TY - JOUR
T1 - Detection of candidate biomarkers of prostate cancer progression in serum; a depletion-free 3D LC/MS quantitative proteomics pilot study
AU - Larkin, S
AU - Johnston, H
AU - Jackson, Thomas
AU - Jamieson, D
AU - Roumeliotis, T
AU - Mockridge, C
AU - Manousopoulou, A
AU - Papachristou, E
AU - Brown, Michael
AU - Clarke, Noel
AU - Pandha, H
AU - Aukin-Hastie, C
AU - Cragg, m
AU - Garbis, S
AU - Townsend, Paul A
PY - 2016/10/25
Y1 - 2016/10/25
N2 - BACKGROUND:
Prostate cancer (PCa) is the most common male cancer in the United Kingdom and we aimed to identify clinically relevant biomarkers corresponding to stage progression of the disease.
METHODS:
We used enhanced proteomic profiling of PCa progression using iTRAQ 3D LC mass spectrometry on high-quality serum samples to identify biomarkers of PCa.
RESULTS:
We identified >1000 proteins. Following specific inclusion/exclusion criteria we targeted seven proteins of which two were validated by ELISA and six potentially interacted forming an 'interactome' with only a single protein linking each marker. This network also includes accepted cancer markers, such as TNF, STAT3, NF-κB and IL6.
CONCLUSIONS:
Our linked and interrelated biomarker network highlights the potential utility of six of our seven markers as a panel for diagnosing PCa and, critically, in determining the stage of the disease. Our validation analysis of the MS-identified proteins found that SAA alongside KLK3 may improve categorisation of PCa than by KLK3 alone, and that TSR1, although not significant in this model, might also be a clinically relevant biomarker.
AB - BACKGROUND:
Prostate cancer (PCa) is the most common male cancer in the United Kingdom and we aimed to identify clinically relevant biomarkers corresponding to stage progression of the disease.
METHODS:
We used enhanced proteomic profiling of PCa progression using iTRAQ 3D LC mass spectrometry on high-quality serum samples to identify biomarkers of PCa.
RESULTS:
We identified >1000 proteins. Following specific inclusion/exclusion criteria we targeted seven proteins of which two were validated by ELISA and six potentially interacted forming an 'interactome' with only a single protein linking each marker. This network also includes accepted cancer markers, such as TNF, STAT3, NF-κB and IL6.
CONCLUSIONS:
Our linked and interrelated biomarker network highlights the potential utility of six of our seven markers as a panel for diagnosing PCa and, critically, in determining the stage of the disease. Our validation analysis of the MS-identified proteins found that SAA alongside KLK3 may improve categorisation of PCa than by KLK3 alone, and that TSR1, although not significant in this model, might also be a clinically relevant biomarker.
U2 - 10.1038/bjc.2016.291
DO - 10.1038/bjc.2016.291
M3 - Article
SN - 0007-0920
VL - 115
SP - 1078
EP - 1086
JO - British Journal of Cancer
JF - British Journal of Cancer
IS - 9
ER -