LncRNA-BC069792 suppresses tumor progression by targeting KCNQ4 in breast cancer

乳腺癌 生物 癌症研究 转移 癌症 竞争性内源性RNA 长非编码RNA 免疫组织化学 体内 核糖核酸 基因 免疫学 遗传学 生物化学 生物技术
作者
Yunxiang Zhang,Xiaotong Dong,Xiangyu Guo,Chunsen Li,Yanping Fan,Pengju Liu,Dawei Yuan,Xialin Ma,Jingru Wang,Jie Zheng,Hongli Li,Peng Gao
出处
期刊:Molecular Cancer [BioMed Central]
卷期号:22 (1): 41-41 被引量:72
标识
DOI:10.1186/s12943-023-01747-5
摘要

Abstract Background Breast cancer is the most common malignant tumor that threatens women's health. Attention has been paid on the study of long- non-coding RNA (lncRNA) in breast cancer. However, the specific mechanism remains not clear. Methods In this study, we explored the role of lncRNA BC069792 in breast cancer. In vitro and in vivo functional experiments were carried out in cell culture and mouse models. High-throughput next-generation sequencing technology and real-time fluorescence quantitative PCR technology were used to evaluate differentially expressed genes and mRNA expression, Western blot and immunohistochemical staining were used to detect protein expression. RNA immunoprecipitation assay and dual-luciferase activity assay were used to evaluate the competing endogenous RNAs (ceRNA), and rescue and mutation experiments were used for verification. Results We found that lncRNA BC069792 was expressed at a low level in breast cancer tissues, and significantly decreased in breast cancer with high pathological grade, lymph node metastasis and high Ki-67 index groups. Moreover, BC069792 inhibited the proliferation, invasion and metastasis of breast cancer cells in vitro and in vivo. Mechanically, BC069792 acts as a molecular sponge to adsorb hsa-miR-658 and hsa-miR-4739, to up-regulate the protein expression of Potassium Voltage-Gated Channel Q4 (KCNQ4), inhibits the activities of JAK2 and p-AKT, and plays a role in inhibiting breast cancer growth. Conclusions LncRNA BC069792 plays the role of tumor suppressor gene in breast cancer and is a new diagnostic index and therapeutic target in breast cancer.
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