基于肠道微生物群和尿液代谢组学分析的代偿性肝硬化诊断生物标志物鉴定。

IF 2.4 4区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Molecular Biotechnology Pub Date : 2024-11-01 Epub Date: 2023-10-24 DOI:10.1007/s12033-023-00922-9
Yingjun Chen, Shaoxian Chen, Chandi Xu, Li Yu, Shanshan Chu, Jianzhi Bao, Jinwei Wang, Junwei Wang
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引用次数: 0

摘要

肝硬化是最常见的慢性肝病之一,死亡率很高。我们旨在探索代偿性肝硬化(CLC)患者肠道微生物组和尿液代谢组的变化,从而为CLC提供新的诊断生物标志物。对来自健康志愿者(对照组:19)和慢性淋巴细胞白血病患者(患者:21)的40份粪便样本进行16S rDNA测序。对40份尿液样本(20名对照和20名患者)进行了色谱-质谱分析。使用相应的生物信息学方法分别分析微生物组和代谢组数据。使用最小绝对收缩和选择算子回归构建诊断模型。通过五次交叉验证确定了最佳诊断模型。应用Pearson相关分析来阐明诊断标志物之间的关系。16S rDNA测序分析显示,与对照组相比,患者样本的总体α多样性和β多样性发生了变化。同样,我们鉴定了841种变化的代谢物。途径分析表明,差异代谢产物主要与色氨酸代谢、嘌呤代谢和类固醇激素生物合成等途径有关。确定了CLC的9制造商诊断模型,包括7种微生物和2种代谢产物。在该模型中,微生物和代谢产物之间存在多重相关性。CLC患者的皮下颗粒、Agathobacter、norank_f_Eubacterium_coprostanoligenes_group、丁酸球菌、Lachnospiracae_UCG_004和L-2,3-二氢吡啶甲酸升高,而Blautia、Monoglobus和5-乙酰氨基卵清液降低。构建了CLC的新诊断模型,并验证了该模型的可靠性,为CLC的诊断和治疗提供了新的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identification of Diagnostic Biomarkers for Compensatory Liver Cirrhosis Based on Gut Microbiota and Urine Metabolomics Analyses.

Identification of Diagnostic Biomarkers for Compensatory Liver Cirrhosis Based on Gut Microbiota and Urine Metabolomics Analyses.

Liver cirrhosis is one of the most prevalent chronic liver disorders with high mortality. We aimed to explore changed gut microbiome and urine metabolome in compensatory liver cirrhosis (CLC) patients, thus providing novel diagnostic biomarkers for CLC. Forty fecal samples from healthy volunteers (control: 19) and CLC patients (patient: 21) were undertaken 16S rDNA sequencing. Chromatography-mass spectrometry was performed on 40 urine samples (20 controls and 20 patients). Microbiome and metabolome data were separately analyzed using corresponding bioinformatics approaches. The diagnostic model was constructed using the least absolute shrinkage and selection operator regression. The optimal diagnostic model was determined by five-fold cross-validation. Pearson correlation analysis was applied to clarify the relations among the diagnostic markers. 16S rDNA sequencing analyses showed changed overall alpha diversity and beta diversity in patient samples compared with those of controls. Similarly, we identified 841 changed metabolites. Pathway analysis revealed that the differential metabolites were mainly associated with pathways, such as tryptophan metabolism, purine metabolism, and steroid hormone biosynthesis. A 9-maker diagnostic model for CLC was determined, including 7 microorganisms and 2 metabolites. In this model, there were multiple correlations between microorganisms and metabolites. Subdoligranulum, Agathobacter, norank_f_Eubacterium_coprostanoligenes_group, Butyricicoccus, Lachnospiraceae_UCG_004, and L-2,3-Dihydrodipicolinate were elevated in CLC patients, whereas Blautia, Monoglobus, and 5-Acetamidovalerate were reduced. A novel diagnostic model for CLC was constructed and verified to be reliable, which provides new strategies for the diagnosis and treatment of CLC.

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来源期刊
Molecular Biotechnology
Molecular Biotechnology 医学-生化与分子生物学
CiteScore
4.10
自引率
3.80%
发文量
165
审稿时长
6 months
期刊介绍: Molecular Biotechnology publishes original research papers on the application of molecular biology to both basic and applied research in the field of biotechnology. Particular areas of interest include the following: stability and expression of cloned gene products, cell transformation, gene cloning systems and the production of recombinant proteins, protein purification and analysis, transgenic species, developmental biology, mutation analysis, the applications of DNA fingerprinting, RNA interference, and PCR technology, microarray technology, proteomics, mass spectrometry, bioinformatics, plant molecular biology, microbial genetics, gene probes and the diagnosis of disease, pharmaceutical and health care products, therapeutic agents, vaccines, gene targeting, gene therapy, stem cell technology and tissue engineering, antisense technology, protein engineering and enzyme technology, monoclonal antibodies, glycobiology and glycomics, and agricultural biotechnology.
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