Author:
Liu Yafeng,Han Tao,Miao Rui,Zhou Jiawei,Guo Jianqiang,Xu Zhi,Xing Yingru,Bai Ying,Wu Jing,Hu Dong
Abstract
Abstract
Objection
Investigating the key genes and mechanisms that influence stemness in lung adenocarcinoma.
Methods
First, consistent clustering analysis was performed on lung adenocarcinoma patients using stemness scoring to classify them. Subsequently, WGCNA was utilized to identify key modules and hub genes. Then, machine learning methods were employed to screen and identify the key genes within these modules. Lastly, functional analysis of the key genes was conducted through cell scratch assays, colony formation assays, transwell migration assays, flow cytometry cell cycle analysis, and xenograft tumor models.
Results
First, two groups of patients with different stemness scores were obtained, where the high stemness score group exhibited poor prognosis and immunotherapy efficacy. Next, LASSO regression analysis and random forest regression were employed to identify genes (PBK, RACGAP1) associated with high stemness scores. RACGAP1 was significantly upregulated in the high stemness score group of lung adenocarcinoma and closely correlated with clinical pathological features, poor overall survival (OS), recurrence-free survival (RFS), and unfavorable prognosis in lung adenocarcinoma patients. Knockdown of RACGAP1 suppressed the migration, proliferation, and tumor growth of cancer cells.
Conclusion
RACGAP1 not only indicates poor prognosis and limited immunotherapy benefits but also serves as a potential targeted biomarker influencing tumor stemness.
Funder
the National Natural Science Foundation of China
the Collaborative Innovation Project of Colleges and Universities of Anhui Province
Anhui Province Engineering Laboratory of Occupational Health and Safety
Key Laboratory of Industrial Dust Deep Reduction and Occupational Health and Safety of Anhui Higher Education Institutes
the Innovation and Entrepreneurship Project of Anhui University of Science and Technology
Scientific Research Foundation for High-level Talents of Anhui University of Science and Technology
Publisher
Springer Science and Business Media LLC
Cited by
2 articles.
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