My goal in seeking a Mentored Research Career Development Award is to acquire the necessary training, practical experience, and knowledge to become a leading independent investigator who harnesses biomedical Big Data Science for the investigation of multilevel influences on health. To continue my progress towards this goal, I am proposing to build the infrastructure to establish a neighborhood data repository, HashtagHealth, for public health researchers and policy makers. I am a highly trained researcher in social epidemiology and quantitative analyses, particularly large health surveys. Before coming to Utah, I worked as a full-time statistical programmer/data analyst on a NIH-funded project to evaluate the health effects of a large neighborhood relocation policy experiment on low-income families in five cities. Our study results suggested that moving from high- to lower poverty neighborhood is related to reductions in obesity and diabetes and improved mental health. Other extant research has provided evidence on associations between the neighborhood environment and mortality and morbidity-even after adjusting for individual characteristics. Poor access to healthy food, fast food chains, the lack of recreational facilities, and higher crime rates all correlate with hiher obesity rates. Nonetheless, the dearth of neighborhood data, especially measures of neighborhood quality that are consistent across geographic areas, limits neighborhood effects research. Moreover, neighborhoods are not only defined by their resources, but also by the social interactions and activities of people who live there. The widespread usage of the internet and open recording of many transactions has led to the availability of massive amounts of data that permits capture of previously hidden micro-level interactions. We will build the data algorithms and infrastructure to harness relatively untapped, cost efficient, and pervasive social media data to develop neighborhood indicators such as food themes, healthiness of food mentions, frequency of exercise/recreation mentions, metabolic intensity of physical activities, and happiness levels. The creation of HashtagHealth requires the use and refinement of Big Data methods to perform data mining, processing and storing of heterogeneous, unstructured data. We will build a testable version of HashtagHealth for the state of Utah and then apply the data resource to the examination of neighborhood effects on young adult obesity. My rigorous training and previous research experiences in social determinants of health, causal inference, and data analyses uniquely prepare me to make significant contributions to the field of Big Data, particularly at the intersection of public health and social sciences.
My Specific Aims are: 1) to develop a neighborhood data resource, HashtagHealth, for public health researchers, 2) to develop Big Data techniques to produce novel neighborhood quality indicators (e.g., healthiness of food mentions, frequency and type of exercise/recreation and happiness levels), and 3) to utilize HashtagHealth and individual-level data from the Utah Population Database to investigate neighborhood influences on obesity among young adults. My mentorship team includes experts in biomedical research (Drs. Ken Smith, Jim VanDerslice), computer science (Dr. Feifei Li), and statistics (Dr. Ming Wen). My team has the breadth of expertise to help me obtain critical multidisciplinary skills and successfully implement my research aims. In addition to my research aims, my Specific Career Development Aims include the following: 1) to develop expertise in data mining and database systems, 2) to acquire training in natural language processing and machine learning, 3) to further gain knowledge of geographic information systems (GIS), 4) to develop expertise in study design and analysis of neighborhood effects, and 5) and to develop grant writing and research management skills to lead future projects. The knowledge and experience gained from this proposal will allow me to successfully compete for R01 funding to create a national neighborhood data repository and to investigate national patterns of neighborhood effects on obesity. This proposal makes significant, relevant contributions to the field because 1) neighborhood environments are increasingly linked to important health outcomes, and 2) this project addresses the limits to research resulting from the lack of neighborhood data by providing new, cost-efficient data resources and methods for characterizing neighborhoods.

Public Health Relevance

The epidemic rise in obesity and related chronic diseases in recent decades signal the importance of structural forces and social processes, but the dearth of data on contextual factors limits the investigation of multilevel effects on health. My overarching career goal is to contribute to the improvement of population health by conducting research in social determinants of health and developing new methodologies to address multidimensional research questions. The development of the Hashtag Health data repository will be a significant benefit to neighborhood effects researchers, harnessing the largely untapped potential of social media data to capture social and cultural processes with potential impact on health.

Agency
National Institute of Health (NIH)
Institute
National Institute of Environmental Health Sciences (NIEHS)
Type
Research Scientist Development Award - Research & Training (K01)
Project #
5K01ES025433-06
Application #
9521378
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Shreffler, Carol A
Project Start
2017-07-17
Project End
2019-06-30
Budget Start
2018-07-01
Budget End
2019-06-30
Support Year
6
Fiscal Year
2018
Total Cost
Indirect Cost
Name
University of Maryland College Park
Department
Type
DUNS #
790934285
City
College Park
State
MD
Country
United States
Zip Code
20742
Nguyen, Quynh C; Sajjadi, Mehdi; McCullough, Matt et al. (2018) Neighbourhood looking glass: 360ยบ automated characterisation of the built environment for neighbourhood effects research. J Epidemiol Community Health 72:260-266
Garmire, Lana X; Gliske, Stephen; Nguyen, Quynh C et al. (2017) THE TRAINING OF NEXT GENERATION DATA SCIENTISTS IN BIOMEDICINE. Pac Symp Biocomput 22:640-645
Nguyen, Quynh C; Brunisholz, Kimberly D; Yu, Weijun et al. (2017) Twitter-derived neighborhood characteristics associated with obesity and diabetes. Sci Rep 7:16425
Nguyen, Quynh C; Acevedo-Garcia, Dolores; Schmidt, Nicole M et al. (2017) The effects of a housing mobility experiment on participants' residential environments. Hous Policy Debate 27:419-448
Meng, Hsien-Wen; Kath, Suraj; Li, Dapeng et al. (2017) National substance use patterns on Twitter. PLoS One 12:e0187691
Nguyen, Q C; Meng, H; Li, D et al. (2017) Social media indicators of the food environment and state health outcomes. Public Health 148:120-128
Nguyen, Quynh C; McCullough, Matt; Meng, Hsien-Wen et al. (2017) Geotagged US Tweets as Predictors of County-Level Health Outcomes, 2015-2016. Am J Public Health 107:1776-1782
Nguyen, Quynh C; Kath, Suraj; Meng, Hsien-Wen et al. (2016) Leveraging geotagged Twitter data to examine neighborhood happiness, diet, and physical activity. Appl Geogr 73:77-88
Nguyen, Quynh C; Rehkopf, David H; Schmidt, Nicole M et al. (2016) Heterogeneous Effects of Housing Vouchers on the Mental Health of US Adolescents. Am J Public Health 106:755-62
Nguyen, Quynh C; Li, Dapeng; Meng, Hsien-Wen et al. (2016) Building a National Neighborhood Dataset From Geotagged Twitter Data for Indicators of Happiness, Diet, and Physical Activity. JMIR Public Health Surveill 2:e158