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Identification of a Tumor Microenvironment-relevant Gene set-based Prognostic Signature and Related Therapy Targets in Gastric Cancer

机译:鉴定肿瘤微环境 - 相关基因集基因型预后签名及相关治疗靶标的胃癌

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Rationale: The prognosis of gastric cancer (GC) patients is poor, and there is limited therapeutic efficacy due to genetic heterogeneity and difficulty in early-stage screening. Here, we developed and validated an individualized gene set-based prognostic signature for gastric cancer (GPSGC) and further explored survival-related regulatory mechanisms as well as therapeutic targets in GC. Methods: By implementing machine learning, a prognostic model was established based on gastric cancer gene expression datasets from 1699 patients from five independent cohorts with reported full clinical annotations. Analysis of the tumor microenvironment, including stromal and immune subcomponents, cell types, panimmune gene sets, and immunomodulatory genes, was carried out in 834 GC patients from three independent cohorts to explore regulatory survival mechanisms and therapeutic targets related to the GPSGC. To prove the stability and reliability of the GPSGC model and therapeutic targets, multiplex fluorescent immunohistochemistry was conducted with tissue microarrays representing 186 GC patients. Based on multivariate Cox analysis, a nomogram that integrated the GPSGC and other clinical risk factors was constructed with two training cohorts and was verified by two validation cohorts. Results: Through machine learning, we obtained an optimal risk assessment model, the GPSGC, which showed higher accuracy in predicting survival than individual prognostic factors. The impact of the GPSGC score on poor survival of GC patients was probably correlated with the remodeling of stromal components in the tumor microenvironment. Specifically, TGFβ and angiogenesis-related gene sets were significantly associated with the GPSGC risk score and poor outcome. Immunomodulatory gene analysis combined with experimental verification further revealed that TGFβ1 and VEGFB may be developed as potential therapeutic targets of GC patients with poor prognosis according to the GPSGC. Furthermore, we developed a nomogram based on the GPSGC and other clinical variables to predict the 3-year and 5-year overall survival for GC patients, which showed improved prognostic accuracy than clinical characteristics only. Conclusion: As a tumor microenvironment-relevant gene set-based prognostic signature, the GPSGC model provides an effective approach to evaluate GC patient survival outcomes and may prolong overall survival by enabling the selection of individualized targeted therapy.? The author(s).
机译:理由:胃癌(GC)患者的预后差,治疗效果有限,由于遗传异质性和早期筛查中的困难。在此,我们开发并验证了基于个体化基因集基因组的胃癌(GPSGC)的预后签名,并进一步探索了与生存相关的调节机制以及GC的治疗靶标。方法:通过实施机器学习,基于来自1699名独立队列的1699名患者的胃癌基因表达数据集建立了预后模型,报道了全临床注释。肿瘤微环境的分析,包括基质和免疫子组分,细胞类型,小犬基因基因组和免疫调节基因,在来自三个独立队列的834个GC患者中进行,探讨了与GPSGC相关的调节效果和治疗靶标。为了证明GPSGC模型和治疗靶标的稳定性和可靠性,用代表186例GC患者的组织微阵列进行多重荧光免疫组织化学。基于多变量COX分析,构建了综合GPSGC和其他临床风险因素的墨迹图,并通过了两个培训队列构建,并通过两个验证队列进行了验证。结果:通过机器学习,我们获得了最佳风险评估模型,GPSGC,其表现出更高的准确性来预测存活率而不是个体预后因素。 GPSGC得分对GC患者的恶劣存活的影响可能与肿瘤微环境中的基质成分重塑相关。具体地,TGFβ和血管生成相关的基因集与GPSGC风险得分和差的结果显着相关。免疫调节基因分析结合实验验证进一步揭示了TGFβ1和VEGFB可以作为GPSGC预后不良患者的潜在治疗靶标。此外,我们开发了基于GPSGC和其他临床变量的NOM图,以预测GC患者的3年和5年的总体生存,这表明仅仅比临床特征的预后准确性提高。结论:作为肿瘤微环境相关的基因集基因组预后签名,GPSGC模型提供了评估GC患者存活结果的有效方法,可以通过选择个性化靶向治疗来延长整体存活。作者。

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