The Identification of Oral Cariogenic Bacteria through Colorimetric Sensor Array Based on Single‐Atom Nanozymes

Author:

Zhang Yuan12,Khan Muhammad Arif3,Yu Zhangli2,Yang Wenjie4,Zhao Hongbin3,Ye Daixin3ORCID,Chen Xi4,Zhang Juan2

Affiliation:

1. School of Environmental and Chemical Engineering Shanghai University Shanghai 200444 P. R. China

2. Center for Molecular Recognition and Biosensing, Joint International Research Laboratory of Biomaterials and Biotechnology in Organ Repair, Ministry of Education, Shanghai Engineering Research Center of Organ Repair, School of Life Sciences Shanghai University Shanghai 200444 P. R. China

3. College of Sciences &Institute for Sustainable Energy Shanghai University Shanghai 200444 P. R. China

4. Department of Preventive Dentistry Shanghai Ninth People's Hospital Shanghai Jiao Tong University School of Medicine College of Stomatology Shanghai Jiao Tong University National Center for Stomatology National Clinical Research Center for Oral Diseases Shanghai Key Laboratory of Stomatology Shanghai Research Institute of Stomatology Shanghai 200444 P. R. China

Abstract

AbstractEffective identification of multiple cariogenic bacteria in saliva samples is important for oral disease prevention and treatment. Here, a simple colorimetric sensor array is developed for the identification of cariogenic bacteria using single‐atom nanozymes (SANs) assisted by machine learning. Interestingly, cariogenic bacteria can increase oxidase‐like activity of iron (Fe)─nitrogen (N)─carbon (C) SANs by accelerating electron transfer, and inversely reduce the activity of Fe─N─C further reconstruction with urea. Through machine‐learning‐assisted sensor array, colorimetric responses are developed as “fingerprints” of cariogenic bacteria. Multiple cariogenic bacteria can be well distinguished by linear discriminant analysis and bacteria at different genera can also be distinguished by hierarchical cluster analysis. Furthermore, colorimetric sensor array has demonstrated excellent performance for the identification of mixed cariogenic bacteria in artificial saliva samples. In view of convenience, precise, and high‐throughput discrimination, the developed colorimetric sensor array based on SANs assisted by machine learning, has great potential for the identification of oral cariogenic bacteria so as to serve for oral disease prevention and treatment.

Funder

National Natural Science Foundation of China

Publisher

Wiley

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