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Artificial intelligence‐assisted point‐of‐care testing system for ultrafast and quantitative detection of drug‐resistant bacteria

Yang Ding, Jingjie Chen, Qiong Wu, Bin Fang, Wenhui Ji, Xin Li, Changmin Yu, Xuchun Wang, Xiamin Cheng, Haidong Yu, Zhangjun Hu, Kajsa Uvdal, Peng Li, Lin Li, Wei Huang

2023SmartMat34 citationsDOIOpen Access PDF

Abstract

Abstract As one of the major causes of antimicrobial resistance, β‐lactamase develops rapidly among bacteria. Detection of β‐lactamase in an efficient and low‐cost point‐of‐care testing (POCT) way is urgently needed. However, due to the volatile environmental factors, the quantitative measurement of current POCT is often inaccurate. Herein, we demonstrate an artificial intelligence (AI)‐assisted mobile health system that consists of a paper‐based β‐lactamase fluorogenic probe analytical device and a smartphone‐based AI cloud. An ultrafast broad‐spectrum fluorogenic probe ( B1 ) that could respond to β‐lactamase within 20 s was first synthesized, and the detection limit was determined to be 0.13 nmol/L. Meanwhile, a three‐dimensional microfluidic paper‐based analytical device was fabricated for integration of B1. Also, a smartphone‐based AI cloud was developed to correct errors automatically and output results intelligently. This smart system could calibrate the temperature and pH in the β‐lactamase level detection in complex samples and mice infected with various bacteria, which shows the problem‐solving ability in interdisciplinary research, and demonstrates potential clinical benefits.

Topics & Concepts

Point-of-care testingPoint of careComputer scienceNanotechnologyBiochemical engineeringBiological systemBiologyEngineeringMaterials scienceMedicinePathologyImmunologyBiosensors and Analytical DetectionAdvanced biosensing and bioanalysis techniquesSARS-CoV-2 detection and testing
Artificial intelligence‐assisted point‐of‐care testing system for ultrafast and quantitative detection of drug‐resistant bacteria | Litcius