肿瘤浸润性PD-1 CD8 + T细胞特征作为多种癌症免疫检查点抑制剂治疗反应的有效生物标志物
Tumor-Infiltrating PD-1CD8-T-Cell Signature as an Effective Biomarker for Immune Checkpoint Inhibitor Therapy Response Across Multiple Cancers.
作者信息
Yang Zhenyu, Deng Yulan, Cheng Jiahan, Wei Shiyou, Luo Hao, Liu Lunxu
机构信息
Institute of Thoracic Oncology and Department of Thoracic Surgery, West China Hospital, Sichuan University, Chengdu, China.
Western China Collaborative Innovation Center for Early Diagnosis and Multidisciplinary Therapy of Lung Cancer, Sichuan University, Chengdu, China.
出版信息
Front Oncol. 2021 Sep 15;11:695006. doi: 10.3389/fonc.2021.695006. eCollection 2021.
BACKGROUND
Stratification of patients who could benefit from immune checkpoint inhibitor (ICI) therapy is of much importance. PD-1CD8 T cells represent a newly identified and effective biomarker for ICI therapy response biomarker in lung cancer. Accurately quantifying these T cells using commonly available RNA sequencing (RNA-seq) data may extend their applications to more cancer types.
METHOD
We built a transcriptome signature of PD-1CD8 T cells from bulk RNA-seq and single-cell RNA-seq (scRNA-seq) data of tumor-infiltrating immune cells. The signature was validated by flow cytometry and in independent datasets. The clinical applications of the signature were explored in non-small-cell lung cancer, melanoma, gastric cancer, urothelial cancer, and a mouse model of breast cancer samples treated with ICI, and systematically evaluated across 21 cancer types in The Cancer Genome Atlas (TCGA). Its associations with other biomarkers were also determined.
RESULTS
Signature scores could be used to identify the PD-1CD8 T subset and were correlated with the fraction of PD-1CD8 T cells in tumor tissue (Pearson correlation, R=0.76, =0.0004). Furthermore, in the scRNA-seq dataset, we confirmed the capability of PD-1CD8 T cells to secrete CXCL13, as well as their interactions with other immune cells. In 581 clinical samples and 204 mouse models treated with ICIs, high signature scores were associated with increased survival, and the signature achieved area under the receiver operating characteristic curve scores of 0.755 (ranging from 0.61 to 0.91) in predicting therapy response. In TCGA pan-cancer datasets, our signature scores were consistently correlated with therapy response (R=0.78, <0.0001) and partially explained the diverse response rates among different cancer types. Finally, our signature generally outperformed other mRNA-based predictors and showed improved predictive performance when used in combination with tumor mutational burden (TMB). The signature score is available in the R package "PD1highCD8Tscore" (https://github.com/Liulab/PD1highCD8Tscore).
CONCLUSION
Through estimating the fraction of the PD-1CD8 T cell, our signature could predict response to ICI therapy across multiple cancers and could serve as a complementary biomarker to TMB.
背景
对可能从免疫检查点抑制剂(ICI)治疗中获益的患者进行分层非常重要。PD-1⁺CD8⁺ T细胞是肺癌中一种新发现的、有效的ICI治疗反应生物标志物。使用常见的RNA测序(RNA-seq)数据准确量化这些T细胞可能会将其应用扩展到更多癌症类型。
方法
我们从肿瘤浸润免疫细胞的批量RNA-seq和单细胞RNA-seq(scRNA-seq)数据构建了PD-1⁺CD8⁺ T细胞的转录组特征。该特征通过流式细胞术和独立数据集进行验证。在非小细胞肺癌、黑色素瘤、胃癌、尿路上皮癌以及接受ICI治疗的乳腺癌样本小鼠模型中探索该特征的临床应用,并在癌症基因组图谱(TCGA)中对21种癌症类型进行系统评估。还确定了其与其他生物标志物的关联。
结果
特征分数可用于识别PD-1⁺CD8⁺ T亚群,并与肿瘤组织中PD-1⁺CD8⁺ T细胞的比例相关(Pearson相关性,R = 0.76,P = 0.0004)。此外,在scRNA-seq数据集中,我们证实了PD-1⁺CD8⁺ T细胞分泌CXCL13的能力以及它们与其他免疫细胞的相互作用。在581个接受ICI治疗的临床样本和204个小鼠模型中,高特征分数与生存率增加相关,并且该特征在预测治疗反应时的受试者操作特征曲线下面积得分为0.755(范围为0.61至0.91)。在TCGA泛癌数据集中,我们的特征分数与治疗反应始终相关(R = 0.78,P < 0.0001),并部分解释了不同癌症类型之间不同的反应率。最后,我们的特征通常优于其他基于mRNA的预测指标,并且与肿瘤突变负荷(TMB)联合使用时显示出更好的预测性能。特征分数可在R包“PD1highCD8Tscore”(https://github.com/Liulab/PD1highCD8Tscore)中获取。
结论
通过估计PD-1⁺CD8⁺ T细胞的比例,我们的特征可以预测多种癌症对ICI治疗的反应,并可作为TMB的补充生物标志物。
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