Gul Samina, Pang Jianyu, Chen Yongzhi, Qi Qi, Tang Yuheng, Sun Yingjie, Wang Hui, Tang Wenru, Zhou Xuhong
Laboratory of Molecular Genetics of Aging & Tumor, Medical School, Kunming University of Science and Technology, 727 Jingming South Road, Kunming 650500, China.
State Key Laboratory of Primate Biomedical Research, Institute of Primate Translational Medicine, Kunming University of Science and Technology, Kunming 650500, China.
Int J Mol Sci. 2025 Jul 21;26(14):6995. doi: 10.3390/ijms26146995.
Regulatory T cells (Tregs) have multiple roles in the tumor microenvironment (TME), which maintain a balance between autoimmunity and immunosuppression. This research aimed to investigate the interaction between cancer stemness and Regulatory T cells (Tregs) in the breast cancer tumor immune microenvironment. Breast cancer stemness was calculated using one-class logistic regression. Twelve main cell clusters were identified, and the subsequent three subsets of Regulatory T cells with different differentiation states were identified as being closely related to immune regulation and metabolic pathways. A prognostic risk model including , , , , , , and was generated through the intersection between Regulatory T cell differentiation-related genes and stemness-related genes using LASSO and univariate Cox regression. The patient's total survival times were predicted and validated with AUC of 0.96 and 0.831 in both training and validation sets, respectively; the immunotherapeutic predication efficacy of prognostic signature was confirmed in four ICI RNA-Seq cohorts. Seven drugs, including Ethinyl Estradiol, Epigallocatechin gallate, Cyclosporine, Gentamicin, Doxorubicin, Ivermectin, and Dronabinol for prognostic signature, were screened through molecular docking and found a synergistic effect among drugs with deep learning. Our prognostic signature potentially paves the way for overcoming immune resistance, and blocking the interaction between cancer stemness and Tregs may be a new approach in the treatment of breast cancer.
调节性T细胞(Tregs)在肿瘤微环境(TME)中具有多种作用,维持自身免疫和免疫抑制之间的平衡。本研究旨在探讨乳腺癌肿瘤免疫微环境中癌症干性与调节性T细胞(Tregs)之间的相互作用。使用单类逻辑回归计算乳腺癌干性。识别出12个主要细胞簇,随后确定了三个具有不同分化状态的调节性T细胞亚群与免疫调节和代谢途径密切相关。通过使用LASSO和单变量Cox回归,在调节性T细胞分化相关基因和干性相关基因的交集处生成了一个包括 、 、 、 、 、 和 的预后风险模型。在训练集和验证集中分别用AUC为0.96和0.831预测并验证了患者的总生存时间;在四个ICI RNA-Seq队列中证实了预后特征的免疫治疗预测疗效。通过分子对接筛选了七种用于预后特征的药物,包括炔雌醇、表没食子儿茶素没食子酸酯、环孢素、庆大霉素、阿霉素、伊维菌素和屈大麻酚,并通过深度学习发现药物之间具有协同作用。我们的预后特征可能为克服免疫抵抗铺平道路,阻断癌症干性与Tregs之间的相互作用可能是治疗乳腺癌的一种新方法。