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胃癌微环境中新基因特征的预后意义。

Prognostic Implications of Novel Gene Signatures in Gastric Cancer Microenvironment.

机构信息

Department of Clinical Medicine, Anhui Medical University, Hefei, Anhui, China (mainland).

Department of General Surgery, The First Affiliated Hospital of Anhui Medical University, Hefei, Anhui, China (mainland).

出版信息

Med Sci Monit. 2020 Aug 2;26:e924604. doi: 10.12659/MSM.924604.

Abstract

BACKGROUND Increasing studies have shown the important clinical role of immune and stromal cells in gastric cancer microenvironment. Based on information of immune and stromal cells in The Cancer Genome Atlas, this study aimed to construct a prognostic risk assessment model for gastric cancer. MATERIAL AND METHODS Based on the immune/structural scores, differentially expressed genes (DEGs) were filtered and analyzed. Afterwards, DEGs associated with prognosis were screened and the risk assessment model was constructed in the training set. Moreover, the validity of the model was verified both in the testing set and the overall sample. RESULTS In this study, patients were divided into high-score and low-score groups based on immune/stromal score, and 919 DEGs were identified. By applying least absolute shrinkage and selection operator (LASSO) and Cox analysis, 10 mRNAs were selected to form a prognostic risk assessment model, risk score=(0.294SLC17A9) + (-0.477FERMT3) + (0.866NRP1) + (0.350MMRN1) + (0.381RNASE1) + (0.189TRIB3) + (0.230PGAP3) + (0.087MAGEA3) + (0.182TACR2) + (0.368CYP51A1). In the training set, the low-risk group divided by the model was found to have better overall survival, and the prediction efficiency of the model was demonstrated to be good. Multivariate Cox analysis indicated that the model could work as a prognostic factor independently. Similar results were shown in the testing group and overall patients cohort group. Finally, the risk assessment model and other clinical variables were integrated to construct a nomogram. CONCLUSIONS In general, this study constructs a prognostic risk assessment model for gastric cancer, which could improve the prognosis stratification of patients combined with other clinical indicators.

摘要

背景

越来越多的研究表明,免疫和基质细胞在胃癌微环境中具有重要的临床作用。基于癌症基因组图谱中的免疫和基质细胞信息,本研究旨在构建胃癌的预后风险评估模型。

材料与方法

基于免疫/结构评分,筛选和分析差异表达基因(DEGs)。随后,筛选与预后相关的 DEGs,并在训练集中构建风险评估模型。此外,在测试集和总样本中验证模型的有效性。

结果

本研究根据免疫/基质评分将患者分为高分组和低分组,并鉴定出 919 个 DEGs。通过应用最小绝对收缩和选择算子(LASSO)和 Cox 分析,选择 10 个 mRNAs 组成预后风险评估模型,风险评分=(0.294SLC17A9) + (-0.477FERMT3) + (0.866NRP1) + (0.350MMRN1) + (0.381RNASE1) + (0.189TRIB3) + (0.230PGAP3) + (0.087MAGEA3) + (0.182TACR2) + (0.368CYP51A1)。在训练集中,通过模型划分的低风险组发现具有更好的总生存率,并且该模型的预测效率被证明是良好的。多变量 Cox 分析表明,该模型可以作为独立的预后因素发挥作用。在测试组和总患者队列组中也显示出类似的结果。最后,将风险评估模型和其他临床变量整合构建了一个诺模图。

结论

总的来说,本研究构建了一个胃癌的预后风险评估模型,该模型可以与其他临床指标结合,改善患者的预后分层。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f4ad/7418782/0cc06af09c84/medscimonit-26-e924604-g001.jpg

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