Improving sensitivity of cluster-based permutation test for EEG/MEG data

Gan Huang, Zhiguo Zhang
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引用次数: 7

Abstract

To solve multiple comparisons problems in EEG/MEG analyses, cluster-based permutation test is possibly the most powerful approach, while it also inherits the advantage of well-controlled family-wise error rate from point-level permutation test. Because the cluster-level statistics used accumulate statistical power of all points in a cluster, cluster-based permutation test has a much higher sensitivity for widespread clusters. In this study, we demonstrate that, when the threshold for cluster inclusion is inappropriately set, the existence of larger clusters lowers the sensitivity for detecting the presence of smaller clusters, because the influence of large clusters on permutation distribution is overlooked in previous studies. Further, we demonstrated that increasing the threshold for cluster inclusion can efficiently solve this problem and then proposed a new guideline for threshold selection in the cluster-based permutation test. Results on simulated data and real data show the proposed guideline can greatly improve the sensitivity of cluster-based permutation test for detecting small clusters while retaining the same family-wise error rate.
提高基于聚类的脑电图/脑磁图排列测试灵敏度
为了解决脑电图/脑磁图分析中的多重比较问题,基于聚类的排列测试可能是最有效的方法,同时它也继承了点水平排列测试的家庭错误率控制良好的优势。由于使用的聚类级统计量累积了聚类中所有点的统计力,因此基于聚类的排列测试对广泛的聚类具有更高的灵敏度。在本研究中,我们证明,当聚类包含的阈值设置不当时,较大聚类的存在降低了检测较小聚类存在的灵敏度,因为在以往的研究中忽略了大聚类对排列分布的影响。在此基础上,我们进一步证明了提高聚类包含的阈值可以有效地解决这一问题,并提出了基于聚类的排列测试中阈值选择的新准则。模拟数据和实际数据的结果表明,该方法在保持相同的簇错误率的同时,大大提高了基于簇的排列测试检测小簇的灵敏度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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