Fluorescence ‘turn-on’ dual sensor for the selective detection of Al3+ and Zn2+ and the use of AI-based soft computing to predict machine learning outcomes

Abstract

A phenolphthalein-based fluorescence probe, N,N-(3-oxo-1,3-dihydroisobenzofuran-1,1-diyl)bis(6-hydroxy-3,1-phenylene)bis(3-methyl-1H-pyrazole-5-carbohydrazide) (PHP), was synthesized via a straightforward reaction. Intriguingly, the probe acts as a fluorescence ‘turn on’ dual chemosensor for Zn2+ and Al3+ with superb selectivity and sensitivity through selective “turn-on” fluorescence responses arising from a well-separated emission band based on its promising CHEF feature. The fluorescence intensities of the PHP–Al3+ and PHP–Zn2+ complexes at 441 and 472 nm increased in the presence of Al3+ and Zn2+, respectively, upon excitation at 370 nm. Job's plot revealed the binding stoichiometry of the probe (PHP) with both metal ions (Al3+ and Zn2+), which was determined to be 1 : 2 (PHP : Mn+) in each case. The LOD values for Al3+ and Zn2+ were found to be 0.28 μM and 62.9 nM, respectively. The PHP–Al3+ complex showed a selective fluorescence ‘turn off’ response towards fluoride ions (F) in solution, and this anion-responsive behaviour of the PHP–Al3+ complex was utilized to mimic numerous logic gates and FL functions. To avoid time-consuming, extensive experimental techniques, machine-learning soft computing tools, such as fuzzy logic, artificial neural networks (ANNs), and adaptive neuro-fuzzy inference systems (ANFIS), were used to predict the possible experimental emission intensities of the probe in the presence of Al3+ and F.

Graphical abstract: Fluorescence ‘turn-on’ dual sensor for the selective detection of Al3+ and Zn2+ and the use of AI-based soft computing to predict machine learning outcomes

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Article information

Article type
Paper
Submitted
27 Mar 2025
Accepted
23 Jul 2025
First published
24 Jul 2025

New J. Chem., 2025, Advance Article

Fluorescence ‘turn-on’ dual sensor for the selective detection of Al3+ and Zn2+ and the use of AI-based soft computing to predict machine learning outcomes

P. K. Giri, S. S. Samanta, M. Shyamal, S. Mandal, S. Barman and A. Misra, New J. Chem., 2025, Advance Article , DOI: 10.1039/D5NJ01374G

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