光敏剂
单线态氧
体内
化学
缺氧(环境)
细胞毒性
光动力疗法
癌症研究
药品
药理学
肿瘤缺氧
纳米载体
光热治疗
活性氧
体外
氧气
生物物理学
放射治疗
药物输送
医学
纳米技术
光化学
材料科学
生物化学
外科
生物
有机化学
生物技术
作者
Jiafeng Zhuang,Wei Zhang,Qize Xuan,Tonghao Ma,Qi Zhang,Chao Chen,Ping Wang
出处
期刊:ACS applied nano materials
[American Chemical Society]
日期:2021-10-19
卷期号:4 (11): 11480-11492
被引量:5
标识
DOI:10.1021/acsanm.1c01588
摘要
Pre-existing tumor hypoxia and oxygen consumption by photodynamic therapy (PDT) always generate an inadequate oxygen supply, which often contributes to other therapy resistance, especially for aerobic treatments such as chemotherapy. In order to overcome this problem, we synthesized a chitosan (CS)-capped pH-/NIR-dual responsive and perfluorocarbon-based oxygen self-enriching photodynamic therapy nanosystem which could codeliver oxygen, photosensitizer, and chemotherapeutic drug. Simultaneously, in vitro results revealed that DOX release was stimulated by the acidic pH value with CS as a pH-responsive layer and rising temperature caused by the photothermal effect with an 808 nm laser, which could effectively reduce the nonspecific toxicity caused by premature drug release. Furthermore, due to the higher oxygen-carrying capability of perfluorocarbon, the decreased expression of the hypoxia-inducible factor-1α (HIF-1α) of tumors, as well as the significantly intense photodynamic effect and longer singlet (1O2) lifetime of the loaded photosensitizer, the elevated cytotoxicity was improved. More importantly, both in vitro and in vivo results showed that drug-loaded nanoparticles with oxygen-abundant properties achieved a similar anticancer therapy in both normoxic and hypoxic conditions against the difficulty led by deficient oxygen, as well as a good cellular internalization. Summarily, all these results pointed out that such a pH-/NIR-dual responsive drug carrier could enhance the synergetic anticancer therapy of chemotherapy and PDT by alleviation of tumor hypoxia, which provided a tempting controllable and multifunctional therapeutic application.
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