Yang Kaidi, Yang Tongxin, Yang Tao, Yuan Ye, Li Fang
Department of Oncology, Hainan Hospital of Chinese People's Liberation Army General Hospital, Sanya, China.
Institute of Pathology and Southwest Cancer Center, Southwest Hospital, Third Military Medical University (Army Medical University), Chongqing, China.
Front Oncol. 2022 Sep 27;12:995651. doi: 10.3389/fonc.2022.995651. eCollection 2022.
Malignant pleural mesothelioma (MPM) is a rare and intractable disease exhibiting a remarkable intratumoral heterogeneity and dismal prognosis. Although immunotherapy has reshaped the therapeutic strategies for MPM, patients react with discrepant responsiveness.
Herein, we recruited 333 MPM patients from 5 various cohorts and developed an classification system using unsupervised Non-negative Matrix Factorization and Nearest Template Prediction algorithms. The genomic alterations, immune signatures, and patient outcomes were systemically analyzed across the external TCGA-MESO samples. Machine learning-based integrated methodology was applied to identify a gene classifier for clinical application.
The gene expression profiling-based classification algorithm identified immune-related subtypes for MPMs. In comparison with the non-immune subtype, we validated the existence of abundant immunocytes in the immune subtype. Immune-suppressed MPMs were enriched with stroma fraction, myeloid components, and immunosuppressive tumor-associated macrophages (TAMs) as well exhibited increased TGF-β signature that informs worse clinical outcomes and reduced efficacy of anti-PD-1 treatment. The immune-activated MPMs harbored the highest lymphocyte infiltration, growing TCR and BCR diversity, and presented the pan-cancer immune phenotype of IFN-γ dominant, which confers these tumors with better drug response when undergoing immune checkpoint inhibitor (ICI) treatment. Genetically, BAP1 mutation was most commonly found in patients of immune-activated MPMs and was associated with a favorable outcome in a subtype-specific pattern. Finally, a robust 12-gene classifier was generated to classify MPMs with high accuracy, holding promise value in predicting patient survival.
We demonstrate that the novel classification system can be exploited to guide the identification of diverse immune subtypes, providing critical biological insights into the mechanisms driving tumor heterogeneity and responsible for cancer-related patient prognoses.
恶性胸膜间皮瘤(MPM)是一种罕见且难治的疾病,具有显著的肿瘤内异质性和不良预后。尽管免疫疗法重塑了MPM的治疗策略,但患者的反应存在差异。
在此,我们从5个不同队列中招募了333例MPM患者,并使用无监督非负矩阵分解和最近模板预测算法开发了一种分类系统。对外部TCGA-MESO样本的基因组改变、免疫特征和患者预后进行了系统分析。应用基于机器学习的综合方法来识别用于临床应用的基因分类器。
基于基因表达谱的分类算法识别出MPM的免疫相关亚型。与非免疫亚型相比,我们验证了免疫亚型中存在丰富的免疫细胞。免疫抑制的MPM富含基质成分、髓系成分和免疫抑制性肿瘤相关巨噬细胞(TAM),同时TGF-β特征增加,这预示着更差的临床结果和抗PD-1治疗效果降低。免疫激活的MPM具有最高的淋巴细胞浸润、不断增加的TCR和BCR多样性,并呈现出以IFN-γ为主导的泛癌免疫表型,这使得这些肿瘤在接受免疫检查点抑制剂(ICI)治疗时具有更好的药物反应。在基因方面,BAP1突变最常见于免疫激活的MPM患者中,并以亚型特异性模式与良好预后相关。最后,生成了一个强大的12基因分类器,以高精度对MPM进行分类,在预测患者生存方面具有潜在价值。
我们证明了这种新型分类系统可用于指导识别不同的免疫亚型,为驱动肿瘤异质性和导致癌症相关患者预后的机制提供关键的生物学见解。