Platelet Membrane Biomimetic Magnetic Nanocarriers for Targeted Delivery and <i>in Situ</i> Generation of Nitric Oxide in Early Ischemic Stroke

Mingxi Li(State Key Laboratory of Digital Medical Engineering), Jing Li(State Key Laboratory of Digital Medical Engineering), Jinpeng Chen(Southeast University), Yang Liu(State Key Laboratory of Digital Medical Engineering), Xiao Cheng(State Key Laboratory of Digital Medical Engineering), Fang Yang(State Key Laboratory of Digital Medical Engineering), Ning Gu(State Key Laboratory of Digital Medical Engineering)
ACS Nano
January 13, 2020
Cited by 275

Abstract

Early diagnosis and treatment of acute ischemic stroke poses a significant challenge due to its suddenness and short therapeutic time window. Human endogenous cells derived biomimetic drug carriers have provided new options for stroke theranostics since these cells have higher biosafety and targeting abilities than artificial carriers. Inspired by natural platelets (PLTs) and their role in targeting adhesion to the damaged blood vessel during thrombus formation, we fabricated a biomimetic nanocarrier comprising a PLT membrane envelope loaded with l-arginine and γ-Fe2O3 magnetic nanoparticles (PAMNs) for thrombus-targeted delivery of l-arginine and in situ generation of nitric oxide (NO). Results demonstrate that the engineered 200 nm PAMNs inherit the natural properties of the PLT membrane and achieve rapid targeting to ischemic stroke lesions under the guidance of an external magnetic field. Subsequent to the release of l-arginine at the thrombus site, endothelial cells produce NO, which promotes vasodilation to disrupt the local PLT aggregation. Rapid targeting of PAMNs to stroke lesions as well as in situ generation of NO prompts vasodilation, recovery of blood flow, and reperfusion of the stroke microvascular. Thus, these PLT membrane derived nanocarriers are diagnostically beneficial for localizing stroke lesions and a promising modality for executing therapies.


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