Department of Psychology and York Neuroimaging Centre, University of York, York YO10 5DD, UK.
Department of Psychology and York Neuroimaging Centre, University of York, York YO10 5DD, UK.
Neuroimage. 2023 Aug 15;277:120228. doi: 10.1016/j.neuroimage.2023.120228. Epub 2023 Jun 18.
Functional gradients, in which response properties change gradually across a brain region, have been proposed as a key organising principle of the brain. Recent studies using both resting-state and natural viewing paradigms have indicated that these gradients may be reconstructed from functional connectivity patterns via "connectopic mapping" analyses. However, local connectivity patterns may be confounded by spatial autocorrelations artificially introduced during data analysis, for instance by spatial smoothing or interpolation between coordinate spaces. Here, we investigate whether such confounds can produce illusory connectopic gradients. We generated datasets comprising random white noise in subjects' functional volume spaces, then optionally applied spatial smoothing and/or interpolated the data to a different volume or surface space. Both smoothing and interpolation induced spatial autocorrelations sufficient for connectopic mapping to produce both volume- and surface-based local gradients in numerous brain regions. Furthermore, these gradients appeared highly similar to those obtained from real natural viewing data, although gradients generated from real and random data were statistically different in certain scenarios. We also reconstructed global gradients across the whole-brain - while these appeared less susceptible to artificial spatial autocorrelations, the ability to reproduce previously reported gradients was closely linked to specific features of the analysis pipeline. These results indicate that previously reported gradients identified by connectopic mapping techniques may be confounded by artificial spatial autocorrelations introduced during the analysis, and in some cases may reproduce poorly across different analysis pipelines. These findings imply that connectopic gradients need to be interpreted with caution.
功能梯度是指大脑区域内反应特性逐渐变化的一种组织原则。最近使用静息态和自然观察范式的研究表明,这些梯度可以通过“连接图映射”分析从功能连接模式中重建。然而,局部连接模式可能会受到数据分析中人为引入的空间自相关的干扰,例如空间平滑或坐标空间之间的插值。在这里,我们研究了这些干扰是否会产生幻觉连接图梯度。我们在受试者的功能体积空间中生成了包含随机白噪声的数据,然后可选地对数据进行空间平滑和/或插值到不同的体积或表面空间。平滑和插值都会引入足够的空间自相关,以使连接图映射在许多大脑区域中产生基于体积和基于表面的局部梯度。此外,这些梯度与从真实自然观察数据中获得的梯度非常相似,尽管在某些情况下,从真实和随机数据生成的梯度在统计上是不同的。我们还重建了整个大脑的全局梯度——尽管这些梯度不太容易受到人工空间自相关的影响,但重现先前报道的梯度的能力与分析管道的特定特征密切相关。这些结果表明,连接图映射技术之前报告的梯度可能受到分析过程中人为引入的空间自相关的干扰,并且在某些情况下可能在不同的分析管道中重现效果不佳。这些发现意味着需要谨慎解释连接图梯度。