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利用人类血浆氨基酸代谢谱区分胃癌和胃溃疡。

Discriminating gastric cancer and gastric ulcer using human plasma amino acid metabolic profile.

机构信息

Jinzhou Medical University, Jinzhou, China.

Internal Medicine Ward, General Hospital of Benxi Iron and Steel Co. Ltd., Benxi, China.

出版信息

IUBMB Life. 2018 Jun;70(6):553-562. doi: 10.1002/iub.1748. Epub 2018 Apr 6.

Abstract

Patients with gastric ulcer (GU) have a significantly higher risk of developing gastric cancer (GC), especially within 2 years after diagnosis. The main way to improve the prognosis of GC is to predict the tumorigenesis and metastasis in the early stage. The objective of this study was to demonstrate the ability of human plasma amino acid metabolic profile for discriminating GC and GU. In this study, we first used liquid chromatography-tandem mass spectrometry technique to characterize the plasma amino acid metabolism in GC and GU patients. Plasma samples were collected from 84 GC patients and 82 GU patients, and 22 amino acids were detected in each patient. Partial least squares-discriminant analysis model was performed to analyze the data of these amino acids. We observed seven differential amino acids between GC and GU. A regression analysis model was established using these seven amino acids. Finally, a panel of five differential amino acids, including glutamine, ornithine, histidine, arginine and tryptophan, was identified for discriminating GC and GU with good specificity and sensitivity. The receiver operating characteristic curve was used to evaluate diagnostic ability of the regression model and area under the curve was 0.922. In conclusion, this study demonstrated the potential values of plasma amino acid metabolic profile and metabolomic analysis technique in assisting diagnosis of GC. More studies are needed to highlight the theoretical strengths of metabolomics to understand the potential metabolic mechanisms in GC. © 2018 IUBMB Life, 70(6):553-562, 2018.

摘要

胃溃疡(GU)患者发生胃癌(GC)的风险显著增加,尤其是在诊断后 2 年内。改善 GC 预后的主要方法是预测早期肿瘤发生和转移。本研究旨在展示人类血浆氨基酸代谢谱区分 GC 和 GU 的能力。在这项研究中,我们首先使用液相色谱-串联质谱技术对 GC 和 GU 患者的血浆氨基酸代谢进行了特征分析。收集了 84 例 GC 患者和 82 例 GU 患者的血浆样本,对每位患者检测了 22 种氨基酸。采用偏最小二乘判别分析模型对这些氨基酸数据进行分析。我们观察到 GC 和 GU 之间存在 7 种差异氨基酸。使用这 7 种氨基酸建立了回归分析模型。最后,确定了一组 5 种差异氨基酸,包括谷氨酰胺、鸟氨酸、组氨酸、精氨酸和色氨酸,用于区分 GC 和 GU,具有良好的特异性和敏感性。使用受试者工作特征曲线评估回归模型的诊断能力,曲线下面积为 0.922。总之,本研究证明了血浆氨基酸代谢谱和代谢组学分析技术在辅助 GC 诊断中的潜在价值。需要更多的研究来突出代谢组学的理论优势,以了解 GC 中的潜在代谢机制。

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