Machine Learning-Assistant Colorimetric Sensor Arrays for Intelligent and Rapid Diagnosis of Urinary Tract Infection.
Jianyu YangGe LiShi-Hong ChenXiaozhi SuDong XuYueming ZhaiYuhang LiuGuangxuan HuChun Xian GuoHong Bin YangLuigi G OcchipintiFang Xin HuPublished in: ACS sensors (2024)
Urinary tract infections (UTIs), which can lead to pyelonephritis, urosepsis, and even death, are among the most prevalent infectious diseases worldwide, with a notable increase in treatment costs due to the emergence of drug-resistant pathogens. Current diagnostic strategies for UTIs, such as urine culture and flow cytometry, require time-consuming protocols and expensive equipment. We present here a machine learning-assisted colorimetric sensor array based on recognition of ligand-functionalized Fe single-atom nanozymes (SANs) for the identification of microorganisms at the order, genus, and species levels. Colorimetric sensor arrays are built from the SAN Fe 1 -NC functionalized with four types of recognition ligands, generating unique microbial identification fingerprints. By integrating the colorimetric sensor arrays with a trained computational classification model, the platform can identify more than 10 microorganisms in UTI urine samples within 1 h. Diagnostic accuracy of up to 97% was achieved in 60 UTI clinical samples, holding great potential for translation into clinical practice applications.
Keyphrases
- urinary tract infection
- machine learning
- gold nanoparticles
- drug resistant
- hydrogen peroxide
- sensitive detection
- fluorescent probe
- aqueous solution
- flow cytometry
- infectious diseases
- living cells
- multidrug resistant
- clinical practice
- high density
- quantum dots
- artificial intelligence
- acinetobacter baumannii
- deep learning
- big data
- high throughput
- microbial community
- gram negative
- high resolution
- molecularly imprinted
- climate change
- pseudomonas aeruginosa
- loop mediated isothermal amplification
- molecular dynamics
- label free
- mass spectrometry