Search results for "disease mapping"

showing 10 items of 12 documents

Spatio-Temporal Spread Pattern of COVID-19 in Italy

2021

This paper investigates the spatio-temporal spread pattern of COVID-19 in Italy, during the first wave of infections, from February to October 2020. Disease mappings of the virus infections by using the Besag–York–Mollié model and some spatio-temporal extensions are provided. This modeling framework, which includes a temporal component, allows the studying of the time evolution of the spread pattern among the 107 Italian provinces. The focus is on the effect of citizens’ mobility patterns, represented here by the three distinct phases of the Italian virus first wave, identified by the Italian government, also characterized by the lockdown period. Results show the effectiveness of the lockdo…

2019-20 coronavirus outbreakCoronavirus disease 2019 (COVID-19)General MathematicsSevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)disease mappingCOVID-19Besag–York–Mollié modelGeographyspatio-temporal modelsComputer Science (miscellaneous)QA1-939Besag–York–Mollié model; COVID-19; disease mapping; spatio-temporal modelsBesag-York-Mollié modelSettore SECS-S/01 - StatisticaEngineering (miscellaneous)CartographyMathematicsMathematics
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Mapping child maltreatment risk: a 12-year spatio-temporal analysis of neighborhood influences.

2017

Abstract Background ‘Place’ matters in understanding prevalence variations and inequalities in child maltreatment risk. However, most studies examining ecological variations in child maltreatment risk fail to take into account the implications of the spatial and temporal dimensions of neighborhoods. In this study, we conduct a high-resolution small-area study to analyze the influence of neighborhood characteristics on the spatio-temporal epidemiology of child maltreatment risk. Methods We conducted a 12-year (2004–2015) small-area Bayesian spatio-temporal epidemiological study with all families with child maltreatment protection measures in the city of Valencia, Spain. As neighborhood units…

Area-specific risk estimationTime FactorsGeneral Computer ScienceHealth geographyPoison controlNeighborhood influenceslcsh:Computer applications to medicine. Medical informaticsSuicide preventionOccupational safety and health03 medical and health sciences0302 clinical medicineSpatio-Temporal AnalysisResidence CharacteristicsRisk FactorsEnvironmental healthInjury preventionHumans0501 psychology and cognitive sciences030212 general & internal medicineChild AbuseChildSocioeconomic statusChild maltreatmentResearch05 social sciencesPublic Health Environmental and Occupational HealthAbsolute risk reductionHuman factors and ergonomicsSmall-area studyGeneral Business Management and AccountingSocial ClassSocioeconomic FactorsSpainlcsh:R858-859.7Disease mappingSpatial inequalityBayesian spatio-temporal modelingPsychology050104 developmental & child psychologyInternational journal of health geographics
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Spatio-temporal analysis of the Covid-19 spread in Italy by Bayesian hierarchical models

2021

In this paper, we investigate the spatio-temporal spread pattern of the virus Covid-19 in Italy, during the first wave of infections, from February to October 2020. We provide a disease mapping of the virus infections, by using the Besag-Yorke-Molliè model and its spatio-temporal extensions. Our results confirm the effectiveness of the lockdown action, and show that, during the first wave, the virus spread by an inhomogeneous spatial trend and each province was characterised by a specific temporal trend, independent of the temporal evolution of the observed cases in the other provinces

Disease MappingItalian Covid-19Besag-York-Mollie modelSettore SECS-S/01 - StatisticaSpatio-temporal model
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Bayesian Analysis of Population Health Data

2021

The analysis of population-wide datasets can provide insight on the health status of large populations so that public health officials can make data-driven decisions. The analysis of such datasets often requires highly parameterized models with different types of fixed and random effects to account for risk factors, spatial and temporal variations, multilevel effects and other sources on uncertainty. To illustrate the potential of Bayesian hierarchical models, a dataset of about 500,000 inhabitants released by the Polish National Health Fund containing information about ischemic stroke incidence for a 2-year period is analyzed using different types of models. Spatial logistic regression and…

FOS: Computer and information sciencesmedicine.medical_specialtyComputer scienceGeneral MathematicsBayesian probabilitydisease mappingPopulation healthbayesian inference; disease mapping; integrated nested Laplace approximation; spatial models; survival modelsBayesian inferenceLogistic regressionStatistics - Applications01 natural sciences010104 statistics & probability03 medical and health sciences0302 clinical medicineStatisticsComputer Science (miscellaneous)medicineApplications (stat.AP)spatial models0101 mathematicsEngineering (miscellaneous)Socioeconomic statusbayesian inferencesurvival modelslcsh:MathematicsPublic healthintegrated nested Laplace approximationlcsh:QA1-939Random effects modelSpatial variability030217 neurology & neurosurgeryMathematics
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Relative risk estimation of dengue disease at small spatial scale

2017

Abstract Background Dengue is a high incidence arboviral disease in tropical countries around the world. Colombia is an endemic country due to the favourable environmental conditions for vector survival and spread. Dengue surveillance in Colombia is based in passive notification of cases, supporting monitoring, prediction, risk factor identification and intervention measures. Even though the surveillance network works adequately, disease mapping techniques currently developed and employed for many health problems are not widely applied. We select the Colombian city of Bucaramanga to apply Bayesian areal disease mapping models, testing the challenges and difficulties of the approach. Methods…

General Computer ScienceOperations research030231 tropical medicinePopulationGeographic MappingColombialcsh:Computer applications to medicine. Medical informaticsNormalized Difference Vegetation IndexDengue feverDengue03 medical and health sciencessymbols.namesake0302 clinical medicineCohen's kappaRisk FactorsStatisticsmedicineHumans030212 general & internal medicineSatellite imagesRisk factoreducationEstimationeducation.field_of_studyResearchPublic Health Environmental and Occupational HealthCohen’s KappaMarkov chain Monte CarloBayes Theoremmedicine.diseaseGeneral Business Management and AccountingBayesian modelingGeographyData qualitysymbolsDisease mappinglcsh:R858-859.7International Journal of Health Geographics
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Spatio-Temporal Analysis of Suicide-Related Emergency Calls

2017

Considerable effort has been devoted to incorporate temporal trends in disease mapping. In this line, this work describes the importance of including the effect of the seasonality in a particular setting related with suicides. In particular, the number of suicide-related emergency calls is modeled by means of an autoregressive approach to spatio-temporal disease mapping that allows for incorporating the possible interaction between both temporal and spatial effects. Results show the importance of including seasonality effect, as there are differences between the number of suicide-related emergency calls between the four seasons of each year.

Injury controlAccident preventionComputer scienceHealth Toxicology and Mutagenesisdisease mappingPoison controllcsh:Medicinebayesian modelingBayesian inference01 natural sciencesSuicide preventionArticle010104 statistics & probability03 medical and health sciences0302 clinical medicineSpatio-Temporal AnalysismedicineHumans030212 general & internal medicine0101 mathematicspolice calls-for-serviceseasonalitySpatio-Temporal Analysislcsh:RPublic Health Environmental and Occupational HealthEmergency Medical Dispatchmedicine.diseasesocial epidemiologybayesian modeling; disease mapping; police calls-for-service; seasonality; social epidemiologySuicideAutoregressive modelMedical emergencySeasonsCartographyInternational Journal of Environmental Research and Public Health
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Geographical Variability in Mortality in Urban Areas: A Joint Analysis of 16 Causes of Death.

2021

The authors acknowledge the support of the research grants PI16/00670, PI16/00755, PI16/01004, PI16/01187, PI16/01273, PI16/01281, and PI18/01313 of Instituto de Salud Carlos III, co-funded with FEDER grants.

MaleRiskHealth Toxicology and Mutagenesisurban areasJoint analysis01 natural sciencesArticle010104 statistics & probability03 medical and health sciences0302 clinical medicineCause of Deathgeographical inequalitiesHumans030212 general & internal medicine0101 mathematicsCitiesMortalitySocioeconomicsmultivariate disease mappingGeographyPublic Health Environmental and Occupational HealthRmortalityGeographySocioeconomic FactorsMedicineEnfermeríaFemaleGeographical inequalities
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On the use of adaptive spatial weight matrices from disease mapping multivariate analyses

2020

Conditional autoregressive distributions are commonly used to model spatial dependence between nearby geographic units in disease mapping studies. These distributions induce spatial dependence by means of a spatial weights matrix that quantifies the strength of dependence between any two neighboring spatial units. The most common procedure for defining that spatial weights matrix is using an adjacency criterion. In that case, all pairs of spatial units with adjacent borders are given the same weight (typically 1) and the remaining non-adjacent units are assigned a weight of 0. However, assuming all spatial neighbors in a model to be equally influential could be possibly a too rigid or inapp…

Multivariate statisticsEnvironmental EngineeringMultivariate analysisSpatial weights matrixInferenceProcessos estocàsticsContext (language use)Adaptive conditional autoregressive distributionsEstadísticaGaussian Markov random fieldsMatrix (mathematics)StatisticsMalaltiesEnvironmental ChemistryAdjacency listSpatial dependenceMultivariate disease mappingSafety Risk Reliability and QualityRandom variableGeneral Environmental ScienceWater Science and TechnologyMathematics
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Spatio-Temporal Modeling of Zika and Dengue Infections within Colombia

2018

The aim of this study is to estimate the parallel relative risk of Zika virus disease (ZVD) and dengue using spatio-temporal interaction effects models for one department and one city of Colombia during the 2015&ndash

RiskZika virus diseasemedicine.medical_specialtyHealth Toxicology and Mutagenesis030231 tropical medicinedisease mappinglcsh:MedicineColombiaBayesian inferenceArticleDisease OutbreaksDengue feverDengue03 medical and health sciencesSpatio-Temporal Analysis0302 clinical medicineStatisticsEpidemiologymedicineHumans030212 general & internal medicineCitiesEstimationModels StatisticalZika Virus InfectionPublic healthlcsh:RPublic Health Environmental and Occupational Healthintegrated nested Laplace approximationmedicine.diseaseBayesian modelingrelative riskGeographyRelative riskEpidemiological MonitoringTemporal modelingInternational Journal of Environmental Research and Public Health
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On the convenience of heteroscedasticity in highly multivariate disease mapping

2019

Highly multivariate disease mapping has recently been proposed as an enhancement of traditional multivariate studies, making it possible to perform the joint analysis of a large number of diseases. This line of research has an important potential since it integrates the information of many diseases into a single model yielding richer and more accurate risk maps. In this paper we show how some of the proposals already put forward in this area display some particular problems when applied to small regions of study. Specifically, the homoscedasticity of these proposals may produce evident misfits and distorted risk maps. In this paper we propose two new models to deal with the variance-adaptiv…

Statistics and ProbabilityHeteroscedasticityMultivariate statisticsComputer scienceDiseaseJoint analysisMachine learningcomputer.software_genreBayesian statistics01 natural sciencesGaussian Markov random fields010104 statistics & probability03 medical and health sciences0302 clinical medicineHomoscedasticity0101 mathematicsMultivariate disease mappingSpatial analysisMortality studiesInterpretation (logic)Spatial statisticsbusiness.industryBayesian statisticsEstadística bayesianaMalalties030211 gastroenterology & hepatologyArtificial intelligenceStatistics Probability and Uncertaintybusinesscomputer
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