Molecularly imprinted solid-phase extraction combined with non-ionic hydrophobic deep eutectic solvents dispersed liquid-liquid microextraction for efficient enrichment and determination of the estrogens in serum samples

Pengqi Guo, Mingyang Xu, Fanru Zhong, Chenming Liu, Xia Cui,Jing Zhang, Min Zhao, Ziwei Yang, Liru Jia, Chuanming Yang,Weiming Xue,Daidi Fan

TALANTA(2024)

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摘要
Hormonal drugs in biological samples are usually in low concentration and highly intrusive. It is of great sig-nificance to enhance the sensitivity and specificity of the detection process of hormone drugs in biological samples by utilizing appropriate sample pretreatment methods for the detection of hormone drugs. In this study, a sample pretreatment method was developed to effectively enrich estrogens in serum samples by combining molecularly imprinted solid-phase extraction, which has high specificity, and non-ionic hydrophobic deep eutectic solvent-dispersive liquid-liquid microextraction, which has a high enrichment ability. The theoretical basis for the effective enrichment of estrogens by non-ionic hydrophobic deep eutectic solvent was also computed by simulation. The results showed that the combination of molecularly imprinted solid-phase extraction and deep eutectic solvent-dispersive liquid-liquid microextraction could improve the sensitivity of HPLC by 33 similar to 125 folds, and at the same time effectively reduce the interference. In addition, the non-ionic hydrophobic deep eutectic solvent has a relatively low solvation energy for estrogen and possesses a surface charge similar to that of es-trogen, and thus can effectively enrich estrogen. The study provides ideas and methods for the extraction and determination of low-concentration drugs in biological samples and also provides a theoretical basis for the application of non-ionic hydrophobic deep eutectic solvent extraction.
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关键词
Estrogens,Molecularly imprinted polymers,Solid phase extraction,Non-ionic hydrophobic deep eutectic solvent,Dispersive liquid-liquid microextraction,Simulations computing
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