| Literature DB >> 35664667 |
Mónica D Ramírez-Andreotta1,2, Ramona Walls3, Ken Youens-Clark4, Kai Blumberg4, Katherine E Isaacs5, Dorsey Kaufmann1, Raina M Maier1.
Abstract
Environmental contamination is a fundamental determinant of health and well-being, and when the environment is compromised, vulnerabilities are generated. The complex challenges associated with environmental health and food security are influenced by current and emerging political, social, economic, and environmental contexts. To solve these "wicked" dilemmas, disparate public health surveillance efforts are conducted by local, state, and federal agencies. More recently, citizen/community science (CS) monitoring efforts are providing site-specific data. One of the biggest challenges in using these government datasets, let alone incorporating CS data, for a holistic assessment of environmental exposure is data management and interoperability. To facilitate a more holistic perspective and approach to solution generation, we have developed a method to provide a common data model that will allow environmental health researchers working at different scales and research domains to exchange data and ask new questions. We anticipate that this method will help to address environmental health disparities, which are unjust and avoidable, while ensuring CS datasets are ethically integrated to achieve environmental justice. Specifically, we used a transdisciplinary research framework to develop a methodology to integrate CS data with existing governmental environmental monitoring and social attribute data (vulnerability and resilience variables) that span across 10 different federal and state agencies. A key challenge in integrating such different datasets is the lack of widely adopted ontologies for vulnerability and resiliency factors. In addition to following the best practice of submitting new term requests to existing ontologies to fill gaps, we have also created an application ontology, the Superfund Research Project Data Interface Ontology (SRPDIO).Entities:
Keywords: FAIR principles; citizen science; community resiliency; community science; environmental health; interoperability
Year: 2021 PMID: 35664667 PMCID: PMC9165534 DOI: 10.3389/fsufs.2021.620470
Source DB: PubMed Journal: Front Sustain Food Syst ISSN: 2571-581X
FIGURE 1 |Map of participating Gardenroots communities in Arizona.
Vulnerability datasets.
| Data description | Dataset source | Year | Variable categories |
|---|---|---|---|
| Social attributes | USEPA’s EJSCREEN | 2019 | Linguistically isolated ( |
| Low income ( | |||
| Minority population ( | |||
| Less than highschool education ( | |||
| Under age 5 ( | |||
| Over age 64 ( | |||
| American Community Survey | 2019 | Poverty status ( | |
| Quality of environment | 2011–2019 | Concentrations of metal(loid)s in water ( | |
| Concentrations of metal(loid)s in soil ( | |||
| Concentrations of metal(loid)s in plants ( | |||
| Concentrations of metal(loid)s in dust ( | |||
| USEPA’s EJSCREEN | 2019 | Proximity to sources of pollution ( | |
| Air pollution ( | |||
| Ozone level in air ( | |||
| PM 2.5 in air ( | |||
| Lead paint indicator ( | |||
| National Water Quality Monitoring Council | 2018 | Water quality ( | |
| U.S. Geological Survey | 2013 | Soil characteristics ( | |
| Arizona Department of Health Services (ADHS) Environmental Health Public Tracking | 2019 | Arsenic in community water systems ( | |
| Quality of health | Behavioral Risk Factor Surveillance | 2018 | Diabetes ( |
| Cancer ( | |||
| Asthma ( | |||
| ADHS Environmental Health Public Tracking | 2016 | Incidence of cancer ( | |
| 2019 | Hospitalizations for asthma ( | ||
| National Center for Health Statistics | 2020 | Prevalence of obesity or severe obesity among adults ( | |
| Access to food | U.S. Department of Agriculture’s Economic Research Service (USDA ERS) | 2020 | State food insecurity ( |
The most recent data available was used, with the exception of Gardenroots data, that spans from 2011 to 2020. Since the majority of the datasets had a large amount of measured variables, variables are grouped in categories in this table. The n value represents the number of variables in each category.
Resiliency datasets.
| Data description | Dataset source | Year | Variable categories |
|---|---|---|---|
| Economic capital | American Community Survey | 2019 | Mortgage ( |
| Labor force status ( | |||
| Human capital | American Community Survey | 2019 | Education attainment ( |
| Healthcare coverage ( | |||
| Presence of computing device ( | |||
| Internet service/subscription ( | |||
| USDA ERS | 2020 | Access to women’s infants and children program ( | |
| Access to supplemental nutrition assistance program ( | |||
| Political capital | Arizona Secretary of State | 2018 | Registered voters ( |
| Ballots casted ( | |||
| Access to polling places ( | |||
| Social capital | Gardenroots Data | 2013–2019 | Number of |
| USDA ERS | 2020 | Proximity to grocery stores ( | |
| Store availability ( | |||
| Food assistance ( | |||
| Local foods ( | |||
| Restaurants ( | |||
| Human Resources and Service Administration-Health Professional Shortage Area | 2019 | Federally qualified health center ( | |
| Rural health clinic ( | |||
| ADHS Environmental Health Public Tracking | 2019 | Access to parks and elementary schools ( | |
| 2013 | Land use ( |
The most recent data available was used, with the exception of Gardenroots data that spans from 2011 to 2020. Since the majority of the datasets had a large number of measured variables, the variables are grouped in categories. The n value represents the number of variables in each category.
Questions to ask of the vulnerability and resiliency dataset to achieve environmental justice in communities neighboring active and legacy mining activities.
| Questions | Dataset used |
|---|---|
| 1. What is/are the major: | All datasets in |
| a. Vulnerability(ies) | |
| b. Resiliency(ies) | |
| 2. Are we (all stakeholders) addressing them? | N/A |
| a. If not, how can we? | |
| 3. Are mining communities disproportionately exposed to Arsenic? | • |
| 4. Are mining communities suffering/experiencing cancer/diabetes/obesity/asthma disproportionately? | • ADHS Environmental Health Public Tracking |
| 5. Are mining communities with elevated arsenic concentrations suffering/experiencing cancer/diabetes/obesity/asthma disproportionately? | • Gardenroots Data |
| 6. Can we assign an index value ( | All datasets in |
| 7. Once we combine the vulnerability and resiliencies, can we rate and compare communities? | N/A |
| 8. How can we leverage the resiliencies to address the vulnerabilities? | All datasets in |
| 9. When considering ecosystem functions, what function(s) are in deficit/not working? Which functions are working? | All datasets in |
| 10. When considering | All datasets in |
| 11. How can we successfully communicate with these communities at the local community and government level? | • American Community Survey |
FIGURE 3 |A visuazation generated from selective datasets to qualitatively describe cáncer incidence rates and soil contaminant concentrations.
FIGURE 5 |The percent of county populations with internet access
FIGURE 4 |Major mines and prevalence of diagnosed diabetes and obesity in the state of Arizona.
FIGURE 2 |(A) ‘ “he hierarchy of terms for the “concentration of aluminium in plant structure.” Plant structure terms are imported from the Plant Ontology (Cooper et al., 2013) and chemical terms are imported from ChEBI. (B) The logical definition of “concentration of chemical entities in plant structure.” (C) The logical definition of “concentration of elemental aluminium in root.” An ontological reasoner uses these logical definitions to infer the hierarchy shown in (A). (D) The hierarchy for “concentration of elemental aluminium in environmental material” is generated similarly to the hierarchy for concentrations in plant structures. Note that ChEBI is an international ontology that uses the British spelling “aluminium” shown in the figure, but our search engine includes the American spelling “aluminum”.