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基于机器学习的整合开发了一种应激反应状态 T 细胞(Tstr)相关评分,用于预测透明细胞肾细胞癌的结局。

Machine learning-based integration develops a stress response stated T cell (Tstr)-related score for predicting outcomes in clear cell renal cell carcinoma.

机构信息

Department of Urology, The First Affiliated Hospital of Bengbu Medical College, Bengbu, Anhui 233004, China.

Department of Urology, Guangzhou First People's Hospital, South China University of Technology, Guangzhou, Guangdong 510180, China.

出版信息

Int Immunopharmacol. 2024 May 10;132:112017. doi: 10.1016/j.intimp.2024.112017. Epub 2024 Apr 9.

Abstract

BACKGROUND

Establishment of a reliable prognostic model and identification of novel biomarkers are urgently needed to develop precise therapy strategies for clear cell renal cell carcinoma (ccRCC). Stress response stated T cells (Tstr) are a new T-cell subtype, which are related to poor disease stage and immunotherapy response in various cancers.

METHODS

10 machine-learning algorithms and their combinations were applied in this work. A stable Tstr-related score (TCs) was constructed to predict the outcomes and PD-1 blockade treatment response in ccRCC patients. A nomogram based on TCs for personalized prediction of patient prognosis was constructed. Functional enrichment analysis and TimiGP algorithm were used to explore the underlying role of Tstr in ccRCC. The key TCs-related gene was identified by comprehensive analysis, and the bioinformatics results were verified by immunohistochemistry using a tissue microarray.

RESULTS

A robust TCs was constructed and validated in four independent cohorts. TCs accurately predicted the prognosis and PD-1 blockade treatment response in ccRCC patients. The novel nomogram was able to precisely predict the outcomes of ccRCC patients. The underlying biological process of Tstr was related to acute inflammatory response and acute-phase response. Mast cells were identified to be involved in the role of Tstr as a protective factor in ccRCC. TNFS13B was shown to be the key TCs-related gene, which was an independent predictor of unfavorable prognosis. The protein expression analysis of TNFSF13B was consistent with the mRNA analysis results. High expression of TNFSF13B was associated with poor response to PD-1 blockade treatment.

CONCLUSIONS

This study provides a Tstr cell-related score for predicting outcomes and PD-1 blockade therapy response in ccRCC. Tstr cells may exert their pro-tumoral role in ccRCC, acting against mast cells, in the acute inflammatory tumor microenvironment. TNFSF13B could serve as a key biomarker related to TCs.

摘要

背景

为了制定精确的治疗策略,迫切需要建立可靠的预后模型并确定新的生物标志物来治疗透明细胞肾细胞癌(ccRCC)。应激反应性 T 细胞(Tstr)是一种新的 T 细胞亚群,与各种癌症中的不良疾病分期和免疫治疗反应有关。

方法

本研究应用了 10 种机器学习算法及其组合。构建了一个稳定的 Tstr 相关评分(TCs),以预测 ccRCC 患者的结局和 PD-1 阻断治疗反应。基于 TCs 构建了用于个性化预测患者预后的列线图。通过功能富集分析和 TimiGP 算法,探讨了 Tstr 在 ccRCC 中的潜在作用。通过综合分析确定了关键的 TCs 相关基因,并使用组织微阵列的免疫组织化学验证了生物信息学结果。

结果

构建并验证了一个稳健的 TCs 在四个独立队列中。TCs 准确预测了 ccRCC 患者的预后和 PD-1 阻断治疗反应。新的列线图能够精确预测 ccRCC 患者的结局。Tstr 的潜在生物学过程与急性炎症反应和急性期反应有关。肥大细胞被鉴定为 Tstr 作为 ccRCC 中的保护因子的作用相关细胞。TNFS13B 被证明是关键的 TCs 相关基因,是不良预后的独立预测因子。TNFSF13B 的蛋白表达分析与 mRNA 分析结果一致。TNFSF13B 的高表达与对 PD-1 阻断治疗反应不良相关。

结论

本研究提供了一个用于预测 ccRCC 患者结局和 PD-1 阻断治疗反应的 Tstr 细胞相关评分。Tstr 细胞可能在 ccRCC 的急性炎症肿瘤微环境中通过对抗肥大细胞发挥促肿瘤作用。TNFSF13B 可以作为与 TCs 相关的关键生物标志物。

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