Cargando…

A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass

BACKGROUND: Less than 25% of patients with a pelvic mass who are presented to a gynecologist will eventually be diagnosed with epithelial ovarian cancer. Since there is no reliable test to differentiate between different ovarian tumors, accurate classification could facilitate adequate referral to a...

Descripción completa

Detalles Bibliográficos
Autores principales: Wegdam, Wouter, Moerland, Perry D, Meijer, Danielle, de Jong, Shreyas M, Hoefsloot, Huub C J, Kenter, Gemma G, Buist, Marrije R, Aerts, Johannes MF G
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3494530/
https://www.ncbi.nlm.nih.gov/pubmed/22824475
http://dx.doi.org/10.1186/1477-5956-10-45
_version_ 1782249402051592192
author Wegdam, Wouter
Moerland, Perry D
Meijer, Danielle
de Jong, Shreyas M
Hoefsloot, Huub C J
Kenter, Gemma G
Buist, Marrije R
Aerts, Johannes MF G
author_facet Wegdam, Wouter
Moerland, Perry D
Meijer, Danielle
de Jong, Shreyas M
Hoefsloot, Huub C J
Kenter, Gemma G
Buist, Marrije R
Aerts, Johannes MF G
author_sort Wegdam, Wouter
collection PubMed
description BACKGROUND: Less than 25% of patients with a pelvic mass who are presented to a gynecologist will eventually be diagnosed with epithelial ovarian cancer. Since there is no reliable test to differentiate between different ovarian tumors, accurate classification could facilitate adequate referral to a gynecological oncologist, improving survival. The goal of our study was to assess the potential value of a SELDI-TOF-MS based classifier for discriminating between patients with a pelvic mass. METHODS: Our study design included a well-defined patient population, stringent protocols and an independent validation cohort. We compared serum samples of 53 ovarian cancer patients, 18 patients with tumors of low malignant potential, and 57 patients with a benign ovarian tumor on different ProteinChip arrays. In addition, from a subset of 84 patients, tumor tissues were collected and microdissection was used to isolate a pure and homogenous cell population. RESULTS: Diagonal Linear Discriminant Analysis (DLDA) and Support Vector Machine (SVM) classification on serum samples comparing cancer versus benign tumors, yielded models with a classification accuracy of 71-81% (cross-validation), and 73-81% on the independent validation set. Cancer and benign tissues could be classified with 95-99% accuracy using cross-validation. Tumors of low malignant potential showed protein expression patterns different from both benign and cancer tissues. Remarkably, none of the peaks differentially expressed in serum samples were found to be differentially expressed in the tissue lysates of those same groups. CONCLUSION: Although SELDI-TOF-MS can produce reliable classification results in serum samples of ovarian cancer patients, it will not be applicable in routine patient care. On the other hand, protein profiling of microdissected tumor tissue may lead to a better understanding of oncogenesis and could still be a source of new serum biomarkers leading to novel methods for differentiating between different histological subtypes.
format Online
Article
Text
id pubmed-3494530
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-34945302012-11-10 A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass Wegdam, Wouter Moerland, Perry D Meijer, Danielle de Jong, Shreyas M Hoefsloot, Huub C J Kenter, Gemma G Buist, Marrije R Aerts, Johannes MF G Proteome Sci Research BACKGROUND: Less than 25% of patients with a pelvic mass who are presented to a gynecologist will eventually be diagnosed with epithelial ovarian cancer. Since there is no reliable test to differentiate between different ovarian tumors, accurate classification could facilitate adequate referral to a gynecological oncologist, improving survival. The goal of our study was to assess the potential value of a SELDI-TOF-MS based classifier for discriminating between patients with a pelvic mass. METHODS: Our study design included a well-defined patient population, stringent protocols and an independent validation cohort. We compared serum samples of 53 ovarian cancer patients, 18 patients with tumors of low malignant potential, and 57 patients with a benign ovarian tumor on different ProteinChip arrays. In addition, from a subset of 84 patients, tumor tissues were collected and microdissection was used to isolate a pure and homogenous cell population. RESULTS: Diagonal Linear Discriminant Analysis (DLDA) and Support Vector Machine (SVM) classification on serum samples comparing cancer versus benign tumors, yielded models with a classification accuracy of 71-81% (cross-validation), and 73-81% on the independent validation set. Cancer and benign tissues could be classified with 95-99% accuracy using cross-validation. Tumors of low malignant potential showed protein expression patterns different from both benign and cancer tissues. Remarkably, none of the peaks differentially expressed in serum samples were found to be differentially expressed in the tissue lysates of those same groups. CONCLUSION: Although SELDI-TOF-MS can produce reliable classification results in serum samples of ovarian cancer patients, it will not be applicable in routine patient care. On the other hand, protein profiling of microdissected tumor tissue may lead to a better understanding of oncogenesis and could still be a source of new serum biomarkers leading to novel methods for differentiating between different histological subtypes. BioMed Central 2012-07-23 /pmc/articles/PMC3494530/ /pubmed/22824475 http://dx.doi.org/10.1186/1477-5956-10-45 Text en Copyright ©2012 Wegdam et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Wegdam, Wouter
Moerland, Perry D
Meijer, Danielle
de Jong, Shreyas M
Hoefsloot, Huub C J
Kenter, Gemma G
Buist, Marrije R
Aerts, Johannes MF G
A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass
title A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass
title_full A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass
title_fullStr A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass
title_full_unstemmed A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass
title_short A critical assessment of SELDI-TOF-MS for biomarker discovery in serum and tissue of patients with an ovarian mass
title_sort critical assessment of seldi-tof-ms for biomarker discovery in serum and tissue of patients with an ovarian mass
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3494530/
https://www.ncbi.nlm.nih.gov/pubmed/22824475
http://dx.doi.org/10.1186/1477-5956-10-45
work_keys_str_mv AT wegdamwouter acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT moerlandperryd acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT meijerdanielle acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT dejongshreyasm acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT hoefsloothuubcj acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT kentergemmag acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT buistmarrijer acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT aertsjohannesmfg acriticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT wegdamwouter criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT moerlandperryd criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT meijerdanielle criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT dejongshreyasm criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT hoefsloothuubcj criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT kentergemmag criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT buistmarrijer criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass
AT aertsjohannesmfg criticalassessmentofselditofmsforbiomarkerdiscoveryinserumandtissueofpatientswithanovarianmass