Giusti Chad, Pastalkova Eva, Curto Carina, Itskov Vladimir
Warren Center for Network and Data Science, Departments of Bioengineering and Mathematics, University of Pennsylvania, Philadelphia, PA 19104; Department of Mathematics, University of Nebraska, Lincoln, NE 68588;
Janelia Research Campus, Howard Hughes Medical Institute, Ashburn, VA 20147;
Proc Natl Acad Sci U S A. 2015 Nov 3;112(44):13455-60. doi: 10.1073/pnas.1506407112. Epub 2015 Oct 20.
Detecting meaningful structure in neural activity and connectivity data is challenging in the presence of hidden nonlinearities, where traditional eigenvalue-based methods may be misleading. We introduce a novel approach to matrix analysis, called clique topology, that extracts features of the data invariant under nonlinear monotone transformations. These features can be used to detect both random and geometric structure, and depend only on the relative ordering of matrix entries. We then analyzed the activity of pyramidal neurons in rat hippocampus, recorded while the animal was exploring a 2D environment, and confirmed that our method is able to detect geometric organization using only the intrinsic pattern of neural correlations. Remarkably, we found similar results during nonspatial behaviors such as wheel running and rapid eye movement (REM) sleep. This suggests that the geometric structure of correlations is shaped by the underlying hippocampal circuits and is not merely a consequence of position coding. We propose that clique topology is a powerful new tool for matrix analysis in biological settings, where the relationship of observed quantities to more meaningful variables is often nonlinear and unknown.
在存在隐藏非线性的情况下,检测神经活动和连接性数据中的有意义结构具有挑战性,在这种情况下,传统的基于特征值的方法可能会产生误导。我们引入了一种新的矩阵分析方法,称为团拓扑,它可以提取在非线性单调变换下不变的数据特征。这些特征可用于检测随机结构和几何结构,并且仅取决于矩阵元素的相对顺序。然后,我们分析了大鼠海马体中锥体神经元的活动,这些活动是在动物探索二维环境时记录的,并证实我们的方法能够仅使用神经相关性的内在模式来检测几何组织。值得注意的是,我们在诸如转轮跑步和快速眼动(REM)睡眠等非空间行为中也发现了类似的结果。这表明相关性的几何结构是由潜在的海马回路塑造的,而不仅仅是位置编码的结果。我们提出,团拓扑是生物环境中矩阵分析的一种强大新工具,在这种环境中,观测数量与更有意义变量之间的关系通常是非线性且未知的。