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Segmentation and Classification of Cell Cycle Phases in Fluorescence Imaging

机译:荧光成像中细胞周期阶段的分割和分类

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摘要

Current chemical biology methods for studying spatiotemporal correlation between biochemical networks and cell cycle phase progression in live-cells typically use fluorescence-based imaging of fusion proteins. Stable cell lines expressing fluorescently tagged protein GFP-PCNA produce rich, dynamically varying sub-cellular foci patterns characterizing the cell cycle phases, including the progress during the S-phase. Variable fluorescence patterns, drastic changes in SNR, shape and position changes and abundance of touching cells require sophisticated algorithms for reliable automatic segmentation and cell cycle classification. We extend the recently proposed graph partitioning active contours (GPAC) for fluorescence-based nucleus segmentation using regional density functions and dramatically improve its efficiency, making it scalable for high content microscopy imaging. We utilize surface shape properties of GFP-PCNA intensity field to obtain descriptors of foci patterns and perform automated cell cycle phase classification, and give quantitative performance by comparing our results to manually labeled data.
机译:用于研究活细胞中生化网络与细胞周期阶段进展之间的时空相关性的当前化学生物学方法通常使用基于荧光的融合蛋白成像。表达荧光标记的蛋白GFP-PCNA的稳定细胞系会产生丰富的动态变化的亚细胞灶模式,这些模式表征了细胞周期阶段,包括S期的进展。可变的荧光模式,SNR的急剧变化,形状和位置的变化以及接触细胞的丰度需要复杂的算法,以实现可靠的自动分段和细胞周期分类。我们使用区域密度函数扩展了最近提出的基于荧光的核分割的图划分活动轮廓(GPAC),并显着提高了其效率,使其可扩展用于高含量显微镜成像。我们利用GFP-PCNA强度场的表面形状特性来获得病灶模式的描述子并执行自动细胞周期阶段分类,并通过将我们的结果与手动标记的数据进行比较来给出定量的性能。

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