Affiliation:
1. Second Internal Medicine, Jilin Cancer Hospital, Changchun, Jilin, 130012, China
2. Department of Infectious Diseases, Jilin Province Faw General Hospital, Changchun, Jilin, 130013, China
Abstract
Background:
Hepatocellular carcinoma (HCC) is a globally prevalent malignancy
accompanied by high incidence, poor outcomes, and high mortality. Anthocyanins can inhibit
tumor proliferation, migration, invasion, and promote apoptosis. Moreover, autophagy-related
genes (ARGs) may play vital roles in HCC progression. This study aimed to decipher the mechanisms
through which anthocyanins influence HCC via ARGs and to establish a novel prognostic
model.
Methods:
Based on data from public databases, differential analysis and the Venn algorithm
were employed to detect intersecting genes among differentially expressed genes (DEGs), anthocyanin-
related targets, and ARGs. Consensus clustering was implemented to delineate molecular
subtypes of HCC. The prognostic model was developed by Cox regression analyses.
CIBIRSORT was engaged to assess the immune cell infiltration. Kaplan-Meier (KM) analysis
and receiver operating characteristic (ROC) curve were utilized to evaluate the predictive efficiency
of the prognostic signature.
Results:
A total of 36 intersecting genes were identified from overlapping 1524 ARGs, 537 anthocyanin-
related targets, and 5247 DEGs. Consensus clustering determined three molecular
subtypes (cluster 1, cluster 2, and cluster 3). Cluster 1 showed worse outcomes and remarkably
higher abundances of plasma cells and T follicular helper cells. Furthermore, four prognostic
signatures [KDR (Kinase insert domain receptor), BAK1 (BCL2 antagonist/killer 1), HDAC1
(Histone deacetylase 1), and CDK2 (Cyclin-dependent kinase 2)] were identified and showing
substantial predictive efficacy.
method:
Methods: Based on data from public databases, differential analysis and Venn algorithm were fulfilled to detect intersecting genes among differentially expressed genes (DEGs), anthocyanin-related targets, and ARGs. Consensus clustering was implemented to recognize molecular subtypes of HCC. The prognostic model was developed by Cox regression analyses. CIBIRSORT was utilized to implement the immune cell infiltration. Kaplan-Meier (KM) analysis and receiver operating characteristic (ROC) curve were adopted to evaluate the predictive efficiency of the prognostic signature.
Conclusion:
This investigation identified three molecular subtypes of HCC patients and proposed
a promising prognostic signature comprising KDR, BAK1, HDAC1, and CDK2, which
could supply further robust evidence for additional clinical and functional studies.
Publisher
Bentham Science Publishers Ltd.