Oxford, UK.
Groningen, The Netherlands.
Aliment Pharmacol Ther. 2020 Jun;51(11):1188-1197. doi: 10.1111/apt.15710. Epub 2020 Apr 16.
The development of accurate, non-invasive markers to diagnose and stage non-alcoholic fatty liver disease (NAFLD) is critical to reduce the need for an invasive liver biopsy and to identify patients who are at the highest risk of hepatic and cardio-metabolic complications. Disruption of steroid hormone metabolic pathways has been described in patients with NAFLD.
AIM(S): To assess the hypothesis that assessment of the urinary steroid metabolome may provide a novel, non-invasive biomarker strategy to stage NAFLD.
We analysed the urinary steroid metabolome in 275 subjects (121 with biopsy-proven NAFLD, 48 with alcohol-related cirrhosis and 106 controls), using gas chromatography-mass spectrometry (GC-MS) coupled with machine learning-based Generalised Matrix Learning Vector Quantisation (GMLVQ) analysis.
Generalised Matrix Learning Vector Quantisation analysis achieved excellent separation of early (F0-F2) from advanced (F3-F4) fibrosis (AUC receiver operating characteristics [ROC]: 0.92 [0.91-0.94]). Furthermore, there was near perfect separation of controls from patients with advanced fibrotic NAFLD (AUC ROC = 0.99 [0.98-0.99]) and from those with NAFLD cirrhosis (AUC ROC = 1.0 [1.0-1.0]). This approach was also able to distinguish patients with NAFLD cirrhosis from those with alcohol-related cirrhosis (AUC ROC = 0.83 [0.81-0.85]).
Unbiased GMLVQ analysis of the urinary steroid metabolome offers excellent potential as a non-invasive biomarker approach to stage NAFLD fibrosis as well as to screen for NAFLD. A highly sensitive and specific urinary biomarker is likely to have clinical utility both in secondary care and in the broader general population within primary care and could significantly decrease the need for liver biopsy.
开发准确、非侵入性的标志物来诊断和分期非酒精性脂肪性肝病(NAFLD)对于减少对侵入性肝活检的需求以及识别肝和代谢并发症风险最高的患者至关重要。NAFLD 患者的类固醇激素代谢途径已被描述。
评估评估尿类固醇代谢组学是否可以提供一种新的非侵入性生物标志物策略来分期 NAFLD 的假说。
我们使用气相色谱-质谱(GC-MS)结合基于机器学习的广义矩阵学习向量量化(GMLVQ)分析,对 275 名受试者(121 名经活检证实的 NAFLD、48 名酒精相关肝硬化和 106 名对照)的尿类固醇代谢组进行了分析。
广义矩阵学习向量量化分析实现了早期(F0-F2)与晚期(F3-F4)纤维化的出色分离(ROC 曲线下面积[AUROC]:0.92[0.91-0.94])。此外,从晚期纤维化 NAFLD 患者(AUROC = 0.99 [0.98-0.99])和从 NAFLD 肝硬化患者(AUROC = 1.0 [1.0-1.0])中,控制与对照组之间几乎完全分离。这种方法还能够将 NAFLD 肝硬化患者与酒精相关肝硬化患者区分开来(AUROC = 0.83 [0.81-0.85])。
尿类固醇代谢组的无偏 GMLVQ 分析提供了作为非侵入性生物标志物方法分期 NAFLD 纤维化以及筛选 NAFLD 的极好潜力。高度敏感和特异的尿生物标志物可能在二级护理中以及在初级保健中更广泛的一般人群中具有临床实用性,并可能大大减少对肝活检的需求。