| Literature DB >> 35685788 |
Shunsuke Tomita1,2, Hiroyuki Kusada3, Naoshi Kojima1, Sayaka Ishihara1, Koyomi Miyazaki4, Hideyuki Tamaki3,5, Ryoji Kurita1,2,6.
Abstract
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. This journal is © The Royal Society of Chemistry.Entities:
Year: 2022 PMID: 35685788 PMCID: PMC9132137 DOI: 10.1039/d2sc00510g
Source DB: PubMed Journal: Chem Sci ISSN: 2041-6520 Impact factor: 9.969
Fig. 1Workflow and synthetic library for the optical-pattern recognition of gut microbiota. (A) The collected samples of mouse gut microbiota are analyzed using a chemical nose composed of aggregation-responsive polymers to generate fluorescence-response patterns that reflect the characteristics of the entire gut microbiota, which are then statistically analyzed using pattern-recognition algorithms. (B) The molecular structures of PEG-b-PLL block copolymers modified with TPE fluorophores and various functional groups. The log P values of the head groups are shown in parentheses.
Gut-derived bacterial strains used for initial testing
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Fig. 2Characterization of representative polymers. (A) Fluorescence spectra of -None (150 nM) upon addition of F.A. (OD600 = 0–0.05) in 20 mM MOPS buffer (pH = 7.0); λex = 330 nm. Inset: fluorescence image of F.A. treated with -None. (B) Binding isotherms for -None and -Nle (150 nM) upon addition of F.A. and P.E.1 in 20 mM MOPS (pH = 7.0) or 20 mM acetate buffer (pH = 5.0) with 150 mM NaCl; λex/λem = 330 nm/460 nm. The values shown represent mean values ±1 SE from three independent experiments.
Fig. 3Optical pattern recognition of gut-derived bacteria. (A) Heat map and the resulting HCA dendrogram of the fluorescence-response patterns of the 16 different intestinal bacterial strains (OD600 = 0.04). For each analyte, 11 independent experimental values are shown. Each pattern in the heat map corresponds to the end of the dendrogram. (B, C) LDA score plot for the intestinal bacterial strains (OD600 = 0.04), wherein the analytes are labelled according to (B) species and (C) phylum. The ellipsoids represent the confidence intervals (±1 SD) for each analyte.
Fig. 4Optical pattern recognition of model bacterial mixtures corresponding to the microbiota of obese and healthy individuals. (A) Relative abundance of intestinal bacterial strains in samples with different Firmicutes/Bacteroidetes (F/B) ratios. (B) LDA score plot for the intestinal bacterial mixtures. For each analyte, 10 independent experimental values are shown. Ellipsoids represent the confidence intervals (±1 SD) for each analyte.
Fig. 5Optical pattern recognition of mouse gut microbiota. (A) Mouse feces collection procedure. After 10 days of habituation in a normal cage, the mice in the insomnia group were transferred to the sleep-disturbance cage on day 0; feces were collected from the insomnia and control group after 28 days. (B) Representative double-plot actograms for the control mice and those subjected to sleep disturbance. The black regions represent periods during which the mouse was rotating the wheel. The light/dark cycles are shown as white and black bars, respectively, above the actograms. (C) LDA score plot for the feces from individual mice (20 μg mL−1) and (D) PCA score plot of the fluorescence response patterns for the feces from the healthy and insomniac mice (20 μg mL−1). The ellipsoids represent the confidence intervals (±1 SD) for each analyte. For each analyte, 11 independent experimental values are shown. (E) Histogram of the LDA scores for mouse gut microbiota; the red and blue curves are normal distributions fitted to the full data.