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Power‐law dynamics in neuronal and behavioral data introduce spurious correlations

机译:神经元和行为数据中的幂律动力学引入虚假相关

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摘要

Relating behavioral and neuroimaging measures is essential to understanding human brain function. Often, this is achieved by computing a correlation between behavioral measures, e.g., reaction times, and neurophysiological recordings, e.g., prestimulus EEG alpha‐power, on a single‐trial‐basis. This approach treats individual trials as independent measurements and ignores the fact that data are acquired in a temporal order. It has already been shown that behavioral measures as well as neurophysiological recordings display power‐law dynamics, which implies that trials are not in fact independent. Critically, computing the correlation coefficient between two measures exhibiting long‐range temporal dependencies may introduce spurious correlations, thus leading to erroneous conclusions about the relationship between brain activity and behavioral measures. Here, we address data‐analytic pitfalls which may arise when long‐range temporal dependencies in neural as well as behavioral measures are ignored. We quantify the influence of temporal dependencies of neural and behavioral measures on the observed correlations through simulations. Results are further supported in analysis of real EEG data recorded in a simple reaction time task, where the aim is to predict the latency of responses on the basis of prestimulus alpha oscillations. We show that it is possible to "predict" reaction times from one subject on the basis of EEG activity recorded in another subject simply owing to the fact that both measures display power‐law dynamics. The same is true when correlating EEG activity obtained from different subjects. A surrogate‐data procedure is described which correctly tests for the presence of correlation while controlling for the effect of power‐law dynamics. . ©
机译:行为和神经影像测量之间的联系对于理解人脑功能至关重要。通常,这是通过在一次试验的基础上计算行为度量(例如反应时间)和神经生理学记录(例如刺激前脑电图alpha功率)之间的相关性来实现的。这种方法将单个试验视为独立的度量,而忽略了按时间顺序获取数据的事实。已经表明,行为措施以及神经生理学记录都显示出幂律动态,这意味着试验实际上并不是独立的。至关重要的是,计算表现出长期时间依赖性的两个量度之间的相关系数可能会引入虚假的相关性,从而得出有关脑活动与行为量度之间关系的错误结论。在这里,我们解决了数据分析陷阱,这种陷阱可能会在忽略神经和行为度量中的长期时间依赖性时出现。我们通过模拟量化了神经和行为措施的时间依赖性对观察到的相关性的影响。在简单的反应时间任务中记录的真实EEG数据的分析中进一步支持结果,其目的是根据刺激前的α振荡来预测响应的潜伏期。我们表明,仅由于两种方法都显示幂律动态,就可以根据另一名受试者记录的脑电活动来“预测”一名受试者的反应时间。当关联从不同受试者获得的脑电活动时,也是如此。描述了替代数据过程,该过程可以正确测试相关性的存在,同时控制幂律动力学的影响。 。 ©

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