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利用机器学习揭示共分布蛙类家族中的多病原体感染动态。

Leveraging machine learning to uncover multi-pathogen infection dynamics across co-distributed frog families.

作者信息

Wiley Daniele L F, Omlor Kadie N, Torres López Ariadna S, Eberle Celina M, Savage Anna E, Atkinson Matthew S, Barrow Lisa N

机构信息

Museum of Southwestern Biology, Department of Biology, University of New Mexico, Albuquerque, New Mexico, United States.

Department of Biology, University of Central Florida, Orlando, Florida, United States.

出版信息

PeerJ. 2025 Jan 29;13:e18901. doi: 10.7717/peerj.18901. eCollection 2025.

Abstract

BACKGROUND

Amphibians are experiencing substantial declines attributed to emerging pathogens. Efforts to understand what drives patterns of pathogen prevalence and differential responses among species are challenging because numerous factors related to the host, pathogen, and their shared environment can influence infection dynamics. Furthermore, sampling across broad taxonomic and geographic scales to evaluate these factors poses logistical challenges, and interpreting the roles of multiple potentially correlated variables is difficult with traditional statistical approaches. In this study, we leverage frozen tissues stored in natural history collections and machine learning techniques to characterize infection dynamics of three generalist pathogens known to cause mortality in frogs.

METHODS

We selected 12 widespread and abundant focal taxa within three ecologically distinct, co-distributed host families (Bufonidae, Hylidae, and Ranidae) and sampled them across the eastern two-thirds of the United States of America. We screened and quantified infection loads quantitative PCR for three major pathogens: the fungal pathogen (Bd), double-stranded viruses in the lineage (Rv), and the alveolate parasite currently referred to as Amphibian Perkinsea (Pr). We then built balanced random forests (RF) models to predict infection status and intensity based on host taxonomy, age, sex, geography, and environmental variables and to assess relative variable importance across pathogens. Lastly, we used one-way analyses to determine directional relationships and significance of identified predictors.

RESULTS

We found approximately 20% of individuals were infected with at least one pathogen (231 single infections and 25 coinfections). The most prevalent pathogen across all taxonomic groups was Bd (16.9%; 95% CI [14.9-19%]), followed by Rv (4.38%; 95% CI [3.35-5.7%]) and Pr (1.06%; 95% CI [0.618-1.82%]). The highest prevalence and intensity were found in the family Ranidae, which represented 74.3% of all infections, including the majority of Rv infection points, and had significantly higher Bd intensities compared to Bufonidae and Hylidae. Host species and environmental variables related to temperature were key predictors identified in RF models, with differences in importance among pathogens and host families. For Bd and Rv, infected individuals were associated with higher latitudes and cooler, more stable temperatures, while Pr showed trends in the opposite direction. We found no significant differences between sexes, but juvenile frogs had higher Rv prevalence and Bd infection intensity compared to adults. Overall, our study highlights the use of machine learning techniques and a broad sampling strategy for identifying important factors related to infection in multi-host, multi-pathogen systems.

摘要

背景

两栖动物数量正在大幅减少,原因是新出现的病原体。由于与宿主、病原体及其共同环境相关的众多因素会影响感染动态,因此要弄清楚是什么驱动了病原体流行模式以及物种间的不同反应颇具挑战。此外,在广泛的分类学和地理尺度上进行采样以评估这些因素存在后勤方面的挑战,而且使用传统统计方法很难解释多个潜在相关变量的作用。在本研究中,我们利用保存在自然历史标本馆中的冷冻组织和机器学习技术来描述三种已知会导致青蛙死亡的泛化病原体的感染动态。

方法

我们在三个生态上不同但共同分布的宿主科(蟾蜍科、雨蛙科和蛙科)中选择了12种分布广泛且数量丰富的重点分类单元,并在美利坚合众国东部三分之二的地区对它们进行采样。我们通过定量PCR筛选并量化了三种主要病原体的感染负荷:真菌病原体(蛙壶菌,Bd)、蛙病毒属(Rv)中的双链病毒以及目前被称为两栖类帕金虫(Pr)的顶复门寄生虫。然后,我们建立了平衡随机森林(RF)模型,以根据宿主分类学、年龄、性别、地理位置和环境变量预测感染状态和强度,并评估各病原体间相对变量的重要性。最后,我们使用单因素分析来确定已识别预测因子的方向关系和显著性。

结果

我们发现约20%的个体感染了至少一种病原体(231例单一感染和25例混合感染)。在所有分类组中最普遍的病原体是蛙壶菌(16.9%;95%置信区间[14.9 - 19%]),其次是蛙病毒属(4.38%;95%置信区间[3.35 - 5.7%])和两栖类帕金虫(1.06%;95%置信区间[0.618 - 1.82%])。蛙科的患病率和感染强度最高,占所有感染的74.3%,包括大多数蛙病毒属感染点,并且与蟾蜍科和雨蛙科相比,蛙壶菌感染强度显著更高。宿主物种和与温度相关的环境变量是随机森林模型中确定的关键预测因子,病原体和宿主科之间的重要性存在差异。对于蛙壶菌和蛙病毒属,受感染个体与较高纬度以及更凉爽、更稳定的温度相关,而两栖类帕金虫则呈现相反趋势。我们发现两性之间没有显著差异,但幼蛙的蛙病毒属患病率和蛙壶菌感染强度高于成蛙。总体而言,我们的研究强调了使用机器学习技术和广泛采样策略来识别多宿主、多病原体系统中与感染相关的重要因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e743/11786709/6c07f030c7fd/peerj-13-18901-g001.jpg

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