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MatCol: a tool to measure fluorescence signal colocalisation in biological systems

机译:MatCol:一种用于测量生物系统中荧光信号共定位的工具

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摘要

Protein colocalisation is often studied using pixel intensity-based coefficients such as Pearson, Manders, Li or Costes. However, these methods cannot be used to study object-based colocalisations in biological systems. Therefore, a novel method is required to automatically identify regions of fluorescent signal in two channels, identify the co-located parts of these regions, and calculate the statistical significance of the colocalisation. We have developed MatCol to address these needs. MatCol can be used to visualise protein and/or DNA colocalisations and fine tune user-defined parameters for the colocalisation analysis, including the application of median or Wiener filtering to improve the signal to noise ratio. Command-line execution allows batch processing of multiple images. Users can also calculate the statistical significance of the observed object colocalisations compared to overlap by random chance using Student’s t-test. We validated MatCol in a biological setting. The colocalisations of telomeric DNA and TRF2 protein or TRF2 and PML proteins in >350 nuclei derived from three different cell lines revealed a highly significant correlation between manual and MatCol identification of colocalisations (linear regression R2 = 0.81, P < 0.0001). MatCol has the ability to replace manual colocalisation counting, and the potential to be applied to a wide range of biological areas.
机译:通常使用基于像素强度的系数(例如Pearson,Manders,Li或Costes)研究蛋白质共定位。但是,这些方法不能用于研究生物系统中基于对象的共定位。因此,需要一种新颖的方法来自动识别两个通道中的荧光信号区域,识别这些区域的共处部分,并计算共定位的统计显着性。我们已经开发出MatCol来满足这些需求。 MatCol可用于可视化蛋白质和/或DNA的共定位,并微调用户定义的参数以进行共定位分析,包括应用中值滤波或Wiener滤波来改善信噪比。命令行执行允许批量处理多个图像。用户还可以使用学生的t检验,通过随机偶然的机会比较观察到的对象共定位的统计显着性。我们在生物环境中验证了MatCol。端粒DNA和TRF2蛋白或TRF2和PML蛋白在来自三个不同细胞系的> 350个核中的共定位揭示了人工和MatCol鉴定共定位之间的高度显着相关性(线性回归R 2 = 0.81, P <0.0001)。 MatCol具有取代人工共定位计数的能力,并且有可能应用于广泛的生物领域。

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