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原发性小细胞肺癌分子亚型的预后意义及其与癌症免疫的相关性

Prognostic Implications of Molecular Subtypes in Primary Small Cell Lung Cancer and Their Correlation With Cancer Immunity.

作者信息

Qi Jing, Zhang Jiaqi, Liu Ningbo, Zhao Lujun, Xu Bo

机构信息

Department of Biochemistry and Molecular Biology, Tianjin Medical University Cancer Institute and Hospital, Key Laboratory of Cancer Prevention and Therapy, National Clinical Research Center for Cancer, Tianjin's Clinical Research Center for Cancer, Tianjin, China.

Department of Radiation Oncology, Tianjin Medical University Cancer Institute and Hospital, Key Laboratory of Cancer Prevention and Therapy, National Clinical Research Center for Cancer, Tianjin's Clinical Research Center for Cancer, Tianjin, China.

出版信息

Front Oncol. 2022 Mar 2;12:779276. doi: 10.3389/fonc.2022.779276. eCollection 2022.

Abstract

INTRODUCTION

Small cell lung cancer (SCLC) has recently been characterized as heterogeneous tumors due to consensus nomenclature for distinct molecular subtypes on the basis of differential expression of four transcription markers (ASCL1, NEUROD1, POU2F3, and YAP1). It is necessary to validate molecular subtype classification in primary SCLC tumors by immunohistochemical (IHC) staining and investigate its relevance to survival outcomes.

METHODS

Using a large number of surgically resected primary SCLC tumors, we assessed the mRNA and protein levels of the four subtype markers (ASCL1, NEUROD1, POU2F3 and YAP1) in two independent cohorts, respectively. Next, molecular subtypes defined by the four subtype markers was conducted to identify the association with clinicopathologic characteristics, survival outcomes, the expression of classic neuroendocrine markers, and molecules related to tumor immune microenvironment.

RESULTS

Samples were categorized into four subtypes based on the relative expression levels of the four subtype markers, yielding to ASCL1, NEUROD1, POU2F3 and YAP1 subtypes, respectively. The combined neuroendocrine differentiation features were more prevalent in either ASCL1 or NEUROD1 subtypes. Kaplan-Meier analyses found that patients with tumors of the YAP1 subtype and ASCL1 subtype obtained the best and worst prognosis on both mRNA and IHC levels, respectively. Based on multivariate Cox proportional-hazards regression model, molecular subtype classification determined by IHC was identified as an independent indicator for survival outcomes in primary SCLC tumors. Correlation analyses indicated that the four subtype markers in SCLC cancer cells were interacted with its tumor immune microenvironment. Specifically, tumors positive for YAP1 was associated with fewer CTLA4 T cell infiltration, while more immune-inhibitory receptors (FoxP3,PD1, and CTLA4) and fewer immune-promoting receptor (CD8) were found in tumors positive for ASCL1.

CONCLUSIONS

We validated the new molecular subtype classification and clinical relevance on both mRNA and protein levels from primary SCLC tumors. The molecular subtypes determined by IHC could be a pre-selected effective biomarker significantly influenced on prognosis in patients with SCLC, which warrants further studies to provide better preventative and therapeutic options for distinct molecular subtypes.

摘要

引言

小细胞肺癌(SCLC)最近被认为是异质性肿瘤,这是基于四种转录标志物(ASCL1、NEUROD1、POU2F3和YAP1)的差异表达对不同分子亚型达成的命名共识。有必要通过免疫组织化学(IHC)染色在原发性SCLC肿瘤中验证分子亚型分类,并研究其与生存结果的相关性。

方法

我们使用大量手术切除的原发性SCLC肿瘤,分别在两个独立队列中评估了四种亚型标志物(ASCL1、NEUROD1、POU2F3和YAP1)的mRNA和蛋白质水平。接下来,对由这四种亚型标志物定义的分子亚型进行分析,以确定其与临床病理特征、生存结果、经典神经内分泌标志物的表达以及与肿瘤免疫微环境相关分子的关联。

结果

根据四种亚型标志物的相对表达水平,样本被分为四种亚型,分别为ASCL1、NEUROD1、POU2F3和YAP1亚型。联合神经内分泌分化特征在ASCL1或NEUROD1亚型中更为普遍。Kaplan-Meier分析发现,YAP1亚型和ASCL1亚型肿瘤患者在mRNA和IHC水平上分别获得了最佳和最差的预后。基于多变量Cox比例风险回归模型,由IHC确定的分子亚型分类被确定为原发性SCLC肿瘤生存结果的独立指标。相关性分析表明,SCLC癌细胞中的四种亚型标志物与其肿瘤免疫微环境相互作用。具体而言,YAP1阳性肿瘤与较少的CTLA4 T细胞浸润相关,而在ASCL1阳性肿瘤中发现更多的免疫抑制受体(FoxP3、PD1和CTLA4)和更少的免疫促进受体(CD8)。

结论

我们在原发性SCLC肿瘤的mRNA和蛋白质水平上验证了新的分子亚型分类及其临床相关性。由IHC确定的分子亚型可能是一种对SCLC患者预后有显著影响的预选有效生物标志物,这值得进一步研究,以便为不同分子亚型提供更好的预防和治疗选择。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8e5a/8924463/c0f62842a1fe/fonc-12-779276-g001.jpg

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