Kang Louis, Xu Boyan, Morozov Dmitriy
Redwood Center for Theoretical Neuroscience, University of California, Berkeley, Berkeley, CA, United States.
Neural Circuits and Computations Unit, RIKEN Center for Brain Science, Wako, Japan.
Front Comput Neurosci. 2021 Apr 8;15:616748. doi: 10.3389/fncom.2021.616748. eCollection 2021.
Persistent cohomology is a powerful technique for discovering topological structure in data. Strategies for its use in neuroscience are still undergoing development. We comprehensively and rigorously assess its performance in simulated neural recordings of the brain's spatial representation system. Grid, head direction, and conjunctive cell populations each span low-dimensional topological structures embedded in high-dimensional neural activity space. We evaluate the ability for persistent cohomology to discover these structures for different dataset dimensions, variations in spatial tuning, and forms of noise. We quantify its ability to decode simulated animal trajectories contained within these topological structures. We also identify regimes under which mixtures of populations form product topologies that can be detected. Our results reveal how dataset parameters affect the success of topological discovery and suggest principles for applying persistent cohomology, as well as persistent homology, to experimental neural recordings.
持久上同调是一种用于发现数据中拓扑结构的强大技术。其在神经科学中的应用策略仍在不断发展。我们全面且严格地评估了它在大脑空间表征系统模拟神经记录中的性能。网格细胞、头方向细胞以及联合细胞群体各自跨越嵌入高维神经活动空间的低维拓扑结构。我们评估了持久上同调针对不同数据集维度、空间调谐变化以及噪声形式发现这些结构的能力。我们量化了它解码包含在这些拓扑结构内的模拟动物轨迹的能力。我们还确定了群体混合形成可检测的乘积拓扑的条件。我们的结果揭示了数据集参数如何影响拓扑发现的成功率,并提出了将持久上同调以及持久同调应用于实验神经记录的原则。