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Research Article

A machine learning approach yields a multiparameter prognostic marker in liver cancer

Xiaoli Liu, Jilin Lu, Guanxiong Zhang, Junyan Han, Wei Zhou, Huan Chen, Henghui Zhang and Zhiyun Yang
Xiaoli Liu
1Beijing Ditan Hospital
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Jilin Lu
2Department of General Surgery, Huashan Hospital, Fudan University
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Guanxiong Zhang
3Genecast Precision Medicine Technology Institute
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Junyan Han
4Institute of Infectious Diseases, Beijing Ditan Hospital, Capital Medical University
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Wei Zhou
5GRMH, Genecast Precision Medicine Technology Institute
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Huan Chen
6None, Genecast Precision Medicine Technology Institute, Beijing, China
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Henghui Zhang
4Institute of Infectious Diseases, Beijing Ditan Hospital, Capital Medical University
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  • For correspondence: zhhbao@ccmu.edu.cn
Zhiyun Yang
1Beijing Ditan Hospital
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DOI: 10.1158/2326-6066.CIR-20-0616
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Abstract

A number of staging systems have been developed to predict clinical outcomes in hepatocellular carcinoma (HCC). However, no general consensus has been reached regarding the optimal model. New approaches such as machine learning (ML) strategies are powerful tools for incorporating risk factors from multiple platforms. We retrospectively reviewed the baseline information, including clinicopathologic characteristics, laboratory parameters, and peripheral immune features reflecting T-cell function, from three HCC cohorts. A gradient-boosting survival (GBS) classifier was trained with prognosis-related variables in the training dataset and validated in two independent cohorts. We constructed a 20-feature GBS model classifier incorporating 1 clinical feature, 14 laboratory parameters, and 5 T-cell function parameters obtained from peripheral blood mononuclear cells (PBMCs). The GBS model-derived risk scores demonstrated high concordance indexes (C-indexes) - 0.844, 0.827, and 0.806 in the training set and validation sets 1 and 2, respectively. The GBS classifier could separate patients into high-, medium- and low-risk subgroups with respect to death in all datasets (P<0.05 for all comparisons). A higher risk score was positively correlated with a higher clinical stage and the presence of portal vein tumor thrombus (PVTT). Subgroup analyses with respect to Child-Pugh class, Barcelona Clinic Liver Cancer (BCLC) stage, and PVTT status supported the prognostic relevance of the GBS-derived risk algorithm independent of the conventional tumor staging system. In summary, a multiparameter machine learning algorithm incorporating clinical characteristics, laboratory parameters, and peripheral immune signatures offers a different approach to identify patients with the greatest risk of HCC-related death.

  • Received July 23, 2020.
  • Revision received November 13, 2020.
  • Accepted January 7, 2021.
  • Copyright ©2021, American Association for Cancer Research.

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This OnlineFirst version was published on January 11, 2021
doi: 10.1158/2326-6066.CIR-20-0616

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A machine learning approach yields a multiparameter prognostic marker in liver cancer
Xiaoli Liu, Jilin Lu, Guanxiong Zhang, Junyan Han, Wei Zhou, Huan Chen, Henghui Zhang and Zhiyun Yang
Cancer Immunol Res January 11 2021 DOI: 10.1158/2326-6066.CIR-20-0616

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A machine learning approach yields a multiparameter prognostic marker in liver cancer
Xiaoli Liu, Jilin Lu, Guanxiong Zhang, Junyan Han, Wei Zhou, Huan Chen, Henghui Zhang and Zhiyun Yang
Cancer Immunol Res January 11 2021 DOI: 10.1158/2326-6066.CIR-20-0616
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Cancer Immunology Research
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