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Using mixed effects models to integrate high-dimensional, genomic data and an array-based analysis of the evolution of brain aging.

机译:使用混合效应模型来整合高维,基因组数据和基于数组的大脑衰老进化分析。

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摘要

This dissertation presents a novel contribution to scientific knowledge in the form of the development of statistical methodology for integrating diverse, genomic data sets, and by contributing to the understanding of the conservation of post-reproductive brain aging in mammals. Broadly speaking, this work is divided into two complimentary sections. The first section describes the development of a mixed effects modeling approach for integrating high-dimensional, genomic data sets. Microarray-based technologies allow researchers to monitor gene expression, transcription factor binding and alternative splicing on a genome-wide scale. The current challenge is to develop methods that analyze and integrate these vast data sets in a manner that produces biologically meaningful results, which can then be experimentally followed-up in the lab. The approach is described in terms of analyzing array data in the context of biologically-related groups of genes. A key component to this approach is the development of a novel model selection strategy that utilizes the biological information contained in the Gene Ontology graph in order to balance between biological specificity and model parsimony.;The second section discusses a phylogenetic comparison of post-reproductive brain aging and its relevance to studies the employ animal models in the aging field. This portion of the dissertation is further divided into three subsections. To obtain greater insight into mammalian brain aging, subsection one describes the first genome-scale comparison of the aging brain transcriptomes of humans, rhesus macaques and mice. This analysis indicates that increased expression of neuroprotective genes and reduced expression of synaptic signaling genes are conserved features of mammalian brain aging. However, the repression of neuronal gene expression in humans, and in particular genes that mediate inhibitory neurotransmission, may render the human brain uniquely vulnerable to age-related neurodegeneration. The limited conservation of post-reproductive brain aging is then examined in the context of the recent advances in animal models of aging, specifically long-lived and advanced-aging models. Lastly, the age-related increase in DNA damage that is observed in the human cortex, which is absent from the aging mouse cortex, is further characterized using ChIP-Chip technology to probe for age-related differences in oxidative DNA damage.;This dissertation concludes with a description of future steps for the application of a mixed effects modeling approach to combining ChIP-Chip-based DNA damage data with microarray expression data as a means of characterizing the genome-wide transcriptional response to age-related changes in DNA damage.
机译:本文以统计方法的发展为科学知识做出了新的贡献,该方法用于整合各种基因组数据集,并有助于了解哺乳动物的生殖后脑衰老。从广义上讲,这项工作分为两个互补部分。第一部分描述了用于集成高维基因组数据集的混合效果建模方法的开发。基于微阵列的技术使研究人员可以在全基因组范围内监控基因表达,转录因子结合和选择性剪接。当前的挑战是开发一种方法,以产生生物学上有意义的结果的方式分析和整合这些庞大的数据集,然后可以在实验室中对这些结果进行实验跟踪。根据在生物学相关基因组的背景下分析阵列数据来描述该方法。该方法的关键部分是开发一种新的模型选择策略,该策略利用基因本体图中包含的生物学信息来平衡生物学特异性和模型简约性。第二部分讨论了生殖后脑的系统发育比较衰老及其与研究衰老领域所用动物模型的相关性。论文的这一部分进一步分为三个小节。为了更深入地了解哺乳动物的大脑衰老,第一个小节描述了人类,恒河猴和小鼠的衰老大脑转录组的第一个基因组规模比较。该分析表明神经保护基因的表达增加和突触信号基因的表达减少是哺乳动物脑衰老的保守特征。但是,人类神经元基因表达的抑制,特别是介导抑制性神经传递的基因的抑制,可能使人脑独特地易受年龄相关的神经变性的影响。然后在衰老动物模型,特别是长寿和高龄模型的最新进展的背景下,研究了有限的生殖后脑衰老的保存。最后,利用ChIP-Chip技术进一步表征了在人类皮质中观察到的与年龄相关的DNA损伤的增加,这是通过使用ChIP-Chip技术来探测氧化性DNA损伤中与年龄相关的差异的。最后,描述了将混合效应建模方法应用于基于ChIP芯片的DNA损伤数据与微阵列表达数据相结合的未来步骤的描述,以此作为表征对年龄相关的DNA损伤变化的全基因组转录应答的手段。

著录项

  • 作者

    Loerch, Patrick Michael.;

  • 作者单位

    Harvard University.;

  • 授予单位 Harvard University.;
  • 学科 Biology Biostatistics.;Biology Bioinformatics.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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