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Amphibian Tolerance to Arsenic: Microbiome-Mediated Insights

Isabella Ferreira Cordeiro,Camila Gracyelle de Carvalho Lemes,Angelica Bianchini Sanchez, Ana Karla da Silva, Camila Henriques de Paula, Rosilene Cristina de Matos, Dilson Fagundes Ribeiro, Jessica Pereira de Matos,Camila Carriao Machado Garcia,Marina Beirao,C. Guilherme Becker,Maria Rita Silverio Pires,Leandro Marcio Moreira

Scientific reports(2024)

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摘要
Amphibians are often recognized as bioindicators of healthy ecosystems. The persistence of amphibian populations in heavily contaminated environments provides an excellent opportunity to investigate rapid vertebrate adaptations to harmful contaminants. Using a combination of culture-based challenge assays and a skin permeability assay, we tested whether the skin-associated microbiota may confer adaptive tolerance to tropical amphibians in regions heavily contaminated with arsenic, thus supporting the adaptive microbiome principle and immune interactions of the amphibian mucus. At lower arsenic concentrations (1 and 5 mM As3+), we found a significantly higher number of bacterial isolates tolerant to arsenic from amphibians sampled at an arsenic contaminated region (TES) than from amphibians sampled at an arsenic free region (JN). Strikingly, none of the bacterial isolates from our arsenic free region tolerated high concentrations of arsenic. In our skin permeability experiment, where we tested whether a subset of arsenic-tolerant bacterial isolates could reduce skin permeability to arsenic, we found that isolates known to tolerate high concentrations of arsenic significantly reduced amphibian skin permeability to this metalloid. This pattern did not hold true for bacterial isolates with low arsenic tolerance. Our results describe a pattern of environmental selection of arsenic-tolerant skin bacteria capable of protecting amphibians from intoxication, which helps explain the persistence of amphibian populations in water bodies heavily contaminated with arsenic.
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