Inequalities in Environmental Cancer Risk and Carcinogen Exposures: A Scoping Review
Abstract
:1. Introduction
2. Materials and Methods
Search and Selection Strategy
3. Results
Data Sources and Approach
4. What Did the Studies Find?
4.1. Air Pollution and Hazardous Substances
4.2. Other Carcinogens or Environmental Cancer Risk Factors
5. Discussion
5.1. Air Pollution
5.2. Greenspace
5.3. Access to Food
5.4. Access to Tobacco
5.5. Complexities, Challenges, and Future Work
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
EPA | Environmental Protection Agency |
GEE | Generalized estimating equations |
HAP | Hazardous air pollution |
NAAQS | National Ambient Air Quality Standards |
NATA | National Air Toxics Assessment |
NPRI | National Pollutant Release Inventory |
OLS | Ordinary Least Squares |
SES | Socioeconomic status |
TRI | Toxics Release Inventory |
UVR | Ultraviolet radiation |
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Author, Year, Location | Study Objective | Exposure | Study Population and Data Source | Disparities | Results Summary * |
---|---|---|---|---|---|
Chakraborty 2014, Houston, USA [40] | To determine if chronic and acute pollution risks in the Greater Houston area are distributed inequitably, and if inequities differ by source of exposure |
| Census data from residents of the Greater Houston area, must have at least 500 persons and 50 housing units | Race/ethnicity, SES/income, language | Neighborhoods with a higher percentage of Hispanic residents, lower percentage of homeowners, and higher income inequality have greater exposure to both chronic and acute pollution risks. |
Pearce 2006, Christchurch, New Zealand [41] | To assess if there is a social/ethnic gradient in exposure to air pollution from domestic heating |
| Census data for residents of Christchurch | Race/ethnicity, SES/income | Higher pollution levels for Asian and Māori populations and economically disadvantaged communities. |
Yu 2016, Tampa Bay, USA [42] | To estimate emission concentrations and exposures to improve understanding of impacts of urban design on exposure disparities |
| Census data for residents of Hillsborough county | Race/ethnicity SES/income | Black, Hispanic, and lower-income residents had higher exposure to benzene, 1,3-butadiene, and nitrogen oxide, but lower exposure to acetaldehyde and formaldehyde. |
Rosenbaum 2011, USA [43] | To compare diesel inhalation intake across harbor areas in the US, and to estimate the size and demographic composition of populations who are at increased carcinogenic risk |
| Census data for people living in 43 US marine harbor areas where carcinogenic health risk exceeds 10 per million | Race/ethnicity, SES/income | Low-income households and Hispanic or Black residents have higher exposure to diesel engine exhaust. |
Hricko 2014, California, USA [44] | To describe cancer risks for residents living close to major rail yards with emissions of diesel, and to identify potential racial and income disparities in exposure |
| Census data for residents with high diesel cancer risks (100+ in a million) and living near railyards in California | Race/ethnicity, SES/income | Overall higher risk of living near railyards and high diesel cancer risks for Black and Hispanic residents and lower-income groups. |
Osiecki 2013, Cook County Illinois, USA [45] | To examine spatial associations and geographic patterns of sociodemographic characteristics, environmental cancer risk, and cancer rate |
| Census data for west and south regions of Chicago | Race/ethnicity, SES/income, poverty, home ownership, education | Areas with high poverty and high proportions of Black residents had higher environmental cancer risk. |
James 2012, Cancer Alley Louisiana, USA [46] | To examine race- and income-based disparities in cancer risks from air toxics in Cancer Alley, LA |
| Census data for those living in cancer alley | Race/ethnicity, SES/income, education, lone parenthood | Higher lifetime cancer risks for Black and lower-income residents. Formaldehyde and benzene were the two largest contributors to the disparities. |
Stoner 2013, USA [47] | To evaluate whether exposure to outdoor air toxics in early childhood increased asthma risk or severity |
| Early child longitudinal study, born in 2001, with mothers ≤15 years old | Race/ethnicity, SES/income | Higher exposure to air toxins for Black, Hispanic, and low-income residents. |
Wilson 2015, South Carolina, USA [48] | To study cancer risk disparities from exposure to hazardous air pollutants in South Carolina |
| Census data for residents of South Carolina | Race/ethnicity, SES/income, home ownership | Cancer risk was higher in census tracts with higher percentage unemployed, percentage in poverty, lower per capita income, and higher percentage of non-White residents; negative associations for homeownership and education. |
Lievanos 2019, USA [49] | To identify to what extent hazardous air concentrations impact marginalized Indigenous peoples, Whites, Blacks, and Latinxs, as well as to what extent APIs affect the probability of exposure to carcinogenic air pollution clusters |
| Census data | Race/ethnicity | Indigenous residents had higher exposures in mid-Atlantic region; overall, Black, Asian/Pacific Island, or Hispanic residents had higher exposures to carcinogenic air pollution clusters. |
Collins 2017, USA [15] | To examine disparities in exposure to hazardous air pollutants and risk of cancer or respiratory health among same-sex partners |
| Census data and American Community Survey | Race/ethnicity, SES/income | Same-sex partners had higher lifetime cancer risk. |
Rubio 2020, USA [50] | To study ancestry-based ethnic inequalities among Americans at the national level |
| Census data for Americans from 26 ancestries | Race/ethnicity, immigration | Americans of Dominican, Ethiopian, and Somalian descent had the highest total lifetime cancer risks. |
Pastor Jr 2005, California, USA [51] | To identify environmental inequalities in exposure by race and income to hazardous air pollutants in California |
| Census data for California residents | Land uses/income, race/ethnicity | Higher lifetime cancer risks for Black, Hispanic, and Asian/Pacific Island residents. |
Liecvanos 2015, USA [16] | To assess where air toxic health risk clusters are in the US, and to study the relationship between air-toxic health risk clusters and race, class, and immigrant status |
| Census data for continental USA | Race/ethnicity, SES/income, immigration | Black, Hispanic, and Asian/Pacific Island residents and lower-income residents were at higher risk for living in local air toxic clusters and higher lifetime cancer risk. |
Grineski 2019, USA [52] | To identify geographical hotspots of lifetime cancer risk from hazardous air pollutants, as well as social disparities in the US by school district |
| Census data for people ≤ 18 years old | Race/ethnicity, SES/income, immigration | Considering all exposure sources, lifetime cancer risk increases with higher proportion of children in poverty, with disability, and that are foreign-born, Black, and multiracial/other, but decreases with increased proportion of American Indian children and decreased proportion of American Indians. |
Grineski 2019, Honolulu, Los Angeles, San Francisco, Seattle, USA [53] | To study disparities in residential exposure to carcinogenic hazardous air pollutants among Asian Americans |
| Census data for residents of Honolulu, Los Angeles, San Francisco and Seattle area | Race/ethnicity, SES/income | Korean ancestry was positively associated with lifetime cancer risk in Los Angeles. Chinese ancestry was positively associated in Los Angeles and Honolulu, but negative in Seattle. Japanese ancestry was positively associated with lifetime cancer risk in San Francisco and Seattle. South Asian ancestry was negatively associated with lifetime cancer risk in Seattle and Honolulu. Filipino ancestry was positively negatively in Honolulu, Los Angeles, and Seattle, but negative in San Francisco. |
Linder 2008, Houston and Harris County Texas, USA [54] | To examine the spatial distribution of cumulative, air-pollution-related cancer risks, and to identify ethnic, economic, and social disparities |
| Census data for residents of Houston and Harris county | Race/ethnicity, SES/income, unemployment, education | Higher lifetime cancer risk for areas with higher proportions of Hispanic residents, and those living in poverty, with less than high-school education. |
Jia 2014, Memphis Shelby County Tennessee, USA [55] | To assess the relationship between racial composition and cancer risks from air toxics exposure |
| Census data for residents of Memphis and Shelby County | Race/ethnicity, SES/income | Higher lifetime cancer risk for census tracts with higher proportion of Black residents. The distribution of major roads and industrial facilities caused the largest disparities. |
Morello-Frosch 2001, Southern California, USA [56] | To assess lifetime cancer risks associated with hazardous air pollutants, and to determine if there are racial and economic differences in cancer risk |
| Census data for residents of southern California | Race/ethnicity, SES/Income | Differential lifetime cancer risks observed by race, with Black, Hispanic, and Asian residents having the highest risk. |
Morello-Frosch 2006, USA [57] | To assess if racial and economic disparities in estimated cancer risk associated with air toxics are modified by levels of residential segregation |
| Census data for residents of US metropolitan areas | Race/ethnicity, poverty, material deprivation | Differential lifetime cancer risks observed by race, with Hispanic residents having the strongest relationship. |
Collins 2011, El Paso County Texas, USA [58] | To assess contextually relevant variables, and intra-racial/ethnic variables in the study of inequitable distribution of air toxic exposures |
| Census data from El Paso county | Race/ethnicity, language, citizenship | Higher lifetime cancer risk for block groups with increased proportion of residents who are Hispanic, without high-school diploma, income below poverty line, renter-occupied, female-headed households, poor English proficiency, and foreign-born, and in block groups with the lowest median household income. |
Collins 2015, Greater Houston, USA [59] | To assess if cancer risks from outdoor hazardous air pollutant exposures are distributed inequitably and if having a disadvantaged racial minority study modifies the effects on cancer risk |
| Census data from residents of the Greater Houston area | Race/ethnicity, SES/income, housing location | Black and Hispanic residents had higher lifetime cancer risks. |
Collins 2017, Greater Houston, USA [15] | To test for disparities in hazardous air pollutants on the basis of census tract composition of same-sex partner households |
| Census data from residents of the Greater Houston area, at least 500 people or 200 households | Race/ethnicity, SES/income, home ownership | Same-sex partners had higher lifetime cancer risk. |
Ekenga 2019, St. Louis Metropolitan Area, USA [60] | To study the relationship between residential segregation and neighborhood sociodemographic characteristics and cancer risk from air toxins |
| Census data from residents of the Greater St. Louis area | Race/ethnicity, SES/income | Exposure to carcinogenic air pollution higher for neighborhoods with higher proportion of residents who are Black, in poverty, or unemployed, and who have low education. |
Loustaunau 2019, Harris County Texas, USA [61] | To assess how cancer risk form exposure to on-road hazardous air pollutants differs across and within each major racial/ethnic group |
| Census data restricted to census tracts of ≤500 people | Race/ethnicity, SES/income, poverty, homeownership, education, language | Higher lifetime cancer risk for Black and Hispanic residents. |
Grineski 2017, USA [13] | To study disparities in residential hazardous air pollutant exposures among Asian Americans |
| Census tracts with at least 500 people, 200 households | Race/ethnicity, SES/income, home ownership | Higher lifetime cancer risk for Chinese, Korean, and South Asian residents. |
Morello-Frosch 2002, Los Angeles, USA [62] | To identify disparities in ambient air toxics exposures among school children in the LA Unified School District |
| California basic education survey data for school children in Los Angeles unified school district | Race/ethnicity, SES/income | Higher lifetime cancer risks for Black and Hispanic residents. |
Apelberg 2005, Maryland, USA [63] | To evaluate disparities in estimated cancer risk from exposure to air toxics by emission source category |
| All individuals in Maryland in the census | Race/ethnicity, SES/income, education | Income related to lifetime cancer risk up until 50,000 USD; predominantly Black neighborhoods had a higher lifetime cancer risk, but no relationship was observed for Hispanic neighborhoods. |
Alvarez 2021, USA [64] | To estimate the intersectional effects of environmental health hazards at a structural or neighborhood level |
| Census data | Race/ethnicity, SES/income, female households, education | Higher lifetime cancer risk for Black and Hispanic residents, as well as low-income, low-education, and female-headed households. |
Chakraborty 2009, Tampa Bay, USA [65] | To evaluate socio-spatial inequities in the distribution of cancer and noncancer risks associated with outdoor exposure to hazardous air pollutants emitted by on-road vehicles |
| Census data from residents of the Tampa Bay Metropolitan Statistical Area | Race/ethnicity, SES/income, transportation disadvantage | Higher lifetime cancer risks for Black and Hispanic residents, poverty, and no vehicle ownership. |
Larsen 2020, North Carolina, USA [66] | To better understand how joint exposure to environmental and economic factors influence cancer |
| Census data for residents of North Carolina | Race/ethnicity, SES/income | Higher pollution and lifetime cancer risk for SES disadvantage and higher Black population density. |
Chakraborty 2017, Miami, USA [67] | To assess whether excess cancer risks due to ambient exposure to on-road mobile sources are distributed inequitably |
| Census and survey data from adult residents in Miami area | Race/ethnicity, SES/income, rent status, language, immigration, unemployment | Higher lifetime cancer risks for Black and Hispanic residents, lower SES, and renters. |
Collins 2015, Miami, USA [68] | To assess if cancer risks from on-road hazardous air pollutant exposures are distributed inequitably by household-level factors, and if inequities differ |
| Census and survey data from adult residents in Miami area | Race/ethnicity, SES/income, housing location | Higher lifetime cancer risks for residents who are Black and Hispanic, lower-income, unemployed, and renting. |
Chakraborty 2012, Tampa Bay, USA [69] | To evaluate spatial and social inequities in potential cancer risk from inhalation exposure to hazardous air pollutants from four types of emission sources |
| Census data from residents of the Tampa Bay area | Race/ethnicity, SES/income, old age | Proportion of Black and Hispanic population was significantly associated with lifetime cancer risk, while proportion of owner-occupied homes was negatively associated. |
Kershaw 2013, Toronto, Canada [14] | To inform priority-setting for pollution prevention by characterizing neighborhoods near large industrial air polluters |
| Census data for residents of Toronto | Race/ethnicity, SES/income, home ownership, unemployment, proportion children/seniors | Distance to pollution was significantly shorter for low-income individuals. |
Huang 2017, USA [70] | To demonstrate the utility of unsupervised machine learning technique in identifying multiple chemical and non-chemical exposures |
| Census data | Race/ethnicity, SES/income, single mothers, education, sex | Census tracts with a high percentage of racial/ethnic people and low-income residents had higher estimated chemical exposure concentrations (fourth quartile) for diesel PM, 1,3-butadiene, and toluene. |
Pastor Jr 2002, Los Angeles, USA [71] | To evaluate the demographic distribution of potentially hazardous facilities and health risks associated with ambient air toxics exposures among public school children |
| California basic education survey data for school children in Los Angeles school district | Race/ethnicity, SES/income | School districts are more likely to be in census tracts with hazardous facilities, but have lower cancer risks. Hispanic students are more likely to attend schools near hazardous facilities, and have high cancer risk. |
Padilla 2014, Lille, Lyon, Marseille and Paris, France [37] | To identify whether urban neighborhoods have uneven distribution of ambient air concentrations of nitrogen dioxide and deprivation in four French metropolitan areas |
| Census data for residents of Lille, Lyon, Marseille, and Paris | Immigration, SES/income, job type, education | No consistent findings between exposure and deprivation. |
Su 2009, Los Angeles, USA [72] | To propose a method for creating an index capable of summarizing racial/ethnic and socioeconomic inequalities from the impact of cumulative environmental hazards |
| Census data for residents of Los Angeles | Race/ethnicity, poverty | Modest inequalities exist for environmental hazards in Los Angeles. The highest exposures were observed for non-White and low-SES residents. |
Schaider 2019, USA [39] | To identify determinants of nitrate concentrations in US community water systems and to evaluate disparities |
| Americans served by the community water systems, population level for 39,466 counties | Race/ethnicity, poverty, home ownership | Higher nitrate values in predominantly Hispanic neighborhoods. |
Storm 2013, New York City, USA [38] | To assess perchloroethylene exposures associated with dry cleaners in residential buildings, and to evaluate whether a disparity is present |
| Residents from buildings with or without dry cleaner; at least one eligible adult (2–64 years) and child (5–14 years) | Race/ethnicity, SES/income | In buildings with dry cleaners, indoor air levels were five high times higher in predominantly Black and/or Hispanic neighborhoods and six times higher in low-income neighborhoods. |
Author, Year | Study Objective | Exposure | Study Population and Data Source | Disparities | Results Summary |
---|---|---|---|---|---|
Mitchell 2008, England, UK [73] | To examine income-related health inequality in populations living areas with differing amounts of greenspace |
| UK mortality records, those older than retirement age were excluded | SES/income | Mortality rates are higher in lower-SES areas with low access to green space. |
Richardson 2010, New Zealand [74] | To examine the mechanisms via which greenspace availability may influence mortality outcomes, by contrasting health associations for different types of green space |
| Individual-level mortality data for every death between 1996 and 2005 from NZ Ministry of Health and restricted to urban areas | SES/income | Low-SES areas had lower access to total green space; outcome did not relate to cancer or caridovascular disease. |
Conroy 2017, California, USA [75] | To examine breast cancer risk in African American and foreign-born Hispanics and the extent to which social and built environment characteristics explained the SES associations |
| Pooled data from the San Francisco Bay Area Breast Cancer Study and Cancer Registries | Income | High-income neighborhoods had higher risk of breast cancer. White women had the highest odds, followed by Hispanic and Black. Adjustment for urban and mixed-land use characteristics decreased the SES differences. |
DeRouen 2018, San Francisco Bay Area, USA [76] | To assess if individual-level factors interact with neighborhood-level social and built environment factors to influence prostate cancer risk |
| African American and white men from the San Francisco Bay Area, aged 40–79 | SES/income | Higher-SES neighborhoods had an increased risk of prostate cancer. Higher education was protective against advanced disease in low-SES neighborhoods, but had no impact in higher-SES neighborhoods. For localized disease, the SES was largely explained by known prostate cancer risk factors and environmental factors, as well as population density, crowding, and residential mobility. |
Gomez 2011, California, USA [77] | To develop the California Neighborhoods Data System to examine neighborhood characteristics on cancer incidence and outcomes in populations |
| Population level with use of census data | Race/ethnicity, SES/income | SES was related to cancer rates, as well as residential crowding, percentage foreign-born, English knowledge, education, poverty, housing value, and gross rent. Ethnicity was related to cancer rates, SES, and exposures. |
Shams-White 2021, USA [78] | The purpose of this study was to examine associations of home neighborhood environmental factors with moderate to vigorous physical activity (MVPA) among a national sample of adolescents |
| Survey of dyads for parents and adolescents (aged 12–17); parents lived with adolescent at least 50% of time | Race/ethnicity, education | SES and race/ethnicity were not significant for MVPA. Living in higher-density neighborhoods and neighborhoods with older homes was positively associated with adolescent MVPA. Living in neighborhoods with shorter commute times was negatively associated with MVPA. |
Burgoine 2016, Greater London, UK [79] | To assess if education modifies associations beween fast-food consumption and body weight, with respect to home and work neighborhood fast-food outlet exposure |
| Participants born between 1950 and 1975 completed surveys for Fenland cohort study | Educational attainment | Greater fast-food consumption, BMI, and odds of obesity were associated with greater fast-food outlet exposure and a lower educational level. High fast-food outlet exposure amplified differences across levels of education. |
Burgoine 2018, Cambridgeshire County, UK [80] | To examine associations of neighborhood fast-food outlet exposure and household income on frequency of consumption of processed meat |
| Adults aged 38–72 registered with NHS lives within 25 miles of UK assessment centres in London | SES/income | Income and fast-food proportion were associated with BMI, body fat, obesity, and frequent processed meat consumption. Odds of obesity were greater for lowest-income participants and for those most exposed to fast-food outlets |
Maguire 2015, Norfolk, UK [81] | To assess the area-level density of takeaway food outlets and presence of supermarkets with respect to deprivation over time and to examine deprivation-specific food environment stability |
| Examined store locations and types over time (1990–2008) | SES/income | Lowest-SES arreas had highest density of fast-food outlets. |
Maguire 2017, Fenland and East Cambridgeshire, UK [82] | To compare socioeconomic differences in foodscape exposure using a number of commonly used GIS-based metrics to better understand the implications of selecting different metrics |
| Population based cohort aged 30–62 at recruitment from Fenland Study | SES/income, education | Lower-SES areas had highest percentage of fast-food outlets. |
Conroy 2018, Hawaii and California, USA [83] | To examine the associations of obesity with attributes of the social and built environment, establishing a multilevel infrastructure for future cancer research |
| Adults aged 45–75 completed a questionnaire for self reported data | Race/ethnicity, SES/income, car usage commute | SES was related to obesity. Lower density of businesses was related to Black and White women, while lower traffic density among White men was also related to obesity. |
Anderson 2014, Sydney, Australia [84] | To examine differences between shade covering in playgrounds of higher and lower-socioeconomic-status areas within metropolitan Sydney, Australia |
| Audit of playgrounds and shade structure no population was examined | SES/income | Lower-SES areas of the city had lower access to shade. Activity areas in playgrounds in the lowest-SES areas had 34% lower mean shade coverage than the highest SES regions. |
Duncan 2014, Boston, USA [85] | To examine racial/ethnic and socioeconomic disparities in the tobacco retail environment across neighborhoods in Boston |
| Ecological analysis | Race/ethnicity, poverty | Predominantly Hispanic neighborhoods had higher exposure to tobacco outlets |
Marsh 2020, New Zealand [86] | To examine the potential impact of tobacco being available only from pharmacies only, from liquor stores, or only from petrol stations in New Zealand |
| Census aged 15 and older | SES/income | Density of tobacco outlets was higher in low-SES areas. |
Tucker-Seeley 2016, Rhode Island, USA [87] | To investigate the association between neighborhood sociodemographic characteristics and tobacco retail outlet density in the state of Rhode Island |
| Ecological analysis | Race/ethnicity, SES/income, education | Tobacco density is negatively associated with income, and education; tobacco density increases with proportion of Black, Hispanic, and poverty. |
Kong 2021, USA [24] | To explore whether the racial, ethnic, and socioeconomic composition of a census tract may relate to tobacco retail density |
| Census data | Race/ethnicity, SES/income, poverty | Higher exposure to tobacco outlets for low-SES and predominantly Black or Hispanic neighborhoods. |
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Larsen, K.; Rydz, E.; Peters, C.E. Inequalities in Environmental Cancer Risk and Carcinogen Exposures: A Scoping Review. Int. J. Environ. Res. Public Health 2023, 20, 5718. https://doi.org/10.3390/ijerph20095718
Larsen K, Rydz E, Peters CE. Inequalities in Environmental Cancer Risk and Carcinogen Exposures: A Scoping Review. International Journal of Environmental Research and Public Health. 2023; 20(9):5718. https://doi.org/10.3390/ijerph20095718
Chicago/Turabian StyleLarsen, Kristian, Ela Rydz, and Cheryl E. Peters. 2023. "Inequalities in Environmental Cancer Risk and Carcinogen Exposures: A Scoping Review" International Journal of Environmental Research and Public Health 20, no. 9: 5718. https://doi.org/10.3390/ijerph20095718