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利用机器学习和计算虚拟筛选确定肺鳞状细胞癌中与失巢凋亡相关生物标志物的潜在诊断靶点和治疗策略。

Identification of potential diagnostic targets and therapeutic strategies for anoikis-related biomarkers in lung squamous cell carcinoma using machine learning and computational virtual screening.

作者信息

Zhang Xin, Zou Jing, Ning Jinghua, Zhao Yanhong, Qu Run, Zhang Yuzhe

机构信息

College of Basic Medical sciences, Dali University, Dali, China.

Department of Respiratory Medicine, First Affiliated Hospital of Dali University, Dali, China.

出版信息

Front Pharmacol. 2025 Feb 14;16:1500968. doi: 10.3389/fphar.2025.1500968. eCollection 2025.

Abstract

OBJECTIVE

Lung squamous cell carcinoma (LUSC) is a common subtype of non-small cell lung cancer (NSCLC) characterized by high invasiveness, high metastatic potential, and drug resistance, resulting in poor patient prognosis. Anoikis, a specific form of apoptosis triggered by cell detachment from the extracellular matrix (ECM), plays a crucial role in tumor metastasis. Resistance to anoikis is a key mechanism by which cancer cells acquire metastatic potential. Although several studies have identified biomarkers related to LUSC, the role of anoikis-related genes (ARGs) remains largely unexplored.

METHODS

Anoikis-related genes were obtained from the Harmonizome and GeneCards databases, and 222 differentially expressed genes (DEGs) in LUSC were identified via differential expression analysis. Univariate Cox regression analysis identified 74 ARGs significantly associated with survival, and a prognostic model comprising 8 ARGs was developed using LASSO and multivariate Cox regression analyses. The model was internally validated using receiver operating characteristic (ROC) curves and Kaplan-Meier (K-M) survival curves. Differences in immune cell infiltration and gene expression between high- and low-risk groups were analyzed. Virtual drug screening and molecular dynamics simulations were performed to evaluate the therapeutic potential of CSNK2A1, a key gene in the model. Finally, experiments were conducted to validate the therapeutic effects of the identified drug on LUSC.

RESULTS

The 8-gene prognostic model demonstrated excellent predictive performance and stability. Significant differences in immune cell infiltration and immune microenvironment characteristics were observed between the high- and low-risk groups, suggesting the critical role of ARGs in shaping the immune landscape of LUSC. Virtual drug screening identified Dihydroergotamine as having the highest binding affinity for CSNK2A1. Molecular dynamics simulations confirmed that the CSNK2A1-Dihydroergotamine complex exhibited strong binding stability. Further experiments demonstrated that Dihydroergotamine significantly inhibited LUSC cell viability, migration, and invasion, and downregulated CSNK2A1 expression.

CONCLUSION

This study is the first to construct an anoikis-related prognostic model for LUSC, highlighting its role in the tumor immune microenvironment and providing insights into personalized therapy. Dihydroergotamine exhibited significant anti-LUSC activity and holds promise as a potential therapeutic agent. CSNK2A1 emerged as a robust candidate for early diagnosis and a therapeutic target in LUSC.

摘要

目的

肺鳞状细胞癌(LUSC)是非小细胞肺癌(NSCLC)的常见亚型,具有高侵袭性、高转移潜能和耐药性,导致患者预后不良。失巢凋亡是细胞从细胞外基质(ECM)脱离引发的一种特定形式的细胞凋亡,在肿瘤转移中起关键作用。对失巢凋亡的抗性是癌细胞获得转移潜能的关键机制。尽管多项研究已鉴定出与LUSC相关的生物标志物,但失巢凋亡相关基因(ARGs)的作用在很大程度上仍未得到探索。

方法

从Harmonizome和GeneCards数据库中获取失巢凋亡相关基因,并通过差异表达分析鉴定出LUSC中222个差异表达基因(DEGs)。单变量Cox回归分析确定了74个与生存显著相关的ARGs,并使用LASSO和多变量Cox回归分析建立了包含8个ARGs的预后模型。使用受试者工作特征(ROC)曲线和Kaplan-Meier(K-M)生存曲线对该模型进行内部验证。分析了高风险组和低风险组之间免疫细胞浸润和基因表达的差异。进行虚拟药物筛选和分子动力学模拟以评估模型中的关键基因CSNK2A1的治疗潜力。最后,进行实验以验证所鉴定药物对LUSC的治疗效果。

结果

8基因预后模型显示出优异的预测性能和稳定性。在高风险组和低风险组之间观察到免疫细胞浸润和免疫微环境特征的显著差异,表明ARGs在塑造LUSC免疫格局中起关键作用。虚拟药物筛选确定双氢麦角胺对CSNK2A1具有最高的结合亲和力。分子动力学模拟证实CSNK2A1-双氢麦角胺复合物表现出强结合稳定性。进一步的实验表明双氢麦角胺显著抑制LUSC细胞活力、迁移和侵袭,并下调CSNK2A1表达。

结论

本研究首次构建了LUSC的失巢凋亡相关预后模型,突出了其在肿瘤免疫微环境中的作用,并为个性化治疗提供了见解。双氢麦角胺表现出显著的抗LUSC活性,有望成为一种潜在的治疗药物。CSNK2A1成为LUSC早期诊断的有力候选者和治疗靶点。

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