Inria, CEA, Université Paris-Saclay, Palaiseau, 91120, France.
Inria, CEA, Université Paris-Saclay, Palaiseau, 91120, France.
Neuroimage. 2020 Nov 1;221:117126. doi: 10.1016/j.neuroimage.2020.117126. Epub 2020 Jul 13.
Population imaging markedly increased the size of functional-imaging datasets, shedding new light on the neural basis of inter-individual differences. Analyzing these large data entails new scalability challenges, computational and statistical. For this reason, brain images are typically summarized in a few signals, for instance reducing voxel-level measures with brain atlases or functional modes. A good choice of the corresponding brain networks is important, as most data analyses start from these reduced signals. We contribute finely-resolved atlases of functional modes, comprising from 64 to 1024 networks. These dictionaries of functional modes (DiFuMo) are trained on millions of fMRI functional brain volumes of total size 2.4 TB, spanned over 27 studies and many research groups. We demonstrate the benefits of extracting reduced signals on our fine-grain atlases for many classic functional data analysis pipelines: stimuli decoding from 12,334 brain responses, standard GLM analysis of fMRI across sessions and individuals, extraction of resting-state functional-connectomes biomarkers for 2500 individuals, data compression and meta-analysis over more than 15,000 statistical maps. In each of these analysis scenarii, we compare the performance of our functional atlases with that of other popular references, and to a simple voxel-level analysis. Results highlight the importance of using high-dimensional "soft" functional atlases, to represent and analyze brain activity while capturing its functional gradients. Analyses on high-dimensional modes achieve similar statistical performance as at the voxel level, but with much reduced computational cost and higher interpretability. In addition to making them available, we provide meaningful names for these modes, based on their anatomical location. It will facilitate reporting of results.
人群成像显著增加了功能成像数据集的规模,为个体间差异的神经基础提供了新的线索。分析这些大型数据集需要新的可扩展性挑战,包括计算和统计方面的挑战。出于这个原因,大脑图像通常通过几个信号进行总结,例如通过大脑图谱或功能模式来减少体素水平的测量。选择相应的大脑网络非常重要,因为大多数数据分析都是从这些简化的信号开始的。我们提供了精细分辨率的功能模式图谱,包含 64 到 1024 个网络。这些功能模式字典(DiFuMo)是在数百万个 fMRI 功能大脑体积上进行训练的,这些大脑体积的总大小为 2.4TB,跨越了 27 项研究和许多研究小组。我们展示了从我们的精细图谱中提取简化信号的好处,用于许多经典的功能数据分析流程:从 12334 个大脑反应中解码刺激、跨会话和个体的 fMRI 标准 GLM 分析、为 2500 个人提取静息态功能连接组生物标志物、数据压缩和超过 15000 个统计地图的元分析。在这些分析场景中的每一个中,我们都将我们的功能图谱与其他流行的参考图谱以及简单的体素水平分析进行了比较。结果强调了使用高维“软”功能图谱来表示和分析大脑活动的重要性,同时捕捉其功能梯度。高维模式的分析可以达到与体素水平相似的统计性能,但计算成本更低,可解释性更高。除了提供这些模式外,我们还根据它们的解剖位置为这些模式提供了有意义的名称。这将有助于报告结果。