伤口愈合
TRPV4型
成纤维细胞
瞬时受体电位通道
化学
哈卡特
细胞迁移
角质形成细胞
刺激
细胞生物学
兴奋剂
体外
受体
药理学
医学
免疫学
内分泌学
生物
生物化学
作者
Bayarmaa Taivanbat,Sahori Yamazaki,Bolor Nasanbat,Akihiko Uchiyama,Syahla Nisaa Amalia,Munkhjargal Nasan-Ochir,Yuta Inoue,Mai Ishikawa,Keiji Kosaka,Akiko Sekiguchi,Sachiko Ogino,Yoko Yokoyama,Ryoko Torii,Mari Hosoi,Koji Shibasaki,Sei‐ichiro Motegi
标识
DOI:10.1016/j.jdermsci.2023.10.002
摘要
Background Transient receptor potential vanilloid 4 (TRPV4), a cation ion channel, is expressed in different cells, and it regulates the development of different diseases. We recently found a high TRPV4 expression in the wounded skin area. However, the role of TRPV4 in cutaneous wound healing is unknown. Objective To investigate the role of TRPV4 in cutaneous wound healing in a mouse model. Methods Skin wound healing experiment and histopathological studies were performed between WT and TRPV4 KO mice. The effect of TRPV4 antagonist and agonist on cell migration, proliferation, and differentiation were examined in vitro. Results TRPV4 expression was enhanced in wounded area in the skin. TRPV4 KO mice had impaired cutaneous wound healing compared with the WT mice. Further, they had significantly suppressed re-epithelialization and formation of granulation tissue, amount of collagen deposition, and number of α-SMA-positive myofibroblasts in skin wounds. qPCR revealed that the KO mice had decreased mRNA expression of COL1A1 and ACTA2 in skin wounds. In vitro, treatment with selective TRPV4 antagonist suppressed migrating capacity, scratch stimulation enhanced the expression of phospho-ERK in keratinocytes, and TGF-β stimulation enhanced the mRNA expression of COL1A1 and ACTA2 in fibroblasts. Selective TRPV4 agonist suppressed cell migration in keratinocytes, and did not enhance proliferation and migration, but promoted differentiation in fibroblasts. Conclusion TRPV4 mediates keratinocytes and fibroblasts migration and increases collagen deposition in the wound area, thereby promoting cutaneous wound healing.
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