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Published in: Hepatology International 6/2019

01-11-2019 | Hepatocellular Carcinoma | Original Article

Clinical and morpho-molecular classifiers for prediction of hepatocellular carcinoma prognosis and recurrence after surgical resection

Authors: Xiuming Zhang, Yanfeng Bai, Lei Xu, Buyi Zhang, Shi Feng, Liming Xu, Han Zhang, Linjie Xu, Pengfei Yang, Tianye Niu, Shusen Zheng, Jimin Liu

Published in: Hepatology International | Issue 6/2019

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Abstract

Background

Approximately 50% hepatocellular carcinoma (HCC) patients die within 5 year after surgical resection. The present staging systems do not fully allow to accurately predict the HCC prognosis and recurrence. This study aimed to identify clinicopathological characteristics and molecular markers to establish classifiers to predict the 5-year overall survival (OS) and the 3-year recurrence in HCC patients post-operatively.

Methods

We enrolled 647 HCC patients from two institutions, underwent surgical resection and divided the patients into one training and two validation cohorts. Clinicopathologic characteristics and tumor protein expression of 29 biomarkers by immunohistochemical (IHC) analysis were used to develop and validate a prognostic and a recurrent classifier, using the maximum relevance minimum redundancy algorithm jointly with the multivariable regression method.

Results

The prognostic classifier distinguished HCC patients into high- and low-probability survival groups with significant differences in 5-year OS rate in all three cohorts (training cohort: 57.36% vs. 22.97%; p < 0.0001; internal validation cohort: 61.90% vs. 28.85%; p < 0.0001; independent validation cohort: 64.28% vs. 22.45%; p < 0.0001). The recurrent classifier also demonstrated good discrimination in all three cohorts.

Conclusion

This study presented a prognostic classifier and a recurrent classifier using clinicopathologic and IHC characteristics. The developed classifiers stratified HCC patients into high- and low-probability survival or recurrent groups, which can help clinicians judge whether adjuvant therapy is beneficial post-operatively.
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Metadata
Title
Clinical and morpho-molecular classifiers for prediction of hepatocellular carcinoma prognosis and recurrence after surgical resection
Authors
Xiuming Zhang
Yanfeng Bai
Lei Xu
Buyi Zhang
Shi Feng
Liming Xu
Han Zhang
Linjie Xu
Pengfei Yang
Tianye Niu
Shusen Zheng
Jimin Liu
Publication date
01-11-2019
Publisher
Springer India
Published in
Hepatology International / Issue 6/2019
Print ISSN: 1936-0533
Electronic ISSN: 1936-0541
DOI
https://doi.org/10.1007/s12072-019-09978-9

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