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Original article Risk factors for Q fever incidence in South Korea: a comparative analysis using frequentist and Bayesian methods
Ji-hyun Son1orcid , Sung-dae Park2,3orcid
Epidemiol Health 2025;e2025046
DOI: https://doi.org/10.4178/epih.e2025046 [Accepted]
Published online: August 20, 2025
1FMD and Large Animal Health Control Division, Ministry of Agriculture, Food and Rural Affairs, South Korea, Sejong, Korea
2Planning and Finance Division, Ministry of Agriculture, Food and Rural Affairs, South Korea, Sejong, Korea
3Graduate School of Public Administration, Korea University, South Korea, Sejong, Korea
Corresponding author:  Sung-dae Park,
Email: dvm.sdpark@gmail.com
Received: 31 March 2025   • Revised: 31 July 2025   • Accepted: 10 August 2025
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OBJECTIVES
This study investigated the principal determinants of human Q fever incidence and explored regional variation between metropolitan cities and provinces in South Korea.
METHODS
Panel data on human Q fever incidence, livestock populations, and facility metrics were collected across 17 metropolitan cities and provinces from 2017 to 2024. Analytical approaches included frequentist models (ordinary least squares [OLS], random effects, fixed effects) and Bayesian models.
RESULTS
Frequentist panel analysis indicated that slaughterhouse count was positively associated with Q fever incidence in both pooled OLS (β=1.20, p<0.001) and random effects models (β=1.03, p<0.001), but not in the fixed effects model (β=0.14, p=0.65). After correcting for serial correlation using Driscoll–Kraay standard errors, livestock population (β=0.55, p<0.01), livestock market count (β=–2.01, p<0.05), and livestock Q fever cases (β=–0.11, p<0.01) were significantly associated with human incidence. A Bayesian fixed effects model confirmed a significant relationship between slaughterhouses and human Q fever incidence (posterior mean: 0.87, 95% credible interval [CrI], 0.21-1.42), providing more stable inference with limited samples and allowing probabilistic uncertainty estimation. A Bayesian hierarchical model revealed a stronger association in metropolitan cities (posterior mean, 1.46; 95% CrI, 0.34-2.57) than in provinces (1.22), while livestock population remained significant in provinces (0.94, 95% CrI, 0.15-1.74).
CONCLUSIONS
In South Korea, slaughterhouse density was the main determinant of Q fever in metropolitan areas and livestock density was the primary risk factor in provinces. These findings underscore the need for region-specific preventive strategies and reinforce the value of a One Health approach.


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