A benchmark of individual auto-regressive models in a massive fMRI dataset

François Paugam, B. Pinsard, Guillaume Lajoie, Pierre Bellec
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Abstract

Abstract Dense functional magnetic resonance imaging datasets open new avenues to create auto-regressive models of brain activity. Individual idiosyncrasies are obscured by group models, but can be captured by purely individual models given sufficient amounts of training data. In this study, we compared several deep and shallow individual models on the temporal auto-regression of BOLD time-series recorded during a natural video-watching task. The best performing models were then analyzed in terms of their data requirements and scaling, subject specificity, and the space-time structure of their predicted dynamics. We found the Chebnets, a type of graph convolutional neural network, to be best suited for temporal BOLD auto-regression, closely followed by linear models. Chebnets demonstrated an increase in performance with increasing amounts of data, with no complete saturation at 9 h of training data. Good generalization to other kinds of video stimuli and to resting-state data marked the Chebnets’ ability to capture intrinsic brain dynamics rather than only stimulus-specific autocorrelation patterns. Significant subject specificity was found at short prediction time lags. The Chebnets were found to capture lower frequencies at longer prediction time lags, and the spatial correlations in predicted dynamics were found to match traditional functional connectivity networks. Overall, these results demonstrate that large individual functional magnetic resonance imaging (fMRI) datasets can be used to efficiently train purely individual auto-regressive models of brain activity, and that massive amounts of individual data are required to do so. The excellent performance of the Chebnets likely reflects their ability to combine spatial and temporal interactions on large time scales at a low complexity cost. The non-linearities of the models did not appear as a key advantage. In fact, surprisingly, linear versions of the Chebnets appeared to outperform the original non-linear ones. Individual temporal auto-regressive models have the potential to improve the predictability of the BOLD signal. This study is based on a massive, publicly-available dataset, which can serve for future benchmarks of individual auto-regressive modeling.
海量 fMRI 数据集中单个自动回归模型的基准测试
摘要 密集的功能磁共振成像数据集为创建大脑活动的自动回归模型开辟了新途径。群体模型会掩盖个体的特异性,但如果有足够多的训练数据,纯粹的个体模型就能捕捉到个体的特异性。在这项研究中,我们对自然视频观看任务中记录的 BOLD 时间序列的时间自动回归进行了比较。然后,我们从数据要求和规模、受试者特异性以及预测动态的时空结构等方面对表现最佳的模型进行了分析。我们发现,Chebnets(一种图卷积神经网络)最适合用于时间 BOLD 自动回归,紧随其后的是线性模型。随着数据量的增加,Chebnets 的性能也在不断提高,在 9 小时的训练数据中没有出现完全饱和的情况。对其他类型的视频刺激和静息状态数据具有良好的通用性,这标志着 Chebnets 能够捕捉大脑的内在动态,而不仅仅是特定刺激的自相关模式。在预测时滞较短的情况下,发现了显著的受试者特异性。在较长的预测时滞下,Chebnets 能够捕捉较低的频率,而且预测动态的空间相关性与传统的功能连接网络相匹配。总之,这些结果表明,大型单个功能性磁共振成像(fMRI)数据集可用于高效训练大脑活动的纯单个自动回归模型,而这样做需要大量的单个数据。Chebnets 的卓越性能很可能反映了它们能够以较低的复杂性成本将大时间尺度上的空间和时间交互作用结合起来。这些模型的非线性特性并不是它们的主要优势。事实上,令人惊讶的是,Chebnets 的线性版本似乎优于原始的非线性版本。单个时间自动回归模型有可能提高 BOLD 信号的可预测性。本研究基于一个公开的海量数据集,可作为个体自动回归模型的未来基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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