Ginesislab, Bordeaux, France.
GIN, UMR5293, Bordeaux University, Bordeaux, France.
Neuroinformatics. 2021 Oct;19(4):619-637. doi: 10.1007/s12021-021-09514-x. Epub 2021 Feb 5.
Functional connectivity analyses of fMRI data have shown that the activity of the brain at rest is spatially organized into resting-state networks (RSNs). RSNs appear as groups of anatomically distant but functionally tightly connected brain regions. Inter-RSN intrinsic connectivity analyses may provide an optimal spatial level of integration to analyze the variability of the functional connectome. Here we propose a deep learning approach to enable the automated classification of individual independent-component (IC) decompositions into a set of predefined RSNs. Two databases were used in this work, BIL&GIN and MRi-Share, with 427 and 1811 participants, respectively. We trained a multilayer perceptron (MLP) to classify each IC as one of 45 RSNs, using the IC classification of 282 participants in BIL&GIN for training and a 5-dimensional parameter grid search for hyperparameter optimization. It reached an accuracy of 92 %. Predictions for the remaining individuals in BIL&GIN were tested against the original classification and demonstrated good spatial overlap between the cortical RSNs. As a first application, we created an RSN atlas based on MRi-Share. This atlas defined a brain parcellation in 29 RSNs covering 96 % of the gray matter. Second, we proposed an individual-based analysis of the subdivision of the default-mode network into 4 networks. Minimal overlap between RSNs was found except in the angular gyrus and potentially in the precuneus. We thus provide the community with an individual IC classifier that can be used to analyze one dataset or to statistically compare different datasets for RSN spatial definitions.
静息态功能磁共振成像数据的功能连接分析表明,大脑在静息状态下的活动在空间上组织成静息态网络(RSN)。RSN 表现为一组解剖学上距离较远但功能上紧密相连的脑区。RSN 之间的内在连通性分析可能提供了一个最佳的空间整合水平,以分析功能连接组的可变性。在这里,我们提出了一种深度学习方法,使个体独立成分(IC)分解的自动分类能够成为一组预设的 RSN。这项工作使用了两个数据库,BIL&GIN 和 MRi-Share,分别有 427 和 1811 名参与者。我们使用 282 名 BIL&GIN 参与者的 IC 分类进行训练,使用 5 维参数网格搜索进行超参数优化,训练了一个多层感知器(MLP)来将每个 IC 分类为 45 个 RSN 之一。它达到了 92%的准确率。对 BIL&GIN 中剩余个体的预测与原始分类进行了测试,证明了皮质 RSN 之间存在良好的空间重叠。作为第一个应用,我们基于 MRi-Share 创建了一个 RSN 图谱。该图谱基于 29 个 RSN 定义了一个大脑分割,涵盖了 96%的灰质。其次,我们提出了对默认模式网络细分为 4 个网络的个体分析。除了在角回和可能在楔前叶之外,发现 RSN 之间的重叠最小。因此,我们为社区提供了一个个体 IC 分类器,可以用于分析一个数据集,或用于统计比较不同数据集的 RSN 空间定义。