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基于镧系元素大环的包埋主导吸附中性染料和完全光降解阳离子染料及抗精神病药物

Encapsulation-Led Adsorption of Neutral Dyes and Complete Photodegradation of Cationic Dyes and Antipsychotic Drugs by Lanthanide-Based Macrocycles.

机构信息

Department of Chemistry, University of Delhi, Delhi 110007, India.

出版信息

Inorg Chem. 2022 May 23;61(20):7682-7699. doi: 10.1021/acs.inorgchem.2c00688. Epub 2022 May 11.

Abstract

Molecular architectures offering large cavities can accommodate guest molecules, while their compositional engineering allows tunability of the band gap to support photocatalysis using visible light. In this work, two lanthanide (Ln)-based macrocycles, synthesized using a cobalt-based metalloligand and offering large rectangular cavities, exhibited selective adsorption of neutral dyes over both anionic and cationic dyes. Both Ln macrocycles illustrated complete photodegradation of cationic dyes using visible light without the use of any oxidant. Both Ln macrocycles exhibited complete photodegradation of not only cationic dyes but also a few phenothiazine-based antipsychotic drugs. Photocatalysis involved the generation of reactive oxygen species (ROS), which was corroborated with the band gap of two Ln macrocycles. These results were supported by radical scavenger studies and the quantitative estimation of superoxide and hydroxyl radicals. Complete photodegradation of both dyes and drugs was confirmed by spectral studies, while the generation of CO and N gases was established by gas chromatography. Importantly, Ln macrocycles were able to distinguish between the neutral dyes that were quantitatively adsorbed and the cationic dyes/drugs that were completely photodegraded.

摘要

分子架构提供了大的空腔,可以容纳客体分子,而其组成工程学允许带隙的可调谐性,以支持使用可见光的光催化。在这项工作中,两种基于镧系元素(Ln)的大环,使用基于钴的金属配合物合成,提供了大的矩形空腔,表现出对中性染料的选择性吸附,超过了阴离子和阳离子染料。两种 Ln 大环都使用可见光完全光降解了阳离子染料,而没有使用任何氧化剂。两种 Ln 大环不仅完全光降解了阳离子染料,而且还降解了几种吩噻嗪类抗精神病药物。光催化涉及活性氧物质(ROS)的生成,这与两个 Ln 大环的带隙相符。这些结果得到了自由基清除剂研究和超氧自由基和羟基自由基的定量估计的支持。光谱研究证实了两种染料和药物的完全光降解,而通过气相色谱确定了 CO 和 N 气体的生成。重要的是,Ln 大环能够区分被定量吸附的中性染料和被完全光降解的阳离子染料/药物。

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