Machine learning-enabled non-destructive paper chromogenic array detection of multiplexed viable pathogens on food.
Manyun YangXiaobo LiuYaguang LuoArne J PearlsteinShilong WangHayden DillowKevin ReedZhen JiaArnav SharmaBin ZhouDan PearlsteinHengyong YuBoce ZhangPublished in: Nature food (2021)
Fast and simultaneous identification of multiple viable pathogens on food is critical to public health. Here we report a pathogen identification system using a paper chromogenic array (PCA) enabled by machine learning. The PCA consists of a paper substrate impregnated with 23 chromogenic dyes and dye combinations, which undergo colour changes on exposure to volatile organic compounds emitted by pathogens of interest. These colour changes are digitized and used to train a multi-layer neural network (NN), endowing it with high-accuracy (91-95%) strain-specific pathogen identification and quantification capabilities. The trained PCA-NN system can distinguish between viable Escherichia coli, E. coli O157:H7 and other viable pathogens, and can simultaneously identify both E. coli O157:H7 and Listeria monocytogenes on fresh-cut romaine lettuce, which represents a realistic and complex environment. This approach has the potential to advance non-destructive pathogen detection and identification on food, without enrichment, culturing, incubation or other sample preparation steps.
Keyphrases
- escherichia coli
- machine learning
- public health
- gram negative
- bioinformatics analysis
- neural network
- human health
- listeria monocytogenes
- antimicrobial resistance
- high throughput
- high resolution
- multidrug resistant
- artificial intelligence
- loop mediated isothermal amplification
- big data
- real time pcr
- cystic fibrosis
- klebsiella pneumoniae
- climate change
- highly efficient