Tremblay-Franco Marie, Canlet Cécile, Pinton Philippe, Lippi Yannick, Gautier Roselyne, Naylies Claire, Neves Manon, Oswald Isabelle P, Debrauwer Laurent, Alassane-Kpembi Imourana
Toxalim (Research Center in Food Toxicology), Toulouse University, INRAE, ENVT, INP-Purpan, UPS, 31027 Toulouse, France.
Metatoul-AXIOM Platform, MetaboHUB, Toxalim, INRAE, 31027 Toulouse, France.
Metabolites. 2021 Jun 21;11(6):407. doi: 10.3390/metabo11060407.
The effects of low doses of toxicants are often subtle and information extracted from metabolomic data alone may not always be sufficient. As end products of enzymatic reactions, metabolites represent the final phenotypic expression of an organism and can also reflect gene expression changes caused by this exposure. Therefore, the integration of metabolomic and transcriptomic data could improve the extracted biological knowledge on these toxicants induced disruptions. In the present study, we applied statistical integration tools to metabolomic and transcriptomic data obtained from jejunal explants of pigs exposed to the food contaminant, deoxynivalenol (DON). Canonical correlation analysis (CCA) and self-organizing map (SOM) were compared for the identification of correlated transcriptomic and metabolomic features, and O2-PLS was used to model the relationship between exposure and selected features. The integration of both 'omics data increased the number of discriminant metabolites discovered (39) by about 10 times compared to the analysis of the metabolomic dataset alone (3). Besides the disturbance of energy metabolism previously reported, assessing correlations between both functional levels revealed several other types of damage linked to the intestinal exposure to DON, including the alteration of protein synthesis, oxidative stress, and inflammasome activation. This confirms the added value of integration to enrich the biological knowledge extracted from metabolomics.
低剂量毒物的影响往往很细微,仅从代谢组学数据中提取的信息可能并不总是足够的。作为酶促反应的终产物,代谢物代表了生物体的最终表型表达,也能反映这种暴露引起的基因表达变化。因此,整合代谢组学和转录组学数据可以提高从这些毒物诱导的干扰中提取的生物学知识。在本研究中,我们将统计整合工具应用于从暴露于食品污染物脱氧雪腐镰刀菌烯醇(DON)的猪空肠外植体获得的代谢组学和转录组学数据。比较了典型相关分析(CCA)和自组织映射(SOM)以识别相关的转录组学和代谢组学特征,并使用O2-PLS对暴露与选定特征之间的关系进行建模。与仅分析代谢组学数据集(3种)相比,两种“组学”数据的整合使发现的判别代谢物数量(39种)增加了约10倍。除了先前报道的能量代谢紊乱外,评估两个功能水平之间的相关性还揭示了与肠道暴露于DON相关的其他几种损伤类型,包括蛋白质合成改变、氧化应激和炎性小体激活。这证实了整合在丰富从代谢组学中提取的生物学知识方面的附加价值。