Bootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan Areas

Abstract Background There has been increasing interest in assessing the impacts of extreme temperatures on mortality due to diseases of the circulatory system. This is further relevant for future climate scenarios where marked changes in climate are expected. This paper presents a solid method do id...

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Main Authors: Mónica Rodrigues, Paula Santana, Alfredo Rocha
Format: Article
Language:English
Published: BMC 2019-03-01
Series:Environmental Health
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12940-019-0462-x
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spelling doaj-9c56db84f0204856bc956d72151e83f52020-11-25T03:15:26ZengBMCEnvironmental Health1476-069X2019-03-0118111610.1186/s12940-019-0462-xBootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan AreasMónica Rodrigues0Paula Santana1Alfredo Rocha2Centre of Studies on Geography and Spatial Planning, Department of Geography and Tourism, University of CoimbraCentre of Studies on Geography and Spatial Planning, Department of Geography and Tourism, University of CoimbraCentre for Environmental and Marine Studies, Department of Physics, University of AveiroAbstract Background There has been increasing interest in assessing the impacts of extreme temperatures on mortality due to diseases of the circulatory system. This is further relevant for future climate scenarios where marked changes in climate are expected. This paper presents a solid method do identify the relationship between extreme temperatures and mortality risk by using as predictors simulated temperature data for cold and hot conditions in two urban areas in Portugal. Methods Based on the mortality and meteorological data from Porto Metropolitan Area (PMA) and Lisbon Metropolitan Area (LMA), a distributed lag nonlinear model (DLNM) was implemented to estimate the temperature effects on mortality due to diseases of the circulatory system. The performance of the models was validated via bootstrapping approaching by creating resamples with replacement from the validating data. Bootstrapping was also used to identify the best candidate model and to evaluate the sensitivity of the spline functions to the exposure-lag-response relationship. Results It is found that the model is able to reproduce the temperature-related mortality risk for two metropolitan areas. Temperature previously simulated by climate models is useful and even better than observed temperature. Although, the biases in predictions in both metropolitan areas are low, mortality risk predictions in PMA are more accurate than in LMA. Using parametric bootstrapping, we found that the overall cumulative association estimated under different bi-dimensional exposure-lag-response relationship are relatively stable, especially for the model selected by Quasi-Akaike Information Criteria (QAIC). Exposure to summer temperature conditions is best related to mortality risk. The association between winter temperature and mortality risk is somewhat less strong. Conclusions The use of QAIC to choose from several candidate models provides valid predictions and reduced the uncertainty in the estimated relative risk for circulatory disease mortality. Our findings can be applied to better understand the characteristics and facilitate the prevention of circulatory disease mortality in Porto and Lisbon Metropolitan Areas, namely if we consider the actual context of climate change.http://link.springer.com/article/10.1186/s12940-019-0462-xDiseases of the circulatory systemExtreme temperaturesDistributed lag non-linear model (DLNM)Bootstrap approachModel validationPortugal
collection DOAJ
language English
format Article
sources DOAJ
author Mónica Rodrigues
Paula Santana
Alfredo Rocha
spellingShingle Mónica Rodrigues
Paula Santana
Alfredo Rocha
Bootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan Areas
Environmental Health
Diseases of the circulatory system
Extreme temperatures
Distributed lag non-linear model (DLNM)
Bootstrap approach
Model validation
Portugal
author_facet Mónica Rodrigues
Paula Santana
Alfredo Rocha
author_sort Mónica Rodrigues
title Bootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan Areas
title_short Bootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan Areas
title_full Bootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan Areas
title_fullStr Bootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan Areas
title_full_unstemmed Bootstrap approach to validate the performance of models for predicting mortality risk temperature in Portuguese Metropolitan Areas
title_sort bootstrap approach to validate the performance of models for predicting mortality risk temperature in portuguese metropolitan areas
publisher BMC
series Environmental Health
issn 1476-069X
publishDate 2019-03-01
description Abstract Background There has been increasing interest in assessing the impacts of extreme temperatures on mortality due to diseases of the circulatory system. This is further relevant for future climate scenarios where marked changes in climate are expected. This paper presents a solid method do identify the relationship between extreme temperatures and mortality risk by using as predictors simulated temperature data for cold and hot conditions in two urban areas in Portugal. Methods Based on the mortality and meteorological data from Porto Metropolitan Area (PMA) and Lisbon Metropolitan Area (LMA), a distributed lag nonlinear model (DLNM) was implemented to estimate the temperature effects on mortality due to diseases of the circulatory system. The performance of the models was validated via bootstrapping approaching by creating resamples with replacement from the validating data. Bootstrapping was also used to identify the best candidate model and to evaluate the sensitivity of the spline functions to the exposure-lag-response relationship. Results It is found that the model is able to reproduce the temperature-related mortality risk for two metropolitan areas. Temperature previously simulated by climate models is useful and even better than observed temperature. Although, the biases in predictions in both metropolitan areas are low, mortality risk predictions in PMA are more accurate than in LMA. Using parametric bootstrapping, we found that the overall cumulative association estimated under different bi-dimensional exposure-lag-response relationship are relatively stable, especially for the model selected by Quasi-Akaike Information Criteria (QAIC). Exposure to summer temperature conditions is best related to mortality risk. The association between winter temperature and mortality risk is somewhat less strong. Conclusions The use of QAIC to choose from several candidate models provides valid predictions and reduced the uncertainty in the estimated relative risk for circulatory disease mortality. Our findings can be applied to better understand the characteristics and facilitate the prevention of circulatory disease mortality in Porto and Lisbon Metropolitan Areas, namely if we consider the actual context of climate change.
topic Diseases of the circulatory system
Extreme temperatures
Distributed lag non-linear model (DLNM)
Bootstrap approach
Model validation
Portugal
url http://link.springer.com/article/10.1186/s12940-019-0462-x
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AT paulasantana bootstrapapproachtovalidatetheperformanceofmodelsforpredictingmortalityrisktemperatureinportuguesemetropolitanareas
AT alfredorocha bootstrapapproachtovalidatetheperformanceofmodelsforpredictingmortalityrisktemperatureinportuguesemetropolitanareas
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