Gene Therapy via Blockade of Monocyte Chemoattractant Protein-1 for Renal Fibrosis

Takashi Wada(Kanazawa University), Kengo Furuichi(Kanazawa University), Norihiko Sakai(Kanazawa University), Yasunori Iwata(Kanazawa University), Kiyoki Kitagawa(Kanazawa University), Yuko Ishida(Wakayama Medical University), Toshikazu Kondo(Wakayama Medical University), Hiroyuki Hashimoto(Riso Kagaku (Japan)), Yoshiro Ishiwata(Riso Kagaku (Japan)), Naofumi Mukaida(Kanazawa University), Naohisa Tomosugi(Kanazawa Medical University), Kouji Matsushima(The University of Tokyo), Kensuke Egashira(Kyushu University), Hitoshi Yokoyama(Kanazawa University)
Journal of the American Society of Nephrology
April 1, 2004
Cited by 172

Abstract

Monocyte chemoattractant protein (MCP)-1, also termed monocyte chemotactic and activating factor (MCAF)/CCL2, plays an important role in progressive organ fibrosis. It was hypothesized that MCP-1, through its cognate receptor, CCR2, regulates the pathogenesis and is therapeutically of importance for renal fibrosis. To achieve this goal, the therapeutic efficacy and efficiency in renal fibrosis induced by a unilateral ureteral obstruction nephropathy model in mice by the blockade of MCP-1/CCR2 signaling was studied. The delivery of N-terminal deletion mutant of the human MCP-1 gene, 7ND, into a skeletal muscle ameliorated renal fibrosis by resulting in decrease in the deposit of type I collagen and in reduced expression of TGF-beta. Concomitantly, gene transfer of 7ND reduced the cell infiltration, most of which were CCR2-positive macrophages, followed by the decrease in MCP-1 expression in the diseased kidneys. These observations suggest that MCP-1 through CCR2 signaling is responsible for Mphi recruitment, which augments downstream events, resulting in renal fibrosis. Moreover, these findings imply that gene therapy against MCP-1/CCR2 signaling via the mutant gene transferred strategy may serve a beneficial therapeutic application for renal fibrosis.


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