Prediction of Lymph Node Metastasis by Analysis of Gene Expression Profiles in Primary Lung Adenocarcinomas
- 1 June 2005
- journal article
- Published by American Association for Cancer Research (AACR) in Clinical Cancer Research
- Vol. 11 (11) , 4128-4135
- https://doi.org/10.1158/1078-0432.ccr-04-2525
Abstract
Purpose: Lymph node status is a strong predictor of outcome for lung cancer patients. Recently, several reports have hinted that gene expression profiles of primary tumor may be able to predict node status. The goals of this study were to determine if microarray data could be used to accurately classify patients with regard to pathologic lymph node status, and to determine if this analysis could identify patients at risk for occult disease and worse survival. Experimental Design: Two previously published lung adenocarcinoma microarray data sets were reanalyzed. Patients were separated into two groups based on pathologic lymph node positive (pN+) or negative (pN0) status, and prediction analysis of microarray (PAM) was used for training and validation to classify nodal status. Overall survival analysis was performed based on PAM classifications. Results: In the training phase, a 318-gene set gave classification accuracy of 88.4% when compared with pathology. Survival was significantly worse in PAM-positive compared with PAM-negative patients overall (P < 0.0001) and also when confined to pN0 patients only (P = 0.0037). In the validation set, classification accuracy was again 94.1% in the pN+ patients but only 21.2% in the pN0 patients. However, among the pN0 patients, recurrence rates and overall survival were significantly worse in the PAM-positive compared with PAM-negative patients (P = 0.0258 and 0.0507). Conclusions: Analysis of gene expression profiles from primary tumor may predict lymph node status but frequently misclassifies pN0 patients as node positive. Recurrence rates and overall survival are worse in these “misclassified” patients, implying that they may in fact have occult disease spread.Keywords
This publication has 23 references indexed in Scilit:
- Expression of S100A4 and Met: Potential Predictors for Metastasis and Survival in Early-Stage Breast CancerOncology, 2004
- S100 Family Members and Trypsinogens Are Predictors of Distant Metastasis and Survival in Early-Stage Non-Small Cell Lung CancerCancer Research, 2004
- Gene Expression Profile of Gastric CarcinomaCancer Research, 2004
- Expression profiles of non-small cell lung cancers on cDNA microarrays: Identification of genes for prediction of lymph-node metastasis and sensitivity to anti-cancer drugsOncogene, 2003
- A molecular signature of metastasis in primary solid tumorsNature Genetics, 2002
- Gene-expression profiles predict survival of patients with lung adenocarcinomaNature Medicine, 2002
- Extracellular matrix building marked by the N‐terminal propeptide of procollagen type I reflect aggressiveness of recurrent breast cancerInternational Journal of Cancer, 2002
- Implications for immunosurveillance of altered HLA class I phenotypes in human tumoursImmunology Today, 1997
- Cancer statistics, 1994CA: A Cancer Journal for Clinicians, 1994
- Expression of the matrix Gla protein in urogenital malignanciesInternational Journal of Cancer, 1992