病毒潜伏期
细胞凋亡
免疫学
推车
免疫系统
生物
病毒学
离体
猿猴免疫缺陷病毒
T细胞
医学
体内
病毒
病毒复制
生物技术
工程类
机械工程
生物化学
作者
Chenliang Zhou,Ting Li,Muye Xia,Ziyao Wu,Xuelin Zhong,Axing Li,Huba Khamis Rashid,Chun-Ya Ma,Ruijing Zhou,Hong‐Quan Duan,Qian Zhang,Jie Peng,Lin Li
出处
期刊:ACS Infectious Diseases
[American Chemical Society]
日期:2023-10-05
卷期号:9 (11): 2105-2118
被引量:1
标识
DOI:10.1021/acsinfecdis.3c00218
摘要
The implementation of combined antiretroviral therapy (cART) has rendered HIV-1 infection clinically manageable and efficiently improves the quality of life for patients with AIDS. However, the persistence of a latent HIV-1 reservoir is a major obstacle to achieving a cure for AIDS. A "shock and kill" strategy aims to reactivate latent HIV and then kill it by the immune system or cART drugs. To date, none of the LRA candidates has yet demonstrated effectiveness in achieving a promising functional cure. Interestingly, the phosphorylation and activation of antiapoptotic Bcl-2 protein induce resistance to apoptosis during HIV-1 infection and the reactivation of HIV-1 latency in central memory CD4+ T cells from HIV-1-positive patients. Therefore, a Bcl-2 antagonist might be an effective LRA candidate for HIV-1 cure. In this study, we reported that a pan-Bcl-2 antagonist obatoclax induces HIV-1 reactivation in latently infected cell lines in vitro and in PBMCs/CD4+ T cells of HIV-infected individuals ex vivo. Obatoclax promotes HIV-1 transcriptional initiation and elongation by regulating the NF-κB pathway. Obatoclax activates caspase 8 and does not induce the phosphorylation of the antiapoptotic protein Bcl-2 in latent HIV-1 infected cell lines. More importantly, it preferentially induces apoptosis in latently infected cells. In addition, obatoclax exhibited potent anti-HIV-1 activity on target cells. The abilities to reactivate latent HIV-1 reservoirs, inhibit HIV-1 infection, and induce HIV-1 latent cell apoptosis make obatoclax worth investigating for development as an ideal LRA for use in the "shock and kill" approach.
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