Litcius/Paper detail

Construction of a prognostic model with <scp>CAFs</scp> for predicting the prognosis and immunotherapeutic response of lung squamous cell carcinoma

Xiang Zhang, Qingqing Xiao, Cong Zhang, Qinghua Zhou, Tao Xu

2024Journal of Cellular and Molecular Medicine13 citationsDOIOpen Access PDF

Abstract

Lung squamous cell carcinoma (LUSC) is one of the subtypes of lung cancer (LC) that contributes to approximately 25%-30% of its prevalence. Cancer-associated fibroblasts (CAFs) are key cellular components of the TME, and the large number of CAFs in tumour tissues creates a favourable environment for tumour development. However, the function of CAFs in the LUSC is complex and uncertain. First, we processed the scRNA-seq data and classified distinct types of CAFs. We also identified prognostic CAFRGs using univariate Cox analysis and conducted survival analysis. Additionally, we assessed immune cell infiltration in CAF clusters using ssGSEA. We developed a model with a significant prognostic correlation and verified the prognostic model. Furthermore, we explored the immune landscape of LUSC and further investigated the correlation between malignant features and LUSC. We identified CAFs and classified them into three categories: iCAFs, mCAFs and apCAFs. The survival analysis showed a significant correlation between apCAFs and iCAFs and LUSC patient prognosis. Kaplan-Meier analysis showed that patients in CAF cluster C showed a better survival probability compared to clusters A and B. In addition, we identified nine significant prognostic CAFRGs (CLDN1, TMX4, ALPL, PTX3, BHLHE40, TNFRSF12A, VKORC1, CST3 and ADD3) and subsequently employed multivariate Cox analysis to develop a signature and validate the model. Lastly, the correlation between CAFRG and malignant features indicates the potential role of CAFRG in promoting tumour angiogenesis, EMT and cell cycle alterations. We constructed a CAF prognostic signature for identifying potential prognostic CAFRGs and predicting the prognosis and immunotherapeutic response for LUSC. Our study may provide a more accurate prognostic assessment and immunotherapy targeting strategies for LUSC.

Topics & Concepts

OncologyImmune systemProportional hazards modelUnivariate analysisLung cancerMedicineSurvival analysisImmunotherapyInternal medicineMultivariate analysisCorrelationCancer researchBiologyPathologyImmunologyGeometryMathematicsFerroptosis and cancer prognosisCancer-related molecular mechanisms researchRNA modifications and cancer