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Application of stellar photometry to the analysis of microarray images.

机译:恒星光度法在微阵列图像分析中的应用。

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摘要

Improvements in the analysis of microarray images are critical for accurately quantifying gene expression levels. The acquisition of accurate spot intensities directly influences the results and interpretation of statistical analyses. This dissertation discusses the implementation of a novel approach to the analysis of cDNA microarray images. We use a stellar photometric model, the Moffat function, to quantify microarray spots from nylon microarray images. The inherent flexibility of the Moffat shape model makes it ideal for quantifying microarray spots. We apply our novel approach to a Wilms' tumor microarray study and compare our results with a fixed-circle segmentation approach for spot quantification. Our results suggest that different spot feature extraction methods can have an impact on the ability of statistical methods to identify differentially expressed genes. We also used the Moffat function to simulate a series of microarray images under various experimental conditions. These simulations were used to validate the performance of various statistical methods for identifying differentially expressed genes. Our simulation results indicate that tests taking into account the dependency between mean spot intensity and variance estimation, such as the smoothened t-test, can better identify differentially expressed genes, especially when the number of replicates and mean fold change are low. The analysis of the simulations also showed that overall, a rank sum test (Mann-Whitney) performed well at identifying differentially expressed genes. Previous work has suggested the strengths of nonparametric approaches for identifying differentially expressed genes. We also show that multivariate approaches, such as hierarchical and k-means cluster analysis along with principal components analysis, are only effective at classifying samples when replicate numbers and mean fold change are high. Finally, we show how our stellar shape model approach can be extended to the analysis of 2D-gel images by adapting the Moffat function to take into account the elliptical nature of spots in such images. Our results indicate that stellar shape models offer a previously unexplored approach for the quantification of 2D-gel spots.
机译:微阵列图像分析的改进对于准确定量基因表达水平至关重要。准确的光点强度的获取直接影响统计分析的结果和解释。本文讨论了一种新的cDNA微阵列图像分析方法的实现。我们使用恒星光度模型,即Moffat函数,以量化尼龙微阵列图像中的微阵列斑点。 Moffat形状模型的固有灵活性使其成为定量微阵列斑点的理想选择。我们将我们的新方法应用于Wilms的肿瘤微阵列研究,并将我们的结果与固定圆分割方法进行斑点定量比较。我们的结果表明,不同的斑点特征提取方法可能会影响统计方法识别差异表达基因的能力。我们还使用Moffat函数在各种实验条件下模拟一系列微阵列图像。这些模拟被用来验证各种统计学方法用于鉴定差异表达基因的性能。我们的模拟结果表明,考虑到平均斑点强度和方差估计之间的相关性的测试(例如平滑的t检验)可以更好地识别差异表达的基因,尤其是当重复数和平均倍数变化较低时。模拟分析还表明,总体而言,秩和检验(Mann-Whitney)在识别差异表达基因方面表现良好。先前的工作表明了用于鉴定差异表达基因的非参数方法的优势。我们还显示,多变量方法(例如层次和k均值聚类分析以及主成分分析)仅在重复数和平均倍数变化较高时才有效地对样品进行分类。最后,我们展示了如何通过调整Moffat函数以考虑此类图像中斑点的椭圆特性,将我们的恒星形状模型方法扩展到2D凝胶图像分析。我们的结果表明,恒星形状模型为2D凝胶斑点的定量提供了一种以前尚未探索的方法。

著录项

  • 作者

    Sabripour, Mahyar.;

  • 作者单位

    The University of Texas Health Science Center at Houston Graduate School of Biomedical Sciences.;

  • 授予单位 The University of Texas Health Science Center at Houston Graduate School of Biomedical Sciences.;
  • 学科 Biology Biostatistics.; Biology Genetics.; Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 243 p.
  • 总页数 243
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物数学方法;遗传学;生物医学工程;
  • 关键词

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