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Neurogenomics in the mouse model: Multivariate statistical methods and analyses.

机译:小鼠模型中的神经基因组学:多元统计方法和分析。

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摘要

The use of high-throughput genomic technologies has led to significant advances in the study of the molecular anatomy of the mammalian brain and the creation of the field known as neurogenomics. Microarray gene expression data has been utilized to identify genes associated with specific brain functions, behaviors and disease-related phenotypes. These gene expression datasets have shed light on the molecular organization of both the developing and adult mammalian brain, specifically in the mouse model. To investigate the molecular organization of the adult mammalian brain, a gene expression-based brain map was built. Gene expression patterns for 24 neural tissues covering the mouse central nervous system were measured and it was found, surprisingly, that the adult brain bears a transcriptional "imprint" consistent with both embryological origins and classic evolutionary relationships. Beyond simply analyzing gene expression patterns within the brain, it is now possible to analyze genomic sequence data, such as single nucleotide polymorphisms (SNPs), in parallel with large scale gene expression data in what has been called a genetical genomics approach to determine transcriptional regulatory networks. To further analyze the molecular organization of the mouse brain, we analyzed gene expression profiles of five brain regions from six inbred mouse strains and integrated these findings with SNP data available for the individual strains. We found that many transcriptional regulatory networks are highly specific to particular brain regions. The ability to query the rich, complementary data sources of gene expression and SNPs together offers tremendous inroads to start to unravel the genetic determinates of complex polygenic diseases and phenotypes. However, appropriate data analysis strategies must be developed that can accommodate the complexity and high-dimensional aspects of these disparate data sources. In order to address some of these analysis issues, we developed an algorithm to identify sequence variation in gene expression data which can artificially affect expression signals and lead to false positive results. We also expanded a new statistical technique termed multivariate distance matrix regression that tests the association of multivariate profiles arising from high-dimensional data sets common in neurogenomics. The body of work presented herein attempts to assimilate the distinct fields of neuroanatomy, genomics, bioinformatics, statistical genetics and biostatistics to create novel analysis tools and develop new insights into biological processes related to neurogenomics.
机译:高通量基因组技术的使用已导致在研究哺乳动物大脑的分子解剖学和创建称为神经基因组学的领域方面取得了重大进展。微阵列基因表达数据已用于鉴定与特定脑功能,行为和疾病相关表型有关的基因。这些基因表达数据集揭示了发育中和成年哺乳动物脑的分子组织,特别是在小鼠模型中。为了研究成年哺乳动物脑的分子组织,建立了基于基因表达的脑图。测量了覆盖小鼠中枢神经系统的24个神经组织的基因表达模式,令人惊讶地发现,成年大脑具有与胚胎起源和经典进化关系一致的转录“烙印”。除了简单地分析大脑中的基因表达模式之外,现在还可以分析基因组序列数据,例如单核苷酸多态性(SNP),并与大规模基因表达数据并行进行,这称为遗传基因组学方法来确定转录调控网络。为了进一步分析小鼠大脑的分子组织,我们分析了六个自交系小鼠品系的五个大脑区域的基因表达谱,并将这些发现与可用于单个品系的SNP数据整合在一起。我们发现许多转录调控网络对特定的大脑区域具有高度特异性。可以查询丰富的,互补的基因表达和SNP数据源的能力,为探索复杂的多基因疾病和表型的遗传决定因素提供了巨大的帮助。但是,必须开发适当的数据分析策略,以适应这些不同数据源的复杂性和高维方面。为了解决其中的一些分析问题,我们开发了一种算法来识别基因表达数据中的序列变异,该变异可人为地影响表达信号并导致假阳性结果。我们还扩展了一种称为多变量距离矩阵回归的新统计技术,该技术可测试由神经基因组学中常见的高维数据集引起的多变量概况的关联。本文介绍的工作内容试图吸收神经解剖学,基因组学,生物信息学,统计遗传学和生物统计学的独特领域,以创造新颖的分析工具,并对与神经基因组学有关的生物过程发展新见解。

著录项

  • 作者

    Zapala, Matthew Alan.;

  • 作者单位

    University of California, San Diego.;

  • 授予单位 University of California, San Diego.;
  • 学科 Biology Genetics.; Biology Bioinformatics.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 230 p.
  • 总页数 230
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遗传学;
  • 关键词

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