Institut du Cerveau, ICM, Inserm U 1127, CNRS UMR 7225, Sorbonne Université, Centre MEG-EEG, Centre de NeuroImagerie Recherche (CENIR), 47 Boulevard de l'hôpital, 75013 Paris, France.
Department of Psychological & Brain Sciences, Programs in Neuroscience, Cognitive Science, Indiana University, 1101 East 10th St, Bloomington, IN 47405, United States.
Neuroimage. 2021 Jun;233:117894. doi: 10.1016/j.neuroimage.2021.117894. Epub 2021 Mar 16.
Statistical power is key for robust, replicable science. Here, we systematically explored how numbers of trials and subjects affect statistical power in MEG sensor-level data. More specifically, we simulated "experiments" using the MEG resting-state dataset of the Human Connectome Project (HCP). We divided the data in two conditions, injected a dipolar source at a known anatomical location in the "signal condition", but not in the "noise condition", and detected significant differences at sensor level with classical paired t-tests across subjects, using amplitude, squared amplitude, and global field power (GFP) measures. Group-level detectability of these simulated effects varied drastically with anatomical origin. We thus examined in detail which spatial properties of the sources affected detectability, looking specifically at the distance from closest sensor and orientation of the source, and at the variability of these parameters across subjects. In line with previous single-subject studies, we found that the most detectable effects originate from source locations that are closest to the sensors and oriented tangentially with respect to the head surface. In addition, cross-subject variability in orientation also affected group-level detectability, boosting detection in regions where this variability was small and hindering detection in regions where it was large. Incidentally, we observed a considerable covariation of source position, orientation, and their cross-subject variability in individual brain anatomical space, making it difficult to assess the impact of each of these variables independently of one another. We thus also performed simulations where we controlled spatial properties independently of individual anatomy. These additional simulations confirmed the strong impact of distance and orientation and further showed that orientation variability across subjects affects detectability, whereas position variability does not. Importantly, our study indicates that strict unequivocal recommendations as to the ideal number of trials and subjects for any experiment cannot be realistically provided for neurophysiological studies and should be adapted according to the brain regions under study.
统计功效对于稳健、可重复的科学至关重要。在这里,我们系统地研究了试验次数和被试数量如何影响脑磁图(MEG)传感器水平数据的统计功效。更具体地说,我们使用人类连接组计划(HCP)的 MEG 静息态数据集模拟了“实验”。我们将数据分为两种条件,在“信号条件”下在已知解剖位置处注入偶极子源,但在“噪声条件”下不注入,然后使用跨被试的经典配对 t 检验在传感器水平上检测显著差异,使用幅度、平方幅度和全局场功率(GFP)测量。这些模拟效应的组水平可检测性随解剖起源而有很大差异。因此,我们详细检查了源的哪些空间特性影响可检测性,特别关注源与最近传感器的距离和源的方向,以及这些参数在被试间的可变性。与之前的单被试研究一致,我们发现最可检测的效应源自最接近传感器且相对于头部表面切向取向的源位置。此外,跨被试的方向变异性也影响了组水平的可检测性,在变异性较小的区域提高了检测能力,在变异性较大的区域则阻碍了检测能力。顺便说一句,我们观察到个体脑解剖空间中源位置、方向及其跨被试变异性之间存在相当大的协方差,使得难以独立评估这些变量中的每一个的影响。因此,我们还进行了模拟,在这些模拟中,我们独立于个体解剖结构控制空间特性。这些额外的模拟进一步证实了距离和方向的强烈影响,并表明跨被试的方向变异性会影响可检测性,而位置变异性则不会。重要的是,我们的研究表明,对于神经生理学研究,不能现实地为任何实验提供理想的试验次数和被试数量的确切建议,而应根据研究的脑区进行调整。