通过外显子组与转录组比对提取分子特征。

Prakriti Mudvari, Kamran Kowsari, Charles Cole, Raja Mazumder, Anelia Horvath
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引用次数: 3

摘要

整合下一代测序(NGS) DNA和RNA分析最近变得可行,迄今为止发表的研究已经发现了关键的疾病相关途径,以及诊断和治疗靶点。来自同一个体的越来越多的外显子组、基因组和转录组正在迅速积累,为机制和调控特征分析提供了独特的场所,同时也需要新的探索策略。在这项研究中,我们整合了来自同一个体的四个NGS数据集的变异和表达信息:正常和肿瘤乳腺外显子组和转录组。聚焦于以snp为中心的变异等位基因的流行,我们阐述了可用于提取或验证潜在调控元件的分析算法,如表达或生长优势、印迹、杂合性缺失(LOH)、体细胞变化和RNA编辑。此外,我们指出了一些可能会影响结果的关键因素,并建议采取替代措施,以最大限度地提高研究结果的可信度。在对系统生物学概念的日益欣赏中,对这种策略的需求得到了特别的认识:基因组和转录组特征的综合探索揭示了远远超出单个数据集线性添加的机制和调控见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of Molecular Features through Exome to Transcriptome Alignment.

Integrative Next Generation Sequencing (NGS) DNA and RNA analyses have very recently become feasible, and the published to date studies have discovered critical disease implicated pathways, and diagnostic and therapeutic targets. A growing number of exomes, genomes and transcriptomes from the same individual are quickly accumulating, providing unique venues for mechanistic and regulatory features analysis, and, at the same time, requiring new exploration strategies. In this study, we have integrated variation and expression information of four NGS datasets from the same individual: normal and tumor breast exomes and transcriptomes. Focusing on SNPcentered variant allelic prevalence, we illustrate analytical algorithms that can be applied to extract or validate potential regulatory elements, such as expression or growth advantage, imprinting, loss of heterozygosity (LOH), somatic changes, and RNA editing. In addition, we point to some critical elements that might bias the output and recommend alternative measures to maximize the confidence of findings. The need for such strategies is especially recognized within the growing appreciation of the concept of systems biology: integrative exploration of genome and transcriptome features reveal mechanistic and regulatory insights that reach far beyond linear addition of the individual datasets.

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