| Literature DB >> 36077790 |
Giulia Collatuzzo1, Federica Teglia1, Paolo Boffetta1,2.
Abstract
Cancer occurrence is characterized globally by profound socioeconomic differences. Occupation is a fundamental component of socioeconomic status. In this review, we discuss the role of occupation as a determinant of cancer disparities. First, we address the issue of participation in cancer screening programs based on income, health insurance, occupational status and job title. Second, we review the role of occupation in contributing to disparities by acting as a mediator between cancer and (i) education and (ii) race/ethnicity. Lastly, we analyze data from a multicenter case-control study of lung cancer to calculate the mediating role of occupational exposure to diesel exhaust, silica and welding fumes in the association between education and lung cancer. By addressing the complex paths from occupation to cancer inequalities from multiple points of view, we provide evidence that occupational-related characteristics, such as income, health insurance, unemployment and hazardous exposures impinge on cancer control and outcomes. The increasing awareness of these aspects is fundamental and should lead to public health interventions to avoid inequalities rising from occupational factors.Entities:
Keywords: cancer disparities; cancer screening; education; ethnicity; lung cancer; mediation analysis; occupation; occupational exposure; workers
Year: 2022 PMID: 36077790 PMCID: PMC9454748 DOI: 10.3390/cancers14174259
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.575
Effect of different disparities factors into participation in cancer screening, based on selected studies.
| Study | Country | Disparity Factors | Population | Findings | |||
|---|---|---|---|---|---|---|---|
| Rajaguru et al., 2022 [ | Korea | Education | 20,347, both sexes, aged 40 and older targeted for cancer screening; Korea National Health and Nutrition Examination Survey (KNHANES) |
| |||
| University or over vs. elementary: 1.25, 1.02–1.47 | |||||||
| Occupation vs. no occupation: 1.41, 1.15–1.73 | |||||||
| Private vs. no private health insurance: 2.73, 1.50–4.94 | |||||||
| Income Q4: 4.07, 1.63–10.13 (reference: Q1) | |||||||
| Leinonen et al., 2017 [ | Norway | Education | Norwegian women targeted for cervical cancer screening |
| |||
| 42% from primary school, 30% from university; | |||||||
| 41% manual, trades, military occupation, 28% managerial occupation; | |||||||
| 43% unemployed, 30% employed; | |||||||
| 45% lowest income, 29% highest income | |||||||
| Broberg G et al., 2018 [ | Sweden | Income | Women aged 30–60 targeted for cervical cancer screening. |
| |||
| Disposable family income (<24.222 € vs. >50.111 €): 2.06, 2.01–2.11; | |||||||
| Low education: (≤9 years vs. ≥12 years) 1.77, 1.73–1.81; | |||||||
| Unemployment: 2.15, 2.11–2.19 | |||||||
| Shim HY et al., 2019 [ | Korea | Occupation | 5626, both sexes, aged 40 and over targeted for gastric cancer screening |
| |||
| Manual workers: 0.74, 0.55–0.99 | |||||||
| Sales/service workers: 0.62, 0.47–0.81 | |||||||
| Machine operators: 0.67, 0.50–0.91 | |||||||
| vs office workers/clerk; | |||||||
| Part-time workers: 0.81, 0.67–0.99 vs. full-time workers; | |||||||
| ≥60 working hours: 0.93, 0.78–1.11 vs. ≤40 h; | |||||||
| Shift workers: 0.87, 0.73–1.04 vs. day workers (adjusted for age, gender, smoking and alcohol) | |||||||
| Shete S et al., 2021 [ | USA (pooled analysis from 11 population-based surveys) | Insurance Education | 2897 women aged 50–75 targeted for colorectal and breast cancer screening |
| |||
| No difference by income in CCR and BC screening | |||||||
| CCR participation 82% in urban vs. 78% in rural residents, no difference in breast | |||||||
| CCR screening participation: | |||||||
| Private or employee-based health insurance: 1.99, 1.30–3.06 vs. no insurance | |||||||
| Medicare: 2.34, 1.43–3.84 vs. no insurance | |||||||
| Medicaid: 2.00, 1.15–3.49 vs. no insurance | |||||||
| Education ≥ college: 1.30, 0.99–1.71 | |||||||
| vs. ≤high school | |||||||
| Post-high school trainings: 1.15, 0.88–1.51 vs. ≤high school | |||||||
| BC screening participation: | |||||||
| Private or employee-based health insurance: 3.80, 2.45–5.88 vs. no insurance | |||||||
| Medicare: 2.84, 1.81–4.47 vs. no insurance | |||||||
| Medicaid: 2.58, 1.47–4.52 vs. no insurance | |||||||
| Education ≥ college: 1.19, 0.90–1.58 vs. ≤ high school | |||||||
| Post-high school trainings: 1.17, 0.90–1.52 vs. ≤ high school | |||||||
| Fedewa et al., 2017 [ | USA | Occupational characteristics (occupation, industry type and employer size) | National Health Interview Surveys (NHIS) among eligible US workers (CC women 21–65 years; | Higher rates of colonoscopy in larger employers (500+ workers), | |||
| lower rates in smaller size employers (1–24 workers) | |||||||
| Insured employees % positively related to employer size | |||||||
|
| |||||||
| <50% in construction, food service, | |||||||
| production/transport, healthcare/personal support workers; | |||||||
| 66% in scientists and educators | |||||||
| Higher % of uninsured in construction | |||||||
| and production/transport workers (also with lower adherence to cancer screening). | |||||||
| (Ref =Healthcare practitioners) | |||||||
| Food service | 0.94 | 0.9 | 0.98 | ||||
| Construction | 0.91 | 0.87 | 0.95 | ||||
| Sales | 0.94 | 0.9 | 0.97 | ||||
| Office support | 0.97 | 0.95 | 1 | ||||
| Production | 0.95 | 0.91 | 0.98 | ||||
| Carney et al., 2012 [ | USA | Insurance | Oregon Rural Practice-based Research Network (ORPRN) |
| |||
| Medicare/Medicare plus private: 1.63, 1.04–2.56 | |||||||
| Medicaid/Medicaid plus private: 0.98, 0.41–2.31 | |||||||
| Uninsured: 0.76, 0.39–1.48 | |||||||
| Mammography: | |||||||
| Medicare/Medicare plus private: 0.73 (0.53–1.02) | |||||||
| Medicaid/Medicaid plus private: 0.67 (0.41–1.09) | |||||||
| Uninsured:0.44 (0.24–0.79) | |||||||
| CC screening | |||||||
| Medicare/Medicare plus private: 0.62 (0.25–1.55) | |||||||
| Medicaid/Medicaid plus private: 0.79 (0.24–2.58) | |||||||
| Uninsured: 0.48 (0.19–1.24) | |||||||
| CCR screening | |||||||
| Medicare/Medicare plus private: 0.77 (0.53–1.10) | |||||||
| Medicaid/Medicaid plus private: 0.60 (0.34–1.05) | |||||||
| Uninsured:0.43 (0.19–1.00) | |||||||
| Ishii et al., 2021 [ | Japan | Education | 2016 Comprehensive Survey of Living Conditions of People on Health and Welfare, a national cross-sectional survey conducted by the Japanese Ministry of Health, Labor and Welfare. |
| |||
|
| CC | BC | CRC | ||||
| University | 54.6 | 56.1 | 46.3 | ||||
| College/vocational school | 48.3 | 48.4 | 41.7 | ||||
| High school | 42.4 | 43.9 | 39.6 | ||||
| Junior high school | 28.4 | 29.5 | 30.5 | ||||
|
| |||||||
| Permanent worker | 58.7 | 59.9 | 53.9 | ||||
| Contracted worker | 53.6 | 55.1 | 50.2 | ||||
| Dispatched worker | 46.3 | 46.9 | 34.1 | ||||
| Part-time worker | 44.3 | 44.9 | 37.1 | ||||
| Self-employed/other | 42.6 | 43.6 | 37.6 | ||||
| Homemaker | 39.7 | 41.4 | 36.5 | ||||
| Not working | 29.5 | 32 | 31.6 | ||||
| Tapera et al., 2019 [ | Zimbabwe | Education | 143 women aged 25 and older targeted for cervical cancer screening | Education | |||
| Primary | 0.22 | to 895 | |||||
| Secondary | 2.14 | 0.23 to 19.82 | |||||
| Higher | – | – | |||||
| None | |||||||
| Occupation | |||||||
| Unemployed | 0.1 | 0.01 to 1.60 | |||||
| Professional | 0.84 | 0.05 to 13.11 | |||||
| Self-employed | Ref | – | |||||
| Other | 0.67 | 0.02 to 22.98 | |||||
| Amin et al., 2020 [ | Iran | Education |
| ||||
| Illiterate | 1 | ||||||
| 1–6 years | 1.76 | 1.531 | 2.029 | ||||
| 6–12 years | 2.47 | 2.088 | 2.932 | ||||
| >12 years | 2.24 | 1.803 | 2.786 | ||||
|
| |||||||
| Unemployed | 1 | ||||||
| Employed | 0.83 | 0.714 | 0.986 | ||||
| Retired | 1.07 | 0.713 | 1.622 | ||||
| Student | 0.92 | 0.423 | 2.019 | ||||
|
| |||||||
| No | 1 | ||||||
| Yes | 1.5 | 1.245 | 1.808 | ||||
BC = breast cancer; CC = cervical cancer; CRC = colorectal cancer. Ref = reference category.
Selected studies reporting information on education and race/ethnicity as a reason for occupational disparities.
| Ref. | Outcome | Type of Cancer | Population | Industry/Type of Exposure | Data | Finding |
|---|---|---|---|---|---|---|
| Michaels D, 1983 [ | Mortality | Lung | Black | Steel workers | 89% of Blacks working in coke plants were employed in ovens vs. 31% of Whites | Three times higher lung cancer mortality in Blacks than in Whites employed in the same coke plants. |
| Incidence | Stomach, lung, blood, bladder, lymphatic and prostate | Black | Rubber industry | 27% of Blacks working on mixing and compounding vs. 3% of Whites | Elevated risk of stomach, lung, blood, bladder, lymphatic and prostate cancer in mixing and compounding workers. | |
| Mortality | Shipyards | 38% of the shipyard workforce at the end of World War II were Black | High mortality for asbestos-related cancers. | |||
| Incidence | Lung | Black | Foundry | More than 25% of foundry workers were Black at the end of World War II | Black foundry workers are at a greater risk than the industry’s White workers. | |
| Juon HS et al., 2021 [ | Cancer incidence; prevalence of exposure to carcinogens of the lung | Lung | Black | NA | Black vs. White Silica: 10% vs. 6.3% Asbestos: 7% vs. 4.5% Foundry/steel mining 7.7% vs. 4.1% Painting 7.8% vs. 5% | Blacks seem to need a particular protection and need to be addressed with educational programs at the workplace. |
| Boyle et al., 2015 [ | Occupational exposure | NA | Ethnic minorities in Australia | NA | Marked difference in the exposure to the overall carcinogens ( | Targeted and informed occupational health and safety measures to be implemented |
| Carey RN et al., 2021 [ | Occupational exposure | NA | Ethnic minorities in Australia | Exposure to benzene, diesel engine exhaust, environmental tobacco smoke, ionizing radiation, lead, polycyclic aromatic hydrocarbons other than vehicle exhausts, graveyard shiftwork, silica, solar ultraviolet radiation and wood dust | 79% of Māori/Pasifika workers vs. 67% of New Zealand Caucasian workers were exposed to at least one occupational carcinogen. | Ethnic disparities in occupational exposure to carcinogens after migration to Australia. Māori/Pasifika workers were more likely to report exposure to carcinogens, in particular environmental tobacco smoke. |
| Gosselin A et al., 2020 [ | Occupational exposure | NA | Australian immigrants born in New Zealand, India and Philippines | Exposure to solar and artificial ultraviolet radiation, diesel engine exhaust, environmental tobacco smoke, benzene, lead, silica, wood dust, other polycyclic aromatic hydrocarbons and shift work | Risk of exposure to at least one occupational carcinogen in New Zealand workers compared to Indian: 1.61, 1.12–2.32. | The prevalence of exposure to workplace hazards varied by both social position and occupational characteristics. |
| Pokhrel A et al., 2010 [ | Cancer survival | NA | Finland | NA | In 1996–2005, 4–7% of the deaths in Finnish cancer patients could have been avoided in the 5 years after diagnosis, if all the patients had the highest educational background. | High survival rates in highly educated and highly health-conscious people; low survival rates in those with low education; less favorable distribution of tumor stages in the lower education category. |
| Menvielle G et al., 2010 [ | Occupational exposure | Lung | Men, EPIC cohort (Denmark, the United Kingdom, Germany, Italy, Spain and Greece) | Exposure to asbestos, heavy metals and polycyclic aromatic hydrocarbons | After adjustment (smoke and fruits/vegetables), occupation explained 14% of the excess risk. | A common hypothesis is that a higher exposure to risk factors explains the higher incidence of lung cancer in low socioeconomic groups. The risk factors are seen as intermediate variables |
Selected characteristics of the study population.
| Characteristics | Lung Cancer Cases | Controls | OR, 95% CI |
|---|---|---|---|
| Smoking status | |||
| -Never | 274 (9.6%) | 1038 (35.4%) | Ref |
| -Former | 1310 (45.8%) | 995 (33.9%) | 6.27, 5.27–7.47 |
| -Current | 1277 (44.6%) | 900 (30.7%) | 6.67, 5.59–7.96 |
| Diesel exhaust * | |||
| -No | 2108 (73.7%) | 2289 (78.0%) | Ref |
| -Yes | 753 (26.3%) | 647 (22.0%) | 1.15, 1.01–1.33 |
| Crystalline silica * | |||
| -No | 2694 (94.2%) | 2827 (96.3%) | Ref |
| -Yes | 167 (5.84%) | 109 (3.71%) | 1.75, 1.33–2.31 |
| Welding fumes * | |||
| -No | 1783 (62.3%) | 2013 (68.6%) | Ref |
| -Yes | 1078 (37.7%) | 923 (31.4%) | 1.18, 1.04–1.35 |
| Education † | |||
| -Low | 402 (14.1%) | 582 (19.9%) | Ref |
| -Medium | 2026 (70.9%) | 2007 (68.5%) | 1.34, 1.15–1.56 |
| -High | 427 (15.0%) | 341 (11.6%) | 1.74, 1.38–2.19 |
* ever exposure; † based on country-specific cut-points (see [54] for details).
Analysis of the mediating effect of selected occupational carcinogens on the association between education and lung cancer.
| OR and 95% CI of Lung Cancer | ||||||||
|---|---|---|---|---|---|---|---|---|
| Diesel Exhaust | Crystalline Silica | Welding Fumes | Any | |||||
| aOR | OR | aOR | OR | aOR | OR | aOR | OR | |
| NDE | 1.26 | 1.29 | 1.27 | 1.33 | 1.26 | 1.29 | 1.42 | 1.28 |
| NIE | 1.02 | 1.04 | 1.01 | 1.01 | 1.03 | 1.04 | 1.06 | 1.04 |
| TE | 1.29 | 1.34 | 1.28 | 1.34 | 1.29 | 1.34 | 1.50 | 1.34 |
| PM | 7.8% | 12.5% | 4.9% | 3.4% | 10.8% | 13.3% | 13.4% | 14.8% |
OR, odds ratio. aOR = adjusted odds ratio; adjusted for country, sex, age and smoking status. CI, confidence interval. NDE, natural direct effect. NIE, natural indirect effect. TE, total effect. PM, proportion of mediation. Any = exposure to diesel/kerosene or silica or welding.