ClearCode34: A Prognostic Risk Predictor for Localized Clear Cell Renal Cell Carcinoma

Brooks, SA; Brannon, AR; Parker, JS; Fisher, JC; Sen, O; Kattan, MW; Hakimi, A; Hsieh, JJ; Choueiri, TK; Tamboli, P; Maranchie, JK; Hinds, P; Miller, CR; Nielsen, ME; Rathmell, WK

HERO ID

2454059

Reference Type

Journal Article

Year

2014

Language

English

PMID

24613583

HERO ID 2454059
In Press No
Year 2014
Title ClearCode34: A Prognostic Risk Predictor for Localized Clear Cell Renal Cell Carcinoma
Authors Brooks, SA; Brannon, AR; Parker, JS; Fisher, JC; Sen, O; Kattan, MW; Hakimi, A; Hsieh, JJ; Choueiri, TK; Tamboli, P; Maranchie, JK; Hinds, P; Miller, CR; Nielsen, ME; Rathmell, WK
Journal European Urology
Volume 66
Issue 1
Page Numbers 77-84
Abstract Background: Gene expression signatures have proven to be useful tools in many cancers to identify distinct subtypes of disease based on molecular features that drive pathogenesis, and to aid in predicting clinical outcomes. However, there are no current signatures for kidney cancer that are applicable in a clinical setting. <br> <br>Objective: To generate a signature biomarker for the clear cell renal cell carcinoma (ccRCC) good risk (ccA) and poor risk (ccB) subtype classification that could be readily applied to clinical samples to develop an integrated model for biologically defined risk stratification. <br> <br>Design, setting, and participants: A set of 72 ccRCC sample standards was used to develop a 34-gene classifier (ClearCode34) for assigning ccRCC tumors to subtypes. The classifier was applied to RNA-sequencing data from 380 nonmetastatic ccRCC samples from the Cancer Genome Atlas (TCGA), and to 157 formalin-fixed clinical samples collected at the University of North Carolina. <br> <br>Outcome measurements and statistical analysis: Kaplan-Meier analyses were performed on the individual cohorts to calculate recurrence-free survival (RFS), cancer-specific survival (CSS), and overall survival (OS). Training and test sets were randomly selected from the combined cohorts to assemble a risk prediction model for disease recurrence. <br> <br>Results and limitations: The subtypes were significantly associated with RFS (p &lt; 0.01), CSS (p &lt; 0.01), and OS (p &lt; 0.01). Hazard ratios for subtype classification were similar to those of stage and grade in association with recurrence risk, and remained significant in multivariate analyses. An integrated molecular/clinical model for RFS to assign patients to risk groups was able to accurately predict CSS above established, clinical risk-prediction algorithms. <br> <br>Conclusions: The ClearCode34-based model provides prognostic stratification that improves upon established algorithms to assess risk for recurrence and death for nonmetastatic ccRCC patients. <br> <br>Patient summary: We developed a 34-gene subtype predictor to classify clear cell renal cell carcinoma tumors according to ccA or ccB subtypes and built a subtype-inclusive model to analyze patient survival outcomes. (C) 2014 European Association of Urology. Published by Elsevier B.V. All rights reserved.
Doi 10.1016/j.eururo.2014.02.035
Pmid 24613583
Wosid WOS:000339736800023
Is Certified Translation No
Dupe Override No
Is Public Yes
Language Text English
Keyword Biomarker; ccRCC; Kidney cancer; Renal cell carcinoma; TCGA; Prognosis