Department of Psychiatry, McLean Hospital, Harvard Medical School, Boston, USA.
The Affiliated Wuxi Mental Health Center of Nanjing Medical University, Wuxi, China.
Brain Topogr. 2024 Mar;37(2):232-242. doi: 10.1007/s10548-023-00992-7. Epub 2023 Aug 7.
Microstate analysis is a promising technique for analyzing high-density electroencephalographic data, but there are multiple questions about methodological best practices. Between and within individuals, microstates can differ both in terms of characteristic topographies and temporal dynamics, which leads to analytic challenges as the measurement of microstate dynamics is dependent on assumptions about their topographies. Here we focus on the analysis of group differences, using simulations seeded on real data from healthy control subjects to compare approaches that derive separate sets of maps within subgroups versus a single set of maps applied uniformly to the entire dataset. In the absence of true group differences in either microstate maps or temporal metrics, we found that using separate subgroup maps resulted in substantially inflated type I error rates. On the other hand, when groups truly differed in their microstate maps, analyses based on a single set of maps confounded topographic effects with differences in other derived metrics. We propose an approach to alleviate both classes of bias, based on a paired analysis of all subgroup maps. We illustrate the qualitative and quantitative impact of these issues in real data by comparing waking versus non-rapid eye movement sleep microstates. Overall, our results suggest that even subtle chance differences in microstate topography can have profound effects on derived microstate metrics and that future studies using microstate analysis should take steps to mitigate this large source of error.
微状态分析是一种分析高密度脑电图数据的有前途的技术,但在方法最佳实践方面存在多个问题。在个体之间和个体内部,微状态不仅在特征拓扑和时间动态方面存在差异,而且由于微状态动态的测量取决于其拓扑的假设,因此存在分析挑战。在这里,我们专注于组间差异的分析,使用模拟在健康对照受试者的真实数据上进行播种,以比较在子组内分别得出地图与在整个数据集上统一应用单个地图的方法。在微状态图或时间度量上都没有真正的组间差异的情况下,我们发现使用单独的子组地图会导致 I 型错误率大大膨胀。另一方面,当组在其微状态图上确实存在差异时,基于单个地图集的分析会混淆拓扑效应与其他衍生指标的差异。我们提出了一种基于对子组所有地图的配对分析来减轻这两类偏差的方法。我们通过比较清醒和非快速眼动睡眠微状态来直观地展示这些问题在真实数据中的定性和定量影响。总体而言,我们的结果表明,即使是微状态拓扑上的细微偶然差异也会对衍生的微状态指标产生深远影响,并且未来使用微状态分析的研究应采取措施来减轻这种主要的误差源。