Department of Neuroscience, Uppsala University, Uppsala, Sweden.
Department of Psychology, Uppsala University, Uppsala, Sweden.
Hippocampus. 2018 Jan;28(1):53-66. doi: 10.1002/hipo.22807. Epub 2017 Oct 30.
fMRI studies have identified distinct resting-state functional connectivity (RSFC) networks associated with the anterior and posterior hippocampus. However, the functional relevance of these two networks is still largely unknown. Hippocampal lesion studies and task-related fMRI point to a role for the anterior hippocampus in nonspatial episodic memory and the posterior hippocampus in spatial memory. We used Relevance Vector Regression (RVR), a machine-learning method that enables predictions of continuous outcome measures from multivariate patterns of brain imaging data, to test the hypothesis that patterns of whole-brain RSFC associated with the anterior hippocampus predict episodic memory performance, while patterns of whole-brain RSFC associated with the posterior hippocampus predict spatial memory performance. Magnetic resonance imaging and memory assessment took place at two separate occasions. The anterior and posterior RSFC largely corresponded with previous findings, and showed no effect of laterality. Supporting the hypothesis, RVR produced accurate predictions of episodic performance from anterior, but not posterior, RSFC, and accurate predictions of spatial performance from posterior, but not anterior, RSFC. In contrast, a univariate approach could not predict performance from resting-state connectivity. This supports a functional dissociation between the anterior and posterior hippocampus, and indicates a multivariate relationship between intrinsic functional networks and cognitive performance within specific domains, that is relatively stable over time.
功能磁共振成像研究已经确定了与前、后海马体相关的不同静息状态功能连接(RSFC)网络。然而,这两个网络的功能相关性在很大程度上仍然未知。海马体损伤研究和任务相关的 fMRI 研究表明,前海马体在非空间情景记忆中起作用,而后海马体在空间记忆中起作用。我们使用了 Relevance Vector Regression(RVR),这是一种机器学习方法,可以根据大脑成像数据的多变量模式预测连续的结果测量值,以检验以下假设:与前海马体相关的全脑 RSFC 模式可以预测情景记忆表现,而与后海马体相关的全脑 RSFC 模式可以预测空间记忆表现。磁共振成像和记忆评估在两个不同的场合进行。前和后 RSFC 在很大程度上与之前的发现一致,并且没有显示出侧化的影响。支持该假设,RVR 从前部 RSFC 产生了对情景表现的准确预测,而从后部 RSFC 产生了对空间表现的准确预测,但反之则不然。相比之下,单变量方法无法从静息状态连接预测表现。这支持了前、后海马体之间的功能分离,并表明特定领域内在功能网络与认知表现之间存在多元关系,这种关系在时间上相对稳定。