Image Analysis Using the Fluorescence Imaging of Nuclear Staining (FINS) Algorithm.

Laura R Bramwell, Jack Spencer, Ryan Frankum, Emad Manni, Lorna W Harries
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Abstract

Finding appropriate image analysis techniques for a particular purpose can be difficult. In the context of the analysis of immunocytochemistry images, where the key information lies in the number of nuclei containing co-localised fluorescent signals from a marker of interest, researchers often opt to use manual counting techniques because of the paucity of available tools. Here, we present the development and validation of the Fluorescence Imaging of Nuclear Staining (FINS) algorithm for the quantification of fluorescent signals from immunocytochemically stained cells. The FINS algorithm is based on a variational segmentation of the nuclear stain channel and an iterative thresholding procedure to count co-localised fluorescent signals from nuclear proteins in other channels. We present experimental results comparing the FINS algorithm to the manual counts of seven researchers across a dataset of three human primary cell types which are immunocytochemically stained for a nuclear marker (DAPI), a biomarker of cellular proliferation (Ki67), and a biomarker of DNA damage (γH2AX). The quantitative performance of the algorithm is analysed in terms of consistency with the manual count data and acquisition time. The FINS algorithm produces data consistent with that achieved by manual counting but improves the process by reducing subjectivity and time. The algorithm is simple to use, based on software that is omnipresent in academia, and allows data review with its simple, intuitive user interface. We hope that, as the FINS tool is open-source and is custom-built for this specific application, it will streamline the analysis of immunocytochemical images.

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使用核染色荧光成像(FINS)算法进行图像分析。
为特定目的寻找合适的图像分析技术可能很困难。在分析免疫细胞化学图像时,关键信息在于含有相关标记共定位荧光信号的细胞核数量,但由于可用工具太少,研究人员通常选择使用手动计数技术。在此,我们介绍了用于量化免疫细胞化学染色细胞荧光信号的核染色荧光成像(FINS)算法的开发和验证情况。FINS 算法基于核染色通道的变异分割和迭代阈值程序,以计算其他通道中来自核蛋白的共定位荧光信号。我们展示的实验结果比较了 FINS 算法和七位研究人员在三个人类原代细胞数据集上的人工计数结果,这些数据集分别对核标记物(DAPI)、细胞增殖生物标记物(Ki67)和 DNA 损伤生物标记物(γH2AX)进行了免疫细胞化学染色。从与人工计数数据的一致性和采集时间两个方面分析了该算法的定量性能。FINS 算法生成的数据与人工计数的数据一致,但通过减少主观性和时间改进了计数过程。该算法使用简单,基于学术界随处可见的软件,并可通过简单直观的用户界面进行数据审查。我们希望,由于 FINS 工具是开源的,而且是为这一特定应用定制的,它将简化免疫细胞化学图像的分析过程。
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