Engineered Nanoparticles for Drug Delivery in Cancer Therapy

体内分布 治疗指标 药物输送 纳米技术 癌症治疗 纳米颗粒 药品 纳米医学 免疫原性 癌症 毒品携带者 医学 药理学 化学 材料科学 体外 抗体 免疫学 内科学 生物化学
作者
Tianmeng Sun,Yu Shrike Zhang,Bo Pang,Dong Choon Hyun,Miaoxin Yang,Younan Xia
出处
期刊:Angewandte Chemie [Wiley]
卷期号:53 (46): 12320-12364 被引量:2020
标识
DOI:10.1002/anie.201403036
摘要

In medicine, nanotechnology has sparked a rapidly growing interest as it promises to solve a number of issues associated with conventional therapeutic agents, including their poor water solubility (at least, for most anticancer drugs), lack of targeting capability, nonspecific distribution, systemic toxicity, and low therapeutic index. Over the past several decades, remarkable progress has been made in the development and application of engineered nanoparticles to treat cancer more effectively. For example, therapeutic agents have been integrated with nanoparticles engineered with optimal sizes, shapes, and surface properties to increase their solubility, prolong their circulation half-life, improve their biodistribution, and reduce their immunogenicity. Nanoparticles and their payloads have also been favorably delivered into tumors by taking advantage of the pathophysiological conditions, such as the enhanced permeability and retention effect, and the spatial variations in the pH value. Additionally, targeting ligands (e.g., small organic molecules, peptides, antibodies, and nucleic acids) have been added to the surface of nanoparticles to specifically target cancerous cells through selective binding to the receptors overexpressed on their surface. Furthermore, it has been demonstrated that multiple types of therapeutic drugs and/or diagnostic agents (e.g., contrast agents) could be delivered through the same carrier to enable combination therapy with a potential to overcome multidrug resistance, and real-time readout on the treatment efficacy. It is anticipated that precisely engineered nanoparticles will emerge as the next-generation platform for cancer therapy and many other biomedical applications.
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