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Featured researches published by Maurice G. Estes.


International Journal of Environmental Research and Public Health | 2014

The Public Health Exposome: A Population-Based, Exposure Science Approach to Health Disparities Research

Paul D. Juarez; Patricia Matthews-Juarez; Darryl B. Hood; Wansoo Im; Robert S. Levine; Barbara Kilbourne; Michael A. Langston; Mohammad Z. Al-Hamdan; William L. Crosson; Maurice G. Estes; Sue Estes; Vincent Agboto; Paul Robinson; Sacoby Wilson; Maureen Y. Lichtveld

The lack of progress in reducing health disparities suggests that new approaches are needed if we are to achieve meaningful, equitable, and lasting reductions. Current scientific paradigms do not adequately capture the complexity of the relationships between environment, personal health and population level disparities. The public health exposome is presented as a universal exposure tracking framework for integrating complex relationships between exogenous and endogenous exposures across the lifespan from conception to death. It uses a social-ecological framework that builds on the exposome paradigm for conceptualizing how exogenous exposures “get under the skin”. The public health exposome approach has led our team to develop a taxonomy and bioinformatics infrastructure to integrate health outcomes data with thousands of sources of exogenous exposure, organized in four broad domains: natural, built, social, and policy environments. With the input of a transdisciplinary team, we have borrowed and applied the methods, tools and terms from various disciplines to measure the effects of environmental exposures on personal and population health outcomes and disparities, many of which may not manifest until many years later. As is customary with a paradigm shift, this approach has far reaching implications for research methods and design, analytics, community engagement strategies, and research training.


PLOS ONE | 2013

Fine Particulate Matter and Incident Cognitive Impairment in the REasons for Geographic and Racial Differences in Stroke (REGARDS) Cohort

Matthew Shane Loop; Shia T. Kent; Mohammad Z. Al-Hamdan; William L. Crosson; Sue Estes; Maurice G. Estes; Dale A. Quattrochi; Sarah Hemmings; Virginia G. Wadley; Leslie A. McClure

Studies of the effect of air pollution on cognitive health are often limited to populations living near cities that have air monitoring stations. Little is known about whether the estimates from such studies can be generalized to the U.S. population, or whether the relationship differs between urban and rural areas. To address these questions, we used a satellite-derived estimate of fine particulate matter (PM2.5) concentration to determine whether PM2.5 was associated with incident cognitive impairment in a geographically diverse, biracial US cohort of men and women (n = 20,150). A 1-year mean baseline PM2.5 concentration was estimated for each participant, and cognitive status at the most recent follow-up was assessed over the telephone using the Six-Item Screener (SIS) in a subsample that was cognitively intact at baseline. Logistic regression was used to determine whether PM2.5 was related to the odds of incident cognitive impairment. A 10 µg/m3 increase in PM2.5 concentration was not reliably associated with an increased odds of incident impairment, after adjusting for temperature, season, incident stroke, and length of follow-up [OR (95% CI): 1.26 (0.97, 1.64)]. The odds ratio was attenuated towards 1 after adding demographic covariates, behavioral factors, and known comorbidities of cognitive impairment. A 10 µg/m3 increase in PM2.5 concentration was slightly associated with incident impairment in urban areas (1.40 [1.06–1.85]), but this relationship was also attenuated after including additional covariates in the model. Evidence is lacking that the effect of PM2.5 on incident cognitive impairment is robust in a heterogeneous US cohort, even in urban areas.


Environmental Health Perspectives | 2009

Use of Remotely Sensed Data to Evaluate the Relationship between Living Environment and Blood Pressure

Maurice G. Estes; Mohammad Z. Al-Hamdan; William L. Crosson; Sue Estes; Dale A. Quattrochi; Shia T. Kent; Leslie A. McClure

Background Urbanization has been correlated with hypertension (HTN) in developing countries undergoing rapid economic and environmental transitions. Objectives We examined the relationships among living environment (urban, suburban, and rural), day/night land surface temperatures (LST), and blood pressure in selected regions from the REasons for Geographic and Racial Differences in Stroke (REGARDS) cohort. Also, the linking of data on blood pressure from REGARDS with National Aeronautics and Space Administration (NASA) science data is relevant to NASA’s strategic goals and missions, particularly as a primary focus of the agency’s Applied Sciences Program. Methods REGARDS is a national cohort of 30,228 people from the 48 contiguous United States with self-reported and measured blood pressure levels. Four metropolitan regions (Philadelphia, PA; Atlanta, GA; Minneapolis, MN; and Chicago, IL) with varying geographic and health characteristics were selected for study. Satellite remotely sensed data were used to characterize the LST and land cover/land use (LCLU) environment for each area. We developed a method for characterizing participants as living in urban, suburban, or rural living environments, using the LCLU data. These data were compiled on a 1-km grid for each region and linked with the REGARDS data via an algorithm using geocoding information. Results REGARDS participants in urban areas have higher systolic and diastolic blood pressure than do those in suburban or rural areas, and also a higher incidence of HTN. In univariate models, living environment is associated with HTN, but after adjustment for known HTN risk factors, the relationship was no longer present. Conclusion Further study regarding the relationship between HTN and living environment should focus on additional environmental characteristics, such as air pollution. The living environment classification method using remotely sensed data has the potential to facilitate additional research linking environmental variables to public health concerns.


Environmental Health Perspectives | 2010

Using Land Cover Data to Characterize Living Environments of Geocoded Addresses: Estes et al. Respond

Maurice G. Estes; Mohammad Z. Al-Hamdan; William L. Crosson; Sue Estes; Dale A. Quattrochi; Shia T. Kent; Leslie A. McClure

We appreciate the insightful and informative letter about the methodology used in our article (Estes et al. 2009). We agree with Zandbergen about the methodology employed by the SAS/GIS software used for geocoding the REGARDS (REasons for Geographic and Racial Differences in Stroke)participants. As one of the REGARDS study goals, we plan to re-geocode the participants using a more accurate method. However, because our article focused on classifying the “living environment” (defined as urban, suburban, and rural) and because most people do not spend the majority of their time at their house or within the raw resolution area (30 m × 30 m), the geocoding errors that are in the levels of tens of meters become less relevant. This is true especially when we resample to a coarser resolution (1 km vs. 30 m), as we did in our methodology to characterize the participants’ living environment. With respect to the misclassification that may be introduced due to the resolution used to classify participants, Zandbergen is correct that resampling to different resolutions did change the classification of the participants. However, the results of the analyses were consistent regardless of the resolution of the classification, indicating that while this may influence the exposure itself, it does not influence the relationship between the exposure and the outcome.


Remote Sensing of Environment | 2014

Estimating Ground-Level PM(sub 2.5) Concentrations in the Southeastern United States Using MAIAC AOD Retrievals and a Two-Stage Model

Xuefei Hu; Lance A. Waller; Alexei Lyapustin; Yujie Wang; Mohammad Z. Al-Hamdan; William L. Crosson; Maurice G. Estes; Sue Estes; Dale A. Quattrochi; Sweta Jinnagara Puttaswamy; Yang Liu


Photogrammetric Engineering and Remote Sensing | 2000

A Decision Support Information System for Urban Landscape Management Using Thermal Infrared Data

Dale A. Quattrochi; Jeffrey C. Luvall; Douglas L. Rickman; Maurice G. Estes; Charles A. Laymon; Burgess F. Howell


Archive | 1998

Project ATLANTA (ATlanta Land-use ANalysis: Temperature and Air quality): A Study of how the Urban Landscape Affects Meteorology and Air Quality Through Time

Dale A. Quattrochi; Jeffrey C. Luvall; Maurice G. Estes; C. P. Lo; Stanley Q. Kidder; Jan Hafner; Haider Taha; Robert Bornstein; Robert R. Gillies; Kevin P. Gallo


Archive | 2003

The Urban Heat Island Phenomenon: How Its Effects Can Influence Environmental Decision Making in Your Community

Maurice G. Estes; Dale A. Quattrochi; Elizabeth Stasiak


Archive | 1999

The Urban Heat Island Phenomenon and Potential Mitigation Strategies

Maurice G. Estes; Virginia Gorsevski; Camille Russell; Dale A. Quattrochi; Jeffrey C. Luvall


Urisa Journal | 2010

Validation and Demonstration of the Prescott Spatial Growth Model in Metropolitan Atlanta, Georgia

Maurice G. Estes; William L. Crosson; Mohammad Z. Al-Hamdan; Dale A. Quattrochi; Hoyt Johnson

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Dale A. Quattrochi

Marshall Space Flight Center

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William L. Crosson

Marshall Space Flight Center

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Jeffrey C. Luvall

Marshall Space Flight Center

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Douglas L. Rickman

Marshall Space Flight Center

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Sue Estes

Marshall Space Flight Center

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Ashutosh Limaye

Marshall Space Flight Center

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Charles A. Laymon

Universities Space Research Association

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Judith R. Qualters

Centers for Disease Control and Prevention

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