活性氧
清除
药物输送
DNA
药品
化学
氧气
纳米技术
材料科学
药理学
医学
生物化学
抗氧化剂
有机化学
作者
Rajendra K. Singh,Nandin Mandakhbayar,Amal George Kurian,Shreyas Kumar Jain,Suparna Bhattacharya,Archita Gupta,Jung‐Hwan Lee,Hae‐Won Kim
出处
期刊:ACS Nano
[American Chemical Society]
日期:2025-07-22
卷期号:19 (30): 27941-27956
被引量:17
标识
DOI:10.1021/acsnano.5c10445
摘要
Osteoarthritis involves complex inflammatory responses, leading to cell death and joint dysfunction. Key contributors are pro-inflammatory molecules, such as excess reactive oxygen species (ROS) and cell-free DNA (cfDNA), which require effective scavenging. Concurrently, delivering anti-inflammatory agents can stimulate immune cells to restore tissue repair by resolving inflammation. Thus, a "push-and-pull" approach-combining delivery and scavenging-is optimal for osteoarthritis treatment. Here, we propose a multitherapeutic strategy using polycationic-functionalized mesoporous ceria nanoparticle (mCNP-G) to target osteoarthritic joint cartilage. The mCNP core, with its multiple catalytic capabilities and mesoporous structure, was effective in scavenging ROS and loading/releasing the anti-inflammatory drug dexamethasone. Additionally, polycationic functionalization enhanced the scavenging of cfDNA released from damaged or dying cells. These combined functions of mCNP-G substantially down-regulated pro-inflammatory signaling, thereby rescuing cells and interrupting the inflammatory feedback loop. Moreover, mCNP-G demonstrated high affinity for cartilage tissue, facilitating targeted retention to osteoarthritis region. When locally administered to rat osteoarthritic temporomandibular joint, mCNP-G with dexamethasone significantly reduced cfDNA and oxidative stress, inhibited inflammation, and salvaged cells, ultimately alleviating osteoarthritic symptoms and osteochondral damage. This nanomedicine offers a promising therapeutic strategy for osteoarthritis by integrating the push-and-pull functions of drug delivery and ROS/cfDNA dual-scavenging within a single system.
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