Physics Department, University of Florida, PO Box 118440, Gainesville, FL 32611-8440, USA.
Biochem Biophys Res Commun. 2012 May 11;421(3):425-30. doi: 10.1016/j.bbrc.2012.03.117. Epub 2012 Apr 1.
Studies of stochasticity in gene expression typically make use of fluorescent protein reporters, which permit the measurement of expression levels within individual cells by fluorescence microscopy. Analysis of such microscopy images is almost invariably based on a segmentation algorithm, where the image of a cell or cluster is analyzed mathematically to delineate individual cell boundaries. However segmentation can be ineffective for studying bacterial cells or clusters, especially at lower magnification, where outlines of individual cells are poorly resolved. Here we demonstrate an alternative method for analyzing such images without segmentation. The method employs a comparison between the pixel brightness in phase contrast vs fluorescence microscopy images. By fitting the correlation between phase contrast and fluorescence intensity to a physical model, we obtain well-defined estimates for the different levels of gene expression that are present in the cell or cluster. The method reveals the boundaries of the individual cells, even if the source images lack the resolution to show these boundaries clearly.
研究基因表达的随机性通常会使用荧光蛋白报告基因,这使得通过荧光显微镜测量单个细胞内的表达水平成为可能。对这些显微镜图像的分析几乎无一例外地基于分割算法,该算法对细胞或细胞簇的图像进行数学分析以描绘单个细胞的边界。然而,对于研究细菌细胞或细胞簇,分割算法可能并不有效,尤其是在较低放大倍数下,单个细胞的轮廓难以分辨。在这里,我们展示了一种无需分割即可分析此类图像的替代方法。该方法采用比较相差对比和荧光显微镜图像中的像素亮度。通过将相差对比度和荧光强度之间的相关性拟合到物理模型,我们获得了存在于细胞或细胞簇中的不同基因表达水平的明确定义的估计值。即使源图像没有清晰显示这些边界的分辨率,该方法也能揭示单个细胞的边界。