Mukamel Eran A, Nimmerjahn Axel, Schnitzer Mark J
James H. Clark Center for Biomedical Engineering and Sciences, Stanford University, Stanford CA 94305, USA.
Neuron. 2009 Sep 24;63(6):747-60. doi: 10.1016/j.neuron.2009.08.009.
Recent advances in fluorescence imaging permit studies of Ca(2+) dynamics in large numbers of cells, in anesthetized and awake behaving animals. However, unlike for electrophysiological signals, standardized algorithms for assigning optically recorded signals to individual cells have not yet emerged. Here, we describe an automated sorting procedure that combines independent component analysis and image segmentation for extracting cells' locations and their dynamics with minimal human supervision. In validation studies using simulated data, automated sorting significantly improved estimation of cellular signals compared to conventional analysis based on image regions of interest. We used automated procedures to analyze data recorded by two-photon Ca(2+) imaging in the cerebellar vermis of awake behaving mice. Our analysis yielded simultaneous Ca(2+) activity traces for up to >100 Purkinje cells and Bergmann glia from single recordings. Using this approach, we found microzones of Purkinje cells that were stable across behavioral states and in which synchronous Ca(2+) spiking rose significantly during locomotion.
荧光成像技术的最新进展使得在麻醉和清醒行为动物的大量细胞中研究钙离子(Ca(2+))动力学成为可能。然而,与电生理信号不同,尚未出现将光学记录信号分配到单个细胞的标准化算法。在此,我们描述了一种自动分选程序,该程序结合独立成分分析和图像分割,以最少的人工监督提取细胞位置及其动力学。在使用模拟数据的验证研究中,与基于感兴趣图像区域的传统分析相比,自动分选显著改善了细胞信号的估计。我们使用自动程序分析清醒行为小鼠小脑蚓部的双光子Ca(2+)成像记录的数据。我们的分析从单次记录中获得了多达100多个浦肯野细胞和伯格曼胶质细胞的同步Ca(2+)活性轨迹。使用这种方法,我们发现了浦肯野细胞的微区,这些微区在不同行为状态下是稳定的,并且在运动过程中同步Ca(2+)尖峰显著增加。