Alexander S Romer, Matthew Grisnik, Jason W Dallas, William Sutton, Christopher M Murray, Rebecca H Hardman, Tom Blanchard, Ryan J Hanscom, Rulon W Clark, Cody Godwin, N Reed Alexander, Kylie C Moe, Vincent A Cobb, Jesse Eaker, Rob Colvin, Dustin Thames, Chris Ogle, Josh Campbell, Carlin Frost, Rachel L Brubaker, Shawn D Snyder, Alexander J Rurik, Chloe E Cummins, David W Ludwig, Joshua L Phillips, Donald M Walker
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The neural network was far more accurate (99.8% positive predictive value [PPV]) in predicting disease state than other analytic techniques (36.4% PPV). The genus Pseudomonas was characteristic of disease-negative microbiomes, whereas, positive snakes were characterized by the pathobionts Chryseobacterium, Paracoccus, and Sphingobacterium. Geographic regions suitable for O. ophidiicola had high pathogen loads (>0.66 maximum sensitivity + specificity). 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引用次数: 0
摘要
人们日益认识到,新出现的传染病是对全球生物多样性保护的重大威胁。阐明病原体与宿主微生物组之间的关系,可以找到减轻疾病影响的新方法。病原体可以通过诱导菌群失调来改变宿主微生物组,菌群失调是一种生态状态,其特点是细菌α多样性减少、致病菌增加或β多样性改变。我们利用蛇真菌病(SFD;ophidiomycosis)系统研究了一种新出现的病原体如何通过两种实验规模诱导菌群失调。我们使用定量聚合酶链式反应、细菌扩增片段测序和深度学习神经网络来描述自由活动的蛇在广泛的系统发育和空间范围内的皮肤微生物组。栖息地适宜性模型被用来寻找与地貌中真菌存在相关的变量。我们还对北方水蛇进行了实验室研究,以考察接种蚜蝇疫霉后皮肤微生物组的时间变化。在两种尺度上都发现了菌群失调的特征模式,α的非线性变化和β多样性的改变也是如此,尽管结构水平和分散变化在野外和实验室环境中有所不同。神经网络预测疾病状态的准确性(99.8% 的阳性预测值 [PPV])远高于其他分析技术(36.4% 的 PPV)。假单胞菌属是疾病阴性微生物组的特征,而阳性蛇的特征则是病原菌奇异变形杆菌、副球菌和鞘氨醇杆菌。适合 O. ophidiicola 的地理区域具有较高的病原体负荷(最大灵敏度+特异性>0.66)。我们发现,病原体引起的微生物群失调具有可预测的趋势,疾病状态可通过神经网络分析进行分类,栖息地适宜性模型可预测SFD病原体的栖息地。
Effects of snake fungal disease (ophidiomycosis) on the skin microbiome across two major experimental scales.
Emerging infectious diseases are increasingly recognized as a significant threat to global biodiversity conservation. Elucidating the relationship between pathogens and the host microbiome could lead to novel approaches for mitigating disease impacts. Pathogens can alter the host microbiome by inducing dysbiosis, an ecological state characterized by a reduction in bacterial alpha diversity, an increase in pathobionts, or a shift in beta diversity. We used the snake fungal disease (SFD; ophidiomycosis), system to examine how an emerging pathogen may induce dysbiosis across two experimental scales. We used quantitative polymerase chain reaction, bacterial amplicon sequencing, and a deep learning neural network to characterize the skin microbiome of free-ranging snakes across a broad phylogenetic and spatial extent. Habitat suitability models were used to find variables associated with fungal presence on the landscape. We also conducted a laboratory study of northern watersnakes to examine temporal changes in the skin microbiome following inoculation with Ophidiomyces ophidiicola. Patterns characteristic of dysbiosis were found at both scales, as were nonlinear changes in alpha and alterations in beta diversity, although structural-level and dispersion changes differed between field and laboratory contexts. The neural network was far more accurate (99.8% positive predictive value [PPV]) in predicting disease state than other analytic techniques (36.4% PPV). The genus Pseudomonas was characteristic of disease-negative microbiomes, whereas, positive snakes were characterized by the pathobionts Chryseobacterium, Paracoccus, and Sphingobacterium. Geographic regions suitable for O. ophidiicola had high pathogen loads (>0.66 maximum sensitivity + specificity). We found that pathogen-induced dysbiosis of the microbiome followed predictable trends, that disease state could be classified with neural network analyses, and that habitat suitability models predicted habitat for the SFD pathogen.
期刊介绍:
Conservation Biology welcomes submissions that address the science and practice of conserving Earth's biological diversity. We encourage submissions that emphasize issues germane to any of Earth''s ecosystems or geographic regions and that apply diverse approaches to analyses and problem solving. Nevertheless, manuscripts with relevance to conservation that transcend the particular ecosystem, species, or situation described will be prioritized for publication.