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Equivalence testing to find differentially expressed genes in two-color microarrays.

机译:进行等效性测试,以发现双色微阵列中差异表达的基因。

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摘要

Equivalence testing was used to identify and rank differential expression of genes represented in microarray data from an experiment on HL60 cells and a type of modified HL60 cells. This type of statistical analysis has previously only been used to find equivalent expression in microarray data. Equivalence of gene expression was tested here using two one-sided t-tests (DOSTT, for double one-sided t-tests) and an equivalence interval between two-fold increase and two-fold decrease in expression. Genes having the largest p-values in equivalence testing were considered the least equivalent and then taken as genes with the most significant difference in expression. Genes were then ranked from largest to smallest p-value to form lists of the genes most likely differentially expressed, or top genes. The performance of the DOSTT method was evaluated by comparing the number of top genes in common with top genes found by four other methods and by comparing the ranks of top genes with ranks assigned by the other methods. A degree of correspondence was found between DOSTT results and results from both a moderated t-test method (limma) and the statistical analysis of microarrays (SAM). Top genes found by DOSTT, limma, and SAM methods were similar to each other in many respects, but results from each one of these methods were different than results from fold change and t-test methods. Results are discussed in terms of the reasons for similarities and differences among methods and are compared with published results of other studies. Based on results of this study, equivalence testing seems able to identify top genes in microarray data as well as they are identified by at least two commonly used methods.
机译:等效性测试用于鉴定和排序来自HL60细胞和一种修饰的HL60细胞实验的微阵列数据中代表的基因的差异表达。这种类型的统计分析以前仅用于查找微阵列数据中的等效表达。在这里使用两个单侧t检验(DOSTT,双侧t检验)测试基因表达的等效性,并在表达的两倍增加和两倍减少之间进行等价间隔。在等效性测试中具有最大p值的基因被认为是最小等价的,然后被视为表达差异最大的基因。然后将基因从最大p值到最小p值进行排序,以形成最有可能差异表达的基因或顶部基因的列表。 DOSTT方法的性能是通过比较常见的top基因与通过其他四种方法发现的top基因的数目,以及将top基因的排名与其他方法分配的排名进行比较来评估的。在DOSTT结果与适度t检验方法(limma)和微阵列统计分析(SAM)的结果之间发现了一定程度的对应性。通过DOSTT,limma和SAM方法发现的顶级基因在许多方面都彼此相似,但是每种方法的结果都不同于倍数变化和t检验方法的结果。根据方法之间异同的原因讨论了结果,并将其与其他研究的已发表结果进行了比较。根据这项研究的结果,等效性测试似乎能够识别微阵列数据中的顶级基因,并且可以通过至少两种常用方法来识别它们。

著录项

  • 作者

    Seaman, Ronald L.;

  • 作者单位

    The University of Texas at San Antonio.;

  • 授予单位 The University of Texas at San Antonio.;
  • 学科 Statistics.
  • 学位 M.S.
  • 年度 2010
  • 页码 60 p.
  • 总页数 60
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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