生物
核糖核酸
四三肽
核糖开关
细胞生物学
信使核糖核酸
翻译(生物学)
先天免疫系统
RNA结合蛋白
分子生物学
生物化学
受体
基因
非编码RNA
作者
Jingping Geng,Magdalena Chrabąszczewska,Karol Kurpiejewski,Anna Stankiewicz-Drogoń,Marzena Jankowska‐Anyszka,Edward Darżynkiewicz,Renata Grzela
出处
期刊:RNA
[Cold Spring Harbor Laboratory Press]
日期:2024-07-15
卷期号:30 (10): 1292-1305
被引量:3
标识
DOI:10.1261/rna.080011.124
摘要
All cells in our body are equipped with receptors to recognize pathogens and trigger a rapid defense response. As a result, foreign molecules are blocked, and cells are alerted to the danger. Among the many molecules produced in response to viral infection are interferon-induced proteins with tetratricopeptide repeats (IFITs). Their role is to recognize foreign mRNA and eliminate it from the translational pool of transcripts. In the present study, we used biophysical methods to characterize the interactions between the IFIT1 protein and its partners IFIT2 and IFIT3. IFIT1 interacts with IFIT3 with nanomolar binding affinity, which did not change significantly in the presence of the preformed IFIT2/3 complex. The interactions between IFIT2 and IFIT3 and IFIT1 and IFIT2 were one order of magnitude weaker. We also present kinetic data of the interactions between the IFIT protein complex and short RNA bearing various modifications at the 5′ end. We show kinetic parameters for interaction between the IFIT complex and RNA with m 6 A m modification. The results show that the cap-adjacent m 6 A m modification is a stronger signature than cap1 alone. It blocks the formation of a complex between IFIT proteins and m 7 Gpppm 6 A m -RNA much more effectively than other cap modifications. In contrast, m 6 A in the 5′UTR is not recognized by IFIT proteins and does not contribute to translation repression by IFIT proteins. The data obtained are important for understanding the regulation of expression of genetic information. They indicate that 2′- O and m 6 A m modifications modulate the availability of mRNA molecules for proteins of innate immune response.
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