Sizemore Ann E, Phillips-Cremins Jennifer E, Ghrist Robert, Bassett Danielle S
Department of Bioengineering, School of Engineering and Applied Sciences, University of Pennsylvania, Philadelphia, USA.
Department of Mathematics, College of Arts and Sciences, University of Pennsylvania, Philadelphia, USA.
Netw Neurosci. 2019 Jul 1;3(3):656-673. doi: 10.1162/netn_a_00073. eCollection 2019.
Data analysis techniques from network science have fundamentally improved our understanding of neural systems and the complex behaviors that they support. Yet the restriction of network techniques to the study of pairwise interactions prevents us from taking into account intrinsic topological features such as cavities that may be crucial for system function. To detect and quantify these topological features, we must turn to algebro-topological methods that encode data as a simplicial complex built from sets of interacting nodes called simplices. We then use the relations between simplices to expose cavities within the complex, thereby summarizing its topological features. Here we provide an introduction to persistent homology, a fundamental method from applied topology that builds a global descriptor of system structure by chronicling the evolution of cavities as we move through a combinatorial object such as a weighted network. We detail the mathematics and perform demonstrative calculations on the mouse structural connectome, synapses in , and genomic interaction data. Finally, we suggest avenues for future work and highlight new advances in mathematics ready for use in neural systems.
网络科学中的数据分析技术从根本上提升了我们对神经系统及其所支持的复杂行为的理解。然而,网络技术在研究成对相互作用时的局限性,使我们无法考虑到诸如空洞等可能对系统功能至关重要的内在拓扑特征。为了检测和量化这些拓扑特征,我们必须转向代数拓扑方法,这种方法将数据编码为一个单纯复形,该复形由称为单纯形的相互作用节点集构建而成。然后,我们利用单纯形之间的关系来揭示复形中的空洞,从而总结其拓扑特征。在此,我们介绍持久同调,这是一种来自应用拓扑学的基本方法,它通过记录当我们遍历诸如加权网络等组合对象时空洞的演变,构建系统结构的全局描述符。我们详细阐述了其中的数学原理,并对小鼠结构连接组、[具体内容缺失]中的突触以及基因组相互作用数据进行了示范性计算。最后,我们提出了未来工作的方向,并强调了可用于神经系统的数学新进展。