Center for the Neural Basis of Cognition, Carnegie Mellon University, Pittsburgh, United States.
Department of Statistics, Columbia University, New York, United States.
Elife. 2018 Feb 22;7:e28728. doi: 10.7554/eLife.28728.
In vivo calcium imaging through microendoscopic lenses enables imaging of previously inaccessible neuronal populations deep within the brains of freely moving animals. However, it is computationally challenging to extract single-neuronal activity from microendoscopic data, because of the very large background fluctuations and high spatial overlaps intrinsic to this recording modality. Here, we describe a new constrained matrix factorization approach to accurately separate the background and then demix and denoise the neuronal signals of interest. We compared the proposed method against previous independent components analysis and constrained nonnegative matrix factorization approaches. On both simulated and experimental data recorded from mice, our method substantially improved the quality of extracted cellular signals and detected more well-isolated neural signals, especially in noisy data regimes. These advances can in turn significantly enhance the statistical power of downstream analyses, and ultimately improve scientific conclusions derived from microendoscopic data.
通过微内窥镜镜片进行体内钙成像,使我们能够对自由活动动物大脑深处以前无法进入的神经元群体进行成像。然而,由于这种记录模式固有的非常大的背景波动和高空间重叠,从微内窥镜数据中提取单个神经元活动具有很大的计算挑战性。在这里,我们描述了一种新的约束矩阵分解方法,以准确地分离背景,然后对感兴趣的神经元信号进行解混和去噪。我们将提出的方法与之前的独立成分分析和约束非负矩阵分解方法进行了比较。在从小鼠记录的模拟和实验数据上,我们的方法大大提高了提取的细胞信号的质量,并检测到更多隔离良好的神经信号,尤其是在噪声数据环境中。这些改进反过来又可以显著提高下游分析的统计能力,并最终提高从小内窥镜数据中得出的科学结论的质量。