Using cluster-based permutation tests to estimate MEG/EEG onsets: How bad is it?

IF 2.7 4区 医学 Q3 NEUROSCIENCES
Guillaume A. Rousselet
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引用次数: 0

Abstract

Localising effects in space, time and other dimensions is a fundamental goal of magneto- and electroencephalography (EEG) research. A popular exploratory approach applies mass-univariate statistics followed by cluster-sum inferences, an effective way to correct for multiple comparisons while preserving high statistical power by pooling together neighbouring effects. Yet, these cluster-based methods have an important limitation: each cluster is associated with a unique p-value, such that there is no error control at individual timepoints, and one must be cautious about interpreting when and where effects start and end. Sassenhagen and Draschkow (2019) provided an important reminder of this limitation. They also reported results from a simulation, suggesting that onsets estimated from EEG data are both positively biased and very variable. However, the simulation lacked comparisons to other methods. Here, I report such comparisons in a new simulation, replicating the positive bias of the cluster-sum method, but also demonstrating that it performs relatively well, in terms of bias and variability, compared to other methods that provide pointwise p-values: two methods that control the false discovery rate and two methods that control the familywise error rate (cluster-depth and maximum statistic methods). I also present several strategies to reduce estimation bias, including group calibration, group comparison and using binary segmentation, a simple change point detection algorithm that outperformed mass-univariate methods in simulations. Finally, I demonstrate how to generate onset hierarchical bootstrap confidence intervals that integrate variability over trials and participants, a substantial improvement over standard group approaches that ignore measurement uncertainty.

Abstract Image

使用基于聚类的排列测试来估计MEG/EEG发作:它有多糟糕?
空间、时间和其他维度的局部效应是磁学和脑电图(EEG)研究的基本目标。一种流行的探索性方法是应用质量单变量统计,然后进行聚类和推断,这是一种有效的方法,可以纠正多个比较,同时通过汇集邻近效应来保持高统计能力。然而,这些基于集群的方法有一个重要的限制:每个集群都与一个唯一的p值相关联,因此在单个时间点上没有错误控制,并且必须谨慎地解释影响开始和结束的时间和地点。Sassenhagen和Draschkow(2019)对这一局限性提出了重要的提醒。他们还报告了模拟的结果,表明从脑电图数据估计的发病既具有正偏倚性,又具有很大的可变性。然而,该模拟缺乏与其他方法的比较。在这里,我在一个新的模拟中报告了这样的比较,复制了聚类和方法的正偏差,但也证明了它在偏差和可变性方面表现相对较好,与其他提供点向p值的方法相比:两种控制错误发现率的方法和两种控制家庭错误率的方法(聚类深度和最大统计方法)。我还提出了几种减少估计偏差的策略,包括组校准,组比较和使用二值分割,这是一种简单的变化点检测算法,在模拟中优于质量单变量方法。最后,我演示了如何生成起始分层自举置信区间,该置信区间集成了试验和参与者的可变性,这是对忽略测量不确定性的标准组方法的重大改进。
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来源期刊
European Journal of Neuroscience
European Journal of Neuroscience 医学-神经科学
CiteScore
7.10
自引率
5.90%
发文量
305
审稿时长
3.5 months
期刊介绍: EJN is the journal of FENS and supports the international neuroscientific community by publishing original high quality research articles and reviews in all fields of neuroscience. In addition, to engage with issues that are of interest to the science community, we also publish Editorials, Meetings Reports and Neuro-Opinions on topics that are of current interest in the fields of neuroscience research and training in science. We have recently established a series of ‘Profiles of Women in Neuroscience’. Our goal is to provide a vehicle for publications that further the understanding of the structure and function of the nervous system in both health and disease and to provide a vehicle to engage the neuroscience community. As the official journal of FENS, profits from the journal are re-invested in the neuroscientific community through the activities of FENS.
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