Sub-30-Seconds ultrafast intelligent detection of glutathione using machine learning-guided handheld sensing platform based on mercury ion-mediated ratiometric fluorescence carbon dots

[Display omitted] •Mercury ion-mediated ratiometric fluorescence carbon dots can respond to Glutathione (GSH), allowing for on-site visual imaging.•A portable sensor employs machine learning algorithm for GSH detection.•Applet “Intelligent fluorescence analysis” serves as a real-time result-processi...

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Veröffentlicht in:Chemical engineering journal (Lausanne, Switzerland : 1996) Switzerland : 1996), 2024-06, Vol.490, p.151839, Article 151839
Hauptverfasser: Feng, Jianyang, Shi, Lihong, Chang, Dan, Dong, Chuan, Shuang, Shaomin
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Sprache:eng
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Zusammenfassung:[Display omitted] •Mercury ion-mediated ratiometric fluorescence carbon dots can respond to Glutathione (GSH), allowing for on-site visual imaging.•A portable sensor employs machine learning algorithm for GSH detection.•Applet “Intelligent fluorescence analysis” serves as a real-time result-processing terminal.•Ultrafast quantification of GSH is achieved in 30 s. Rapid, accurate, and in-field detection of glutathione (GSH) is indispensable for food safety, medical diagnosis, and environmental monitoring. However, most conventional approaches typically require the use of expensive laboratory-based techniques and trained personnel. Herein, combined with a machine learning algorithm, a portable handheld sensor based on mercury ion (Hg2+)-mediated ratiometric fluorescence carbon dots (D-CDs) is first constructed for ultrafast detection of GSH. The intelligent system utilizes a smartphone with a self-programming applet as a real-time result-processing terminal, which greatly improves the detection accuracy and efficiency. Interestingly, orange emission of D-CDs gradually decreases with increasing Hg2+ concentrations, while green emission shows an obvious enhancement, resulting in a distinct color shift from orange to green. Subsequent addition of GSH restores the fluorescence of D-CDs@Hg2+ accompanied by a noticeable color transition from green to orange. More importantly, the proposed method realizes on-site monitoring of GSH with the detection limit of 1.84 μM. The application of machine learning technology on automated handheld sensors shows its potential for sample-to-answer detection, providing a valuable and efficient tool for rapid on-site chemical analysis and intelligent point-of-care diagnosis.
ISSN:1385-8947
DOI:10.1016/j.cej.2024.151839