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Identifying Early Events of Gene Expression in Breast Cancer with Systems Biology Phylogenetics

机译:用系统生物学系统发育学鉴定乳腺癌基因表达的早期事件

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Advanced omics technologies such as deep sequencing and spectral karyotyping are revealing more of cancer heterogeneity at the genetic, genomic, gene expression, epigenetic, proteomic, and metabolomic levels. With this increasing body of emerging data, the task of data analysis becomes critical for mining and modeling to better understand the relevant underlying biological processes. However, the multiple levels of heterogeneity evident within and among populations, healthy and diseased, complicate the mining and interpretation of biological data, especially when dealing with hundreds to tens of thousands of variables. Heterogeneity occurs in many diseases, such as cancers, autism, macular degeneration, and others. In cancer, heterogeneity has hampered the search for validated biomarkers for early detection, and it has complicated the task of finding clonal (driver) and nonclonal (nonexpanded or passenger) aberrations. We show that subtyping of cancer (classification of specimens) should be an a priori step to the identification of early events of cancers. Studying early events in oncogenesis can be done on histologically normal tissues from diseased individuals (HNTDI), since they most likely have been exposed to the same mutagenic insults that caused the cancer in their neighboring tissues. Polarity assessment of HNTDI data variables by using healthy specimens as outgroup(s), followed by the application of parsimony phylogenetic analysis, produces a hierarchical classification of specimens thatreveals the early events of the disease ontogeny within its subtypes as shared derived changes (abnormal changes) or synapomorphies in phylogenetic terminology.
机译:深度测序和光谱核型分析等先进的组学技术正在遗传,基因组,基因表达,表观遗传学,蛋白质组学和代谢组学水平上揭示出更多的癌症异质性。随着大量新兴数据的出现,数据分析的任务对于挖掘和建模以更好地了解相关的基础生物学过程变得至关重要。但是,在健康人群和患病人群中以及人群中明显存在多种多样的异质性,这使得生物学数据的挖掘和解释变得复杂,尤其是在处理成百上千的变量时。异质性发生在许多疾病中,例如癌症,自闭症,黄斑变性等。在癌症中,异质性阻碍了对经过验证的生物标记物进行早期检测的搜索,并且使寻找克隆(驱动程序)和非克隆(非扩展或乘客)畸变的任务变得复杂。我们表明,癌症的亚型化(标本分类)应该是识别癌症早期事件的先验步骤。研究肿瘤发生的早期事件可以在患病个体的组织学正常组织(HNTDI)上进行,因为它们很可能已暴露于在其邻近组织中引起癌症的相同诱变性损伤。通过使用健康样本作为分组对HNTDI数据变量进行极性评估,然后应用简约系统发育分析,对样本进行分级分类,以共享的衍生变化(异常变化)揭示其亚型内疾病发生的早期事件。或系统发育术语的同形。

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