Self-Assembled Casein Nanoparticles Loading Triptolide for the Enhancement of Oral Bioavailability:

NATURAL PRODUCT COMMUNICATIONS(2020)

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摘要
Triptolide (TP), a broad-spectrum antitumor drug, has very poor solubility and oral bioavailability, which limits its clinical use. Compared with conventional formulations of TP, a casein (Cas)-based drug delivery system has been reported to have significant advantages for the improvement of solubility and bioavailability of insoluble drugs. In this paper, we report the successful preparation of TP-loaded Cas nanoparticles (FP-Cas) using the self-assembly characteristics of Cas in water and the optimization of the formulation by evaluation of entrapment efficiency (EE) and loading efficiency (LE). Dynamic light scattering, transmission electron microscopy, Fourier-transform infrared spectrometry, X-ray diffractometry (XRD), and differential scanning calorimetry (DSC) was adopted to characterize the TP-Cas. Results showed that the obtained TP-Cas were approximately spherical with a particle size of 128.7 +/- 11.5 nm, EE of 72.7 +/- 4.7 %, and LE of 8.0% +/- 0.5%. Furthermore, in vitro release behavior of TP-Cas in PBS (pH = 7.4) was also evaluated, showing a sustained-release profile. Additionally, an in vivo study in rats displayed that the mean plasma concentration of TP after oral administration of TP-Cas was significantly higher than that treated with TP oral suspension. The C-max value for TP-Cas (8.0 4 +/- 4 mu g/mL) was significantly increased compared with the free TP (0.9 +/- 0.3 mu g/mL). Accordingly, the area under the curve (AUC(0-8)) of TP-Cas was 2.8 +/- 0.8 mg/L.h, 4.3-fold higher than that of TP suspension (0.6 +/- 0.1 mg/L.h). Therefore, it can be concluded that TP-Cas enhanced the absorption and improved oral bioavailability of TP. Taking the good oral safety of Cas into consideration, TP-Cas should be a more promising preparation of TP for clinical application.
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关键词
triptolide,Casein,natural polymers,nanoparticles,oral bioavailability
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