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Dive into the research topics where Antonia Vlahou is active.

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Featured researches published by Antonia Vlahou.


American Journal of Pathology | 2001

Development of a novel proteomic approach for the detection of transitional cell carcinoma of the bladder in urine.

Antonia Vlahou; Paul F. Schellhammer; Savvas Mendrinos; Keyur Patel; Filippos I. Kondylis; Lei Gong; Suhail Nasim; George L. Wright

Development of noninvasive methods for the diagnosis of transitional cell carcinoma (TCC) of the bladder remains a challenge. A ProteinChip technology (surface enhanced laser desorption/ionization time of flight mass spectrometry) has recently been developed to facilitate protein profiling of biological mixtures. This report describes an exploratory study of this technology as a TCC diagnostic tool. Ninety-four urine samples from patients with TCC, patients with other urogenital diseases, and healthy donors were analyzed. Multiple protein changes were reproducibly detected in the TCC group, including five potential novel TCC biomarkers and seven protein clusters (mass range, 3.3 to 133 kd). One of the TCC biomarkers (3.4 kd) was also detected in bladder cancer cells procured from bladder barbotage and was identified as defensin. The TCC detection rates provided by the individual markers ranged from 43 to 70% and specificities from 70 to 86%. Combination of the protein biomarkers and clusters, increased significantly the sensitivity for detecting TCC to 87% with a specificity of 66%. Interestingly, this combinatorial approach provided sensitivity of 78% for detecting low-grade TCC compared to only 33% of voided urine or bladder-washing cytology. Collectively these results support the potential of this proteomic approach for the development of a highly sensitive urinary TCC diagnostic test.


BioMed Research International | 2003

Diagnosis of Ovarian Cancer Using Decision Tree Classification of Mass Spectral Data

Antonia Vlahou; John O. Schorge; Betsy Gregory; Robert L. Coleman

Recent reports from our laboratory and others support the SELDI ProteinChip technology as a potential clinical diagnostic tool when combined with n-dimensional analyses algorithms. The objective of this study was to determine if the commercially available classification algorithm biomarker patterns software (BPS), which is based on a classification and regression tree (CART), would be effective in discriminating ovarian cancer from benign diseases and healthy controls. Serum protein mass spectrum profiles from 139 patients with either ovarian cancer, benign pelvic diseases, or healthy women were analyzed using the BPS software. A decision tree, using five protein peaks, resulted in an accuracy of 81.5% in the cross-validation analysis and 80% in a blinded set of samples in differentiating the ovarian cancer from the control groups. The potential, advantages, and drawbacks of the BPS system as a bioinformatic tool for the analysis of the SELDI high-dimensional proteomic data are discussed.


Proteomics | 2001

Proteomic approaches to biomarker discovery in prostate and bladder cancers

Bao-Ling Adam; Antonia Vlahou; Oliver J. Semmes; George L. Wright

Proteomic technologies, including high resolution two‐dimensional electrophoresis (2‐DE), antibody/protein arrays, and advances in mass spectrometry (MS), are providing the tools needed to discover and identify disease associated biomarkers. Although application of these technologies to search for potential diagnostic/prognostic biomarkers asscociated with prostate and bladder cancer have been somewhat limited to date, proteins either overexpressed or underexpressed have been detected in both these urological cancers. Recent advances in mass spectrometry, especially platforms that permit rapid “fingerprint” profiling of multiple biomarkers, and tandem mass spectrometers for protein identification, will most assuredly enhance the discovery, identification, and characterization of potential cancer associated biomarkers. Furthermore, application of laser capture microdissection microscopes has provided a rapid and reproducible approach to procure pure populations of cells. This technology coupled to 2‐DE and MS has significantly aided the elucidation of the differential expression profiles between disease, benign and normal prostate and bladder cell populations. Finally, development and application of learning algorithms and bioinformatics to the data generated by these proteomic technologies will be essential in determining the clinical potential of a protein biomarker. The purpose of this review is to provide the reader with an overview of the application of these technologies in the search and identification of potential diagnostic/prognostic biomarkers for prostate and bladder cancers.


Clinical Breast Cancer | 2003

A novel approach toward development of a rapid blood test for breast cancer

Antonia Vlahou; Christine Laronga; Lori Wilson; Betsy Gregory; Keith F. Fournier; Dean McGaughey; Roger R. Perry; George L. Wright; O. John Semmes

Mammography remains the diagnostic test of choice for breast cancer, but 20% of cancers still go undetected. Many serum biomarkers have been reported for breast cancer but none have proven to represent effective diagnostic strategies. ProteinChip mass spectrometry is an innovative technology that searches the proteome for differentially expressed proteins, allowing for the creation of a panel or profile of biomarkers. The objective of this study was to construct unique cancer-associated serum profiles that, combined with a classification algorithm, would enhance the detection of breast cancer Pretreatment serum samples from 134 female patients (45 with cancer, 42 with benign disease, 47 normal) were procured prospectively following institutional review board-approved protocols. Proteins were denatured, applied onto ProteinChip affinity surfaces, and subjected to surface enhanced laser desorption/ionization (SELDI) time-of-flight mass spectrometry. The SELDI output was analyzed using Biomarker Pattern Software to develop a classification tree based on group-specific protein profiles. The cross-validation analysis of cancer versus normal revealed sensitivity and specificity rates of 80% and 79%, and for cancer versus benign disease, 78% and 83%, respectively. When 2 different chip surfaces were combined the sensitivity and specificity increased to 90% and 93%, respectively. The sensitivity and specificity of this technique are comparable to those of mammography and, if confirmed in a larger study, this technique could provide the means toward development of a simple blood test to aid in the early detection of breast cancer. The combination of SELDI ProteinChip mass spectrometry and a classification- and regression-tree algorithm has the potential to use serum protein expression profiles for detection and diagnosis of breast cancer.


Cancer | 2004

Pharmacoproteomic analysis of prechemotherapy and postchemotherapy plasma samples from patients receiving neoadjuvant or adjuvant chemotherapy for breast carcinoma.

Lajos Pusztai; Betsy Gregory; Keith A. Baggerly; Bo Peng; John M. Koomen; Henry M. Kuerer; Francisco J. Esteva; W. Fraser Symmans; Peter Wagner; Gabriel N. Hortobagyi; Christine Laronga; O. John Semmes; George L. Wright; Richard R. Drake; Antonia Vlahou

In this study, proteomic changes were examined in response to paclitaxel chemotherapy or 5‐fluorouracil, doxorubicin, and cyclophosphamide (FAC) chemotherapy in plasma from patients with Stage I–III breast carcinoma. The authors also compared the plasma profiles of patients with cancer with the plasma profiles of healthy women to identify breast carcinoma–associated protein markers.


European Journal of Clinical Investigation | 2012

Implementation of proteomic biomarkers: Making it work

Harald Mischak; John P. A. Ioannidis; Àngel Argilés; Teresa K. Attwood; Erik Bongcam-Rudloff; Mark Broenstrup; Aristidis Charonis; George P. Chrousos; Christian Delles; Anna F. Dominiczak; Tomasz Dylag; Jochen H. H. Ehrich; Jesús Egido; Peter Findeisen; Joachim Jankowski; Robert W. Johnson; Bruce A. Julien; Tim O. Lankisch; Hing Y. Leung; David M. Maahs; Fulvio Magni; Michael P. Manns; Efthymios Manolis; Gert Mayer; Gerarda Navis; Jan Novak; Alberto Ortiz; Frederik Persson; Karlheinz Peter; Hans H. Riese

Eur J Clin Invest 2012; 42 (9): 1027–1036


Proteomics Clinical Applications | 2010

Comprehensive human urine standards for comparability and standardization in clinical proteome analysis

Harald Mischak; Walter Kolch; Michalis Aivaliotis; David Bouyssié; Magali Court; Hassan Dihazi; Gry H. Dihazi; Julia Franke; Jérôme Garin; Anne Gonzalez de Peredo; Alexander Iphöfer; Lothar Jänsch; Chrystelle Lacroix; Manousos Makridakis; Christophe Masselon; Jochen Metzger; Bernard Monsarrat; Michal Mrug; Martin Norling; Jan Novak; Andreas Pich; Andrew R. Pitt; Erik Bongcam-Rudloff; Justyna Siwy; Hitoshi Suzuki; Visith Thongboonkerd; Li-Shun Wang; Jerome Zoidakis; Petra Zürbig; Joost P. Schanstra

Purpose: Urine proteomics is emerging as a powerful tool for biomarker discovery. The purpose of this study is the development of a well‐characterized “real life” sample that can be used as reference standard in urine clinical proteomics studies.


Clinical Biochemistry | 2013

Technical aspects and inter-laboratory variability in native peptide profiling: the CE-MS experience.

Harald Mischak; Antonia Vlahou; John P. A. Ioannidis

Mass spectrometry platforms have attracted a lot of interest in the last 2 decades as profiling tools for native peptides and proteins with clinical potential. However, limitations associated with reproducibility and analytical robustness, especially pronounced with the initial SELDI systems, hindered the application of such platforms in biomarker qualification and clinical implementation. The scope of this article is to give a short overview on data available on performance and on analytical robustness of the different platforms for peptide profiling. Using the CE-MS platform as a paradigm, data on analytical performance are described including reproducibility (short-term and intermediate repeatability), stability, interference, quantification capabilities (limits of detection), and inter-laboratory variability. We discuss these issues by using as an example our experience with the development of a 273-peptide marker for chronic kidney disease. Finally, we discuss pros and cons and means for improvement and emphasize the need to test in terms of comparative clinical performance and impact, different platforms that pass reasonably well analytical validation tests.


BMC Bioinformatics | 2010

Addressing the Challenge of Defining Valid Proteomic Biomarkers and Classifiers

Mohammed Dakna; Keith Harris; Alexandros Kalousis; Sebastien Carpentier; Walter Kolch; Joost P. Schanstra; Marion Haubitz; Antonia Vlahou; Harald Mischak; Mark A. Girolami

BackgroundThe purpose of this manuscript is to provide, based on an extensive analysis of a proteomic data set, suggestions for proper statistical analysis for the discovery of sets of clinically relevant biomarkers. As tractable example we define the measurable proteomic differences between apparently healthy adult males and females. We choose urine as body-fluid of interest and CE-MS, a thoroughly validated platform technology, allowing for routine analysis of a large number of samples. The second urine of the morning was collected from apparently healthy male and female volunteers (aged 21-40) in the course of the routine medical check-up before recruitment at the Hannover Medical School.ResultsWe found that the Wilcoxon-test is best suited for the definition of potential biomarkers. Adjustment for multiple testing is necessary. Sample size estimation can be performed based on a small number of observations via resampling from pilot data. Machine learning algorithms appear ideally suited to generate classifiers. Assessment of any results in an independent test-set is essential.ConclusionsValid proteomic biomarkers for diagnosis and prognosis only can be defined by applying proper statistical data mining procedures. In particular, a justification of the sample size should be part of the study design.


Journal of Proteome Research | 2008

Search for potential markers for prostate cancer diagnosis, prognosis and treatment in clinical tissue specimens using amine-specific isobaric tagging (iTRAQ) with two-dimensional liquid chromatography and tandem mass spectrometry

Spiros D. Garbis; Stavros I. Tyritzis; Theodoros Roumeliotis; Panagiotis Zerefos; Eugenia G. Giannopoulou; Antonia Vlahou; Sophia Kossida; Jose I. Diaz; Stavros Vourekas; Constantin Tamvakopoulos; Kitty Pavlakis; Despina Sanoudou; Constantinos Constantinides

This study aimed to identify candidate new diagnosis and prognosis markers and medicinal targets of prostate cancer (PCa), using state of the art proteomics. A total of 20 prostate tissue specimens from 10 patients with benign prostatic hyperplasia (BPH) and 10 with PCa (Tumour Node Metastasis [TNM] stage T1-T3) were analyzed by isobaric stable isotope labeling (iTRAQ) and two-dimensional liquid chromatography-tandem mass spectrometry (2DLC-MS/MS) approaches using a hybrid quadrupole time-of-flight system (QqTOF). The study resulted in the reproducible identification of 825 nonredundant gene products (p < or = 0.05) of which 30 exhibited up-regulation (> or =2-fold) and another 35 exhibited down-regulation (< or =0.5-fold) between the BPH and PCa specimens constituting a major contribution toward their global proteomic assessment. Selected findings were confirmed by immunohistochemical analysis of prostate tissue specimens. The proteins determined support existing knowledge and uncover novel and promising PCa biomarkers. The PCa proteome found can serve as a useful aid for the identification of improved diagnostic and prognostic markers and ultimately novel chemopreventive and therapeutic targets.

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