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A candidate gene identification strategy utilizing mouse to human big-data mining: 3R-tenet in COPD genetic research

机译:利用鼠标进行人类大数据挖掘的候选基因鉴定策略:COPD遗传研究中的 3R-tenet

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摘要

BackgroundEarly life impairments leading to lower lung function by adulthood are considered as risk factors for chronic obstructive pulmonary disease (COPD). Recently, we compared the lung transcriptomic profile between two mouse strains with extreme total lung capacities to identify plausible pulmonary function determining genes using microarray analysis (). Advancement of high-throughput techniques like deep sequencing (eg. RNA-seq) and microarray have resulted in an explosion of genomic data in the online public repositories which however remains under-exploited. Strategic curation of publicly available genomic data with a mouse-human translational approach can effectively implement “3R- Tenet” by reducing screening experiments with animals and performing mechanistic studies using physiologically relevant in vitro model systems. Therefore, we sought to analyze the association of functional variations within human orthologs of mouse lung function candidate genes in a publicly available COPD lung RNA-seq data-set.
机译:背景早期成年导致肺功能降低的生命障碍被认为是慢性阻塞性肺疾病(COPD)的危险因素。最近,我们比较了具有极高总肺活量的两种小鼠品系之间的肺转录组谱,以使用微阵列分析来鉴定可能的肺功能决定基因。诸如深度测序(例如RNA-seq)和微阵列等高通量技术的发展导致在线公共存储库中的基因组数据激增,但仍未得到充分利用。通过减少对动物的筛选实验并使用生理相关的体外模型系统进行机理研究,使用小鼠-人类翻译方法对可公开获得的基因组数据进行战略管理可有效实施“ 3R-Tenet”。因此,我们试图分析可公开获得的COPD肺RNA-seq数据集中的小鼠肺功能候选基因的人类直系同源基因内功能变异的关联。

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