吲哚青绿
光动力疗法
光热治疗
人血清白蛋白
体内
荧光寿命成像显微镜
热疗
光敏剂
化学
纳米技术
生物医学工程
材料科学
荧光
医学
病理
光化学
内科学
光学
生物技术
有机化学
物理
生物
色谱法
作者
Zonghai Sheng,Dehong Hu,Mingbin Zheng,Pengfei Zhao,Huilong Liu,Duyang Gao,Ping Gong,Guanhui Gao,Pengfei Zhang,Yifan Ma,Lintao Cai
出处
期刊:ACS Nano
[American Chemical Society]
日期:2014-12-02
卷期号:8 (12): 12310-12322
被引量:672
摘要
Phototherapy, including photodynamic therapy (PDT) and photothermal therapy (PTT), is a light-activated local treatment modality that is under intensive preclinical and clinical investigations for cancer. To enhance the treatment efficiency of phototherapy and reduce the light-associated side effects, it is highly desirable to improve drug accumulation and precision guided phototherapy for efficient conversion of the absorbed light energy to reactive oxygen species (ROS) and local hyperthermia. In the present study, a programmed assembly strategy was developed for the preparation of human serum albumin (HSA)-indocyanine green (ICG) nanoparticles (HSA-ICG NPs) by intermolecular disulfide conjugations. This study indicated that HSA-ICG NPs had a high accumulation with tumor-to-normal tissue ratio of 36.12±5.12 at 24 h and a long-term retention with more than 7 days in 4T1 tumor-bearing mice, where the tumor and its margin, normal tissue were clearly identified via ICG-based in vivo near-infrared (NIR) fluorescence and photoacoustic dual-modal imaging and spectrum-resolved technology. Meanwhile, HSA-ICG NPs efficiently induced ROS and local hyperthermia simultaneously for synergetic PDT/PTT treatments under a single NIR laser irradiation. After an intravenous injection of HSA-ICG NPs followed by imaging-guided precision phototherapy (808 nm, 0.8 W/cm2 for 5 min), the tumor was completely suppressed, no tumor recurrence and treatments-induced toxicity were observed. The results suggest that HSA-ICG NPs generated by programmed assembly as smart theranostic nanoplatforms are highly potential for imaging-guided cancer phototherapy with PDT/PTT synergistic effects.
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