Bono Hidemasa, Hirota Kiichi
Database Center for Life Science (DBCLS), Joint Support-Center for Data Science Research, Research Organization of Information and Systems, 1111 Yata, Mishima, Shizuoka 411-8540, Japan.
Department of Human Stress Response Science, Institute of Biomedical Science, Kansai Medical University, Hirakata 573-1010, Japan.
Biomedicines. 2020 Jan 9;8(1):10. doi: 10.3390/biomedicines8010010.
Hypoxia is the insufficiency of oxygen in the cell, and hypoxia-inducible factors (HIFs) are central regulators of oxygen homeostasis. In order to obtain functional insights into the hypoxic response in a data-driven way, we attempted a meta-analysis of the RNA-seq data from the hypoxic transcriptomes archived in public databases. In view of methodological variability of archived data in the databases, we first manually curated RNA-seq data from appropriate pairs of transcriptomes before and after hypoxic stress. These included 128 human and 52 murine transcriptome pairs. We classified the results of experiments for each gene into three categories: upregulated, downregulated, and unchanged. Hypoxic transcriptomes were then compared between humans and mice to identify common hypoxia-responsive genes. In addition, meta-analyzed hypoxic transcriptome data were integrated with public ChIP-seq data on the known human HIFs, HIF-1 and HIF-2, to provide insights into hypoxia-responsive pathways involving direct transcription factor binding. This study provides a useful resource for hypoxia research. It also demonstrates the potential of a meta-analysis approach to public gene expression databases for selecting candidate genes from gene expression profiles generated under various experimental conditions.
缺氧是指细胞内氧气供应不足,而缺氧诱导因子(HIFs)是氧稳态的核心调节因子。为了以数据驱动的方式深入了解缺氧反应的功能,我们尝试对公共数据库中存档的缺氧转录组的RNA测序数据进行荟萃分析。鉴于数据库中存档数据的方法学差异,我们首先手动整理了缺氧应激前后适当转录组对的RNA测序数据。这些数据包括128对人类转录组和52对小鼠转录组。我们将每个基因的实验结果分为三类:上调、下调和不变。然后比较人类和小鼠的缺氧转录组,以确定常见的缺氧反应基因。此外,将荟萃分析的缺氧转录组数据与已知人类HIFs(HIF-1和HIF-2)的公共ChIP-seq数据整合,以深入了解涉及直接转录因子结合的缺氧反应途径。本研究为缺氧研究提供了有用的资源。它还证明了对公共基因表达数据库进行荟萃分析方法在从各种实验条件下生成的基因表达谱中选择候选基因方面的潜力。