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首页> 外文期刊>Cytometry, Part A: the journal of the International Society for Analytical Cytology >Long-term time series analysis of quantum dot encoded cells by deconvolution of the autofluorescence signal
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Long-term time series analysis of quantum dot encoded cells by deconvolution of the autofluorescence signal

机译:通过自发荧光信号的反卷积对量子点编码的细胞进行长期时间序列分析

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The monitoring of cells labeled with quantum dot endosome-targeted markers in a highly proliferative population provides a quantitative approach to determine the redistribution of quantum dot signal as cells divide over generations. We demonstrate that the use of time-series flow cytometry in conjunction with a stochastic numerical simulation to provide a means to describe the proliferative features and quantum dot inheritance over multiple generations of a human tumor population. However, the core challenge for long-term tracking where the original quantum dot fluorescence signal over time becomes redistributed across a greater cell number requires accountability of background fluorescence in the simulation. By including an autofluorescence component, we are able to continue even when this signal predominates (i.e., > 80% of the total signal) and obtain valid readouts of the proliferative system. We determine the robustness of the technique by tracking a human osteosarcoma cell population over 8 days and discuss the accuracy and certainty of the model parameters obtained. This systems biology approach provides insight into both cell heterogeneity and division dynamics within the population and furthermore informs on the lineage history of its members.
机译:对高度增殖的群体中以量子点内体靶向标记物标记的细胞的监测提供了一种定量方法,可以确定随着细胞分裂而产生的量子点信号的重新分布。我们证明时间序列流式细胞仪结合随机数值模拟的使用提供了一种手段来描述人类肿瘤种群多代的增殖特征和量子点遗传。但是,长期跟踪的核心挑战是,随着时间的推移原始的量子点荧光信号会在更大的细胞数量上重新分布,这需要在模拟中对背景荧光负责。通过包含自发荧光成分,即使该信号占主导地位(即,占总信号的80%以上),我们也能够继续进行,并获得增殖系统的有效读数。我们通过跟踪人类骨肉瘤细胞超过8天来确定该技术的鲁棒性,并讨论所获得模型参数的准确性和确定性。该系统生物学方法提供了对种群内细胞异质性和分裂动力学的洞察力,并进一步告知了其成员的谱系历史。

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