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基于个体转录因子的基因组模型对肺癌预后的综合分子分析。

Integrative Molecular Analyses of an Individual Transcription Factor-Based Genomic Model for Lung Cancer Prognosis.

机构信息

Department of Medical Oncology, The Affiliated Huaian No.1 People's Hospital of Nanjing Medical University, Huai'an, 223300 Jiangsu, China.

Department of Pathology, The Affiliated Huaian No.1 People's Hospital of Nanjing Medical University, Huai'an, 223300 Jiangsu, China.

出版信息

Dis Markers. 2021 Dec 7;2021:5125643. doi: 10.1155/2021/5125643. eCollection 2021.

Abstract

OBJECTIVE

Precision medicine with molecular profiles has revolutionized the management of lung cancer contributing to improved prognosis. Herein, we aimed to uncover the gene expression profiling of transcription factors (TFs) in lung cancer as well as to develop a TF-based genomic model.

METHODS

We retrospectively curated lung cancer patients from public databases. Through comparing mRNA expression profiling between lung cancer and normal specimens, specific TFs were determined. Thereafter, a TF genomic model was developed with univariate Cox regression and stepwise multivariable Cox analyses, which was verified through the GSE72094 dataset. Gene set enrichment analyses (GSEA) were presented. Downstream targets of TFs were predicted with ChEA, JASPAR, and MotifMap projects, and their biological significance was investigated through the clusterProfiler algorithm.

RESULTS

In the TCGA cohort, we proposed a TF-based genomic model, comprised of SATB2, HLF, and NPAS2. Lung cancer individuals were remarkably stratified into high- and low-risk groups. Survival analyses uncovered that high-risk populations presented unfavorable survival outcomes. ROCs confirmed the excellent predictive potency in patients' prognosis. Additionally, this model was an independent prognostic indicator in accordance with multivariate analyses. The clinical implication of the model was well verified in an independent dataset. High risk score was in relation to carcinogenic pathways. Downstream targets were characterized by immune and carcinogenic activation.

CONCLUSION

The proposed TF genomic model acts as a promising marker for estimation of lung cancer patients' outcomes. Prospective research is required for testing the clinical utility of the model in individualized management of lung cancer.

摘要

目的

分子谱的精准医学彻底改变了肺癌的治疗管理,改善了预后。在此,我们旨在揭示肺癌转录因子(TFs)的基因表达谱,并开发基于 TF 的基因组模型。

方法

我们从公共数据库中回顾性地收集了肺癌患者。通过比较肺癌和正常标本之间的 mRNA 表达谱,确定了特定的 TF。然后,通过单变量 Cox 回归和逐步多变量 Cox 分析开发了 TF 基因组模型,并通过 GSE72094 数据集进行验证。展示了基因集富集分析(GSEA)。使用 ChEA、JASPAR 和 MotifMap 项目预测 TF 的下游靶标,并通过 clusterProfiler 算法研究其生物学意义。

结果

在 TCGA 队列中,我们提出了一个基于 TF 的基因组模型,由 SATB2、HLF 和 NPAS2 组成。肺癌个体被明显分为高风险和低风险组。生存分析表明,高风险人群的生存结果不佳。ROC 证实了该模型在患者预后预测方面的出色性能。此外,该模型是根据多变量分析得出的独立预后指标。该模型在独立数据集的临床验证中得到了很好的验证。高风险评分与致癌途径有关。下游靶标表现为免疫和致癌激活。

结论

所提出的 TF 基因组模型可作为评估肺癌患者预后的有前途的标志物。需要进行前瞻性研究以检验该模型在肺癌个体化管理中的临床应用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b46d/8672105/2fa09abbae29/DM2021-5125643.001.jpg

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