糖蛋白组学
前列腺癌
糖蛋白
糖肽
亲水作用色谱法
前列腺
生物标志物
医学
癌症
化学
内科学
色谱法
聚糖
生物化学
高效液相色谱法
抗生素
作者
Rebeca Kawahara,Fabio Ortega,Lívia Rosa-Fernandes,Vanessa Ribeiro Guimarães,Daniel Quina,Willian Carlos Nahas,Veit Schwämmle,Miguel Srougi,Kátia Ramos Moreira Leite,Morten Thaysen‐Andersen,Martin R. Larsen,Giuseppe Palmisano
出处
期刊:Oncotarget
[Impact Journals LLC]
日期:2018-09-04
卷期号:9 (69): 33077-33097
被引量:38
标识
DOI:10.18632/oncotarget.26005
摘要
Novel biomarkers are needed to complement prostate specific antigen (PSA) in prostate cancer (PCa) diagnostic screening programs. Glycoproteins represent a hitherto largely untapped resource with a great potential as specific and sensitive tumor biomarkers due to their abundance in bodily fluids and their dynamic and cancer-associated glycosylation. However, quantitative glycoproteomics strategies to detect potential glycoprotein cancer markers from complex biospecimen are only just emerging. Here, we describe a glycoproteomics strategy for deep quantitative mapping of N- and O-glycoproteins in urine with a view to investigate the diagnostic value of the glycoproteome to discriminate PCa from benign prostatic hyperplasia (BPH), two conditions that remain difficult to clinically stratify. Total protein extracts were obtained, concentrated and digested from urine of six PCa patients (Gleason score 7) and six BPH patients. The resulting peptide mixtures were TMT-labeled and mixed prior to a multi-faceted sample processing including hydrophilic interaction liquid chromatography (HILIC) and titanium dioxide SPE based enrichment, endo-/exoglycosidase treatment and HILIC-HPLC pre-fractionation. The isolated N- and O-glycopeptides were detected and quantified using high resolution mass spectrometry. We accurately quantified 729 N-glycoproteins spanning 1,310 unique N-glycosylation sites and observed 954 and 965 unique intact N- and O-glycopeptides, respectively, across the two disease conditions. Importantly, a panel of 56 intact N-glycopeptides perfectly discriminated PCa and BPH (ROC: AUC = 1). This study has generated a panel of intact glycopeptides that has a potential for PCa detection.
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