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A computational procedure to identify significant overlap of differentially expressed and genomic imbalanced regions in cancer datasets.

机译:一种计算程序,用于识别癌症数据集中差异表达和基因组不平衡区域的显着重叠。

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摘要

The integration of high-throughput genomic data represents an opportunity for deciphering the interplay between structural and functional organization of genomes and for discovering novel biomarkers. However, the development of integrative approaches to complement gene expression (GE) data with other types of gene information, such as copy number (CN) and chromosomal localization, still represents a computational challenge in the genomic arena. This work presents a computational procedure that directly integrates CN and GE profiles at genome-wide level. When applied to DNA/RNA paired data, this approach leads to the identification of Significant Overlaps of Differentially Expressed and Genomic Imbalanced Regions (SODEGIR). This goal is accomplished in three steps. The first step extends to CN a method for detecting regional imbalances in GE. The second part provides the integration of CN and GE data and identifies chromosomal regions with concordantly altered genomic and transcriptional status in a tumor sample. The last step elevates the single-sample analysis to an entire dataset of tumor specimens. When applied to study chromosomal aberrations in a collection of astrocytoma and renal carcinoma samples, the procedure proved to be effective in identifying discrete chromosomal regions of coordinated CN alterations and changes in transcriptional levels.
机译:高通量基因组数据的整合为解密基因组的结构和功能组织之间的相互作用以及发现新的生物标记提供了机会。但是,开发整合方法以与其他类型的基因信息(例如拷贝数(CN)和染色体定位)互补的基因表达(GE)数据,仍然代表着基因组领域的计算挑战。这项工作提出了一种计算程序,可以直接在全基因组水平上整合CN和GE谱。当应用于DNA / RNA配对数据时,这种方法可以识别出差异表达和基因组不平衡区域(SODEGIR)的显着重叠。此目标可通过三个步骤实现。第一步扩展到CN,用于检测GE中的区域失衡。第二部分提供了CN和GE数据的整合,并确定了肿瘤样品中具有一致改变的基因组和转录状态的染色体区域。最后一步将单样本分析提升为整个肿瘤样本数据集。当用于研究星形细胞瘤和肾癌样品集合中的染色体畸变时,该程序被证明可有效识别协同CN改变和转录水平变化的离散染色体区域。

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