AI Article Synopsis

  • Programmed cell death (PCD) and immune-related genes significantly influence the development and prognosis of lung adenocarcinoma (LUAD), but more research is necessary to understand their interactions.
  • The study utilized 10 clustering algorithms to categorize LUAD patients into three subtypes based on various molecular data and created a prognostic model (PIGRS) using effective machine learning methods.
  • The findings indicated distinct prognoses for different patient subtypes, with PIGRS demonstrating strong predictive capabilities and highlighting PSME3 as a potential new prognostic factor in LUAD.

Article Abstract

Introduction: The programmed cell death (PCD) plays a key role in the development and progression of lung adenocarcinoma. In addition, immune-related genes also play a crucial role in cancer progression and patient prognosis. However, further studies are needed to investigate the prognostic significance of the interaction between immune-related genes and cell death in LUAD.

Methods: In this study, 10 clustering algorithms were applied to perform molecular typing based on cell death-related genes, immune-related genes, methylation data and somatic mutation data. And a powerful computational framework was used to investigate the relationship between immune genes and cell death patterns in LUAD patients. A total of 10 commonly used machine learning algorithms were collected and subsequently combined into 101 unique combinations, and we constructed an immune-associated programmed cell death model (PIGRS) using the machine learning model that exhibited the best performance. Finally, based on a series of in vitro experiments used to explore the role of PSME3 in LUAD.

Results: We used 10 clustering algorithms and multi-omics data to categorize TCGA-LUAD patients into three subtypes. patients with the CS3 subtype had the best prognosis, whereas patients with the CS1 and CS2 subtypes had a poorer prognosis. PIGRS, a combination of 15 high-impact genes, showed strong prognostic performance for LUAD patients. PIGRS has a very strong prognostic efficacy compared to our collection. In conclusion, we found that PSME3 has been little studied in lung adenocarcinoma and may be a novel prognostic factor in lung adenocarcinoma.

Discussion: Three LUAD subtypes with different molecular features and clinical significance were successfully identified by bioinformatic analysis, and PIGRS was constructed using a powerful machine learning framework. and investigated PSME3, which may affect apoptosis in lung adenocarcinoma cells through the PI3K/AKT/Bcl-2 signaling pathway.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11427295PMC
http://dx.doi.org/10.3389/fimmu.2024.1460547DOI Listing

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