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Featured researches published by Johan Lindström.


Atmospheric Environment | 2011

Pragmatic Estimation of a Spatio-Temporal Air Quality Model With Irregular Monitoring Data

Paul D. Sampson; Adam A. Szpiro; Lianne Sheppard; Johan Lindström; Joel D. Kaufman

Statistical analyses of the health effects of air pollution have increasingly used GIS-based covariates for prediction of ambient air quality in “land-use” regression models. More recently these regression models have accounted for spatial correlation structure in combining monitoring data with land-use covariates. The current paper builds on these concepts to address spatio-temporal prediction of ambient concentrations of particulate matter with aerodynamic diameter less than 2.5 μm (PM2.5) on the basis of a model representing spatially varying seasonal trends and spatial correlation structures. Our hierarchical methodology provides a pragmatic approach that fully exploits regulatory and other supplemental monitoring data which jointly define a complex spatio-temporal monitoring design. We explain the elements of the computational approach, including estimation of smoothed empirical orthogonal functions (SEOFs) as basis functions for temporal trend, spatial (“land use”) regression by Partial Least Squares (PLS), modeling of spatio-temporal correlation structure, and generalized universal kriging prediction of ambient exposure for subjects in the Multi-Ethnic Study of Atherosclerosis and Air Pollution (MESA Air) project. Analyses are demonstrated in detail for the South California study area of the MESA Air project using AQS monitoring data from 2000 to 2006 and supplemental MESA Air monitoring data beginning in 2005. Results of application of the modeling and estimation methodology are presented also for five other MESA Air metropolitan study areas across the country with comments on current and future research developments.


Environmental Health Perspectives | 2014

A unified spatiotemporal modeling approach for predicting concentrations of multiple air pollutants in the multi-ethnic study of atherosclerosis and air pollution.

Joshua P. Keller; Casey Olives; Sun Young Kim; Lianne Sheppard; Paul D. Sampson; Adam A. Szpiro; Assaf P. Oron; Johan Lindström; Sverre Vedal; Joel D. Kaufman

Background: Cohort studies of the relationship between air pollution exposure and chronic health effects require predictions of exposure over long periods of time. Objectives: We developed a unified modeling approach for predicting fine particulate matter, nitrogen dioxide, oxides of nitrogen, and black carbon (as measured by light absorption coefficient) in six U.S. metropolitan regions from 1999 through early 2012 as part of the Multi-Ethnic Study of Atherosclerosis and Air Pollution (MESA Air). Methods: We obtained monitoring data from regulatory networks and supplemented those data with study-specific measurements collected from MESA Air community locations and participants’ homes. In each region, we applied a spatiotemporal model that included a long-term spatial mean, time trends with spatially varying coefficients, and a spatiotemporal residual. The mean structure was derived from a large set of geographic covariates that was reduced using partial least-squares regression. We estimated time trends from observed time series and used spatial smoothing methods to borrow strength between observations. Results: Prediction accuracy was high for most models, with cross-validation R2 (R2CV) > 0.80 at regulatory and fixed sites for most regions and pollutants. At home sites, overall R2CV ranged from 0.45 to 0.92, and temporally adjusted R2CV ranged from 0.23 to 0.92. Conclusions: This novel spatiotemporal modeling approach provides accurate fine-scale predictions in multiple regions for four pollutants. We have generated participant-specific predictions for MESA Air to investigate health effects of long-term air pollution exposures. These successes highlight modeling advances that can be adopted more widely in modern cohort studies. Citation: Keller JP, Olives C, Kim SY, Sheppard L, Sampson PD, Szpiro AA, Oron AP, Lindström J, Vedal S, Kaufman JD. 2015. A unified spatiotemporal modeling approach for predicting concentrations of multiple air pollutants in the Multi-Ethnic Study of Atherosclerosis and Air Pollution. Environ Health Perspect 123:301–309; http://dx.doi.org/10.1289/ehp.1408145


Environmental and Ecological Statistics | 2014

A Flexible Spatio-Temporal Model for Air Pollution with Spatial and Spatio-Temporal Covariates.

Johan Lindström; Adam A. Szpiro; Paul D. Sampson; Assaf P. Oron; Mark A. Richards; Timothy V. Larson; Lianne Sheppard

The development of models that provide accurate spatio-temporal predictions of ambient air pollution at small spatial scales is of great importance for the assessment of potential health effects of air pollution. Here we present a spatio-temporal framework that predicts ambient air pollution by combining data from several different monitoring networks and deterministic air pollution model(s) with geographic information system covariates. The model presented in this paper has been implemented in an R package, SpatioTemporal, available on CRAN. The model is used by the EPA funded Multi-Ethnic Study of Atherosclerosis and Air Pollution (MESA Air) to produce estimates of ambient air pollution; MESA Air uses the estimates to investigate the relationship between chronic exposure to air pollution and cardiovascular disease. In this paper we use the model to predict long-term average concentrations of


Weather and Forecasting | 2010

Analyzing the Image Warp Forecast Verification Method on Precipitation Fields from the ICP

Eric Gilleland; Johan Lindström; Finn Lindgren


Computational Statistics & Data Analysis | 2009

Fast estimation of spatially dependent temporal vegetation trends using Gaussian Markov random fields

David Bolin; Johan Lindström; Lars Eklundh; Finn Lindgren

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NCAR Technical Notes; NCAR/TN-482+STR (2010) | 2010

Spatial Forecast Verification: Image Warping

Eric Gilleland; Linchao Chen; Michael DePersio; Giang Do; Kirsten Eilertson; Yin Jin; Emily L. Kang; Finn Lindgren; Johan Lindström; Richard L. Smith; Changming Xia


International Journal of Remote Sensing | 2006

Influence of solar zenith angles on observed trends in the NOAA/NASA 8‐km Pathfinder normalized difference vegetation index over the African Sahel

Johan Lindström; Lars Eklundh; Jan Holst; Ulla Holst

NOx in the Los Angeles area during a 10 year period. Predictions are based on measurements from the EPA Air Quality System, MESA Air specific monitoring, and output from a source dispersion model for traffic related air pollution (Caline3QHCR). Accuracy in predicting long-term average concentrations is evaluated using an elaborate cross-validation setup that accounts for a sparse spatio-temporal sampling pattern in the data, and adjusts for temporal effects. The predictive ability of the model is good with cross-validated


Journal of Geophysical Research | 2016

Effect of climate data on simulated carbon and nitrogen balances for Europe

Jan Hendrik Blanke; Mats Lindeskog; Johan Lindström; Veiko Lehsten


The Annals of Applied Statistics | 2014

Reduced-rank spatio-temporal modeling of air pollution concentrations in the Multi-Ethnic Study of Atherosclerosis and Air Pollution

Casey Olives; Lianne Sheppard; Johan Lindström; Paul D. Sampson; Joel D. Kaufman; Adam A. Szpiro

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Medical Image Analysis | 2014

Segmentation of B-mode cardiac ultrasound data by Bayesian Probability Maps

Mattias Hansson; Sami S. Brandt; Johan Lindström; Petri Gudmundsson; Amra Jujic; Andreas Malmgren; Yuanji Cheng

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Adam A. Szpiro

University of Washington

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Eric Gilleland

National Center for Atmospheric Research

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