Sotomayor-Bonilla Jesús, Callejo-Canal Enrique Del, González-Salazar Constantino, Suzán Gerardo, Stephens Christopher R
Laboratorio de Ecología de Enfermedades y Una Salud, Departamento de Etología, Fauna Silvestre y Animales de Laboratorio, Facultad de Medicina Veterinaria y Zootecnia, Universidad Nacional Autónoma de México, Coyoacán, Ciudad de México 04510, Mexico.
Asociación Mexicana de Medicina de la Conservación Kalaan kab AC, Coyoacán, Ciudad de México 04510, Mexico.
Insects. 2021 Apr 29;12(5):398. doi: 10.3390/insects12050398.
Given the significant impact of mosquito-borne flaviviruses (MBFVs) on both human and animal health, predicting their dynamics and understanding their transmission cycle is of the utmost importance. Usually, predictions about the distribution of priority pathogens, such as Dengue, Yellow fever, West Nile Virus and St. Louis encephalitis, relate abiotic elements to simple biotic components, such as a single causal agent. Furthermore, focusing on single pathogens neglects the possibility of interactions and the existence of common elements in the transmission cycles of multiple pathogens. A necessary, but not sufficient, condition that a mosquito be a vector of a MBFV is that it co-occurs with hosts of the pathogen. We therefore use a recently developed modeling framework, based on co-occurrence data, to infer potential biotic interactions between those mosquito and mammal species which have previously been identified as vectors or confirmed positives of at least one of the considered MBFVs. We thus create models for predicting the relative importance of mosquito species as potential vectors for each pathogen, and also for all pathogens together, using the known vectors to validate the models. We infer that various mosquito species are likely to be significant vectors, even though they have not currently been identified as such, and are likely to harbor multiple pathogens, again validating the predictions with known results. Besides the above "niche-based" viewpoint we also consider an assemblage-based analysis, wherein we use a community-identification algorithm to identify those mosquito and/or mammal species that form assemblages by dint of their significant degree of co-occurrence. The most cohesive assemblage includes important primary vectors, such as , , , and mammals with abundant populations that are well-adapted to human environments, such as the white-tailed deer (), peccary (), opossum () and bats ( and ). Our results suggest that this assemblage has an important role in the transmission dynamics of this viral group viewed as a complex multi-pathogen-vector-host system. By including biotic risk factors our approach also modifies the geographical risk profiles of the spatial distribution of MBFVs in Mexico relative to a consideration of only abiotic niche variables.
鉴于蚊媒黄病毒(MBFV)对人类和动物健康均有重大影响,预测其动态并了解其传播周期至关重要。通常,关于登革热、黄热病、西尼罗河病毒和圣路易斯脑炎等重点病原体分布的预测,将非生物因素与简单的生物成分(如单一病原体)联系起来。此外,关注单一病原体忽略了相互作用的可能性以及多种病原体传播周期中共同元素的存在。蚊子成为MBFV传播媒介的一个必要但不充分条件是它与病原体宿主同时出现。因此,我们使用基于共存数据的最新开发的建模框架,来推断那些先前已被确定为至少一种所考虑的MBFV的传播媒介或确诊阳性的蚊子和哺乳动物物种之间潜在的生物相互作用。我们据此创建模型,以预测蚊子物种作为每种病原体以及所有病原体潜在传播媒介的相对重要性,并使用已知传播媒介来验证模型。我们推断,各种蚊子物种可能是重要的传播媒介,尽管目前尚未被确定为此类,并且可能携带多种病原体,同样用已知结果验证预测。除了上述“基于生态位”的观点外,我们还考虑基于群落的分析,即我们使用群落识别算法来识别那些因其显著的共存程度而形成群落的蚊子和/或哺乳动物物种。最具凝聚力的群落包括重要的主要传播媒介,如[具体物种1]、[具体物种2]、[具体物种3]、[具体物种4],以及种群数量丰富且适应人类环境的哺乳动物,如白尾鹿([具体学名1])、野猪([具体学名2])、负鼠([具体学名3])和蝙蝠([具体学名4]和[具体学名5])。我们的结果表明,该群落在此类病毒群体作为复杂的多病原体-传播媒介-宿主系统的传播动态中具有重要作用。通过纳入生物风险因素,我们的方法相对于仅考虑非生物生态位变量,也改变了墨西哥MBFV空间分布的地理风险概况。