帕利骨化醇
骨化三醇受体
炎症
内分泌学
促炎细胞因子
内科学
骨化三醇
NF-κB
癌症研究
医学
化学
维生素D与神经学
甲状旁腺激素
继发性甲状旁腺功能亢进
钙
作者
Xiaoyue Tan,Xiao‐Yan Wen,Youhua Liu
出处
期刊:Journal of The American Society of Nephrology
日期:2008-06-05
卷期号:19 (9): 1741-1752
被引量:248
标识
DOI:10.1681/asn.2007060666
摘要
Inflammation is a pathologic feature of a variety of chronic kidney diseases. Several lines of evidence suggest a potential anti-inflammatory role for vitamin D in chronic kidney disease, but the underlying mechanism remains unknown. Here, the effect of the synthetic vitamin D analogue paricalcitol on renal inflammation was investigated in a mouse model of obstructive nephropathy. Paricalcitol reduced infiltration of T cells and macrophages in the obstructed kidney. This inhibition of inflammatory cell infiltration was accompanied by a decreased expression of RANTES and TNF-α. Induction of RANTES was localized primarily to the tubular epithelium, underscoring a role for tubular cells in renal inflammation. In a human proximal tubular cell line (HKC-8), paricalcitol inhibited RANTES mRNA and protein expression and abolished the ability of tubular cells to recruit lymphocytes and monocytes after TNF-α stimulation. Although RANTES induction depended on NF-κB signaling, paricalcitol affected neither TNF-α–mediated IκBα phosphorylation and degradation nor p65 NF-κB activation and nuclear translocation. Instead, chromatin immunoprecipitation assay showed that paricalcitol abolished the binding of p65 to its cognate cis-acting element in the RANTES promoter. The vitamin D receptor (VDR) and p65 formed a complex in tubular cells after paricalcitol treatment, which inhibited the ability of p65 to trans-activate gene transcription. In vivo, paricalcitol did not block NF-κB nuclear translocation after obstructive injury but did increase the expression and nuclear distribution of VDR. These results suggest that paricalcitol inhibits renal inflammatory infiltration and RANTES expression by promoting VDR-mediated sequestration of NF-κB signaling.
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