A134:转移性黑色素瘤患者抗lag3和抗pd1联合治疗过程中t细胞反应进化的单细胞路线图

J. Huuhtanen, Henna Hakanen, T. Lönnberg, O. Dufva, K. Peltola, S. Mäkelä, M. Hernberg, P. Bono, K. Anna, S. Mustjoki
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Furthermore, ordering the cluster of FOXP3+ Treg cells along pseudotime trajectory revealed two different fates for Treg cells, where the other fate showed significantly decreased expression of LAG3 and PDCD1, adding evidence of the effect of the treatment on Treg cells. TCRαβ analysis revealed 19 individual expanded clonotypes of size of 100 sequenced individual cells. The true transcriptomic heterogeneity of identical clonotypes was revealed as most clonotypes spanned several of the 16 different clusters, challenging our view of clonal expansion. Furthermore, we were able to assess the temporal phenotypic changes in individual clones during the course of immunotherapy. Most clonotypes, including cytotoxic and exhausted clones, had more homogenous transcriptomes before the start of the treatment, but diversified during the therapy, suggesting a release of immunologic break in these clones. 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引用次数: 0

摘要

尽管CTLA4和pd1靶向免疫肿瘤学(IO)疗法具有令人印象深刻的影响,但很大一部分患者没有反应。观察到的治疗效果差异与个体患者免疫细胞分布的异质性有关。淋巴细胞活化基因3 (LAG3, CD223)是最新进入临床的IO靶点之一。HLA-DR -配体在t细胞上触发LAG3在t细胞功能负调控中的作用已得到证实。虽然在活化调节性t细胞(Treg)中LAG3被广泛表达,但LAG3对各种细胞类型的详细影响尚不清楚。我们使用一种新的配对单细胞RNA和t细胞受体(TCR) αβ链(10x Genomics)测序方法,对来自两名接受抗lag3和抗pd1联合治疗的患者的外周血样本进行了超过30,000个CD45+淋巴细胞的分析。测序的细胞来自于接受io治疗的初发转移性黑色素瘤患者,分别在治疗开始前、4周和12周后。为了验证,我们对同一研究中较大队列的黑色素瘤患者(n = 12)进行了tcr β测序和流式细胞术分析。为了深入了解免疫细胞亚群,我们使用了一种最近描述的方法来寻找患者之间匹配的相互邻居,以标准化患者间的差异,从而实现患者之间的系统比较。为了识别表型聚类,我们使用了基于图论的聚类方法SNN-Cliq,并构建了预测机器学习分类器来评估学习聚类的可重复性。在优化了输入基因和参数的选择后,我们确定了16个不同的集群,这些集群定义了抗lag3和抗pd1治疗的t细胞路线图,包括6个CD8+集群,8个CD4+集群(包括Treg集群)和2个其他集群。我们使用细胞毒性评分和伪时间算法Monocle3确定了4个CD8+ t细胞簇增加细胞毒性谱。在治疗期间,细胞毒性评分最高的细胞群增加,细胞毒性评分较低的细胞群减少。此外,我们定义了2个CD8+耗尽星团。在治疗期间,我们观察到由LAG3和PDCD1表达定义的耗尽t细胞簇减少,但TIGIT+耗尽簇增加。此外,FOXP3+ Treg细胞簇沿伪时间轨迹排序显示Treg细胞有两种不同的命运,其中另一种命运显示LAG3和PDCD1的表达显著降低,这进一步证明了治疗对Treg细胞的影响。TCRαβ分析显示,100个测序的单个细胞中有19个扩增的克隆型。相同克隆型的真正转录组异质性被揭示,因为大多数克隆型跨越了16个不同集群中的几个,挑战了我们克隆扩增的观点。此外,我们能够评估在免疫治疗过程中单个克隆的时间表型变化。大多数克隆型,包括细胞毒性克隆和衰竭克隆,在治疗开始前具有更多的同质转录组,但在治疗过程中多样化,表明这些克隆中的免疫断裂释放。总之,我们定义了细胞对抗lag3和抗pd1治疗的免疫反应的进化,并描述了在IO治疗期间CD8+细胞细胞毒性异质性的增加,Treg细胞的不同命运以及个体t细胞克隆型转录组谱的释放。引文格式:Jani Huuhtanen, Henna H.E. Hakanen, Tapio Lonnberg, Olli Dufva, Katriina Peltola, Siru Makela, Micaela Hernberg, Petri Bono, Kreutzman Anna, Satu Mustjoki。转移性黑色素瘤患者抗lag3和抗pd1联合治疗过程中t细胞反应演变的单细胞路线图[摘要]。第四届CRI-CIMT-EATI-AACR国际癌症免疫治疗会议:将科学转化为生存;2018年9月30日至10月3日;纽约,纽约。费城(PA): AACR;癌症免疫学杂志2019;7(2增刊):摘要nr A134。
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Abstract A134: Single-cell roadmap of the evolution of T-cell response during anti-LAG3 and anti-PD1 combination treatment in metastatic melanoma patients
Despite the impressive impact of CTLA4 and PD1-targeted immuno-oncologic (IO) therapies, a large proportion of patients fail to respond. The observed variance in treatment efficacy has been linked to heterogeneity in the immune cell distribution of individual patients. Lymphocyte activation gene 3 (LAG3, CD223) is one of the newest IO targets entering the clinic. Triggering of LAG3 on T-cells by HLA-DR -ligands has a well-established role in the negative regulation of T-cell function. Although for example on activated regulatory T-cells (Treg) LAG3 is widely expressed, the detailed effects of LAG3 on various cell types are still unknown. We profiled over 30,000 CD45+ lymphocytes cells using a novel paired single-cell RNA and T-cell receptor (TCR) αβ chain (10x Genomics) sequencing method for peripheral blood samples from two patients receiving anti-LAG3 and anti-PD1 combination treatment in multicentre phase I trial. The sequenced cells were from IO-treatment naive metastatic melanoma patients from before, after 4 weeks and after 12 weeks of the start of therapy. For validation, we performed TCRβ-sequencing and flow cytometry analysis of a larger cohort of melanoma patients (n = 12) enrolled in the same study. To gain in-depth understanding of the immune cell subsets, we used a recently described method to seek matching mutual neighbors between patients to normalize the interpatient variation to enable a systematic comparison across patients. To identify phenotypic clusters, we used a graph theory-based clustering method SNN-Cliq and built predictive machine learning classifiers to assess the reproducibility of learnt clusters. After optimizing our choice of input genes and parameters, we identified 16 distinct clusters that define the T-cell roadmap of anti-LAG3 and anti-PD1 treatment that includes 6 CD8+, 8 CD4+ (including Treg cluster), and 2 other clusters. We identified 4 CD8+ T-cell clusters of increasing cytotoxicity profile using a cytotoxicity score and the pseudotime algorithm Monocle3. The most highly cytotoxic clusters increased and a cluster of lower cytotoxicity score decreased during the treatment. In addition, we defined 2 CD8+ exhaustion clusters. During treatment, we observed a decrease in the exhausted T-cell cluster defined by LAG3 and PDCD1 expression, but an increase in TIGIT+ exhaustion cluster. Furthermore, ordering the cluster of FOXP3+ Treg cells along pseudotime trajectory revealed two different fates for Treg cells, where the other fate showed significantly decreased expression of LAG3 and PDCD1, adding evidence of the effect of the treatment on Treg cells. TCRαβ analysis revealed 19 individual expanded clonotypes of size of 100 sequenced individual cells. The true transcriptomic heterogeneity of identical clonotypes was revealed as most clonotypes spanned several of the 16 different clusters, challenging our view of clonal expansion. Furthermore, we were able to assess the temporal phenotypic changes in individual clones during the course of immunotherapy. Most clonotypes, including cytotoxic and exhausted clones, had more homogenous transcriptomes before the start of the treatment, but diversified during the therapy, suggesting a release of immunologic break in these clones. In summary, we defined the evolution of immunological response to anti-LAG3 and anti-PD1 therapy cell by cell, and described an increase in the heterogeneity of cytotoxicity in CD8+ cells, distinct fates of Treg cells and the release of transcriptomic profiles of individual T-cell clonotypes during IO treatment. Citation Format: Jani Huuhtanen, Henna H.E. Hakanen, Tapio Lonnberg, Olli Dufva, Katriina Peltola, Siru Makela, Micaela Hernberg, Petri Bono, Kreutzman Anna, Satu Mustjoki. Single-cell roadmap of the evolution of T-cell response during anti-LAG3 and anti-PD1 combination treatment in metastatic melanoma patients [abstract]. In: Proceedings of the Fourth CRI-CIMT-EATI-AACR International Cancer Immunotherapy Conference: Translating Science into Survival; Sept 30-Oct 3, 2018; New York, NY. Philadelphia (PA): AACR; Cancer Immunol Res 2019;7(2 Suppl):Abstract nr A134.
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