Back to Search Start Over

Mathematical Prognostic Biomarker Models for Treatment Response and Survival in Epithelial Ovarian Cancer.

Authors :
Nikas, Jason B.
Boylan, Kristin L. M.
Skubitz, Amy P. N.
Low, Walter C.
Source :
Cancer Informatics. 2011, Issue 10, p233-247. 15p.
Publication Year :
2011

Abstract

Following initial standard chemotherapy (platinum/taxol), more than 75% of those patients with advanced stage epithelial ovarian cancer (EOC) experience a recurrence. There are currently no accurate prognostic tests that, at the time of the diagnosis/surgery, can identify those patients with advanced stage EOC who will respond to chemotherapy. Using a novel mathematical theory, we have developed three prognostic biomarker models (complex mathematical functions) that-based on a global gene expression analysis of tumor tissue collected during surgery and prior to the commencement of chemotherapy-can identify with a high accuracy those patients with advanced stage EOC who will respond to the standard chemotherapy [long-term survivors (.7 yrs)] and those who will not do so [short-term survivors (,3 yrs)]. Our three prognostic biomarker models were developed with 34 subjects and validated with 20 unknown (new and different) subjects. Both the overall biomarker model sensitivity and specificity ranged from 95.83% to 100.00%. The 12 most significant genes identified, which are also the input variables to the three mathematical functions, constitute three distinct gene networks with the following functions: 1) production of cytoskeletal components, 2) cell proliferation, and 3) cell energy production. The first gene network is directly associated with the mechanism of action of anti-tubulin chemotherapeutic agents, such as taxanes and epothilones. This could have a significant impact in the discovery of new, more effective pharmacological treatments that may significantly extend the survival of patients with advanced stage EOC. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
11769351
Issue :
10
Database :
Academic Search Index
Journal :
Cancer Informatics
Publication Type :
Academic Journal
Accession number :
89183876
Full Text :
https://doi.org/10.4137/CIN.S8104