Untargeted metabolomics as a diagnostic tool in NAFLD: discrimination of steatosis, steatohepatitis and cirrhosis.

Mario Masarone, Jacopo Troisi, Andrea Aglitti, Pietro Torre, Angelo Colucci, Marcello Dallio, Alessandro Federico, Clara Balsano, Marcello Persico
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引用次数: 29

Abstract

Introduction: Non-Alcoholic Fatty Liver Disease encompasses a spectrum of diseases ranging from simple steatosis to steatohepatitis (or NASH), up to cirrhosis and hepatocellular carcinoma (HCC). The challenge is to recognize the more severe and/or progressive pathology. A reliable non-invasive method does not exist. Untargeted metabolomics is a novel method to discover biomarkers and give insights on diseases pathophysiology.

Objectives: We applied metabolomics to understand if simple steatosis, steatohepatitis and cirrhosis in NAFLD patients have peculiar metabolites profiles that can differentiate them among each-others and from controls.

Methods: Metabolomics signatures were obtained from 307 subjects from two separated enrollments. The first collected samples from 69 controls and 144 patients (78 steatosis, 23 NASH, 15 NASH-cirrhosis, 8 HCV-cirrhosis, 20 cryptogenic cirrhosis). The second, used as validation-set, enrolled 44 controls and 50 patients (34 steatosis, 10 NASH and 6 NASH-cirrhosis).The "Partial-Least-Square Discriminant-Analysis"(PLS-DA) was used to reveal class separation in metabolomics profiles between patients and controls and among each class of patients, and to reveal the metabolites contributing to class differentiation.

Results: Several metabolites were selected as relevant, in particular:Glycocholic acid, Taurocholic acid, Phenylalanine, branched-chain amino-acids increased at the increase of the severity of the disease from steatosis to NASH, NASH-cirrhosis, while glutathione decreased (p < 0.001 for each). Moreover, an ensemble machine learning (EML) model was built (comprehending 10 different mathematical models) to verify diagnostic performance, showing an accuracy > 80% in NAFLD clinical stages prediction.

Conclusions: Metabolomics profiles of NAFLD patients could be a useful tool to non-invasively diagnose NAFLD and discriminate among the various stages of the disease, giving insights into its pathophysiology.

非靶向代谢组学作为NAFLD的诊断工具:脂肪变性、脂肪性肝炎和肝硬化的鉴别。
简介:非酒精性脂肪性肝病包括一系列疾病,从单纯脂肪变性到脂肪性肝炎(或NASH),再到肝硬化和肝细胞癌(HCC)。挑战在于识别更严重和/或进展的病理。目前尚不存在可靠的非侵入性方法。非靶向代谢组学是一种发现生物标志物和深入了解疾病病理生理的新方法。目的:我们应用代谢组学来了解NAFLD患者的单纯性脂肪变性、脂肪性肝炎和肝硬化是否具有特殊的代谢物谱,可以区分它们彼此之间以及与对照组之间的差异。方法:从两个独立的入组中获得307名受试者的代谢组学特征。第一次收集了69例对照和144例患者的样本(78例脂肪变性,23例NASH, 15例NASH-肝硬化,8例hcv -肝硬化,20例隐源性肝硬化)。第二组作为验证组,纳入44名对照组和50名患者(34名脂肪变性,10名NASH和6名NASH-肝硬化)。“偏最小二乘判别分析”(PLS-DA)用于揭示患者和对照组之间以及每一类患者之间代谢组学谱的类别分离,并揭示有助于类别分化的代谢物。结果:几种代谢物被选择为相关的,特别是:糖胆酸、牛磺胆酸、苯丙氨酸、支链氨基酸随着疾病从脂肪变性到NASH、NASH-肝硬化的严重程度的增加而增加,而谷胱甘肽则减少(p < 0.001)。此外,建立了集成机器学习(EML)模型(包含10种不同的数学模型)来验证诊断性能,显示NAFLD临床分期预测的准确率> 80%。结论:NAFLD患者的代谢组学特征可以成为非侵入性诊断NAFLD和区分疾病不同阶段的有用工具,从而深入了解其病理生理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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