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首页> 外文期刊>Journal of Cancer >Untargeted Metabolomics Analysis of Esophageal Squamous Cell Carcinoma Discovers Dysregulated Metabolic Pathways and Potential Diagnostic Biomarkers
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Untargeted Metabolomics Analysis of Esophageal Squamous Cell Carcinoma Discovers Dysregulated Metabolic Pathways and Potential Diagnostic Biomarkers

机译:食管鳞状细胞癌的未确定代谢组分析发现了多疑代谢途径和潜在的诊断生物标志物

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Background: Esophageal squamous cell carcinoma (ESCC) is one of the most fatal diseases worldwide. Because early diagnosis is difficult, ESCC is mostly diagnosed at an advanced stage, leading to a poor overall prognosis. The purpose of this study was to explore the differences between plasma metabolic profiles in ESCC patients and healthy controls and to establish a diagnostic model of ESCC. Methods: In this study, a cohort of 310 subjects, containing 140 ESCC patients and 170 healthy controls (HC), was recruited. Participants were randomly separated into a training set (80 ESCCs, 80 HCs) and a validation set (60 ESCCs, 90 HCs) and their plasma metabolomics profiles were analyzed by ultra-performance liquid chromatography-tandem quadruple time-of-flight mass spectrometry (UPLC-QTOF/MS) technique. Univariate statistical analysis and multivariate analysis (MVA) methods were used to identify differential metabolites. Finally, the dysregulated pathways associated with ESCC were further explored and the diagnostic performance of the biomarker panel was evaluated. Results: Metabolic analyses identified 34 significant metabolites involved in the metabolism of amino acids, phospholipids, fatty acids, purine, and choline. Farthermore, an effective diagnostic model for ESCC was constructed based on eight metabolites. This panel of biomarkers consisted of hypoxanthine, proline betaine, indoleacrylic acid, inosine, 9-decenoylcarnitine, tetracosahexaenoic acid, LPE (20:4), and LPC (20:5). The model was verified and evaluated in the validation set. The AUC value of the ROC curve was 0.991(95% CI: 0.981-1.000, CI, Confidence interval), with a sensitivity (SE) of 98.8% and a specificity (SP) of 94.9% for the training set and 0.965(95% CI: 0.936-0.993), with a SE of 88.3% and a SP of 88.9% for the validation set. Among them, three biomarkers, indoleacrylic acid, LPC (20:5), and LPE (20:4), exhibited a trend associated with the ESCC progression. Conclusions: Our study identified a novel plasma biomarker panel, which clearly distinguishes ESCC patients and provides insight into the mechanisms of ESCC. This finding may form the basis for the development of a minimally invasive method for ESCC detection.? The author(s).
机译:背景:食管鳞状细胞癌(ESCC)是全球最致命的疾病之一。由于早期诊断难,ESCC大多被诊断为晚期,导致总体预后差。本研究的目的是探讨ESCC患者和健康对照中血浆代谢谱的差异,并建立ESCC的诊断模型。方法:在本研究中,招募了含有140名ESCC患者和170例健康对照(HC)的310个受试者的队列。将参与者随机分离成训练集(80ESCC,80 HCS)和验证组(60ESCC,90个HCS)及其等离子体代谢物型材通过超级性能液相色谱 - 串联飞行时间的飞行时间质谱分析( UPLC-QTOF / MS)技术。使用单变量统计分析和多变量分析(MVA)方法用于鉴定差分代谢物。最后,进一步探索了与ESCC相关的失调途径,并评估了生物标志物组的诊断性能。结果:代谢分析确定了34种显着代谢物,参与氨基酸,磷脂,脂肪酸,嘌呤和胆碱的代谢。 Farthermore,基于八个代谢物构建了ESCC的有效诊断模型。该专家组的生物标志物组成,由缺氧,脯氨酸甜菜碱,吲哚乙酸,Inosine,9-二苯甲酰氨基,四氰甲己酸,LPE(20:4)和LPC(20:5)组成。该模型在验证集中进行了验证和评估。 ROC曲线的AUC值为0.991(95%CI:0.981-1.000,CI,置信区间),灵敏度(SE)为98.8%,特异性(SP)为培训套装94.9%,0.965(95) %CI:0.936-0.993),SE为88.3%,验证集的SP为88.3%,SP为88.9%。其中,三种生物标志物,吲哚乙酸,LPC(20:5)和LPE(20:4)表现出与ESCC进展相关的趋势。结论:我们的研究确定了一种新型等离子体生物标志物面板,清楚地区分为ESCC患者并向ESCC的机制提供了解。这一发现可以构成开发用于ESCC检测的微创方法的基础。作者。

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