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Random-forest algorithm based biomarkers in predicting prognosis in the patients with hepatocellular carcinoma
by
Guo, Jiwu
, Yu, Zeyuan
, Li, Yumin
, Wang, Zhenjiang
, Du, Yuanyuan
, Guo, Lingyun
, Wang, Haitao
, Gu, Yanmei
, Zhang, Junqiang
, Zhao, Jun
, Mao, Jie
, Zhou, Huinian
in
Antibodies
/ Bioinformatics
/ Biomarkers
/ Biomedical and Life Sciences
/ Biomedicine
/ Cancer Research
/ Cell Biology
/ Cell cycle
/ Gene expression
/ Generalized linear models
/ Genomes
/ Hepatitis
/ Hepatocellular carcinoma
/ Identification
/ Immunohistochemistry
/ Learning algorithms
/ Liver cancer
/ Machine learning
/ MCM2
/ Medical prognosis
/ Morbidity
/ NUF2
/ Ontology
/ Precision Oncology
/ Primary Research
/ Prognosis
/ Proteins
/ Random-forest algorithm
/ Ribonucleic acid
/ RNA
/ SPC25
/ Survival analysis
/ TCGA
/ Tumors
2020
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Random-forest algorithm based biomarkers in predicting prognosis in the patients with hepatocellular carcinoma
by
Guo, Jiwu
, Yu, Zeyuan
, Li, Yumin
, Wang, Zhenjiang
, Du, Yuanyuan
, Guo, Lingyun
, Wang, Haitao
, Gu, Yanmei
, Zhang, Junqiang
, Zhao, Jun
, Mao, Jie
, Zhou, Huinian
in
Antibodies
/ Bioinformatics
/ Biomarkers
/ Biomedical and Life Sciences
/ Biomedicine
/ Cancer Research
/ Cell Biology
/ Cell cycle
/ Gene expression
/ Generalized linear models
/ Genomes
/ Hepatitis
/ Hepatocellular carcinoma
/ Identification
/ Immunohistochemistry
/ Learning algorithms
/ Liver cancer
/ Machine learning
/ MCM2
/ Medical prognosis
/ Morbidity
/ NUF2
/ Ontology
/ Precision Oncology
/ Primary Research
/ Prognosis
/ Proteins
/ Random-forest algorithm
/ Ribonucleic acid
/ RNA
/ SPC25
/ Survival analysis
/ TCGA
/ Tumors
2020
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Random-forest algorithm based biomarkers in predicting prognosis in the patients with hepatocellular carcinoma
by
Guo, Jiwu
, Yu, Zeyuan
, Li, Yumin
, Wang, Zhenjiang
, Du, Yuanyuan
, Guo, Lingyun
, Wang, Haitao
, Gu, Yanmei
, Zhang, Junqiang
, Zhao, Jun
, Mao, Jie
, Zhou, Huinian
in
Antibodies
/ Bioinformatics
/ Biomarkers
/ Biomedical and Life Sciences
/ Biomedicine
/ Cancer Research
/ Cell Biology
/ Cell cycle
/ Gene expression
/ Generalized linear models
/ Genomes
/ Hepatitis
/ Hepatocellular carcinoma
/ Identification
/ Immunohistochemistry
/ Learning algorithms
/ Liver cancer
/ Machine learning
/ MCM2
/ Medical prognosis
/ Morbidity
/ NUF2
/ Ontology
/ Precision Oncology
/ Primary Research
/ Prognosis
/ Proteins
/ Random-forest algorithm
/ Ribonucleic acid
/ RNA
/ SPC25
/ Survival analysis
/ TCGA
/ Tumors
2020
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Random-forest algorithm based biomarkers in predicting prognosis in the patients with hepatocellular carcinoma
Journal Article
Random-forest algorithm based biomarkers in predicting prognosis in the patients with hepatocellular carcinoma
2020
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Overview
Background
Hepatocellular carcinoma (HCC) one of the most common digestive system tumors, threatens the tens of thousands of people with high morbidity and mortality world widely. The purpose of our study was to investigate the related genes of HCC and discover their potential abilities to predict the prognosis of the patients.
Methods
We obtained RNA sequencing data of HCC from The Cancer Genome Atlas (TCGA) database and performed analysis on protein coding genes. Differentially expressed genes (DEGs) were selected. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment were conducted to discover biological functions of DEGs. Protein and protein interaction (PPI) was performed to investigate hub genes. In addition, a method of supervised machine learning, recursive feature elimination (RFE) based on random forest (RF) classifier, was used to screen for significant biomarkers. And the basic experiment was conducted by lab, we constructe a clinical patients’ database, and obtained the data and results of immunohistochemistry.
Results
We identified five biomarkers with significantly high expression to predict survival risk of the HCC patients. These prognostic biomarkers included SPC25, NUF2, MCM2, BLM and AURKA. We also defined a risk score model with these biomarkers to identify the patients who is in high risk. In our single-center experiment, 95 pairs of clinical samples were used to explore the expression levels of NUF2 and BLM in HCC. Immunohistochemical staining results showed that NUF2 and BLM were significantly up-regulated in immunohistochemical staining. High expression levels of NUF2 and BLM indicated poor prognosis.
Conclusion
Our investigation provided novel prognostic biomarkers and model in HCC and aimed to improve the understanding of HCC. In the results obtained, we also conducted a part of experiments to verify the theory described earlier, The experimental results did verify our theory.
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