Polymer-based chemical-nose systems for optical-pattern recognition of gut microbiota

Gut-microbiota analysis has been recognized as crucial in health management and disease treatment. Metagenomics, a current standard examination method for the gut microbiome, is effective but requires both expertise and significant amounts of general resources. Here, we show highly accessible sensin...

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Veröffentlicht in:Chemical science (Cambridge) 2022-05, Vol.13 (2), p.583-5837
Hauptverfasser: Tomita, Shunsuke, Kusada, Hiroyuki, Kojima, Naoshi, Ishihara, Sayaka, Miyazaki, Koyomi, Tamaki, Hideyuki, Kurita, Ryoji
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Sprache:eng
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Zusammenfassung:Gut-microbiota analysis has been recognized as crucial in health management and disease treatment. Metagenomics, a current standard examination method for the gut microbiome, is effective but requires both expertise and significant amounts of general resources. Here, we show highly accessible sensing systems based on the so-called chemical-nose strategy to transduce the characteristics of microbiota into fluorescence patterns. The fluorescence patterns, generated by twelve block copolymers with aggregation-induced emission (AIE) units, were analyzed using pattern-recognition algorithms, which identified 16 intestinal bacterial strains in a way that correlates with their genome-based taxonomic classification. Importantly, the chemical noses classified artificial models of obesity-associated gut microbiota, and further succeeded in detecting sleep disorder in mice through comparative analysis of normal and abnormal mouse gut microbiota. Our techniques thus allow analyzing complex bacterial samples far more quickly, simply, and inexpensively than common metagenome-based methods, which offers a powerful and complementary tool for the practical analysis of the gut microbiome. A biomimetic 'chemical-nose' composed of twelve block copolymers with aggregation-induced emission units is presented, which can detect sleep disorder in mice from a small amount of microbiome samples (
ISSN:2041-6520
2041-6539
DOI:10.1039/d2sc00510g