular when the expected number of fluctuations is lower than 10 per minute, as in typical experimental situations.
机译:经常从皮肤电导的自发性波动中推断出强直性交感唤醒,这取决于对这些波动的形状及其产生方式的假设。之前,我们已经为这种关系提供了一种心理生理模型,并提供了一种有效而可靠的反演方法,可以在动态因果模型(DCM)的框架下根据给定的数据来估计滋补唤醒。在这里,我们以匹配追踪(MP)算法的形式提供了一种快速的替代反演方法。通过分析模拟数据,该算法可将真正的潜在唤醒近似于每分钟数据约10次自发波动。对于经验数据,我们将预测有效性评估为区分两种已知心理唤醒状态的能力。预测有效性在三个数据集的方法之间是可比的,并且还可以与视觉峰值评分相媲美。 MP的计算时间比DCM算法快2–3个数量级。总之,新的MP算法为SF数据提供了DCM反演的快速,可靠的替代方法,特别是在典型的实验情况下,当预期的波动数小于每分钟10次时,尤其如此。

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