Waseda University, 1-104 Totsuka-cho, Shinjuku, Tokyo, 169-8050, Japan.
The Institute of Statistical Mathematics, 10-3 Midori-cho, Tachikawa, Tokyo, 190-8562, Japan.
Neural Netw. 2022 May;149:29-39. doi: 10.1016/j.neunet.2022.01.023. Epub 2022 Feb 7.
A large number of neurons form cell assemblies that process information in the brain. Recent developments in measurement technology, one of which is calcium imaging, have made it possible to study cell assemblies. In this study, we aim to extract cell assemblies from calcium imaging data. We propose a clustering approach based on non-negative matrix factorization (NMF). The proposed approach first obtains a similarity matrix between neurons by NMF and then performs spectral clustering on it. The application of NMF entails the problem of model selection. The number of bases in NMF affects the result considerably, and a suitable selection method is yet to be established. We attempt to resolve this problem by model averaging with a newly defined estimator based on NMF. Experiments on simulated data suggest that the proposed approach is superior to conventional correlation-based clustering methods over a wide range of sampling rates. We also analyzed calcium imaging data of sleeping/waking mice and the results suggest that the size of the cell assembly depends on the degree and spatial extent of slow wave generation in the cerebral cortex.
大量神经元形成细胞组合,在大脑中处理信息。测量技术的最新发展,其中之一是钙成像,使得研究细胞组合成为可能。在这项研究中,我们旨在从钙成像数据中提取细胞组合。我们提出了一种基于非负矩阵分解(NMF)的聚类方法。该方法首先通过 NMF 获得神经元之间的相似性矩阵,然后对其进行谱聚类。NMF 的应用涉及模型选择问题。NMF 中的基数量对结果有很大影响,尚未建立合适的选择方法。我们尝试通过基于 NMF 的新定义估计器的模型平均来解决这个问题。对模拟数据的实验表明,在广泛的采样率范围内,所提出的方法优于传统的基于相关的聚类方法。我们还分析了睡眠/清醒小鼠的钙成像数据,结果表明细胞组合的大小取决于大脑皮层中慢波产生的程度和空间范围。