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LC-MS based serum metabonomic analysis for renal cell carcinoma diagnosis, staging, and biomarker discovery

机译:基于LC-MS的血清代谢组学分析可用于肾细胞癌的诊断,分期和生物标志物发现

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摘要

A LC-MS based method, which utilizes both reversed-performance (RP) chromatography and hydrophilic interaction chromatography (HILIC) separations, has been carried out in conjunction with multivariate data analysis to discriminate the global serum profiles of renal cell carcinoma (RCC) patients and healthy controls. The HILIC was found necessary for a comprehensive serum metabonomic profiling as well as RP separation. The feasibility of using serum metabonomics for the diagnosis and staging of RCC has been evaluated. One-hundred percent sensitivity in detection has been achieved, and a satisfactory clustering between the early stage and advanced-stage patients is observed. The results suggest that the combination of LC-MS analysis with multivariate statistical analysis can be used for RCC diagnosis and has potential in the staging of RCC. The MS/MS experiments have been carried out to identify the biomarker patterns that made great contribution to the discrimination. As a result, 30 potential biomarkers for RCC are identified. It is possible that the current biomarker patterns are not unique to RCC but just the result of any malignancy disease. To further elucidate the pathophysiology of RCC, related metabolic pathways have been studied. RCC is found to be closely related to disturbed phospholipid catabolism, sphingolipid metabolism, phenylalanine metabolism, tryptophan metabolism, fatty acid beta-oxidation, cholesterol metabolism, and arachidonic acid metabolism.
机译:基于LC-MS的方法同时利用了反相色谱(RP)色谱和亲水相互作用色谱(HILIC)分离技术,并结合多变量数据分析来区分肾细胞癌(RCC)患者的总体血清状况和健康的控制。 HILIC被发现对于全面的血清代谢组学分析以及RP分离是必需的。已经评估了使用血清代谢组学进行RCC诊断和分期的可行性。已经实现了百分之一百的检测灵敏度,并且在早期和晚期患者之间观察到令人满意的聚集。结果表明,LC-MS分析与多变量统计分析相结合可用于RCC诊断,并在RCC分期中具有潜力。已经进行了MS / MS实验,以鉴定对识别做出巨大贡献的生物标志物模式。结果,鉴定出30种潜在的RCC生物标志物。当前的生物标志物模式可能不是RCC独有的,而仅仅是任何恶性疾病的结果。为了进一步阐明RCC的病理生理,已经研究了相关的代谢途径。已发现RCC与紊乱的磷脂代谢,鞘脂代谢,苯丙氨酸代谢,色氨酸代谢,脂肪酸β-氧化,胆固醇代谢和花生四烯酸代谢密切相关。

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