Semi-Automated Image Analysis Methodology to Investigate Intracellular Heterogeneity in Immunohistochemical Stained Sections

R. Hamoudi, S. Hammoudeh, Arab M. Hammoudeh, S. Rawat
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引用次数: 1

Abstract

The discovery of tissue heterogeneity revolutionized the existing knowledge regarding the cellular, molecular, and pathophysiological mechanisms in biomedicine. Therefore, basic science investigations were redirected to encompass observation at the classical and quantum biology levels. Various approaches have been developed to investigate and capture tissue heterogeneity; however, these approaches are costly and incompatible with all types of samples. In this paper, we propose an approach to quantify heterogeneous cellular populations through combining histology and images processing techniques. In this approach, images of immunohistochemically stained sections are processed through color binning of DAB-stained cells (in brown) and non-stained cells (in blue) to select cellular clusters expressing biomarkers of interest. Subsequently, the images were converted to a binary format through threshold modification (threshold ~ 60%) in the grey scale. The cell count was extrapolated from the binary images using the particle analysis tool in ImageJ. This approach was applied to quantify the level of progesterone receptor expression levels in a breast cancer cell line sample. The results of the proposed approach were found to closely reflect those of manual counting. Through this approach, quantitative measures can be added to qualitative observation of subcellular targets expression.
半自动化图像分析方法研究免疫组织化学染色切片细胞内异质性
组织异质性的发现彻底改变了生物医学中关于细胞、分子和病理生理机制的现有知识。因此,基础科学研究被重新定向到包括经典和量子生物学水平的观察。已经开发了各种方法来研究和捕获组织异质性;然而,这些方法是昂贵的和不兼容的所有类型的样品。在本文中,我们提出了一种通过结合组织学和图像处理技术来量化异质细胞群体的方法。在这种方法中,免疫组织化学染色切片的图像通过对dab染色的细胞(棕色)和未染色的细胞(蓝色)进行颜色分形处理,以选择表达感兴趣的生物标志物的细胞簇。随后,通过灰度阈值修改(阈值~ 60%)将图像转换为二值格式。使用ImageJ中的粒子分析工具从二值图像中推断细胞计数。这种方法被应用于乳腺癌细胞系样本中孕酮受体表达水平的量化。结果表明,该方法能较好地反映人工计数的结果。通过这种方法,可以在定性观察亚细胞靶点表达的基础上增加定量手段。
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