| Literature DB >> 33912609 |
Olga I Zakharova1, Fedor I Korennoy1,2, Ivan V Iashin1, Nadezhda N Toropova1, Andrey E Gogin3, Denis V Kolbasov3, Galina V Surkova4, Svetlana M Malkhazova4, Andrei A Blokhin1.
Abstract
Leptospirosis is a re-emerging zoonotic infectious disease caused by pathogenic bacteria of the genus Leptospira. Regional differences in the disease manifestation and the role of ecological factors, specifically in regions with a subarctic and arctic climate, remain poorly understood. We here explored environmental and socio-economic features associated with leptospirosis cases in livestock animals in the Russian Arctic during 2000-2019. Spatial analysis suggested that the locations of the majority of 808 cases were in "boreal" or "polar" climate regions, with "cropland," "forest," "shrubland," or "settlements" land-cover type, with a predominance of "Polar Moist Cropland on Plain" ecosystem. The cases demonstrated seasonality, with peaks in March, June, and August, corresponding to the livestock pasturing practices. We applied the Forest-based Classification and Regression algorithm to explore the relationships between the cumulative leptospirosis incidence per unit area by municipal districts (G-rate) and a number of socio-economic, landscape, and climatic factors. The model demonstrated satisfactory performance in explaining the observed disease distribution (R 2 = 0.82, p < 0.01), with human population density, livestock units density, the proportion of crop area, and budgetary investments into agriculture per unit area being the most influential socio-economic variables. Climatic factors demonstrated a significantly weaker influence, with nearly similar contributions of mean yearly precipitation and air temperature and number of days with above-zero temperatures. Using a projected climate by 2100 according to the RCP8.5 scenario, we predict a climate-related rise of expected disease incidence across most of the study area, with an up to 4.4-fold increase in the G-rate. These results demonstrated the predominant influence of the population and agricultural production factors on the observed increase in leptospirosis cases in livestock animals in the Russian Arctic. These findings may contribute to improvement in the regional system of anti-leptospirosis measures and may be used for further studies of livestock leptospirosis epidemiology at a finer scale.Entities:
Keywords: ArcGIS; Arctic; G-rate; Russia; climate change; forest-based classification and regression algorithm; leptospirosis; livestock
Year: 2021 PMID: 33912609 PMCID: PMC8071861 DOI: 10.3389/fvets.2021.658675
Source DB: PubMed Journal: Front Vet Sci ISSN: 2297-1769
Figure 1Study area and cumulative leptospirosis G-rate in livestock (cases per 1,000 km2) for the period from 2000 to 2019.
Figure 2Yearly distribution of livestock leptospirosis cases for the period from 2000 to 2019.
Figure 3Distribution of the leptospirosis cases in relation to ecosystems.
Relative importance of variables based on random forest-based classification and regression analysis results.
| Population density | 24.3 | 21 |
| The proportion of crop area in the total area of the region | 15.71 | 14 |
| Livestock Unit Density index | 14.55 | 13 |
| Budgetary investments into the development of agriculture per unit area | 12.99 | 11 |
| Yearly precipitation for the period with the air temperature above 0°C | 5.04 | 4 |
| Mean yearly air temperature | 4.97 | 4 |
| Yearly precipitation | 4.52 | 4 |
| Mean yearly number of days with the air temperature above 0°C | 4.45 | 4 |
| Proportion of the rural population | 4.13 | 4 |
| Altitude | 4.08 | 4 |
| Mean yearly amplitude of daily air temperature | 4.04 | 4 |
| Proportion of swamps in the total area of the region | 4.01 | 4 |
| Soil PH | 3.89 | 3 |
| Proportion of water bodies in the total area of the region | 3.87 | 3 |
| Yearly precipitation for the period with the air temperature below 0°C | 2.7 | 2 |
Figure 4Observed vs. Predicted animal leptospirosis log G-rate as per the model fit to the training districts.
Figure 5Distribution of the predicted density of leptospirosis cases (G-rate) under the current climate conditions.
Figure 6Expected change in the density of leptospirosis cases under projected climate conditions in comparison with the current climate, based on modeled changes in climatic factors.