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Research Article

The prevalence of rodent-borne zoonotic pathogens in the South Gobi desert region of Mongolia

, , , , , , , , , & ORCID Icon show all
Article: 2270258 | Received 02 Sep 2022, Accepted 09 Oct 2023, Published online: 19 Oct 2023
 

ABSTRACT

The alpine ecosystems and communities of central Asia are currently undergoing large-scale ecological and socio-ecological changes likely to affect wildlife-livestock-human disease interactions and zoonosis transmission risk. However, relatively little is known about the prevalence of pathogens in this region. Between 2012 and 2015 we screened 142 rodents in Mongolia’s Gobi desert for exposure to important zoonotic and livestock pathogens. Rodent seroprevalence to Leptospira spp. was >1/3 of tested animals, Toxoplasma gondii and Coxiella burnetii approximately 1/8 animals, and the hantaviruses being between 1/20 (Puumala-like hantavirus) and <1/100 (Seoul-like hantavirus). Gerbils trapped inside local dwellings were one of the species seropositive to Puumala-like hantavirus, suggesting a potential zoonotic transmission pathway. Seventeen genera of zoonotic bacteria were also detected in the faeces and ticks collected from these rodents, with one tick testing positive to Yersinia. Our study helps provide baseline patterns of disease prevalence needed to infer potential transmission between source and target populations in this region, and to help shift the focus of epidemiological research towards understanding disease transmission among species and proactive disease mitigation strategies within a broader One Health framework.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Data availability statement

Data from the study are attached in the supplementary material.

Supplementary material

Supplemental data for this article can be accessed online at https://doi.org/10.1080/20008686.2023.2270258

Additional information

Funding

LFS is supported by an ARC Future Fellowship, FT190100462. ML is supported by the Swedish Research Council (VR 2017-03963).