Nanoextraction from a flow of a highly diluted solution for much-improved sensitivity in offline chemical detection and quantification
Hongyan Wu, Quynh Nhu Le, Binglin Zeng, Xuehua Zhang

TL;DR
This paper introduces a nanoextraction method using surface nanodroplets in microcapillaries, significantly enhancing detection sensitivity for highly diluted solutions in chemical analysis.
Contribution
The work presents a novel nanoextraction technique that improves detection limits and sensitivity over traditional methods like DLLME for analyzing trace compounds in complex samples.
Findings
LOD decreased by ~10^3 for FTIR detection
LOD decreased by ~10^5 for fluorescence detection
Effective in complex aqueous samples like river water
Abstract
Preconcentration of the target compound is a critical step that ensures the accuracy of the subsequent chemical analysis. In this work, we present a straightforward yet effective liquid-liquid extraction approach based on surface nanodroplets (i.e., nanoextraction) for offline analysis of highly diluted sample solutions. The extraction and sample collection were streamlined in a 3-m microcapillary tube. The concentration of the target analyte in surface nanodroplets was significantly increased compared to the concentration in the sample solution, reaching several orders of magnitudes. A limit of detection (LOD) was decreased by a factor of for an organic model compound in Fourier-transform infrared spectroscopy (FTIR) measurements and for a model fluorescent dye in fluorescence detection. The quantitative analysis of the organic compound was also achieved in a…
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Taxonomy
TopicsAnalytical chemistry methods development · Biosensors and Analytical Detection · Analytical Chemistry and Sensors
