...
首页> 外文期刊>BMC Medicine >Serum metabolite profiles are associated with the presence of advanced liver fibrosis in Chinese patients with chronic hepatitis B viral infection
【24h】

Serum metabolite profiles are associated with the presence of advanced liver fibrosis in Chinese patients with chronic hepatitis B viral infection

机译:血清代谢物谱与中国慢性乙型肝炎病毒感染患者晚期肝纤维化的存在有关

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Accurate and noninvasive diagnosis and staging of liver fibrosis are essential for effective clinical management of chronic liver disease (CLD). We aimed to identify serum metabolite markers that reliably predict the stage of fibrosis in CLD patients. We quantitatively profiled serum metabolites of participants in 2 independent cohorts. Based on the metabolomics data from cohort 1 (504 HBV associated liver fibrosis patients and 502 normal controls, NC), we selected a panel of 4 predictive metabolite markers. Consequently, we constructed 3 machine learning models with the 4 metabolite markers using random forest (RF), to differentiate CLD patients from normal controls (NC), to differentiate cirrhosis patients from fibrosis patients, and to differentiate advanced fibrosis from early fibrosis, respectively. The panel of 4 metabolite markers consisted of taurocholate, tyrosine, valine, and linoelaidic acid. The RF models of the metabolite panel demonstrated the strongest stratification ability in cohort 1 to diagnose CLD patients from NC (area under the receiver operating characteristic curve (AUROC)?=?0.997 and the precision-recall curve (AUPR)?=?0.994), to differentiate fibrosis from cirrhosis (0.941, 0.870), and to stage liver fibrosis (0.918, 0.892). The diagnostic accuracy of the models was further validated in an independent cohort 2 consisting of 300 CLD patients with chronic HBV infection and 90 NC. The AUCs of the models were consistently higher than APRI, FIB-4, and AST/ALT ratio, with both greater sensitivity and specificity. Our study showed that this 4-metabolite panel has potential usefulness in clinical assessments of CLD progression in patients with chronic hepatitis B virus infection.
机译:肝纤维化的准确性和非侵入性诊断和分期对于慢性肝病(CLD)的有效临床管理至关重要。我们旨在鉴定血清代谢物标记,可靠地预测CLD患者纤维化阶段。我们在2个独立队列中定量地分析了参与者的血清代谢物。基于来自群组1的代谢组数据(504 HBV相关肝纤维化患者和502例正常对照,NC),我们选择了一个4个预测性代谢物标记的面板。因此,我们建造了3种机器学习模型,使用随机森林(RF),将CLD患者与纤维化患者的肝硬化患者分化为分化来自纤维化患者的CLD患者,分别与早期纤维化的肝硬化患者区分CLD患者。 4个代谢物标记的面板由牛磺酸盐,酪氨酸,缬氨酸和亚麻酸组成。代谢产物面板的RF模型展示了群组1中最强的分层能力,以诊断来自NC的CLD患者(接收器操作特性曲线(AUROC)下的区域?=?0.997和精密召回曲线(AUPR)?=?0.994) ,区分肝硬化(0.941,0.870)的纤维化,以及肝纤维化(0.918,0.892)。该模型的诊断准确性进一步验证了由300例慢性HBV感染和90nc的CLD患者组成的独立队列2。模型的AUC始终高于APRI,FIB-4和AST / ALT比,具有更大的灵敏度和特异性。我们的研究表明,这种4 - 代谢物面板在慢性乙型肝炎病毒感染患者CLD进展的临床评估中具有潜在的有用性。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号