首页> 外文学位 >Single nucleotide polymorphisms in cancer related genes lead to inter-individual response to prognosis, disease risk and environmental agent metabolism in multiple myeloma and lung cancer.
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Single nucleotide polymorphisms in cancer related genes lead to inter-individual response to prognosis, disease risk and environmental agent metabolism in multiple myeloma and lung cancer.

机译:癌症相关基因中的单核苷酸多态性导致对多发性骨髓瘤和肺癌的预后,疾病风险和环境因素代谢的个体间反应。

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摘要

Multiple myeloma is a chronic disease for which there is presently no cure. Because of the significant genetic heterogeneity in this disease and the fact that it is rare, it has been difficult to study genetic variations that contribute to disease risk and clinical outcomes. Nevertheless, there are apoptotic and oncogenic signaling pathways that constitute common themes in genetic deregulation leading to myeloma. Therefore, we biologically guided single nucleotide (SNP) association studies by pre-identifying important pathways. We managed this by designing a targeted SNP chip panel containing genes in functional groups crucial to various cancer processes, especially to myeloma, and applied it to SNP association studies represented in this thesis.;Lung cancer is one of the most common cancers in the world. It is a leading cause of cancer death in men and women in the United States. Cigarette smoking causes most lung cancers. Therefore, it is one of the rare diseases for which there is a known environmental exposure. The occurrence of lung cancer is thus attributed to a complex interplay of genetic factors and environmental exposure. Since many polymorphic genetic variations produce proteins with increased, decreased or a complete loss of enzymatic activity, they are relevant factors in the gene—environment interplay.;The first part of this thesis explores impact of interindividual variations resulting in variable bone disease, prognosis (progression-free survival) and disease risk in myeloma. In the bone disease association study, we demonstrated that there are genetic variants in genes important in the inflammatory response, Wnt signaling, and in growth factors previously linked to etiology of myeloma. The novelty of this study is in combining gene expression profile of DKK1 with a SNP profile that resulted in a better prediction of bone disease. We then investigated genetic variants in relation to progression-free survival and risk in myeloma. This study resulted in the identification of polymorphisms in genes involved in drug metabolism and detoxification, immunity, DNA repair and signaling cascades important to multiple myeloma (MM) risk and survival. This was done by using novel combinatorial search algorithms that can robustly identify markers that associate with the studied outcomes, and decrease false discovery rates.;The second part of this thesis explores impact of interindividual variations on the metabolism of tobacco-smoke carcinogens. Variations in genes involved in tobacco-smoke carcinogen metabolism can result in variable amounts of harmful DNA adducts that can ultimately lead to cancer. We first demonstrated that there is a variation in CYP1B1 gene, previously shown to result in decreased cellular protein levels. This polymorphism appears to function as a protection from lung cancer at low levels of exposure, whereas it loses its protectiveness at high exposure levels. This was important to unraveling gene—environment interactions, especially relevant in the initiation of lung cancer. We then demonstrated that there are SNP-SNP interactions that associate with lung cancer risk by applying a novel data mining combinatorial search algorithm. This approach will serve as a useful tool to more robustly study SNP associations with outcomes of interest, while minimizing the false discovery rate. Our findings will help aid in further understanding etiology of myeloma and lung cancer. The novel computational method we helped to develop and first applied will serve as an important tool in further identifying and validating genetic variability that leads to differential response to disease risk and outcomes.
机译:多发性骨髓瘤是一种慢性疾病,目前尚无法治愈。由于该疾病的显着遗传异质性以及这种疾病很少见的事实,因此很难研究导致疾病风险和临床结果的遗传变异。尽管如此,仍有一些凋亡和致癌信号通路构成导致骨髓瘤的基因失调的共同主题。因此,我们通过预先确定重要途径生物学指导了单核苷酸(SNP)关联研究。我们通过设计针对性的SNP芯片组来解决这一问题,该芯片组包含对各种癌症进程(尤其是骨髓瘤)至关重要的功能组中的基因,并将其应用于本论文代表的SNP关联研究中。肺癌是世界上最常见的癌症之一。它是美国男性和女性癌症死亡的主要原因。吸烟会导致大多数肺癌。因此,它是已知有环境暴露的罕见疾病之一。因此,肺癌的发生归因于遗传因素和环境暴露之间的复杂相互作用。由于许多多态性遗传变异会产生增加,减少或完全丧失酶活性的蛋白质,因此它们是基因-环境相互作用中的相关因素。;本论文的第一部分探讨了个体变异的影响,该变异导致骨骼疾病,预后可变(无进展生存期)和骨髓瘤的疾病风险。在骨病关联研究中,我们证明了在炎症反应,Wnt信号传导以及以前与骨髓瘤病因相关的生长因子中重要的基因中存在遗传变异。这项研究的新颖之处在于将DKK1的基因表达谱与SNP谱相结合,可以更好地预测骨病。然后,我们调查了与骨髓瘤无进展生存期和风险相关的遗传变异。这项研究的结果是鉴定了与药物代谢和排毒,免疫力,DNA修复有关的基因多态性,以及对多发性骨髓瘤(MM)风险和生存至关重要的信号级联反应。这是通过使用新颖的组合搜索算法来完成的,该算法可以可靠地识别与研究结果相关的标记,并减少错误发现的可能性。本论文的第二部分探讨了个体差异对烟草烟雾致癌物代谢的影响。涉及烟草烟雾致癌物代谢的基因变异可能导致有害的DNA加合物数量可变,最终可能导致癌症。我们首先证明CYP1B1基因存在变异,先前已证明可导致细胞蛋白质水平降低。这种多态性似乎在低暴露水平下起着对肺癌的保护作用,而在高暴露水平下却失去了对肺癌的保护作用。这对于揭示基因与环境之间的相互作用非常重要,尤其与肺癌的发生有关。然后,我们通过应用新型数据挖掘组合搜索算法,证明了与肺癌风险相关的SNP-SNP相互作用。该方法将成为有用的工具,可以更有效地研究SNP与感兴趣的结果的关联,同时最大程度地减少错误发现率。我们的发现将有助于进一步了解骨髓瘤和肺癌的病因。我们帮助开发并首次应用的新颖计算方法将作为进一步鉴定和验证导致对疾病风险和结果的差异反应的遗传变异性的重要工具。

著录项

  • 作者

    Haznadar, Majda.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Biology Genetics.;Biology Bioinformatics.;Health Sciences Epidemiology.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 253 p.
  • 总页数 253
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:36:52

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