Liao HuiPing, Ma QingLan, Chen Lei, Guo Wei, Feng KaiYan, Bao YuSheng, Zhang Yu, Shen WenFeng, Huang Tao, Cai Yu-Dong
Changping Laboratory, Beijing 102206, China.
School of Life Sciences, Shanghai University, Shanghai 200444, China.
Cancer Genet. 2025 Jan;290-291:56-60. doi: 10.1016/j.cancergen.2024.12.004. Epub 2024 Dec 22.
CD4 T cells play a pivotal role in the immune system, particularly in adaptive immunity, by orchestrating and enhancing immune responses. CD4 T cell-related immune responses exhibit diverse characteristics in different diseases. This study utilizes gene expression analysis of CD4 T cells to classify and understand complex diseases. We analyzed the dataset consisting of samples from various diseases, including cancers, metabolic disorders, circulatory and respiratory diseases, and digestive ailments, as well as 53 healthy controls. Each sample contained expression data for 22,881 genes. Four feature ranking algorithms, incremental feature selection method, synthetic minority oversampling technique, and four classification algorithms were utilized to pinpoint essential genes, extract classification rules and build efficient classifiers. The following analysis focused on genes across rules, such as AK4, CALU, LINC01271, and RUSC1-AS1. AK4 and CALU show fluctuating levels in diseases like asthma, Crohn's disease, and breast cancer. The analysis results and existing research suggest that they may play a role in these diseases. LINC01271 generally has higher expression in conditions including asthma, Crohn's disease, and diabetes. RUSC1-AS1 is more expressed in chronic diseases like asthma and Crohn's, but less in acute illnesses like tonsillitis and influenza. This highlights the distinct roles of these genes in different diseases. Our approach highlights the potential for developing novel therapeutic strategies based on the transcriptional profiles of CD4 T cells.
CD4 T细胞在免疫系统中发挥着关键作用,尤其是在适应性免疫中,通过协调和增强免疫反应来实现。CD4 T细胞相关的免疫反应在不同疾病中表现出多样的特征。本研究利用CD4 T细胞的基因表达分析来对复杂疾病进行分类和理解。我们分析了包含各种疾病样本的数据集,这些疾病包括癌症、代谢紊乱、循环和呼吸系统疾病以及消化系统疾病,还有53个健康对照。每个样本包含22,881个基因的表达数据。使用了四种特征排名算法、增量特征选择方法、合成少数过采样技术以及四种分类算法来确定关键基因、提取分类规则并构建高效的分类器。以下分析聚焦于跨规则的基因,如AK4、CALU、LINC01271和RUSC1-AS1。AK4和CALU在哮喘、克罗恩病和乳腺癌等疾病中呈现波动水平。分析结果和现有研究表明它们可能在这些疾病中发挥作用。LINC01271在包括哮喘、克罗恩病和糖尿病等病症中通常具有较高表达。RUSC1-AS1在哮喘和克罗恩病等慢性疾病中表达较多,但在扁桃体炎和流感等急性疾病中表达较少。这突出了这些基因在不同疾病中的独特作用。我们的方法突出了基于CD4 T细胞转录谱开发新型治疗策略的潜力。