Lovrić Mario, Wang Tingting, Staffe Mads Rønnow, Šunić Iva, Časni Kristina, Lasky-Su Jessica, Chawes Bo, Rasmussen Morten Arendt
COPSAC, Copenhagen Prospective Studies on Asthma in Childhood, Herlev and Gentofte Hospital, 2820 Gentofte, Denmark.
Centre for Applied Bioanthropology, Institute for Anthropological Research, 10000 Zagreb, Croatia.
Metabolites. 2024 May 10;14(5):278. doi: 10.3390/metabo14050278.
Metabolomics has gained much attention due to its potential to reveal molecular disease mechanisms and present viable biomarkers. This work uses a panel of untargeted serum metabolomes from 602 children from the COPSAC2010 mother-child cohort. The annotated part of the metabolome consists of 517 chemical compounds curated using automated procedures. We created a filtering method for the quantified metabolites using predicted quantitative structure-bioactivity relationships for the Tox21 database on nuclear receptors and stress response in cell lines. The metabolites measured in the children's serums are predicted to affect specific targeted models, known for their significance in inflammation, immune function, and health outcomes. The targets from Tox21 have been used as targets with quantitative structure-activity relationships (QSARs). They were trained for ~7000 structures, saved as models, and then applied to the annotated metabolites to predict their potential bioactivities. The models were selected based on strict accuracy criteria surpassing random effects. After application, 52 metabolites showed potential bioactivity based on structural similarity with known active compounds from the Tox21 set. The filtered compounds were subsequently used and weighted by their bioactive potential to show an association with early childhood hs-CRP levels at six months in a linear model supporting a physiological adverse effect on systemic low-grade inflammation.
代谢组学因其揭示分子疾病机制和呈现可行生物标志物的潜力而备受关注。这项研究使用了来自COPSAC2010母婴队列中602名儿童的一组非靶向血清代谢组。代谢组的注释部分由517种通过自动化程序筛选的化合物组成。我们利用针对细胞系中核受体和应激反应的Tox21数据库的预测定量结构-生物活性关系,为定量代谢物创建了一种筛选方法。预测儿童血清中测量的代谢物会影响特定的靶向模型,这些模型在炎症、免疫功能和健康结果方面具有重要意义。Tox21的靶点已被用作具有定量构效关系(QSARs)的靶点。它们针对约7000种结构进行训练,保存为模型,然后应用于注释的代谢物以预测其潜在生物活性。根据超越随机效应的严格准确性标准选择模型。应用后,基于与Tox21集中已知活性化合物的结构相似性,52种代谢物显示出潜在生物活性。随后使用经过筛选的化合物,并根据其生物活性潜力进行加权,以在线性模型中显示与六个月时幼儿hs-CRP水平的关联,支持对全身低度炎症的生理不良影响。