Optimizing transformations for automated, high throughput analysis of flow cytometry data

被引:58
作者
Finak, Greg [1 ]
Perez, Juan-Manuel [2 ]
Weng, Andrew [3 ]
Gottardo, Raphael [1 ]
机构
[1] Fred Hutchinson Canc Res Ctr, Vaccine & Infect Dis Div, Seattle, WA 98109 USA
[2] Inst Rech Clin Montreal, Computat Biol Unit, Montreal, PQ H2W 1R7, Canada
[3] Terry Fox Lab, Vancouver, BC V5Z 1L3, Canada
来源
BMC BIOINFORMATICS | 2010年 / 11卷
关键词
Data Transformation; Transformation Parameter; Misclassification Rate; Flow Cytometry Data; Untransformed Data;
D O I
10.1186/1471-2105-11-546
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: In a high throughput setting, effective flow cytometry data analysis depends heavily on proper data preprocessing. While usual preprocessing steps of quality assessment, outlier removal, normalization, and gating have received considerable scrutiny from the community, the influence of data transformation on the output of high throughput analysis has been largely overlooked. Flow cytometry measurements can vary over several orders of magnitude, cell populations can have variances that depend on their mean fluorescence intensities, and may exhibit heavily-skewed distributions. Consequently, the choice of data transformation can influence the output of automated gating. An appropriate data transformation aids in data visualization and gating of cell populations across the range of data. Experience shows that the choice of transformation is data specific. Our goal here is to compare the performance of different transformations applied to flow cytometry data in the context of automated gating in a high throughput, fully automated setting. We examine the most common transformations used in flow cytometry, including the generalized hyperbolic arcsine, biexponential, linlog, and generalized Box-Cox, all within the BioConductor flowCore framework that is widely used in high throughput, automated flow cytometry data analysis. All of these transformations have adjustable parameters whose effects upon the data are non-intuitive for most users. By making some modelling assumptions about the transformed data, we develop maximum likelihood criteria to optimize parameter choice for these different transformations. Results: We compare the performance of parameter-optimized and default-parameter (in flowCore) data transformations on real and simulated data by measuring the variation in the locations of cell populations across samples, discovered via automated gating in both the scatter and fluorescence channels. We find that parameter-optimized transformations improve visualization, reduce variability in the location of discovered cell populations across samples, and decrease the misclassification (mis-gating) of individual events when compared to default parameter counterparts. Conclusions: Our results indicate that the preferred transformation for fluorescence channels is a parameter-optimized biexponential or generalized Box-Cox, in accordance with current best practices. Interestingly, for populations in the scatter channels, we find that the optimized hyperbolic arcsine may be a better choice in a high-throughput setting than current standard practice of no transformation. However, generally speaking, the choice of transformation remains data-dependent. We have implemented our algorithm in the BioConductor package, flowTrans, which is publicly available.
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页数:13
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