AU MRI Research Center, Department of Electrical and Computer Engineering, Auburn University, 560 Devall Dr, Suite 266D, Auburn, AL 36849, USA; Department of Psychological Sciences, Auburn University, Auburn, AL, USA; Alabama Advanced Imaging Consortium, Birmingham, AL, USA; Center for Neuroscience, Auburn University, Auburn, AL, USA; Key Laboratory for Learning and Cognition, School of Psychology, Capital Normal University, Beijing, China; Department of Psychiatry, National Institute of Mental Health and Neurosciences, Bangalore, India; Centre for Brain Research, Indian Institute of Science, Bangalore, India.
AU MRI Research Center, Department of Electrical and Computer Engineering, Auburn University, 560 Devall Dr, Suite 266D, Auburn, AL 36849, USA; Quora Inc., Mountain View, CA, USA.
Neuroimage. 2022 Jul 1;254:119078. doi: 10.1016/j.neuroimage.2022.119078. Epub 2022 Mar 9.
Recent neuroimaging evidence suggests that there might be an anterior-posterior functional differentiation of the hippocampus along the long-axis. The HERNET (hippocampal encoding/retrieval and network) model proposed an encoding/retrieval dichotomy with the anterior hippocampus more connected to the dorsal attention network (DAN) during memory encoding, and the posterior portions more connected to the default mode network (DMN) during retrieval. Evidence both for and against the HERNET model has been reported. In this study, we test the validity of the HERNET model non-invasively in humans by computing functional connectivity (FC) in layer-specific cortico-hippocampal microcircuits. This was achieved by acquiring sub-millimeter functional magnetic resonance imaging (fMRI) data during encoding/retrieval tasks at 7T. Specifically, FC between infra-granular output layers of DAN with hippocampus during encoding and FC between supra-granular input layers of DMN with hippocampus during retrieval were computed to test the predictions of the HERNET model. Our results support some predictions of the HERNET model including anterior-posterior gradient along the long axis of the hippocampus. While preferential relationships between the entire hippocampus and DAN/DMN during encoding/retrieval, respectively, were observed as predicted, anterior-posterior specificity in these network relationships could not be confirmed. The strength and clarity of evidence for/against the HERNET model were superior with layer-specific data compared to conventional volume data.
最近的神经影像学证据表明,海马体可能沿着长轴存在前后功能分化。HERNET(海马体编码/检索和网络)模型提出了一种编码/检索二分法,在前海马体在记忆编码期间与背侧注意网络(DAN)的连接更多,而在后海马体在检索期间与默认模式网络(DMN)的连接更多。HERNET 模型的证据既有支持的也有反对的。在这项研究中,我们通过在层特异性皮质-海马微电路中计算功能连接(FC),在人类中无创性地测试了 HERNET 模型的有效性。这是通过在 7T 下进行编码/检索任务时获取亚毫米级功能磁共振成像(fMRI)数据来实现的。具体来说,在编码期间计算了 DAN 的下颗粒输出层与海马体之间的 FC,以及在检索期间计算了 DMN 的上颗粒输入层与海马体之间的 FC,以检验 HERNET 模型的预测。我们的结果支持 HERNET 模型的一些预测,包括海马体长轴上的前后梯度。虽然正如预测的那样,在编码/检索期间分别观察到整个海马体与 DAN/DMN 之间的优先关系,但这些网络关系中的前后特异性无法得到证实。与传统的体积数据相比,层特异性数据为 HERNET 模型提供了更强、更清晰的证据。