Mohammadreza Rajabi
Lund University
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Publication
Featured researches published by Mohammadreza Rajabi.
Environmental Modelling and Software | 2016
Mohammadreza Rajabi; Petter Pilesjö; Mohammad Reza Shirzadi; Reza Fadaei; Ali Mansourian
Cutaneous Leishmaniasis (CL) is an endemic vector-borne disease in the Middle East and a worldwide public health problem. The spread of CL is highly associated with the socio-ecological interactions of vectors, hosts and the environment. The heterogeneity of these interactions has hindered CL modeling for healthcare preventive measures in endemic areas. In this study, an agent-based model (ABM) is developed to simulate the dynamics of CL spread based on a Geographic Automata System (GAS). A Susceptible-Exposed-Infected-Recovered (SEIR) approach together with Bayesian modeling has been applied in the ABM to explore the spread of CL. The model is then adapted locally for Isfahan Province, an endemic area in central Iran. The results from the model indicate that desertification areas are the main origin of CL, and riverside population centers have the potential to host more sand fly exposures and should receive more preventive measures from healthcare authorities. The results also show that healthcare service accessibility prevented exposures from becoming infected and areas with new inhabitants experienced more infections from same amount of sand fly exposures. CL spread is modeled using an ABM in the most endemic area of Iran.A SEIR approach together with Bayesian modeling is applied in the ABM.Four common challenges of ABMs are addressed in this study.A GSUA is applied to investigate the uncertainty of the model.
Scandinavian Journal of Public Health | 2018
Mohammadreza Rajabi; Ali Mansourian; Petter Pilesjö; Daniel Oudin Åström; Klas Cederin; Kristina Sundquist
Aims: Cardiovascular disease (CVD) is one of the leading causes of mortality and morbidity worldwide, including in Sweden. The main aim of this study was to explore the temporal trends and spatial patterns of CVD in Sweden using spatial autocorrelation analyses. Methods: The CVD admission rates between 2000 and 2010 throughout Sweden were entered as the input disease data for the analytic processes performed for the Swedish capital, Stockholm, and also for the whole of Sweden. Age-adjusted admission rates were calculated using a direct standardisation approach for men and women, and temporal trends analysis were performed on the standardised rates. Global Moran’s I was used to explore the structure of patterns and Anselin’s local Moran’s I, together with Kulldorff’s scan statistic were applied to explore the geographical patterns of admission rates. Results: The rates followed a spatially clustered pattern in Sweden with differences occurring between sexes. Accordingly, hot spots were identified in northern Sweden, with higher intensity identified for men, together with clusters in central Sweden. Cold spots were identified in the adjacency of the three major Swedish cities of Stockholm, Gothenburg and Malmö. Conclusions: The findings of this study can serve as a basis for distribution of health-care resources, preventive measures and exploration of aetiological factors.
Zoonoses and Public Health | 2017
Mohammadreza Rajabi; Petter Pilesjö; Ahad Bazmani; Ali Mansourian
This study explores the application of spatial modelling techniques to generate susceptibility maps for a neglected zoonotic disease, visceral leishmaniasis (VL), in an endemic area in southern Caucasus that includes Iran, Armenia and Azerbaijan. The social and physical environment of southern Caucasus has been mainly characterized by the presence of several factors that are strongly associated with VL, which has caused a significant number of infections during the past decade. Three popular spatial modelling techniques, consisting of the weights of evidence, logistic regression and fuzzy logic methods, were evaluated and trained using a study area in north‐western Iran where an inventory of highly infected areas and high‐quality evidential factors was available. Model performance was assessed using the receiver‐operating characteristic (ROC) approach. According to the results of these assessments, the fuzzy logic method with γ = 0.5 was chosen for the prediction of VL incidence in southern Caucasus. The susceptibility map generated using the fuzzy logic method indicated that VL followed a spatial pattern at the conjunction of the three countries, which suggests that the prevalence of VL in southern Caucasus is socio‐ecologically dependent.
Geospatial Health | 2014
Mohammadreza Rajabi; Ali Mansourian; Petter Pilesjö; Ahad Bazmani
Geospatial Health | 2012
Mohammadreza Rajabi; Ali Mansourian; Ahad Bazmani
Journal of Environmental Studies and Sciences | 2011
Mohammadreza Rajabi; Ali Mansourian; Mohammad Taleai
geographic information science | 2014
Mohammadreza Rajabi; Ali Mansourian; Petter Pilesjö; Finn Hedefalk; Roger Groth; Ahad Bazmani
International Review on Computers and Software | 2011
Kambiz Borna; Mohammadreza Rajabi; Majid Hamrah; Ali Mansourian; Farzad Ebrahimi
Ecological Modelling | 2018
Mohammadreza Rajabi; Ali Mansourian; Petter Pilesjö; Mohammad Reza Shirzadi; Reza Fadaei; Javad Ramazanpour
Archive | 2017
Mohammadreza Rajabi