Go to JCI Insight
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Advertising
  • Job board
  • Contact
  • Clinical Research and Public Health
  • Current issue
  • Past issues
  • By specialty
    • COVID-19
    • Cardiology
    • Gastroenterology
    • Immunology
    • Metabolism
    • Nephrology
    • Neuroscience
    • Oncology
    • Pulmonology
    • Vascular biology
    • All ...
  • Videos
    • Conversations with Giants in Medicine
    • Video Abstracts
  • Reviews
    • View all reviews ...
    • Complement Biology and Therapeutics (May 2025)
    • Evolving insights into MASLD and MASH pathogenesis and treatment (Apr 2025)
    • Microbiome in Health and Disease (Feb 2025)
    • Substance Use Disorders (Oct 2024)
    • Clonal Hematopoiesis (Oct 2024)
    • Sex Differences in Medicine (Sep 2024)
    • Vascular Malformations (Apr 2024)
    • View all review series ...
  • Viewpoint
  • Collections
    • In-Press Preview
    • Clinical Research and Public Health
    • Research Letters
    • Letters to the Editor
    • Editorials
    • Commentaries
    • Editor's notes
    • Reviews
    • Viewpoints
    • 100th anniversary
    • Top read articles

  • Current issue
  • Past issues
  • Specialties
  • Reviews
  • Review series
  • Conversations with Giants in Medicine
  • Video Abstracts
  • In-Press Preview
  • Clinical Research and Public Health
  • Research Letters
  • Letters to the Editor
  • Editorials
  • Commentaries
  • Editor's notes
  • Reviews
  • Viewpoints
  • 100th anniversary
  • Top read articles
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Advertising
  • Job board
  • Contact

Citations to this article

Improved prediction of prostate cancer recurrence through systems pathology
Carlos Cordon-Cardo, … , Peter T. Scardino, Michael J. Donovan
Carlos Cordon-Cardo, … , Peter T. Scardino, Michael J. Donovan
Published July 2, 2007
Citation Information: J Clin Invest. 2007;117(7):1876-1883. https://doi.org/10.1172/JCI31399.
View: Text | PDF
Research Article Oncology Article has an altmetric score of 3

Improved prediction of prostate cancer recurrence through systems pathology

  • Text
  • PDF
Abstract

We have developed an integrated, multidisciplinary methodology, termed systems pathology, to generate highly accurate predictive tools for complex diseases, using prostate cancer for the prototype. To predict the recurrence of prostate cancer following radical prostatectomy, defined by rising serum prostate-specific antigen (PSA), we used machine learning to develop a model based on clinicopathologic variables, histologic tumor characteristics, and cell type–specific quantification of biomarkers. The initial study was based on a cohort of 323 patients and identified that high levels of the androgen receptor, as detected by immunohistochemistry, were associated with a reduced time to PSA recurrence. The model predicted recurrence with high accuracy, as indicated by a concordance index in the validation set of 0.82, sensitivity of 96%, and specificity of 72%. We extended this approach, employing quantitative multiplex immunofluorescence, on an expanded cohort of 682 patients. The model again predicted PSA recurrence with high accuracy, concordance index being 0.77, sensitivity of 77% and specificity of 72%. The androgen receptor was selected, along with 5 clinicopathologic features (seminal vesicle invasion, biopsy Gleason score, extracapsular extension, preoperative PSA, and dominant prostatectomy Gleason grade) as well as 2 histologic features (texture of epithelial nuclei and cytoplasm in tumor only regions). This robust platform has broad applications in patient diagnosis, treatment management, and prognostication.

Authors

Carlos Cordon-Cardo, Angeliki Kotsianti, David A. Verbel, Mikhail Teverovskiy, Paola Capodieci, Stefan Hamann, Yusuf Jeffers, Mark Clayton, Faysal Elkhettabi, Faisal M. Khan, Marina Sapir, Valentina Bayer-Zubek, Yevgen Vengrenyuk, Stephen Fogarsi, Olivier Saidi, Victor E. Reuter, Howard I. Scher, Michael W. Kattan, Fernando J. Bianco Jr., Thomas M. Wheeler, Gustavo E. Ayala, Peter T. Scardino, Michael J. Donovan

×

Total citations by year

Year: 2024 2020 2018 2017 2016 2015 2014 2013 2012 2011 2010 2009 2008 Total
Citations: 1 2 2 2 6 3 1 1 2 2 5 5 3 35
Citation information
This citation data is accumulated from CrossRef, which receives citation information from participating publishers, including this journal. Not all publishers participate in CrossRef, so this information is not comprehensive. Additionally, data may not reflect the most current citations to this article, and the data may differ from citation information available from other sources (for example, Google Scholar, Web of Science, and Scopus).

Citations to this article (35)

Title and authors Publication Year
The yin and yang of chromosomal instability in prostate cancer.
Carceles-Cordon M, Orme JJ, Domingo-Domenech J, Rodriguez-Bravo V
Nature Reviews Urology 2024
Applications of Artificial Intelligence to Prostate Multiparametric MRI (mpMRI): Current and Emerging Trends
MD Bardis, R Houshyar, PD Chang, A Ushinsky, J Glavis-Bloom, C Chahine, TL Bui, M Rupasinghe, CG Filippi, DS Chow
Cancers 2020
Impact of nuclear YAP1 expression in residual cancer after neoadjuvant chemohormonal therapy with docetaxel for high-risk localized prostate cancer
Y Matsuda, S Narita, T Nara, H Mingguo, H Sato, A Koizumi, S Kanda, K Numakura, M Saito, T Inoue, Y Hiroshima, H Nanjo, S Satoh, N Tsuchiya, T Habuchi
BMC Cancer 2020
Predicting Advanced Prostate Cancer from Modeling Early Indications in Biopsy and Prostatectomy Samples via Transductive Semi-Supervised Survival Analysis
FM Khan
BioMed Research International 2018
Cost-effectiveness analyses and cost analyses in castration-resistant prostate cancer: A systematic review
T Grochtdreis, HH König, A Dobruschkin, G von Amsberg, J Dams, CJ Wallis
PloS one 2018
Stromal Androgen Receptor in Prostate Cancer Development and Progression
D Leach, G Buchanan
Cancers 2017
Predicting and replacing the pathological Gleason grade with automated gland ring morphometric features from immunofluorescent prostate cancer images
FM Khan, R Scott, M Donovan, G Fernandez
Journal of Medical Imaging 2017
Computational pathology of pre-treatment biopsies identifies lymphocyte density as a predictor of response to neoadjuvant chemotherapy in breast cancer
HR Ali, A Dariush, E Provenzano, H Bardwell, JE Abraham, M Iddawela, AL Vallier, L Hiller, JA Dunn, SJ Bowden, T Hickish, K McAdam, S Houston, MJ Irwin, PD Pharoah, JD Brenton, NA Walton, HM Earl, C Caldas
Breast Cancer Research 2016
Vision 20/20: Molecular-guided surgical oncology based upon tumor metabolism or immunologic phenotype: Technological pathways for point of care imaging and intervention
BW Pogue, KD Paulsen, KS Samkoe, JT Elliott, T Hasan, TV Strong, DR Draney, J Feldwisch
Medical Physics 2016
Automated prostate tissue referencing for cancer detection and diagnosis
JT Kwak, SM Hewitt, AA Kajdacsy-Balla, S Sinha, R Bhargava
BMC bioinformatics 2016
Nuclear Shape and Architecture in Benign Fields Predict Biochemical Recurrence in Prostate Cancer Patients Following Radical Prostatectomy: Preliminary Findings
G Lee, RW Veltri, G Zhu, S Ali, JI Epstein, A Madabhushi
European Urology Focus 2016
Quantitative Time-Resolved Fluorescence Imaging of Androgen Receptor and Prostate-Specific Antigen in Prostate Tissue Sections
A Krzyzanowska, G Lippolis, L Helczynski, A Anand, M Peltola, K Pettersson, H Lilja, A Bjartell
Journal of Histochemistry & Cytochemistry 2016
Implementation of a Precision Pathology Program Focused on Oncology-Based Prognostic and Predictive Outcomes
MJ Donovan, C Cordon-Cardo
Molecular diagnosis & therapy 2016
Improving Prediction of Prostate Cancer Recurrence using Chemical Imaging
JT Kwak, A Kajdacsy-Balla, V Macias, M Walsh, S Sinha, R Bhargava
Scientific Reports 2015
Expression of ERG protein in prostate cancer: variability and biological correlates
G Ayala, A Frolov, D Chatterjee, D He, S Hilsenbeck, M Ittmann
Endocrine Related Cancer 2015
SIGIRR/TIR8, an important regulator of TLR4 and IL-1R-mediated NF-kB activation, predicts biochemical recurrence after prostatectomy in low-grade prostate carcinomas
TM Bauman, AJ Becka, PD Sehgal, W Huang, WA Ricke
Human Pathology 2015
Biomarkers and mechanisms associated with recurrent prostate cancer
Sharma S, Watabe K
2014
Astronomical algorithms for automated analysis of tissue protein expression in breast cancer
HR Ali, M Irwin, L Morris, SJ Dawson, FM Blows, E Provenzano, B Mahler-Araujo, PD Pharoah, NA Walton, JD Brenton, C Caldas
British Journal of Cancer 2013
The role of treatment modality on the utility of predictive tissue biomarkers in clinical prostate cancer: a systematic review
N Kachroo, VJ Gnanapragasam
Journal of Cancer Research and Clinical Oncology 2012
Nuclear morphometry, nucleomics and prostate cancer progression
RW Veltri, CS Christudass, S Isharwal
Asian Journal of Andrology 2012
Postoperative systems models more accurately predict risk of significant disease progression than standard risk groups and a 10-year postoperative nomogram: potential impact on the receipt of adjuvant therapy after surgery
MJ Donovan, FM Khan, D Powell, V Bayer-Zubek, C Cordon-Cardo, J Costa, J Eastham, P Scardino
BJU International 2011
Lycopene for the prevention of prostate cancer
Ilic D, Forbes KM, Hassed C
The Cochrane Database of Systematic Reviews 2011
Molecular genetics of prostate cancer: new prospects for old challenges
MM Shen, C Abate-Shen
Genes & development 2010
Predictive and prognostic molecular markers for cancer medicine
S Mehta, A Shelling, A Muthukaruppan, A Lasham, C Blenkiron, G Laking, C Print
Therapeutic advances in medical oncology 2010
Molecular processes leading to aberrant androgen receptor signaling and castration resistance in prostate cancer
R Hu, SR Denmeade, J Luo
Expert Review of Endocrinology & Metabolism 2010
High-throughput detection of prostate cancer in histological sections using probabilistic pairwise Markov models
JP Monaco, JE Tomaszewski, MD Feldman, I Hagemann, M Moradi, P Mousavi, A Boag, C Davidson, P Abolmaesumi, A Madabhushi
Medical image analysis 2010
Definition of biochemical recurrence after radical prostatectomy does not substantially impact prognostic factor estimates
AM Cronin, G Godoy, AJ Vickers
The Journal of Urology 2010
Pulmonary surfactant: an immunological perspective
ZC Chroneos, Z Sever-Chroneos, VL Shepherd
Cellular physiology and biochemistry : international journal of experimental cellular physiology, biochemistry, and pharmacology 2009
MFH classification: differentiating undifferentiated pleomorphic sarcoma in the 21st Century
I Matushansky, E Charytonowicz, J Mills, S Siddiqi, T Hricik, C Cordon-Cardo
Expert Review of Anticancer Therapy 2009
Prediction of prostate cancer recurrence using magnetic resonance imaging and molecular profiles
A Shukla-Dave, H Hricak, N Ishill, CS Moskowitz, M Drobnjak, VE Reuter, KL Zakian, PT Scardino, C Cordon-Cardo
Clinical cancer research 2009
Correlation of MR imaging and MR spectroscopic imaging findings with Ki-67, phospho-Akt, and androgen receptor expression in prostate cancer
A Shukla-Dave, H Hricak, NM Ishill, CS Moskowitz, M Drobnjak, VE Reuter, KL Zakian, PT Scardino, C Cordon-Cardo
Radiology 2009
Cost Effectiveness of Risk-Prediction Tools in SelectingPatients for Immediate Post-Prostatectomy Treatment
VB Zubek, A Konski
Molecular diagnosis & therapy 2009
Incorporating molecular tools into early-stage clinical trials
RJ Weil
PLoS Medicine 2008
Comparison of models to predict clinical failure after radical prostatectomy
SE Eggener, AJ Vickers, AM Serio, MJ Donovan, FM Khan, V Bayer-Zubek, D Verbel, C Cordon-Cardo, VE Reuter, FJ Bianco, PT Scardino
Cancer 2008
Limitations of PSADT following Biochemical Recurrence after Radical Prostatectomy: Results from The SEARCH Database
RJ Hamilton, WJ Aronson, MK Terris, CJ Kane, JC Presti, CL Amling, SJ Freedland
The Journal of Urology 2008

← Previous 1 2 Next →

Advertisement

Copyright © 2025 American Society for Clinical Investigation
ISSN: 0021-9738 (print), 1558-8238 (online)

Sign up for email alerts

Referenced in 8 patents
95 readers on Mendeley
1 readers on CiteULike
See more details