Zhang Juxuan, Deng Jiaxing, Feng Xiao, Tan Yilong, Li Xin, Liu Yixin, Li Mengyue, Qi Haitao, Tang Lefan, Meng Qingwei, Yan Haidan, Qi Lishuang
College of Bioinformatics Science and Technology, Harbin Medical University, Harbin, China.
Department of Medical Oncology, Harbin Medical University Cancer Hospital, Harbin, China.
Front Genet. 2022 Aug 29;13:944167. doi: 10.3389/fgene.2022.944167. eCollection 2022.
Lung cancer is a complex disease composed of neuroendocrine (NE) and non-NE tumors. Accurate diagnosis of lung cancer is essential in guiding therapeutic management. Several transcriptional signatures have been reported to distinguish between adenocarcinoma (ADC) and squamous cell carcinoma (SCC) belonging to non-NE tumors. This study aims to identify a transcriptional panel that could distinguish the histological subtypes of NE tumors to complement the morphology-based classification of an individual. A public dataset with NE subtypes, including 21 small-cell lung cancer (SCLC), 56 large-cell NE carcinomas (LCNECs), and 24 carcinoids (CARCIs), and non-NE subtypes, including 85 ADC and 61 SCC, was used as a training set. In the training set, consensus clustering was first used to filter out the samples whose expression patterns disagreed with their histological subtypes. Then, a rank-based method was proposed to develop a panel of transcriptional signatures for determining the NE subtype for an individual, based on the within-sample relative gene expression orderings of gene pairs. Twenty-three public datasets with a total of 3,454 samples, which were derived from fresh-frozen, formalin-fixed paraffin-embedded, biopsies, and single cells, were used for validation. Clinical feasibility was tested in 10 SCLC biopsy specimens collected from cancer hospitals via bronchoscopy. The NEsubtype-panel was composed of three signatures that could distinguish NE from non-NE, CARCI from non-CARCI, and SCLC from LCNEC step by step and ultimately determine the histological subtype for each NE sample. The three signatures achieved high average concordance rates with 97.31%, 98.11%, and 90.63%, respectively, in the 23 public validation datasets. It is worth noting that the 10 clinic-derived SCLC samples diagnosed via immunohistochemical staining were also accurately predicted by the NEsubtype-panel. Furthermore, the subtype-specific gene expression patterns and survival analyses provided evidence for the rationality of the reclassification by the NEsubtype-panel. The rank-based NEsubtype-panel could accurately distinguish lung NE from non-NE tumors and determine NE subtypes even in clinically challenging samples (such as biopsy). The panel together with our previously reported signature (-) for SCC and ADC would be an auxiliary test for the histological diagnosis of lung cancer.
肺癌是一种由神经内分泌(NE)肿瘤和非NE肿瘤组成的复杂疾病。准确诊断肺癌对于指导治疗管理至关重要。据报道,有几种转录特征可区分属于非NE肿瘤的腺癌(ADC)和鳞状细胞癌(SCC)。本研究旨在确定一个转录组,以区分NE肿瘤的组织学亚型,从而补充基于形态学的个体分类。一个包含NE亚型(包括21例小细胞肺癌(SCLC)、56例大细胞NE癌(LCNEC)和24例类癌(CARCIs))以及非NE亚型(包括85例ADC和61例SCC)的公共数据集被用作训练集。在训练集中,首先使用一致性聚类筛选出表达模式与其组织学亚型不一致的样本。然后,提出了一种基于秩的方法,根据基因对的样本内相对基因表达顺序,开发一组转录特征来确定个体的NE亚型。使用来自新鲜冷冻、福尔马林固定石蜡包埋、活检和单细胞的总共3454个样本的23个公共数据集进行验证。通过支气管镜从癌症医院收集的10例SCLC活检标本测试了临床可行性。NE亚型组由三个特征组成,可逐步区分NE与非NE、CARCIs与非CARCIs以及SCLC与LCNEC,并最终确定每个NE样本的组织学亚型。在23个公共验证数据集中,这三个特征的平均一致性率分别高达97.31%、98.11%和90.63%。值得注意的是,通过免疫组织化学染色诊断的10例临床来源的SCLC样本也被NE亚型组准确预测。此外,亚型特异性基因表达模式和生存分析为NE亚型组重新分类的合理性提供了证据。基于秩的NE亚型组可以准确区分肺NE肿瘤和非NE肿瘤,甚至在临床挑战性样本(如活检)中也能确定NE亚型。该组与我们之前报道的SCC和ADC特征(-)一起,将成为肺癌组织学诊断的辅助检测方法。