脂联素
罗格列酮
过氧化物酶体增殖物激活受体
脂肪生成
内科学
内分泌学
化学
部分激动剂
受体
核受体
兴奋剂
细胞生物学
生物
生物化学
转录因子
体外
胰岛素抵抗
胰岛素
医学
基因
作者
Hyejin Ko,Hyunjung Choi,Yujia Han,Seungchan An,Daejin Min,Won-Seok Park,Sun Hee Jin,Hyoung-June Kim,Minsoo Noh
标识
DOI:10.1016/j.jdermsci.2022.02.010
摘要
Abstract
Background
3,4,5-Trimethoxycinnamate thymol ester (TCTE), an anti-melanogenic cosmetic agent prescribed currently, promotes adiponectin synthesis during adipogenesis in human bone marrow mesenchymal stem cells (hBM-MSCs). Adiponectin inhibits melanin biosynthesis and its biosynthesis is directly regulated by peroxisome proliferator-activated receptor (PPAR) γ. In this regard, TCTE may potentially affect PPARγ activity. However, contradicting effects of PPARγ agonists with different chemical structures on human melanogenesis have been reported. Objective
A molecular target of TCTE was investigated to elucidate the association of both adiponectin and PPARγ with anti-melanogenic activity. Methods
The adiponectin secretion-promoting activity of TCTE was tested in an adipogenesis model of hBM-MSCs. A molecular target of TCTE for adiponectin secretion was evaluated via time-resolved fluorescence resonance energy transfer-based receptor binding and transactivation of PPARs. Results
TCTE significantly promoted adiponectin secretion (EC50, 27.9 μM) during adipogenesis in hBM-MSCs and directly bound to PPARγ (Ki, 13.2 μM). The TCTE-bound PPARγ increased the recruitment of SRC-1, SRC-3, and TRAP220/DRIP-1 coactivator peptides without affecting PGC-1α coactivation. In the docking analysis, the optimal ligand binding mode of TCTE exhibited typical ligand-receptor interactions of PPARγ partial agonists. The PPARγ partial agonism of TCTE was established experimentally and the anti-melanogenic activity of TCTE was decreased by treatment with a PPARγ antagonist in cultured normal human melanocytes and a 3D model of human epidermis. Conclusion
The anti-melanogenic activity of TCTE was associated with a PGC-1α-independent PPARγ partial agonism.
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