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本文引用的文献

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Hyperspectral cytometry at the single-cell level using a 32-channel photodetector.利用 32 通道光电探测器在单细胞水平进行高光谱细胞计量学分析。
Cytometry A. 2012 Jan;81(1):35-44. doi: 10.1002/cyto.a.21120. Epub 2011 Aug 30.
2
Surface-enhanced Raman scattering (SERS) cytometry.表面增强拉曼散射(SERS)细胞计数法。
Methods Cell Biol. 2011;102:515-32. doi: 10.1016/B978-0-12-374912-3.00020-1.
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A flow cytometer for the measurement of Raman spectra.一种用于测量拉曼光谱的流式细胞仪。
Cytometry A. 2008 Feb;73(2):119-28. doi: 10.1002/cyto.a.20520.
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Model-based variance-stabilizing transformation for Illumina microarray data.用于Illumina微阵列数据的基于模型的方差稳定变换
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Single particle high resolution spectral analysis flow cytometry.单颗粒高分辨率光谱分析流式细胞术
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Spectral imaging and linear unmixing in light microscopy.光学显微镜中的光谱成像与线性解混
Adv Biochem Eng Biotechnol. 2005;95:245-65. doi: 10.1007/b102216.
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Flow cytometer electronics.流式细胞仪电子设备。
Cytometry A. 2004 Feb;57(2):63-9. doi: 10.1002/cyto.a.10120.
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Variance stabilization applied to microarray data calibration and to the quantification of differential expression.方差稳定化应用于微阵列数据校准和差异表达定量分析。
Bioinformatics. 2002;18 Suppl 1:S96-104. doi: 10.1093/bioinformatics/18.suppl_1.s96.
9
Spectral compensation for flow cytometry: visualization artifacts, limitations, and caveats.流式细胞术的光谱补偿:可视化伪影、局限性及注意事项。
Cytometry. 2001 Nov 1;45(3):194-205. doi: 10.1002/1097-0320(20011101)45:3<194::aid-cyto1163>3.0.co;2-c.
10
Fluorescence spectral overlap compensation for any number of flow cytometry parameters.针对任意数量的流式细胞术参数进行荧光光谱重叠补偿。
Ann N Y Acad Sci. 1993 Mar 20;677:167-84. doi: 10.1111/j.1749-6632.1993.tb38775.x.

利用非方阵补偿矩阵的多光谱流式细胞术广义解混模型。

Generalized unmixing model for multispectral flow cytometry utilizing nonsquare compensation matrices.

机构信息

De Novo Software, 3250 Wilshire Blvd. Suite 803 Los Angeles, CA 90010, USA.

出版信息

Cytometry A. 2013 May;83(5):508-20. doi: 10.1002/cyto.a.22272. Epub 2013 Mar 22.

DOI:10.1002/cyto.a.22272
PMID:23526804
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4177998/
Abstract

Multispectral and hyperspectral flow cytometry (FC) instruments allow measurement of fluorescence or Raman spectra from single cells in flow. As with conventional FC, spectral overlap results in the measured signal in any given detector being a mixture of signals from multiple labels present in the analyzed cells. In contrast to traditional polychromatic FC, these devices utilize a number of detectors (or channels in multispectral detector arrays) that is larger than the number of labels, and no particular detector is a priori dedicated to the measurement of any particular label. This data-acquisition modality requires a rigorous study and understanding of signal formation as well as unmixing procedures that are employed to estimate labels abundance. The simplest extension of the traditional compensation procedure to multispectral data sets is equivalent to an ordinary least-square (LS) solution for estimating abundance of labels in individual cells. This process is identical to the technique employed for unmixing spectral data in various imaging fields. The present study shows that multispectral FC data violate key assumptions of the LS process, and use of the LS method may lead to unmixing artifacts, such as population distortion (spreading) and the presence of negative values in biomarker abundances. Various alternative unmixing techniques were investigated, including relative-error minimization and variance-stabilization transformations. The most promising results were obtained by performing unmixing using Poisson regression with an identity-link function within a generalized linear model framework. This formulation accounts for the presence of Poisson noise in the model of signal formation and subsequently leads to superior unmixing results, particularly for dim fluorescent populations. The proposed Poisson unmixing technique is demonstrated using simulated 8-channel, 2-fluorochrome data and real 32-channel, 6-fluorochrome data. The quality of unmixing is assessed by computing absolute and relative errors, as well as by calculating the symmetrized Kullback-Leibler divergence between known and approximated populations. These results are applicable to any flow-based system with more detectors than labels where Poisson noise is the dominant contributor to the overall system noise and highlight the fact that explicit incorporation of appropriate noise models is the key to accurately estimating the true label abundance on the cells. © 2013 International Society for Advancement of Cytometry.

摘要

多色和高光谱流式细胞术(FC)仪器允许在流动中测量单细胞的荧光或拉曼光谱。与传统的 FC 一样,光谱重叠导致在任何给定的检测器中测量的信号是存在于被分析细胞中的多个标记的信号的混合物。与传统的多色 FC 相比,这些设备利用比标记数量大的多个检测器(或多光谱检测器阵列中的通道),并且没有特定的检测器是预先专门用于测量任何特定标记的。这种数据采集模式需要对信号形成以及用于估计标记丰度的解混过程进行严格的研究和理解。将传统补偿过程最简单的扩展应用于多光谱数据集相当于用于估计单个细胞中标记丰度的普通最小二乘法(LS)解。该过程与各种成像领域中用于解混光谱数据的技术相同。本研究表明,多光谱 FC 数据违反了 LS 过程的关键假设,并且使用 LS 方法可能导致解混伪影,例如群体变形(扩散)和生物标志物丰度中存在负值。研究了各种替代解混技术,包括相对误差最小化和方差稳定化变换。通过在广义线性模型框架内使用具有恒等链接函数的泊松回归执行解混,可以获得最有前途的结果。这种公式考虑了信号形成模型中泊松噪声的存在,并且随后导致更好的解混结果,特别是对于暗淡的荧光群体。通过使用模拟的 8 通道、2 荧光染料数据和真实的 32 通道、6 荧光染料数据演示了泊松解混技术。通过计算绝对和相对误差以及计算已知和近似群体之间的对称化 Kullback-Leibler 散度来评估解混的质量。这些结果适用于任何具有比标记更多的检测器的基于流的系统,其中泊松噪声是整个系统噪声的主要贡献者,并强调了一个事实,即准确估计细胞上真实标记丰度的关键是明确纳入适当的噪声模型。 © 2013 国际细胞分析促进协会。