Department of Electrical and Computer Engineering, University of Maryland, College Park, MD, USA.
Department of Electrical and Computer Engineering, University of Maryland, College Park, MD, USA.
Neuroimage. 2019 Feb 1;186:410-423. doi: 10.1016/j.neuroimage.2018.11.016. Epub 2018 Nov 16.
Human functional Magnetic Resonance Imaging (fMRI) data are acquired while participants engage in diverse perceptual, motor, cognitive, and emotional tasks. Although data are acquired temporally, they are most often treated in a quasi-static manner. Yet, a fuller understanding of the mechanisms that support mental functions necessitates the characterization of dynamic properties. Here, we describe an approach employing a class of recurrent neural networks called reservoir computing, and show the feasibility and potential of using it for the analysis of temporal properties of brain data. We show that reservoirs can be used effectively both for condition classification and for characterizing lower-dimensional "trajectories" of temporal data. Classification accuracy was approximately 90% for short clips of "social interactions" and around 70% for clips extracted from movie segments. Data representations with 12 or fewer dimensions (from an original space with over 300) attained classification accuracy within 5% of the full data. We hypothesize that such low-dimensional trajectories may provide "signatures" that can be associated with tasks and/or mental states. The approach was applied across participants (that is, training in one set of participants, and testing in a separate group), showing that representations generalized well to unseen participants. Taken together, we believe the present approach provides a promising framework to characterize dynamic fMRI information during both tasks and naturalistic conditions.
人类功能磁共振成像(fMRI)数据是在参与者进行各种感知、运动、认知和情感任务时获取的。尽管数据是按时间顺序获取的,但它们通常以准静态方式处理。然而,要更全面地了解支持心理功能的机制,就需要对动态特性进行描述。在这里,我们描述了一种使用一类称为 reservoir computing 的递归神经网络的方法,并展示了它用于分析大脑数据时间特性的可行性和潜力。我们表明,储层可以有效地用于条件分类和对时间数据的低维“轨迹”进行特征化。对于“社交互动”的短片段,分类准确率约为 90%,对于从电影片段中提取的片段,分类准确率约为 70%。具有 12 个或更少维度的数据表示(从原始空间的 300 多个维度中获得),其分类准确率与完整数据相差不到 5%。我们假设这样的低维轨迹可能提供可以与任务和/或心理状态相关联的“特征”。该方法适用于不同的参与者(即在一组参与者中进行训练,然后在另一个组中进行测试),表明表示可以很好地推广到未见过的参与者。总的来说,我们相信这种方法为在任务和自然条件下对 fMRI 的动态信息进行特征化提供了一个很有前途的框架。