三氧化二砷
聚丙烯酸
介孔二氧化硅
体内
化学
纳米颗粒
材料科学
核化学
药理学
介孔材料
纳米技术
砷
生物化学
有机化学
医学
聚合物
生物技术
催化作用
生物
作者
Xuecheng Xiao,Yangyang Liu,Manman Guo,Weidong Fei,Hongyue Zheng,Rongrong Zhang,Yan Zhang,Yinghui Wei,Guohua Zheng,Fanzhu Li
标识
DOI:10.1177/0885328216637211
摘要
Arsenic trioxide (As 2 O 3 , ATO), a FDA approved drug for hematologic malignancies, was proved of efficient growth inhibition of cancer cell in vitro or solid tumor in vivo. However, its effect on solid tumor in vivo was hampered by its poor pharmacokinetics and dose-limited toxicity. In this study, a polyacrylic acid capped pH-triggered mesoporous silica nanoparticles was conducted to improve the pharmacokinetics and enhance the antitumor effect of arsenic trioxide. The mesoporous silica nanoparticles loaded with arsenic trioxide was grafted with polyacrylic acid (PAA-ATO-MSN) as a pH-responsive biomaterial on the surface to achieve the release of drug in acidic microenvironment of tumor, instead of burst release action in circulation. The nanoparticles were characterized with uniform grain size (particle sizes of 158.6 ± 1.3 nm and pore sizes of 3.71 nm, respectively), historically comparable drug loading efficiency (11.42 ± 1.75%), pH-responsive and strengthened sustained release features. The cell toxicity of amino groups modified mesoporous silica nanoparticles (NH 2 -MSN) was significantly reduced by capping of polyacrylic acid. In pharmacokinetic studies, the half time (t 1/2β ) was prolonged by 1.3 times, and the area under curve) was increased by 2.6 times in PAA-ATO-MSN group compared with free arsenic trioxide group. Subsequently, the antitumor efficacy in vitro (SMMC-7721 cell line) and in vivo (H22 xenografts) was remarkably enhanced indicated that PAA-ATO-MSN improved the antitumor effect of the drug. These results suggest that the polyacrylic acid capped mesoporous silica nanoparticles (PAA-MSN) will be a promising nanocarrier for improving pharmacokinetic features and enhancing the anti-tumor efficacy of arsenic trioxide.
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