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Geometric compensation applied to image analysis of cell populations with morphological variability: a new role for a classical concept

机译:几何补偿应用于具有形态变异性的细胞群体的图像分析:经典概念的新作用

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摘要

Immunofluorescence is the gold standard technique to determine the level and spatial distribution of fluorescent-tagged molecules. However, quantitative analysis of fluorescence microscopy images faces crucial challenges such as morphologic variability within cells. In this work, we developed an analytical strategy to deal with cell shape and size variability that is based on an elastic geometric alignment algorithm. Firstly, synthetic images mimicking cell populations with morphological variability were used to test and optimize the algorithm, under controlled conditions. We have computed expression profiles specifically assessing cell-cell interactions (IN profiles) and profiles focusing on the distribution of a marker throughout the intracellular space of single cells (RD profiles). To experimentally validate our analytical pipeline, we have used real images of cell cultures stained for E-cadherin, tubulin and a mitochondria dye, selected as prototypes of membrane, cytoplasmic and organelle-specific markers. The results demonstrated that our algorithm is able to generate a detailed quantitative report and a faithful representation of a large panel of molecules, distributed in distinct cellular compartments, independently of cell’s morphological features. This is a simple end-user method that can be widely explored in research and diagnostic labs to unravel protein regulation mechanisms or identify protein expression patterns associated with disease.
机译:免疫荧光是确定荧光标记分子的水平和空间分布的金标准技术。但是,荧光显微镜图像的定量分析面临着严峻的挑战,例如细胞内的形态变异性。在这项工作中,我们开发了一种基于弹性几何对齐算法的处理细胞形状和大小可变性的分析策略。首先,在可控条件下,使用模拟图像来模拟具有形态变异性的细胞群体,以测试和优化算法。我们计算了表达谱,专门评估了细胞与细胞的相互作用(IN谱),并着重于标记物在单个细胞的整个胞内空间中的分布的谱(RD谱)。为了通过实验验证我们的分析流程,我们使用了染色了E-钙粘蛋白,微管蛋白和线粒体染料的细胞培养物的真实图像,它们被选作膜,细胞质和细胞器特异性标记物的原型。结果表明,我们的算法能够生成详细的定量报告并忠实地表示分布在不同细胞区室中的大分子分子,而与细胞的形态学特征无关。这是一种简单的最终用户方法,可以在研究和诊断实验室中广泛探索以阐明蛋白质调节机制或确定与疾病相关的蛋白质表达模式。

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