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Disentangling Dynamic Changes of Multiple Cellular Components during the Yeast Cell Cycle by in Vivo Multivariate Raman Imaging

机译:体内多变量拉曼成像解析酵母细胞周期中多个细胞成分的动态变化

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摘要

Cellular processes are intrinsically complex and dynamic, in which a myriad of cellular components including nucleic acids, proteins, membranes, and organelles are involved and undergo spatiotemporal changes. Label-free Raman imaging has proven powerful for studying such dynamic behaviors in vivo and at the molecular level. To construct Raman images, univariate data analysis has been commonly employed, but it cannot be free from uncertainties due to severely overlapped spectral information. Here, we demonstrate multivariate curve resolution analysis for time-lapse Raman imaging of a single dividing yeast cell. A four-dimensional (spectral variable, spatial positions in the two-dimensional image plane, and time sequence) Raman data "hypercube" is unfolded to a two-way array and then analyzed globally using multivariate curve resolution. The multivariate Raman imaging thus accomplished successfully disentangles dynamic changes of both concentrations and distributions of major cellular components (lipids, proteins, and polysaccharides) during the cell cycle of the yeast cell. The results show a drastic decrease in the amount of lipids by approx50percent after cell division and uncover a protein-associated component that has not been detected with previous univariate approaches.
机译:细胞过程本质上是复杂且动态的,其中涉及包括核酸,蛋白质,膜和细胞器在内的无数种细胞成分,并会发生时空变化。事实证明,无标记拉曼成像在研究体内和分子水平的动态行为方面具有强大的功能。为了构建拉曼图像,通常使用单变量数据分析,但是由于光谱信息严重重叠,因此无法避免不确定性。在这里,我们演示了单个分裂酵母细胞的延时拉曼成像的多变量曲线分辨率分析。将四维(光谱变量,二维图像平面中的空间位置和时间序列)拉曼数据“超立方体”展开为双向阵列,然后使用多元曲线分辨率进行全局分析。如此完成的多元拉曼成像成功地消除了在酵母细胞的细胞周期中主要细胞成分(脂质,蛋白质和多糖)的浓度和分布的动态变化。结果表明,细胞分裂后脂质的数量急剧减少了约50%,并且发现了以前单变量方法未检测到的蛋白质相关成分。

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