材料科学
阿霉素
盐酸阿霉素
脚手架
再生(生物学)
组织工程
体内
生物医学工程
外科
化疗
医学
细胞生物学
生物
生物技术
作者
Chong Wang,Xinyu Ye,Yitao Zhao,Lu Bai,Zhi‐Zhu He,Qing Tong,Xiaoqiong Xie,Huangrong Zhu,Daozhang Cai,Yun Zhou,Bingheng Lu,Yen Wei,Lin Mei,Denghui Xie,Min Wang
出处
期刊:Biofabrication
[IOP Publishing]
日期:2020-01-17
卷期号:12 (3): 035004-035004
被引量:83
标识
DOI:10.1088/1758-5090/ab6d35
摘要
Tumor resection is widely used to prevent tumor growth. However, the defected tissue at the original tumor site also causes tissue or organ dysfunction which lowers the patient's life quality. Therefore, regenerating the tissue and preventing tumor recurrence are highly important. Herein, according to the concept of 'first kill and then regenerate', a versatile scaffold-based tissue engineering strategy based on cryogenic 3D printing of water-in-oil polyester emulsion inks, containing multiple functional agents, was developed, in order to realize the elimination of tumor cells with recurrence suppression and improved tissue regeneration sequentially. To illustrate our strategy, water/poly(lactic-co-glycolic acid)/dichloromethane emulsions containing β-tricalcium phosphate (β-TCP), 2D black phosphorus (BP) nanosheets, low-dose doxorubicin hydrochloride (DOX) and high-dose osteogenic peptide were cryogenically 3D printed into hierarchically porous and mechanically strong nanocomposite scaffolds, with multiple functions to treat bone tumor, resection-induced tissue defects. Prompt tumor ablation and long-term suppression of tumor recurrence could be achieved due to the synergistic effects of photothermotherapy and chemotherapy, and improved bone regeneration was obtained eventually due to the presence of bony environment and sustained peptide release. Notably, BP nanosheets in scaffolds significantly reduced the long-term toxicity phenomenon of released DOX during in vivo bone regeneration. Our study also provides insights for the design of multi-functional tissue engineering scaffolds for treating other tumor resection-induced tissue defects.
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