Biomineralization-Inspired Synthesis of Copper Sulfide–Ferritin Nanocages as Cancer Theranostics

Zhantong Wang(National Institutes of Health), Peng Huang(Shenzhen University), Orit Jacobson(National Institutes of Health), Zhe Wang(National Institutes of Health), Yijing Liu(National Institutes of Health), Lisen Lin(National Institutes of Health), Jing Lin(Shenzhen University), Nan Lü(National Institutes of Health), Huimin Zhang(National Institutes of Health), Rui Tian(National Institutes of Health), Gang Niu(National Institutes of Health), Gang Liu(Xiamen University), Xiaoyuan Chen(National Institutes of Health)
ACS Nano
February 12, 2016
Cited by 373Open Access
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Abstract

It is essential to control the size and morphology of nanoparticles strictly in nanomedicine. Protein cages offer significant potential for templated synthesis of inorganic nanoparticles. In this study, we successfully synthesized ultrasmall copper sulfide (CuS) nanoparticles inside the cavity of ferritin (Fn) nanocages by a biomimetic synthesis method. The uniform CuS-Fn nanocages (CuS-Fn NCs) showed strong near-infrared absorbance and high photothermal conversion efficiency. In quantitative ratiometric photoacoustic imaging (PAI), the CuS-Fn NCs exhibited superior photoacoustic tomography improvements for real-time in vivo PAI of entire tumors. With the incorporation of radionuclide (64)Cu, (64)CuS-Fn NCs also served as an excellent PET imaging agent with higher tumor accumulation compared to free copper. Following the guidance of PAI and PET, CuS-Fn NCs were applied in photothermal therapy to achieve superior cancer therapeutic efficiency with good biocompatibility both in vitro and in vivo. The results demonstrate that the bioinspired multifunctional CuS-Fn NCs have potential as clinically translatable cancer theranostics and could provide a noninvasive, highly sensitive, and quantitative in vivo guiding method for cancer photothermal therapies in experimental and clinical settings.


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