儿童单纯性肥胖的多组学研究:发病机制和生物标志物发现的新见解。

IF 6.1 2区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Yi Ren, Peng Huang, Lu Zhang, Yufen Tang, Siyi He, HaiDan Li, XiaoYan Huang, Yan Ding, Lingjuan Liu, Liqun Liu, Xiaojie He
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引用次数: 0

摘要

背景:儿童肥胖症发病率逐年上升,导致身心健康风险激增,使其成为一个重大的全球公共卫生问题。本研究旨在通过综合多组学分析发现儿童单纯性肥胖的新型生物标志物,揭示其潜在联系,为复杂的发病机制和治疗策略提供新的研究方向。方法:对受试者进行转录组、非靶向代谢组和16s rDNA测序,检测转录本、血液代谢产物和粪便肠道菌群。结果:转录组学分析鉴定出599个差异表达基因(DEGs),其中25个是免疫相关基因,参与抗菌肽、中性粒细胞脱颗粒和干扰素等免疫途径。基于这些基因的最优随机森林模型AUC为0.844。代谢组学分析检测了71种差异表达代谢物(dem),其中包括12种免疫相关代谢物。值得注意的是,月桂酸与BMI呈极强的正相关,对肥胖具有很好的判别能力(AUC = 0.82)。在“氨基酰基- trna生物合成”、“缬氨酸、亮氨酸、异亮氨酸和甘氨酸生物合成”、“丝氨酸和苏氨酸代谢”和“不饱和脂肪酸生物合成”四个代谢途径中,发现DEMs显著富集。微生物组分析显示,在门和属水平上有12种不同的肠道微生物群(DGMs),肥胖组以p_厚壁菌门为主,正常组以g_Escherichia-Shigella为主。随后,基于dem、免疫相关deg和代谢物建立随机森林模型,AUC值为0.912。该模型确定的14个指标有可能作为肥胖的一组生物标志物。对组间相关网络的分析发现了233对显著相关。DEGs BPIFA1、BPI和SAA1, dms二甲基(十四烷基)胺、脱氧胆酸、病态酸酐和dl -丙氨酸,DGMs g_nteinimonas和g_Turicibacter在网络中表现出很强的连性,构成了很大的相互作用比例。结论:本研究首次全面描述了儿童单纯性肥胖的多组学特征,并发现了有前景的生物标志物。免疫相关标志物为研究肥胖及其相关并发症的免疫学机制提供了新的视角。这些生物标志物之间揭示的相互作用有助于更深入地了解与肥胖相关的复杂的生物调节网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-omics landscape of childhood simple obesity: novel insights into pathogenesis and biomarkers discovery.

Background: The increasing incidence of childhood obesity annually has led to a surge in physical and mental health risks, making it a significant global public health concern. This study aimed to discover novel biomarkers of childhood simple obesity through integrative multi-omics analysis, uncovering their potential connections and providing fresh research directions for the complex pathogenesis and treatment strategies.

Methods: Transcriptome, untargeted metabolome, and 16 S rDNA sequencing were conducted on subjects to examine transcripts, metabolites in blood, and gut microflora in stool.

Results: Transcriptomic analysis identified 599 differentially expressed genes (DEGs), of which 25 were immune-related genes, and participated in immune pathways such as antimicrobial peptides, neutrophil degranulation, and interferons. The optimal random forest model based on these genes exhibited an AUC of 0.844. The metabolomic analysis examined 71 differentially expressed metabolites (DEMs), including 12 immune-related metabolites. Notably, lauric acid showed an extremely strong positive correlation with BMI and showed a good discriminative power for obesity (AUC = 0.82). DEMs were found to be significantly enriched in four metabolic pathways, namely "Aminoacyl-tRNA biosynthesis", "Valine leucine and isoleucine biosynthesis, and Glycine", "Serine and threonine metabolism", and "Biosynthesis of unsaturated fatty acids". Microbiome analysis revealed 12 differential gut microbiotas (DGMs) at the phylum and genus levels, with p_Firmicutes dominating in the obese group and g_Escherichia-Shigella in the normal group. Subsequently, a Random Forest model was developed based on the DEMs, immune-related DEGs, and metabolites with an AUC value of 0.912. The 14 indicators identified by this model could potentially serve as a set of biomarkers for obesity. The analysis of the inter-omics correlation network found 233 pairs of significant correlations. DEGs BPIFA1, BPI, and SAA1, DEMs Dimethy(tetradecyl)amine, Deoxycholic acid, Pathalic anhydride, and DL-Alanine, and DGMs g_Intestinimonas and g_Turicibacter showed strong connectivity within the network, constituting a large proportion of interactions.

Conclusion: This study presents the first comprehensive description of the multi-omics characteristics of childhood simple obesity, recognizing promising biomarkers. Immune-related markers offer a new perspective for researching the immunological mechanisms underlying obesity and its associated complications. The revealed interactions among these biomarkers contribute to a deeper understanding the intricate biological regulatory networks associated with obesity.

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来源期刊
Cell and Bioscience
Cell and Bioscience BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
10.70
自引率
0.00%
发文量
187
审稿时长
>12 weeks
期刊介绍: Cell and Bioscience, the official journal of the Society of Chinese Bioscientists in America, is an open access, peer-reviewed journal that encompasses all areas of life science research.
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