肝硬化患者前瞻性队列中的肝细胞癌代谢组学生物标志物

IF 9.5 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
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引用次数: 0

摘要

背景& 目的由于风险分层不充分以及目前筛查方法的性能不理想,肝硬化患者肝细胞癌(HCC)的监测效果有限。方法我们建立了一个接受磁共振成像监测的肝硬化患者多中心前瞻性队列,并对来自203名患者的612份纵向血清样本应用了全局非靶向代谢组学。结果我们发现,与未发生 HCC 的患者样本(对照组)相比,在发生 HCC 之前采集的样本(病例组)中,有 150 种代谢物的丰度发生了显著变化。牛磺酸结合胆汁酸和γ-谷氨酰氨基酸增加,而酰基胆碱和脱氧胆酸衍生物减少。包括丝氨酸和丙氨酸在内的七种氨基酸与 HCC 风险密切相关,而 N-乙酰甘氨酸和甘油磷酸胆碱则具有很强的保护作用。利用 150 种代谢物、年龄、性别以及 PNPLA3 和 TMS6SF2 单核苷酸多态性进行机器学习,确定了 15 个性能最佳的变量。其中,N-乙酰甘氨酸在区分病例和对照组方面的 AUC 最高。当将病例限制在 HCC 发生前 1 年内采集的样本(病例-12M)时,还发现了包括微生物群衍生代谢物在内的其他代谢物。机器学习识别出的前六个变量(甲胎蛋白、6-溴色氨酸、N-乙酰甘氨酸、水杨酸葡萄糖醛酸、硫酸睾酮和年龄)的组合在区分病例-12M 和对照组方面表现良好(AUC 0.88,95% CI 0.83-0.93)。最后,有 23 种代谢物可将患有 LI-RADS-3 病变的病例与患有 LI-RADS-3 病变的对照组区分开来,其中病例中的酰基胆碱和甘油磷酸胆碱相关的溶血磷脂含量较低。影响和意义:肝硬化患者肝细胞癌(HCC)的监测效果有限。目前迫切需要改进风险分层和新的筛查方法,特别是血液生物标志物。纵向收集肝硬化患者的配对血液样本和磁共振成像图像对于评估早期血液和成像标志物如何在观察病变期间变为阳性以获得 HCC 诊断尤为重要。我们建立了一个多中心前瞻性队列,对肝硬化患者进行造影剂核磁共振成像监测,对来自 203 名患者的 612 份血清样本进行了非靶向代谢组学研究,并确定了与 HCC 发展风险相关的代谢物。这些生物标志物可能会大大提高接受 HCC 监测的肝硬化患者的早期 HCC 检测率,这是增加治愈性治疗机会和降低死亡率的关键一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Metabolomics biomarkers of hepatocellular carcinoma in a prospective cohort of patients with cirrhosis

Metabolomics biomarkers of hepatocellular carcinoma in a prospective cohort of patients with cirrhosis

Background & Aims

The effectiveness of surveillance for hepatocellular carcinoma (HCC) in patients with cirrhosis is limited, due to inadequate risk stratification and suboptimal performance of current screening modalities.

Methods

We developed a multicenter prospective cohort of patients with cirrhosis undergoing surveillance with MRI and applied global untargeted metabolomics to 612 longitudinal serum samples from 203 patients. Among them, 37 developed HCC during follow-up.

Results

We identified 150 metabolites with significant abundance changes in samples collected prior to HCC (Cases) compared to samples from patients who did not develop HCC (Controls). Tauro-conjugated bile acids and gamma-glutamyl amino acids were increased, while acyl-cholines and deoxycholate derivatives were decreased. Seven amino acids including serine and alanine had strong associations with HCC risk, while strong protective effects were observed for N-acetylglycine and glycerophosphorylcholine. Machine learning using the 150 metabolites, age, gender, and PNPLA3 and TMS6SF2 single nucleotide polymorphisms, identified 15 variables giving optimal performance. Among them, N-acetylglycine had the highest AUC in discriminating Cases and Controls. When restricting Cases to samples collected within 1 year prior to HCC (Cases-12M), additional metabolites including microbiota-derived metabolites were identified. The combination of the top six variables identified by machine learning (alpha-fetoprotein, 6-bromotryptophan, N-acetylglycine, salicyluric glucuronide, testosterone sulfate and age) had good performance in discriminating Cases-12M from Controls (AUC 0.88, 95% CI 0.83-0.93). Finally, 23 metabolites distinguished Cases with LI-RADS-3 lesions from Controls with LI-RADS-3 lesions, with reduced abundance of acyl-cholines and glycerophosphorylcholine-related lysophospholipids in Cases.

Conclusions

This study identified N-acetylglycine, amino acids, bile acids and choline-derived metabolites as biomarkers of HCC risk, and microbiota-derived metabolites as contributors to HCC development.

Impact and implications:

The effectiveness of surveillance for hepatocellular carcinoma (HCC) in patients with cirrhosis is limited. There is an urgent need for improvement in risk stratification and new screening modalities, particularly blood biomarkers. Longitudinal collection of paired blood samples and MRI images from patients with cirrhosis is particularly valuable in assessing how early blood and imaging markers become positive during the period when lesions are observed to obtain a diagnosis of HCC. We generated a multicenter prospective cohort of patients with cirrhosis under surveillance with contrast MRI, applied untargeted metabolomics on 612 serum samples from 203 patients and identified metabolites associated with risk of HCC development. Such biomarkers may significantly improve early-stage HCC detection for patients with cirrhosis undergoing HCC surveillance, a critical step to increasing curative treatment opportunities and reducing mortality.

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来源期刊
JHEP Reports
JHEP Reports GASTROENTEROLOGY & HEPATOLOGY-
CiteScore
12.40
自引率
2.40%
发文量
161
审稿时长
36 days
期刊介绍: JHEP Reports is an open access journal that is affiliated with the European Association for the Study of the Liver (EASL). It serves as a companion journal to the highly respected Journal of Hepatology. The primary objective of JHEP Reports is to publish original papers and reviews that contribute to the advancement of knowledge in the field of liver diseases. The journal covers a wide range of topics, including basic, translational, and clinical research. It also focuses on global issues in hepatology, with particular emphasis on areas such as clinical trials, novel diagnostics, precision medicine and therapeutics, cancer research, cellular and molecular studies, artificial intelligence, microbiome research, epidemiology, and cutting-edge technologies. In summary, JHEP Reports is dedicated to promoting scientific discoveries and innovations in liver diseases through the publication of high-quality research papers and reviews covering various aspects of hepatology.
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