Department of Oncology, The Second Affiliated Hospital of Fujian Medical University, Quanzhou, 362000, Fujian, China.
Department of Hematology, The Second Affiliated Hospital of Fujian Medical University, Quanzhou, 362000, Fujian, China.
BMC Cancer. 2023 Jun 8;23(1):525. doi: 10.1186/s12885-023-10918-y.
Cancer stemness has been proven to affect tumorigenesis, metastasis, and drug resistance in various cancers, including lung squamous cell carcinoma (LUSC). We intended to develop a clinically applicable stemness subtype classifier that could assist physicians in predicting patient prognosis and treatment response.
This study collected RNA-seq data from TCGA and GEO databases to calculate transcriptional stemness indices (mRNAsi) using the one-class logistic regression machine learning algorithm. Unsupervised consensus clustering was conducted to identify a stemness-based classification. Immune infiltration analysis (ESTIMATE and ssGSEA algorithms) methods were used to investigate the immune infiltration status of different subtypes. Tumor Immune Dysfunction and Exclusion (TIDE) and Immunophenotype Score (IPS) were used to evaluate the immunotherapy response. The pRRophetic algorithm was used to estimate the efficiency of chemotherapeutic and targeted agents. Two machine learning algorithms (LASSO and RF) and multivariate logistic regression analysis were performed to construct a novel stemness-related classifier.
We observed that patients in the high-mRNAsi group had a better prognosis than those in the low-mRNAsi group. Next, we identified 190 stemness-related differentially expressed genes (DEGs) that could categorize LUSC patients into two stemness subtypes. Patients in the stemness subtype B group with higher mRNAsi scores exhibited better overall survival (OS) than those in the stemness subtype A group. Immunotherapy prediction demonstrated that stemness subtype A has a better response to immune checkpoint inhibitors (ICIs). Furthermore, the drug response prediction indicated that stemness subtype A had a better response to chemotherapy but was more resistant to epidermal growth factor receptor tyrosine kinase inhibitors (EGFR-TKIs). Finally, we constructed a nine-gene-based classifier to predict patients' stemness subtype and validated it in independent GEO validation sets. The expression levels of these genes were also validated in clinical tumor specimens.
The stemness-related classifier could serve as a potential prognostic and treatment predictor and assist physicians in selecting effective treatment strategies for patients with LUSC in clinical practice.
癌症干细胞特性已被证明会影响多种癌症的肿瘤发生、转移和耐药性,包括肺鳞状细胞癌(LUSC)。我们旨在开发一种临床适用的干细胞亚型分类器,以帮助医生预测患者的预后和治疗反应。
本研究从 TCGA 和 GEO 数据库中收集了 RNA-seq 数据,使用单类逻辑回归机器学习算法计算转录干细胞指数(mRNAsi)。通过无监督共识聚类来确定基于干细胞的分类。使用免疫浸润分析(ESTIMATE 和 ssGSEA 算法)方法来研究不同亚型的免疫浸润状态。使用肿瘤免疫功能障碍和排除(TIDE)和免疫表型评分(IPS)来评估免疫治疗反应。使用 pRRophetic 算法来估计化疗和靶向药物的效率。使用两种机器学习算法(LASSO 和 RF)和多变量逻辑回归分析来构建新的干细胞相关分类器。
我们观察到高-mRNAsi 组的患者比低-mRNAsi 组的患者预后更好。接下来,我们鉴定了 190 个与干细胞相关的差异表达基因(DEGs),这些基因可以将 LUSC 患者分为两个干细胞亚型。mRNAsi 评分较高的干细胞亚型 B 组的患者总生存期(OS)优于干细胞亚型 A 组。免疫治疗预测表明,干细胞亚型 A 对免疫检查点抑制剂(ICIs)的反应更好。此外,药物反应预测表明,干细胞亚型 A 对化疗的反应更好,但对表皮生长因子受体酪氨酸激酶抑制剂(EGFR-TKIs)的耐药性更高。最后,我们构建了一个基于九个基因的分类器来预测患者的干细胞亚型,并在独立的 GEO 验证集中进行了验证。这些基因的表达水平也在临床肿瘤标本中进行了验证。
干细胞相关分类器可作为一种潜在的预后和治疗预测指标,帮助医生在临床实践中为 LUSC 患者选择有效的治疗策略。