School of Biomedical Sciences, University of Leeds, Leeds, England.
School of Biomedical Sciences, University of Leeds, Leeds, England.
Biophys J. 2014 Feb 4;106(3):566-76. doi: 10.1016/j.bpj.2013.12.040.
Previous studies have used analysis of Ca(2+) sparks extensively to investigate both normal and pathological Ca(2+) regulation in cardiac myocytes. The great majority of these studies used line-scan confocal imaging. In part, this is because the development of open-source software for automatic detection of Ca(2+) sparks in line-scan images has greatly simplified data analysis. A disadvantage of line-scan imaging is that data are collected from a single row of pixels, representing only a small fraction of the cell, and in many instances x-y confocal imaging is preferable. However, the limited availability of software for Ca(2+) spark analysis in two-dimensional x-y image stacks presents an obstacle to its wider application. This study describes the development and characterization of software to enable automatic detection and analysis of Ca(2+) sparks within x-y image stacks, implemented as a plugin within the open-source image analysis platform ImageJ. The program includes methods to enable precise identification of cells within confocal fluorescence images, compensation for changes in background fluorescence, and options that allow exclusion of events based on spatial characteristics.
先前的研究广泛采用 Ca(2+) 火花分析来研究心肌细胞中的正常和病理 Ca(2+) 调节。这些研究中的绝大多数都使用了线扫描共聚焦成像。部分原因是,用于在线扫描图像中自动检测 Ca(2+) 火花的开源软件的发展极大地简化了数据分析。线扫描成像的一个缺点是,数据仅来自一行像素,仅代表细胞的一小部分,在许多情况下,x-y 共聚焦成像更可取。然而,二维 x-y 图像堆栈中用于 Ca(2+) 火花分析的软件的有限可用性成为其更广泛应用的障碍。本研究描述了一种软件的开发和特性,该软件可用于在 x-y 图像堆栈中自动检测和分析 Ca(2+) 火花,作为开源图像分析平台 ImageJ 中的一个插件实现。该程序包括用于在共聚焦荧光图像中精确识别细胞、补偿背景荧光变化以及根据空间特征排除事件的选项的方法。