基于 T 细胞介导的肿瘤杀伤敏感性基因特征的急性髓性白血病预后评分

Yiyun Pan, FangFang Xie, Wen Zeng, Hailong Chen, Zhengcong Chen, Dechang Xu, Yijian Chen
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摘要

背景和目的 急性髓性白血病(AML)是一种侵袭性、异质性造血恶性肿瘤,长期预后不良。T细胞介导的肿瘤杀伤在肿瘤免疫中起着关键作用。在此,我们探讨了基于T细胞介导的肿瘤杀伤敏感基因(GSTTK)的预后评分(TTKPI)的预后性能和功能意义。从 TISIDB 数据库中鉴定 GSTTK。通过差异表达分析、COX比例危险度分析和LASSO回归分析确定了AML的标志性GSTTK,并构建了TTKPI综合评分。采用卡普兰-梅耶生存分析、接收者操作曲线和提名图分析对TTKPI的预后性能进行了检验。分析了TTKPI与临床表型、肿瘤免疫细胞浸润模式、检查点表达模式的关联。结果从急性髓细胞性白血病中401个差异表达的GSTTK中,确定了24个基因为特征基因,并用于构建TTKPI评分。高TTKPI风险评分预示着较差的生存率和良好的预后准确性,AUC值在75%到96%之间。较高的TTKPI评分与年龄较大和癌症分期有关,与TTKPI结合使用可改善预后效果。高TTKPI与较低的幼稚CD4 T细胞和滤泡辅助T细胞浸润以及较高的M2巨噬细胞/单核细胞浸润相关。免疫检查点表达的不同模式与 TTKPI 评分组相对应。三种药物:DB11791(卡马替尼)、DB12886(GSK-1521498)和DB14773(利菲尼)被确定为治疗急性髓细胞性白血病的候选药物。TTKPI与肿瘤微环境的功能和免疫学特征(包括检查点表达模式)相对应,应在精准医疗方法中加以研究。
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T cell-mediated tumor killing sensitivity gene signature-based prognostic score for acute myeloid leukemia

Background and Objective

Acute myeloid leukemia (AML) is an aggressive, heterogenous hematopoetic malignancies with poor long-term prognosis. T-cell mediated tumor killing plays a key role in tumor immunity. Here, we explored the prognostic performance and functional significance of a T-cell mediated tumor killing sensitivity gene (GSTTK)-based prognostic score (TTKPI).

Methods

Publicly available transcriptomic data for AML were obtained from TCGA and NCBI-GEO. GSTTK were identified from the TISIDB database. Signature GSTTK for AML were identified by differential expression analysis, COX proportional hazards and LASSO regression analysis and a comprehensive TTKPI score was constructed. Prognostic performance of the TTKPI was examined using Kaplan–Meier survival analysis, Receiver operating curves, and nomogram analysis. Association of TTKPI with clinical phenotypes, tumor immune cell infiltration patterns, checkpoint expression patterns were analysed. Drug docking was used to identify important candidate drugs based on the TTKPI-component genes.

Results

From 401 differentially expressed GSTTK in AML, 24 genes were identified as signature genes and used to construct the TTKPI score. High-TTKPI risk score predicted worse survival and good prognostic accuracy with AUC values ranging from 75 to 96%. Higher TTKPI scores were associated with older age and cancer stage, which showed improved prognostic performance when combined with TTKPI. High TTKPI was associated with lower naïve CD4 T cell and follicular helper T cell infiltrates and higher M2 macrophages/monocyte infiltration. Distinct patterns of immune checkpoint expression corresponded with TTKPI score groups. Three agents; DB11791 (Capmatinib), DB12886 (GSK-1521498) and DB14773 (Lifirafenib) were identified as candidates for AML.

Conclusion

A T-cell mediated killing sensitivity gene-based prognostic score TTKPI showed good accuracy in predicting survival in AML. TTKPI corresponded to functional and immunological features of the tumor microenvironment including checkpoint expression patterns and should be investigated for precision medicine approaches.

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