拮抗剂
破骨细胞
骨吸收
小RNA
吸收
材料科学
癌症研究
体内
脂质体
细胞生物学
医学
化学
内科学
生物
纳米技术
生物化学
受体
生物技术
基因
作者
Jin Liu,Lei Dang,Defang Li,Chao Liang,Xiaojuan He,Heng Wu,Airong Qian,Zhijun Yang,Doris W.T. Au,Michael Chiang,Bao‐Ting Zhang,Quan‐Bin Han,Kevin K.M. Yue,Hongqi Zhang,Chang-Wei Lv,Xiaohua Pan,Jiake Xu,Zhaoxiang Bian,Peng Shang,Weihong Tan
出处
期刊:Biomaterials
[Elsevier BV]
日期:2015-02-24
卷期号:52: 148-160
被引量:92
标识
DOI:10.1016/j.biomaterials.2015.02.007
摘要
Dysregulated microRNAs in osteoclasts could cause many skeletal diseases. The therapeutic manipulation of these pathogenic microRNAs necessitates novel, efficient delivery systems to facilitate microRNAs modulators targeting osteoclasts with minimal off-target effects. Bone resorption surfaces characterized by highly crystallized hydroxyapatite are dominantly occupied by osteoclasts. Considering that the eight repeating sequences of aspartate (D-Asp8) could preferably bind to highly crystallized hydroxyapatite, we developed a targeting system by conjugating D-Asp8 peptide with liposome for delivering microRNA modulators specifically to bone resorption surfaces and subsequently encapsulated antagomir-148a (a microRNA modulator suppressing the osteoclastogenic miR-148a), i.e. (D-Asp8)-liposome-antagomir-148a. Our results demonstrated that D-Asp8 could facilitate the enrichment of antagomir-148a and the subsequent down-regulation of miR-148a in osteoclasts in vivo, resulting in reduced bone resorption and attenuated deterioration of trabecular architecture in osteoporotic mice. Mechanistically, the osteoclast-targeted delivery depended on the interaction between bone resorption surfaces and D-Asp8. No detectable liver and kidney toxicity was found in mice after single/multiple dose(s) treatment of (D-Asp8)-liposome-antagomir-148a. These results indicated that (D-Asp8)-liposome as a promising osteoclast-targeting delivery system could facilitate clinical translation of microRNA modulators in treating those osteoclast-dysfunction-induced skeletal diseases.
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