Bioinformatics and Biostatistics Core, Van Andel Institute, Grand Rapids, MI, USA.
Core Technologies and Services, Van Andel Institute, Grand Rapids, MI, USA.
RNA Biol. 2023 Jan;20(1):186-197. doi: 10.1080/15476286.2023.2204586.
Here, we provide an in-depth analysis of the usefulness of single-sample metabolite/RNA extraction for multi-'omics readout. Using pulverized frozen livers of mice injected with lymphocytic choriomeningitis virus (LCMV) or vehicle (Veh), we isolated RNA prior (RNA) or following metabolite extraction (MetRNA). RNA sequencing (RNAseq) data were evaluated for differential expression analysis and dispersion, and differential metabolite abundance was determined. Both RNA and MetRNA clustered together by principal component analysis, indicating that inter-individual differences were the largest source of variance. Over 85% of LCMV Veh differentially expressed genes were shared between extraction methods, with the remaining 15% evenly and randomly divided between groups. Differentially expressed genes unique to the extraction method were attributed to randomness around the 0.05 FDR cut-off and stochastic changes in variance and mean expression. In addition, analysis using the mean absolute difference showed no difference in the dispersion of transcripts between extraction methods. Altogether, our data show that prior metabolite extraction preserves RNAseq data quality, which enables us to confidently perform integrated pathway enrichment analysis on metabolomics and RNAseq data from a single sample. This analysis revealed pyrimidine metabolism as the most LCMV-impacted pathway. Combined analysis of genes and metabolites in the pathway exposed a pattern in the degradation of pyrimidine nucleotides leading to uracil generation. In support of this, uracil was among the most differentially abundant metabolites in serum upon LCMV infection. Our data suggest that hepatic uracil export is a novel phenotypic feature of acute infection and highlight the usefulness of our integrated single-sample multi-'omics approach.
在这里,我们深入分析了单样本代谢物/RNA 提取在多组学读出中的有用性。使用注射淋巴细胞性脉络丛脑膜炎病毒(LCMV)或载体(Veh)的冷冻小鼠粉碎的肝脏,我们在提取代谢物之前(RNA)或之后(MetRNA)分离 RNA。对 RNA 测序(RNAseq)数据进行差异表达分析和分散评估,并确定差异代谢物丰度。主成分分析表明 RNA 和 MetRNA 聚类在一起,表明个体间差异是方差的最大来源。超过 85%的 LCMV-Veh 差异表达基因在提取方法之间共享,其余 15%均匀且随机地分为两组。提取方法特有的差异表达基因归因于 0.05 FDR 截止值周围的随机性以及方差和均数表达的随机变化。此外,使用平均绝对差的分析表明,两种提取方法中转录物的分散没有差异。总的来说,我们的数据表明,代谢物提取前保留了 RNAseq 数据的质量,这使我们能够对来自单个样本的代谢组学和 RNAseq 数据进行有信心的综合途径富集分析。该分析显示嘧啶代谢是受 LCMV 影响最大的途径。该途径中基因和代谢物的联合分析揭示了嘧啶核苷酸降解导致尿嘧啶生成的模式。支持这一点的是,LCMV 感染后血清中尿嘧啶是差异最丰富的代谢物之一。我们的数据表明,肝内尿嘧啶外排是急性感染的一个新的表型特征,并强调了我们综合的单样本多组学方法的有用性。