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  5. Combining Clinical, Pathology, and Gene Expression Data to Predict Recurrence of Hepatocellular Carcinoma

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Article
English
2011

Combining Clinical, Pathology, and Gene Expression Data to Predict Recurrence of Hepatocellular Carcinoma

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English
2011
Gastroenterology
Vol 140 (5)
DOI: 10.1053/j.gastro.2011.02.006

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Josep M. Llovet
Josep M. Llovet

Translational Research In Hepatic Oncology

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Augusto Villanueva
Yujin Hoshida
Carlo Battiston
+16 more

Abstract

Background & Aims In approximately 70% of patients with hepatocellular carcinoma (HCC) treated by resection or ablation, disease recurs within 5 years. Although gene expression signatures have been associated with outcome, there is no method to predict recurrence based on combined clinical, pathology, and genomic data (from tumor and cirrhotic tissue). We evaluated gene expression signatures associated with outcome in a large cohort of patients with early stage (Barcelona–Clinic Liver Cancer 0/A), single-nodule HCC and heterogeneity of signatures within tumor tissues. Methods We assessed 287 HCC patients undergoing resection and tested genome-wide expression platforms using tumor (n = 287) and adjacent nontumor, cirrhotic tissue (n = 226). We evaluated gene expression signatures with reported prognostic ability generated from tumor or cirrhotic tissue in 18 and 4 reports, respectively. In 15 additional patients, we profiled samples from the center and periphery of the tumor, to determine stability of signatures. Data analysis included Cox modeling and random survival forests to identify independent predictors of tumor recurrence. Results Gene expression signatures that were associated with aggressive HCC were clustered, as well as those associated with tumors of progenitor cell origin and those from nontumor, adjacent, cirrhotic tissues. On multivariate analysis, the tumor-associated signature G3-proliferation (hazard ratio [HR], 1.75; P = .003) and an adjacent poor-survival signature (HR, 1.74; P = .004) were independent predictors of HCC recurrence, along with satellites (HR, 1.66; P = .04). Samples from different sites in the same tumor nodule were reproducibly classified. Conclusions We developed a composite prognostic model for HCC recurrence, based on gene expression patterns in tumor and adjacent tissues. These signatures predict early and overall recurrence in patients with HCC, and complement findings from clinical and pathology analyses.

How to cite this publication

Augusto Villanueva, Yujin Hoshida, Carlo Battiston, Victoria Tovar, Daniela Sia, Clara Alsinet, Helena Cornellà, Arthur Liberzon, Masahiro Kobayashi, Hiromitsu Kumada, Swan N. Thung, Jordi Bruix, Philippa Newell, Craig April, Jian‐Bing Fan, Sasan Roayaie, Vincenzo Mazzaferro, Myron Schwartz, Josep M. Llovet (2011). Combining Clinical, Pathology, and Gene Expression Data to Predict Recurrence of Hepatocellular Carcinoma. Gastroenterology, 140(5), pp. 1501-1512.e2, DOI: 10.1053/j.gastro.2011.02.006.

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Publication Details

Type

Article

Year

2011

Authors

19

Datasets

0

Total Files

0

Language

English

Journal

Gastroenterology

DOI

10.1053/j.gastro.2011.02.006

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