4.3 Review

Supramotecular solvent-based microextraction techniques for sampling and preconcentration of heavy metals: A review

期刊

REVIEWS IN ANALYTICAL CHEMISTRY
卷 40, 期 1, 页码 93-107

出版社

WALTER DE GRUYTER GMBH
DOI: 10.1515/revac-2021-0130

关键词

heavy metals; supramolecular solvent; microextraction techniques; review

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SSME is a green analytical strategy for the determination of low concentrations of heavy metals in various matrices, featuring high enrichment factor, short extraction time, and rapid analysis. It is cost-effective, ecofriendly, and has good sensitivity and selectivity.
Even very low concentrations of heavy metal pollutants have adverse effects on the environment and on human health. Thus, determining even trace concentrations of heavy metals in various samples has attracted a lot of attention. The conventional analytical methods used for the sampling and analysis of heavy metals have some limitations, including the effects of the matrix and their high detection limits. Thus, various methods are used for the pretreatment and concentration of the target analytes, and these methods are time-consuming, expensive, and require the use of toxic solvents. In recent years, supramolecular solvent-based microextraction (SSME), a green analytical strategy, has been used to determine low concentrations of heavy metals in various matrices. This method has unique features such as high enrichment factor, short extraction time, and rapid analysis. In addition, it is cost effective because it consumes less chemical reagents than other methods. Also, it is ecofriendly, and it has good sensitivity and selectivity. Herein, we presented a comprehensive review of the application of the SSME technique for the analysis of heavy metals in water, food, and biological samples. Also, we have provided the distinctive properties of the SSME technique, discussed the challenges that lie ahead, and addressed the potential future trend.

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