过硫酸盐
金属有机骨架
材料科学
多孔性
过氧化氢
纳米技术
化学工程
化学
有机化学
催化作用
复合材料
吸附
工程类
作者
Kaikai Ma,Yuk Ha Cheung,Haomiao Xie,Xingjie Wang,Michael Evangelopoulos,Kent O. Kirlikovali,Shengyi Su,Xiaoliang Wang,Chad A. Mirkin,John H. Xin,Omar K. Farha
标识
DOI:10.1021/acs.chemmater.2c03288
摘要
Countries around the world have sought efficient protective coverings, including masks, gowns, and fabrics, for air purification to protect people against infectious diseases. However, the demand for significant quantities of disposable protective textiles poses a global challenge, especially when the production of protective gear is suspended due to COVID-19 outbreaks in factories and along supply lines. Therefore, the development of reusable, self-decontaminating protective masks and coverings loaded with disinfectants, such as antibacterial peroxide species, presents an attractive strategy to fight against bacteria risks. In this work, we incorporated persulfate ions, which serve as stable active peroxide precursors, into two porous zirconium-based metal–organic frameworks (Zr-MOFs), enabling these materials to act as regenerable reservoirs for the slow release of biocidal hydrogen peroxide upon hydrolysis by contact with humid air. Single-crystal X-ray diffraction studies reveal the two different coordination motifs for the persulfate ions, which can either bridge between two adjacent nodes or coordinate to a single node depending on both the node connectivity and the distances between open metal sites. The active peroxide precursors within the porous Zr-MOF carriers are stable during storage and easily regenerated once consumed. Importantly, these persulfate-loaded Zr-MOFs can be integrated onto textiles using a facile aqueous in-situ growth procedure, and these composites demonstrate potent and reusable biocidal activity against both Gram-negative bacteria and Gram-positive bacteria. Overall, this approach presents a viable strategy to develop robust protective textiles capable of rapidly deactivating pathogens.
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