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DAB-quant:一种用于对 3,3'-二氨基联苯胺(DAB)免疫组织化学染色进行定量分析的开源数字系统。

DAB-quant: An open-source digital system for quantifying immunohistochemical staining with 3,3'-diaminobenzidine (DAB).

机构信息

Emory College, Emory University, Atlanta, GA, United States of America.

Department of Electrical Engineering and Computer Sciences, University of California at Berkeley, Berkeley, CA, United States of America.

出版信息

PLoS One. 2022 Jul 20;17(7):e0271593. doi: 10.1371/journal.pone.0271593. eCollection 2022.

Abstract

Here, we describe DAB-quant, a novel, open-source program designed to facilitate objective quantitation of immunohistochemical (IHC) signal in large numbers of tissue slides stained with 3,3'-diaminobenzidine (DAB). Scanned slides are arranged into separate folders for negative controls and test slides, respectively. Otsu's method is applied to the negative control slides to define a threshold distinguishing tissue from empty space, and all pixels deemed tissue are scored for normalized red minus blue (NRMB) color intensity. Next, a user-defined tolerance for error is applied to the negative control slides to set a NRMB threshold distinguishing stained from unstained tissue and this threshold is applied to calculate the fraction of stained tissue pixels on each test slide. Results are recorded in a spreadsheet and pseudocolor images are presented to document how each pixel was categorized. Slides can be analyzed in full, or sampled using small boxes scattered randomly and automatically across the tissue area. Quantitation of sampling boxes enables faster processing, reveals the degree of heterogeneity of signal, and enables exclusion of problem areas on a slide, if needed. This system should prove useful for a broad range of applications. The code, usage instructions, and sample data are freely and publicly available on GitHub (https://github.com/sarafridov/DAB-quant) and at protocols.io (dx.doi.org/10.17504/protocols.io.dm6gpb578lzp/v1).

摘要

这里,我们描述了 DAB-quant,这是一个新的、开源的程序,旨在促进 3,3'-二氨基联苯胺 (DAB) 染色的大量组织切片的免疫组织化学 (IHC) 信号的客观定量。扫描的幻灯片分别排列在阴性对照和测试幻灯片的单独文件夹中。Otsu 方法应用于阴性对照幻灯片,以定义区分组织和空白的阈值,所有被认为是组织的像素都用于归一化红色减蓝色 (NRMB) 颜色强度的评分。接下来,对阴性对照幻灯片应用用户定义的误差容限,以设置区分染色和未染色组织的 NRMB 阈值,然后将此阈值应用于计算每个测试幻灯片上染色组织像素的分数。结果记录在电子表格中,并呈现伪彩色图像以记录每个像素的分类方式。可以对幻灯片进行全分析,也可以使用随机散布在组织区域中的小方框进行采样分析。采样框的定量分析可以加快处理速度,揭示信号的异质性程度,并在需要时排除幻灯片上的问题区域。这个系统应该对广泛的应用领域都很有用。该代码、使用说明和示例数据可在 GitHub(https://github.com/sarafridov/DAB-quant)和 protocols.io(dx.doi.org/10.17504/protocols.io.dm6gpb578lzp/v1)上免费和公开获得。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0e42/9299305/e376d8bf65cc/pone.0271593.g001.jpg

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