Gene expression profiles predict early relapse in ovarian cancer after platinum-paclitaxel chemotherapy

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Abstract

Purpose: Women with advanced epithelial ovarian cancer are routinely treated with platinum-paclitaxel chemotherapy following cytoreductive surgery, yet only ∼20% achieve long-term disease-free survival. We hypothesized that differences in gene expression before treatment could distinguish patients with short versus long time to recurrence after administration of platinum-paclitaxel combination chemotherapy. Experimental Design: To test this hypothesis, gene expression profiling of 79 primary surgically resected tumors from women with advanced-stage, high-grade epithelial ovarian cancer was done using cDNA microarrays containing 30,721 genes. Supervised learning algorithms were applied in an effort to develop a binary classifier that could discriminate women at risk for early (≤21 months) versus late (>21 months) relapse after initial chemotherapy. Results: A 14-gene predictive model was developed using a set of training samples (n = 51) and subsequently tested using an independent set of test samples (n = 28). This model correctly predicted the outcome of 24 of the 28 test samples (86% accuracy) with 95% positive predictive value for early relapse. Conclusions: Predictive markers for early recurrence can be identified for platinum-paclitaxel combination chemotherapy in primary ovarian carcinoma. The proposed 14-gene model requires further validation. ©2005 American Association for Cancer Research.

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APA

Hartmann, L. C., Lu, K. H., Linette, G. P., Cliby, W. A., Kalli, K. R., Gershenson, D., … Damokosli, A. I. (2005). Gene expression profiles predict early relapse in ovarian cancer after platinum-paclitaxel chemotherapy. Clinical Cancer Research, 11(6), 2149–2155. https://doi.org/10.1158/1078-0432.CCR-04-1673

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