Author:
Zhang Liangyu,Guan Maohao,Zhang Xun,Yu Fengqiang,Lai Fancai
Abstract
Abstract
Background
Innate immune effectors, dendritic cells (DCs), influence cancer prognosis and immunotherapy
significantly. As such, dendritic cells are important in killing tumors and influencing tumor microenvironment,
whereas their roles in lung adenocarcinoma (LUAD) are largely unknown.
Methods
In this study, 1658 LUAD patients from different cohorts were included. In addition, 724 cancer patients
who received immunotherapy were also included. To identify DC marker genes in LUAD, we used single-cell RNAsequencing
data for analysis and determined 83 genes as DC marker genes. Following that, integrative machine
learning procedure was developed to construct a signature for DC marker genes.
Results
Using TCGA bulk-RNA sequencing data as the training set, we developed a signature consisting of seven
genes and classified patients by their risk status. Another six independent cohorts demonstrated the signature’ s
prognostic power, and multivariate analysis demonstrated it was an independent prognostic factor. LUAD patients
in the high-risk group displayed more advanced features, discriminatory immune-cell infiltrations and
immunosuppressive states. Cell–cell communication analysis indicates that tumor cells with lower risk scores
communicate more actively with the tumor microenvironment. Eight independent immunotherapy cohorts revealed
that patients with low-risk had better immunotherapy responses. Drug sensitivity analysis indicated that targeted
therapy agents exhibited greater sensitivity to low-risk patients, while chemotherapy agents displayed greater
sensitivity to high-risk patients. In vitro experiments confirmed that CTSH is a novel protective factor for LUAD.
Conclusions
An unique signature based on DC marker genes that is highly predictive of LUAD patients’ prognosis
and response to immunotherapy. CTSH is a new biomarker for LUAD.
Publisher
Springer Science and Business Media LLC
Subject
Cancer Research,Oncology,General Medicine
Cited by
4 articles.
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