4.6 Article

Spatio-temporal modeling of human leptospirosis prevalence using the maximum entropy model

Journal

BMC PUBLIC HEALTH
Volume 23, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12889-023-17391-z

Keywords

Leptospirosis incidence; Spatial-temporal modeling; SaTScan; MaxEnt

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Leptospirosis, a zoonotic disease, poses a significant health issue in certain tropical areas of Iran with an estimated incidence rate of 2.33 cases per 10,000 individuals over the past decade. The study utilized SaTScan and MaxEnt modeling methods to identify spatiotemporal clusters and develop disease prevalence maps, highlighting the primary cluster in the western regions of Gilan province and showing potential disease spread to western and northwestern regions. The accuracy evaluation of the model yielded high AUC metrics of 0.956 and 0.952 for training and test data, emphasizing the robustness of the model.
Background Leptospirosis, a zoonotic disease, stands as one of the prevailing health issues in some tropical areas of Iran. Over a decade, its incidence rate has been estimated at approximately 2.33 cases per 10,000 individuals. Our research focused on analyzing the spatiotemporal clustering of Leptospirosis and developing a disease prevalence model as an essential focal point for public health policymakers, urging targeted interventions and strategies.Methods The SaTScan and Maximum Entropy (MaxEnt) modeling methods were used to find the spatiotemporal clusters of the Leptospirosis and model the disease prevalence in Iran. We incorporated nine environmental covariates by employing a spatial resolution of 1 km x 1 km, the finest resolution ever implemented for modeling Human Leptospirosis in Iran. These covariates encompassed the Digital Elevation Model (DEM), slope, displacement areas, water bodies, and land cover, monthly recorded Normalized Difference Vegetation Index (NDVI), monthly recorded precipitation, monthly recorded mean and maximum temperature, contributing significantly to our disease modeling approach. The analysis using MaxEnt yielded the Area Under the Receiver Operating Characteristic Curve (AUC) metrics for the training and test data, to evaluate the accuracy of the implemented model.Results The findings reveal a highly significant primary cluster (p-value < 0.05) located in the western regions of the Gilan province, spanning from July 2013 to July 2015 (p-value < 0.05). Moreover, there were four more clusters (p-value < 0.05) identified near Someh Sara, Neka, Gorgan and Rudbar. Furthermore, the risk mapping effectively illustrates the potential expansion of the disease into the western and northwestern regions. The AUC metrics of 0.956 and 0.952 for the training and test data, respectively, underscoring the robust accuracy of the implemented model. Interestingly, among the variables considered, the influence of slope and distance from water bodies appears to be minimal. However, altitude and precipitation stand out as the primary determinants that significantly contribute to the prevalence of the disease.Conclusions The risk map generated through this study carries significant potential to enhance public awareness and inform the formulation of impactful policies to combat Leptospirosis. These maps also play a crucial role in tracking disease incidents and strategically directing interventions toward the regions most susceptible.

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