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      Spatial distribution of child pedestrian injuries along census tract boundaries: Implications for identifying area-based correlates

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          Abstract

          Census tracts are often used to investigate area-based correlates of a variety of health outcomes. This approach has been shown to be valuable in understanding the ways that health is shaped by place and to design appropriate interventions that account for community-level processes. Following this line of inquiry, it is common in the study of pedestrian injuries to aggregate the point level locations of these injuries to the census tracts in which they occur. Such aggregation enables investigation of the relationships between a range of socioeconomic variables and areas of notably high or low incidence. This study reports on the spatial distribution of child pedestrian injuries in a mid-sized U.S. city over a three-year period. Utilizing a combination of geospatial approaches, Near Analysis, Kernel Density Estimation, and Local Moran’s I, enables identification, visualization, and quantification of close proximity between incidents and tract boundaries. Specifically, results reveal that nearly half of the 100 incidents occur within roads that are also census tract boundaries. Results also uncover incidents that occur on tract boundaries, not merely near them. This geographic pattern raises the question of the utility of associating area-based census data from any one tract to the injuries occurring in these border zones. Furthermore, using a standard spatial join technique in a Geographic Information System (GIS), these points located on the border are counted as falling into census tracts on both sides of the boundary, which introduces uncertainty in any subsequent analysis. Therefore, two additional approaches of aggregating points to polygons were tested in this study. Results differ with each approach, but without any alert of such differences to the GIS user. This finding raises a fundamental concern about techniques through which points are aggregated to polygons in any study using point level incidents and their surrounding census tract socioeconomic data to understand health and place. This study concludes with a suggested protocol to test for this source of uncertainty in analysis and an approach that may remove it.

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          Most cited references25

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          Etiology and prognosis of pregnancy-related pelvic girdle pain; design of a longitudinal study

          Background Absence of knowledge of pregnancy-related pelvic girdle pain (PPGP) has prompted the start of a large cohort study in the Netherlands. The objective of this study was to investigate the prevalence and incidence of PPGP, to identify risk factors involved in the onset and to determine the prognosis of pregnancy-related pelvic girdle pain. Methods/design 7,526 pregnant women of the southeast of the Netherlands participated in a prospective cohort study. During a 2-year period, they were recruited by midwives and gynecologists at 14 weeks of pregnancy. Participants completed a questionnaire at baseline, at 30 weeks of pregnancy, at 2 weeks after delivery, at 6 months after delivery and at 1 year after delivery. The study uses extensive questionnaires with questions ranging from physical complaints, limitations in activities, restriction in participation, work situation, demographics, lifestyle, pregnancy-related factors and psychosocial factors. Discussion This large-scale prospective cohort study will provide reliable insights in incidence, prevalence and factors related to etiology and prognosis of pregnancy-related pelvic girdle pain.
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            Socioeconomic status and injury mortality: individual and neighbourhood determinants.

            This study examined both individual and neighbourhood correlates of injury mortality to better understand the contribution of socioeconomic status to cause specific injury mortality. Of particular interest was whether neighbourhood effects remained after adjusting for individual demographic characteristics and socioeconomic status. Census tract data (measuring small area socioeconomic status, racial concentration, residential stability, urbanisation, and family structure) was merged with the National Health Interview Survey (NHIS) and a file that links the respondents to subsequent follow up of vital status and cause of death data. Cox proportional hazards models were specified to determine individual and neighbourhood effects on homicide, suicide, motor vehicle deaths, and other external causes. Variances are adjusted for the clustered sample design of the NHIS. United States, 1987-1994, with follow up to the end of 1995. From a sample of 472 364 persons ages 18-64, there were 1195 injury related deaths over the follow up period. Individual level effects were generally robust to the inclusion of neighbourhood level variables in the models. Neighbourhood characteristics had independent effects on the outcome even after adjustment for individual variability. For example, there was approximately a twofold increased risk of homicide associated with living in a neighborhood characterised by low socioeconomic status, after adjusting for individual demographic and socioeconomic characteristics. Social inequalities in injury mortality exist for both persons and places. Policies or interventions aimed at preventing or controlling injuries should take into account not only the socioeconomic characteristics of people but also of the places in which they live.
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              Low-income neighborhoods and the risk of severe pediatric injury: a small-area analysis in northern Manhattan.

              The purpose of this study was to investigate the relationship between socioeconomic disadvantage and the incidence of severe childhood injury. Small-area analysis was used to examine socioeconomic risk factors for pediatric injury resulting in hospitalization or death in Northern Manhattan, New York, NY, during a 9-year period (1983 through 1991). The average annual incidence of all causes of severe pediatric injury was 72.5 per 10,000 children; the case-fatality rate was 2.6%. Census tract proportions of low-income households, single-parent families, non-high school graduates, and unemployment were significant predictors of risk for both unintentional and intentional injury. Among the socioeconomic factors considered, low income was the single most important predictor of all injuries; other socioeconomic variables were not independent contributors once income was included in the model. Compared with children living in areas with few low-income households, children in areas with predominantly low-income households were more than twice as likely to receive injuries from all causes and four and one half times as likely to receive assault injuries. The effect of neighborhood income disparities on injury risk persisted after race was controlled. These results illuminate the impact of socioeconomic disparities on child health and point to the need for injury prevention efforts targeting low-income neighborhoods.
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                Author and article information

                Contributors
                Role: Editor
                Journal
                PLoS One
                PLoS ONE
                plos
                plosone
                PLoS ONE
                Public Library of Science (San Francisco, CA USA )
                1932-6203
                14 June 2017
                2017
                : 12
                : 6
                : e0179331
                Affiliations
                [001]GIS Health & Hazards Lab, Department of Geography, Kent State University, Kent, Ohio, United States of America
                Duke University, UNITED STATES
                Author notes

                Competing Interests: The author has declared that no competing interests exist.

                • Conceptualization: JWC.

                • Data curation: JWC.

                • Formal analysis: JWC.

                • Investigation: JWC.

                • Methodology: JWC.

                • Project administration: JWC.

                • Resources: JWC.

                • Validation: JWC.

                • Visualization: JWC.

                • Writing – original draft: JWC.

                • Writing – review & editing: JWC.

                Author information
                http://orcid.org/0000-0001-6046-6476
                Article
                PONE-D-16-49099
                10.1371/journal.pone.0179331
                5470688
                28614377
                5697c513-656d-47db-b6d1-dca39909d8ef
                © 2017 Jacqueline W. Curtis

                This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

                History
                : 13 December 2016
                : 26 May 2017
                Page count
                Figures: 6, Tables: 3, Pages: 14
                Funding
                The author received no specific funding for this work.
                Categories
                Research Article
                Research and Analysis Methods
                Research Design
                Survey Research
                Census
                Computer and Information Sciences
                Geoinformatics
                Geographic Information Systems
                Earth Sciences
                Geography
                Geoinformatics
                Geographic Information Systems
                Medicine and Health Sciences
                Health Care
                Socioeconomic Aspects of Health
                Medicine and Health Sciences
                Public and Occupational Health
                Socioeconomic Aspects of Health
                Biology and Life Sciences
                Population Biology
                Population Dynamics
                Geographic Distribution
                Computer and Information Sciences
                Data Visualization
                Earth Sciences
                Geography
                Political Geography
                Social Sciences
                Political Science
                Political Geography
                Computer and Information Sciences
                Geoinformatics
                Spatial Autocorrelation
                Earth Sciences
                Geography
                Geoinformatics
                Spatial Autocorrelation
                Engineering and Technology
                Civil Engineering
                Transportation Infrastructure
                Roads
                Engineering and Technology
                Transportation
                Transportation Infrastructure
                Roads
                Custom metadata
                All relevant data are provided in the Supporting Information file named " S1 File".

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                Uncategorized

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