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Explainable Deep Learning-Assisted Photochromic Sensor for β-Lactam Antibiotic Identification

Xiaoqing Tan, Yongtao Tang, Tingting Yang, Guoliang Dai, Changqing Ye, Jianxin Meng, Fengyu Li

2023Analytical Chemistry14 citationsDOI

Abstract

Photochromic sensors have the advantages of diverse isomers for multi-analysis, providing more sensing information and possessing more recognition units and more sensitivity to external stimulations, but they present enormous complexity with various stimulations as well. Deep learning (DL) algorithms contribute a huge advantage at analyzing nonlinear and multidimensional data, but they suffer from nontransparent inner networks, "black-boxes". In this work, we employed the explainable DL approach to process and explicate photochromic sensing. Spirooxazine metallic complexes were adopted to prepare a multi-state analysis array for β-Lactams identification and quantitation. A dataset of 2520 unduplicated fluorescence intensity images was collected for convolutional neural network (CNN) operation. The method clearly discriminated six β-Lactams with 97.98% prediction accuracy and allowed rapid quantification with a concentration range from 1 to 100 mg/L. The photochromic sensing mechanism was verified via molecular simulation and class activation mapping, which explicated how the CNN model assesses the importance of photochromic sensor states and makes a discrimination decision. The explainable DL-assisted analysis method establishes an end-to-end strategy to ascertain and verify the complicated sensing mechanism for device optimization and even new scientific discovery.

Topics & Concepts

PhotochromismConvolutional neural networkChemistryIdentification (biology)Deep learningArtificial intelligenceArtificial neural networkPattern recognition (psychology)Computer scienceBiological systemPhotochemistryBiologyBotanyMachine Learning in Materials ScienceComputational Drug Discovery MethodsPhotochromic and Fluorescence Chemistry