Literature DB >> 25533437

Sparse modeling of spatial environmental variables associated with asthma.

Timothy S Chang1, Ronald E Gangnon2, C David Page3, William R Buckingham4, Aman Tandias5, Kelly J Cowan6, Carrie D Tomasallo7, Brian G Arndt8, Lawrence P Hanrahan9, Theresa W Guilbert10.   

Abstract

Geographically distributed environmental factors influence the burden of diseases such as asthma. Our objective was to identify sparse environmental variables associated with asthma diagnosis gathered from a large electronic health record (EHR) dataset while controlling for spatial variation. An EHR dataset from the University of Wisconsin's Family Medicine, Internal Medicine and Pediatrics Departments was obtained for 199,220 patients aged 5-50years over a three-year period. Each patient's home address was geocoded to one of 3456 geographic census block groups. Over one thousand block group variables were obtained from a commercial database. We developed a Sparse Spatial Environmental Analysis (SASEA). Using this method, the environmental variables were first dimensionally reduced with sparse principal component analysis. Logistic thin plate regression spline modeling was then used to identify block group variables associated with asthma from sparse principal components. The addresses of patients from the EHR dataset were distributed throughout the majority of Wisconsin's geography. Logistic thin plate regression spline modeling captured spatial variation of asthma. Four sparse principal components identified via model selection consisted of food at home, dog ownership, household size, and disposable income variables. In rural areas, dog ownership and renter occupied housing units from significant sparse principal components were associated with asthma. Our main contribution is the incorporation of sparsity in spatial modeling. SASEA sequentially added sparse principal components to Logistic thin plate regression spline modeling. This method allowed association of geographically distributed environmental factors with asthma using EHR and environmental datasets. SASEA can be applied to other diseases with environmental risk factors.
Copyright © 2014 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Asthma; Electronic health record; Environmental variables; Sparsity; Spatial statistics

Mesh:

Year:  2014        PMID: 25533437      PMCID: PMC4355087          DOI: 10.1016/j.jbi.2014.12.005

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


  42 in total

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3.  The association between the food environment and weight status among eastern North Carolina youth.

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4.  Body mass index and the built and social environments in children and adolescents using electronic health records.

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5.  The theory and application of UW ehealth-PHINEX, a clinical electronic health record-public health information exchange.

Authors:  Theresa W Guilbert; Brian Arndt; Jonathan Temte; Alexandra Adams; William Buckingham; Aman Tandias; Carrie Tomasallo; Henry A Anderson; Lawrence P Hanrahan
Journal:  WMJ       Date:  2012-06

6.  Population Colorectal Cancer Screening Estimates: Comparing Self-Report to Electronic Health Record Data in California.

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7.  Disentangling contextual effects on cause-specific mortality in a longitudinal 23-year follow-up study: impact of population density or socioeconomic environment?

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8.  Problems with damp and cold housing among Pacific families in New Zealand.

Authors:  Sarnia Butler; Maynard Williams; Colin Tukuitonga; Janis Paterson
Journal:  N Z Med J       Date:  2003-07-11

9.  Epidemiological usefulness of population-based electronic clinical records in primary care: estimation of the prevalence of chronic diseases.

Authors:  M D Esteban-Vasallo; M F Domínguez-Berjón; J Astray-Mochales; R Gènova-Maleras; A Pérez-Sania; L Sánchez-Perruca; M Aguilera-Guzmán; F J González-Sanz
Journal:  Fam Pract       Date:  2009-10-08       Impact factor: 2.267

10.  Risk factors for onset of asthma: a 12-year prospective follow-up study.

Authors:  Celeste Porsbjerg; Marie-Louise von Linstow; Charlotte Suppli Ulrik; Steen Nepper-Christensen; Vibeke Backer
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  5 in total

1.  Investigating the association of environmental exposures and all-cause mortality in the UK Biobank using sparse principal component analysis.

Authors:  Mohammad Mamouei; Yajie Zhu; Milad Nazarzadeh; Abdelaali Hassaine; Gholamreza Salimi-Khorshidi; Yutong Cai; Kazem Rahimi
Journal:  Sci Rep       Date:  2022-06-02       Impact factor: 4.996

Review 2.  Using Electronic Health Records for Population Health Research: A Review of Methods and Applications.

Authors:  Joan A Casey; Brian S Schwartz; Walter F Stewart; Nancy E Adler
Journal:  Annu Rev Public Health       Date:  2015-12-11       Impact factor: 21.981

3.  Neighborhood Risk and Hospital Use for Pediatric Asthma, Rhode Island, 2005-2014.

Authors:  Annie Gjelsvik; Michelle L Rogers; Aris Garro; Adam Sullivan; Daphne Koinis-Mitchell; Elizabeth L McQuaid; Raul Smego; Patrick M Vivier
Journal:  Prev Chronic Dis       Date:  2019-05-30       Impact factor: 2.830

4.  Spatiotemporal variations of asthma admission rates and their relationship with environmental factors in Guangxi, China.

Authors:  Rui Ma; Lizhong Liang; Yunfeng Kong; Mingyang Chen; Shiyan Zhai; Hongquan Song; Yane Hou; Guangli Zhang
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5.  Asthma-prone areas modeling using a machine learning model.

Authors:  Seyed Vahid Razavi-Termeh; Abolghasem Sadeghi-Niaraki; Soo-Mi Choi
Journal:  Sci Rep       Date:  2021-01-21       Impact factor: 4.379

  5 in total

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