| Literature DB >> 29026614 |
Hee Sung Lee1, Guang Hwi Kim1, Sung Won Jung1, June-Hee Lee1, Kyung-Jae Lee1, Joo Ja Kim1.
Abstract
BACKGROUND: Around the globe, discrimination has emerged as a social issue requiring serious consideration. From the perspective of public health, the impact of discrimination on the health of affected individuals is a subject of great importance. On the other hand, subjective well-being is a key indicator of an individual's physical, mental, and social health. The present study aims to analyze the relationship between Korean employed workers' subjective health and their exposure to perceived discrimination.Entities:
Keywords: Korean working conditions survey(KWCS); Perceived discrimination; WHO-5 index; Well-being
Year: 2017 PMID: 29026614 PMCID: PMC5625820 DOI: 10.1186/s40557-017-0205-9
Source DB: PubMed Journal: Ann Occup Environ Med ISSN: 2052-4374
General and occupational characteristics of the study participants by type of perceived discrimination
| Total | Perceived discrimination | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Age | Educational attainment | Employment type | ||||||||
| N (%) | No (%) | Yes (%) |
| No (%) | Yes (%) | P-value* | No (%) | Yes (%) |
| |
| General characteristics | ||||||||||
| Gender | ||||||||||
| Male | 17,066 (51.7) | 16,137 (94.6) | 929 (5.4) | <0.001† | 16,166 (94.7) | 900 (5.3) | 0.692 | 16,415 (96.2) | 651 (3.8) | 0.795 |
| Female | 15,918 (48.3) | 14,869 (93.4) | 1049 (6.6) | 15,094 (94.8) | 824 (5.2) | 15,303 (96.1) | 616 (3.9) | |||
| Age (years) | ||||||||||
| 20–29 | 4331 (13.1) | 4094 (94.5) | 237 (5.5) | <0.001† | 4018 (92.8) | 314 (7.2) | <0.001† | 4104 (94.8) | 227 (5.2) | <0.001† |
| 30–39 | 8624 (26.1) | 8259 (95.8) | 365 (4.2) | 8113 (94.1) | 511 (5.9) | 8382 (97.2) | 242 (2.8) | |||
| 40–49 | 9678 (29.3) | 9199 (95.1) | 479 (4.9) | 9207 (95.1) | 471 (4.9) | 9370 (96.8) | 308 (3.2) | |||
| 50–59 | 6622 (20.1) | 6157 (93.0) | 465 (7.0) | 6331 (95.6) | 291 (4.4) | 6329 (95.6) | 293 (4.4) | |||
| ≥ 60 | 3729 (11.3) | 3296 (88.4) | 433 (11.6) | 3591 (96.3) | 139 (3.7) | 3533 (94.7) | 196 (5.3) | |||
| Education | ||||||||||
| Middle school or lower | 3739 (11.3) | 3342 (89.4) | 397 (10.6) | <0.001† | 3589 (96.0) | 149 (4.0) | <0.001† | 3535 (94.5) | 204 (5.5) | <0.001† |
| High school | 11,975 (36.3) | 11,173 (93.3) | 802 (6.7) | 11,429 (95.4) | 546 (4.6) | 11,415 (95.3) | 559 (4.7) | |||
| College | 4686 (14.2) | 4476 (95.5) | 210 (4.5) | 4449 (94.9) | 237 (5.1) | 4503 (96.1) | 183 (3.9) | |||
| University or higher | 12,585 (38.2) | 12,014 (95.5) | 571 (4.5) | 11,793 (93.7) | 792 (6.3) | 12,265 (97.5) | 320 (2.5) | |||
| Occupational characteristics | ||||||||||
| Occupation type | ||||||||||
| Management/professional | 5358 (16.2) | 5089 (95.0) | 269 (5.0) | <0.001† | 5035 (94.0) | 323 (6.0) | <0.001† | 5206 (97.1) | 153 (2.9) | <0.001† |
| Office work | 9412 (28.5) | 9017 (95.8) | 395 (4.2) | 8765 (93.1) | 647 (6.9) | 9178 (97.5) | 234 (2.5) | |||
| Service/sales | 8054 (24.4) | 7547 (93.7) | 507 (6.3) | 7716 (95.8) | 338 (4.2) | 7742 (96.1) | 312 (3.9) | |||
| Technical | 5180 (15.7) | 4916 (94.9) | 264 (5.1) | 4972 (96.0) | 208 (4.0) | 4951 (95.6) | 229 (4.4) | |||
| Simple labor | 4980 (15.1) | 4436 (89.1) | 544 (10.9) | 4772 (95.8) | 209 (4.2) | 4641 (93.2) | 339 (6.8) | |||
| Monthly Income (10,000 won) | ||||||||||
| < 130 | 6751 (20.5) | 6150 (91.1) | 601 (8.9) | <0.001† | 6533 (96.8) | 218 (3.2) | <0.001† | 6370 (94.4) | 381 (5.6) | <0.001† |
| 130–199 | 8463 (25.7) | 7857 (92.9) | 605 (7.1) | 7977 (94.3) | 486 (5.7) | 8056 (95.2) | 407 (4.8) | |||
| 200–299 | 9576 (29.0) | 9174 (95.8) | 402 (4.2) | 9081 (94.8) | 495 (5.2) | 9277 (96.9) | 299 (3.1) | |||
| ≥ 300 | 8195 (24.8) | 7824 (95.5) | 371 (4.5) | 7669 (93.6) | 525 (6.4) | 8016 (97.8) | 179 (2.2) | |||
| Working hours (per week) | ||||||||||
| ≤ 40 | 17,367 (52.7) | 16,464 (94.8) | 911 (5.2) | <0.001† | 16,542 (95.2) | 826 (4.8) | <0.001† | 16,751 (96.5) | 616 (3.5) | <0.001† |
| 41–52 | 9627 (29.2) | 9054 (94.0) | 573 (6.0) | 9060 (94.1) | 567 (5.9) | 9298 (96.6) | 329 (3.4) | |||
| 53–60 | 4170 (12.6) | 3860 (92.6) | 310 (7.4) | 3833 (94.3) | 236 (5.7) | 3967 (95.1) | 203 (4.9) | |||
| ≥ 61 | 1820 (5.5) | 1635 (89.8) | 186 (10.2) | 1725 (94.7) | 96 (5.3) | 1702 (93.5) | 118 (6.5) | |||
| Employment type | ||||||||||
| Regular worker | 25,231 (76.5) | 23,936 (94.9) | 1295 (5.1) | <0.001† | 23,850 (94.5) | 1381 (5.5) | 0.001† | 24,521 (97.2) | 710 (2.8) | <0.001† |
| Temporary worker | 5597 (17.0) | 5180 (92.5) | 417 (7.5) | 5342 (95.4) | 255 (4.6) | 5239 (93.6) | 358 (6.4) | |||
| Day labor | 2157 (6.5) | 1889 (87.6) | 267 (12.4) | 2068 (95.9) | 89 (4.1) | 1958 (90.8) | 199 (9.2) | |||
*Calculating using Chi-square test
† P < 0.05
ªa 2–3 years course college
Differences in general and occupational characteristics according to well-being
| Well-being | |||
|---|---|---|---|
| Fair | Poor | ||
| N (%) | N (%) |
| |
| General characteristics | |||
| Gender | |||
| Male | 14,094 (82.6) | 2972 (17.4) | 0.097 |
| Female | 13,034 (81.9) | 2884 (18.1) | |
| Age (years) | |||
| 20–29 | 3754 (86.7) | 578 (13.3) | <0.001† |
| 30–39 | 7451 (86.4) | 1173 (13.6) | |
| 40–49 | 7988 (82.5) | 1690 (17.5) | |
| 50–59 | 5269 (79.6) | 1353 (20.4) | |
| ≥ 60 | 2666 (71.5) | 1063 (28.5) | |
| Education | |||
| Middle school or below | 2607 (69.7) | 1132 (30.3) | <0.001† |
| High school | 9564 (79.9) | 2411 (20.1) | |
| Collegeb | 3956 (84.4) | 730 (15.6) | |
| University or above | 11,002 (87.4) | 1583 (12.6) | |
| Occupational characteristics | |||
| Occupation type | |||
| Management/professional | 4650 (86.8) | 708 (13.2) | <0.001† |
| Office work | 8194 (87.1) | 1217 (12.9) | |
| Service/sales | 6652 (82.6) | 1401 (17.4) | |
| Technical | 4137 (79.9) | 1043 (20.1) | |
| Simple labor | 3494 (70.2) | 1486 (29.8) | |
| Monthly Income (10,000 won) | |||
| < 130 | 5126 (75.9) | 1625 (24.1) | <0.001† |
| 130–199 | 6795 (80.3) | 1668 (19.7) | |
| 200–299 | 8077 (84.3) | 1499 (15.7) | |
| ≥ 300 | 7130 (87.0) | 1065 (13.0) | |
| Working hours (per week) | |||
| ≤ 40 | 14,456 (83.2) | 2911 (16.8) | <0.001† |
| 41–52 | 8024 (83.3) | 1603 (16.7) | |
| 53–60 | 3291 (78.9) | 879 (21.1) | |
| ≥ 61 | 1357 (74.6) | 463 (25.4) | |
| Employment type | |||
| Regular worker | 21,199 (84.0) | 4032 (16.0) | <0.001† |
| Temporary worker | 4413 (78.9) | 1183 (21.1) | |
| Day labor | 1516 (70.3) | 641 (29.7) | |
*Calculating using Chi-square test
† P < 0.05
ªa 2–3 years course college
Level of well-being according to the type and number of exposures to workplace discrimination
| Characteristics | Perceived discrimination | Well-being | ||
|---|---|---|---|---|
| Fair | Poor | |||
| N (%) | N (%) |
| ||
| Age | ||||
| No | 25,686 (82.8) | 5320 (17.2) | <0.001† | |
| Yes | 1442 (72.9) | 536 (27.1) | ||
| Educational attainment | ||||
| No | 25,772 (82.4) | 5488 (17.6) | <0.001† | |
| Yes | 1356 (78.7) | 368 (21.3) | ||
| Employment type | ||||
| No | 26,226 (82.7) | 5492 (17.3) | <0.001† | |
| Yes | 903 (71.3) | 364 (28.7) | ||
| Numbers | ||||
| 0 | 24,246 (83.1) | 4940 (16.9) | <0.001† | |
| 1 | 2189 (77.6) | 632 (22.4) | ||
| 2 | 567 (72.4) | 216 (27.6) | ||
| 3 | 126 (64.9) | 68 (35.1) | ||
*Calculating using Chi-square test
†P < 0.05
Odds ratios and incidence rate ratio for well-being according to the type and number of exposures to workplace discrimination
| Characteristics | Perceived discrimination | ORa | IRRb | ||
|---|---|---|---|---|---|
| OR | 95% CI | IRR | 95% CI | ||
| Age | |||||
| No | 1.00 | – | 1.00 | – | |
| Yes | 1.51 | 1.36–1.68 | 1.41 | 1.28–1.56 | |
| Educational attainment | |||||
| No | 1.00 | – | 1.00 | – | |
| Yes | 1.43 | 1.26–1.61 | 1.37 | 1.22–1.54 | |
| Employment type | |||||
| No | 1.00 | – | 1.00 | – | |
| Yes | 1.68 | 1.48–1.91 | 1.48 | 1.31–1.67 | |
| Numbers | |||||
| 0 | 1.00 | – | 1.00 | – | |
| 1 | 1.32 | 1.20–1.45 | 1.27 | 1.16–1.40 | |
| 2 | 1.69 | 1.44–1.99 | 1.54 | 1.32–1.80 | |
| 3 | 2.60 | 1.92–3.53 | 2.01 | 1.52–2.67 | |
aOR and 95% CI were calculated using multiple logistic regression model adjusted for sex, age, education, occupation type, income, working hours, and employment type
bIRR and 95% CI were calculated using a zero-inflated negative binomial regression model adjusted for sex, age, education, occupation type, income, working hours, and employment type
OR odds ratio, IRR incidence rate ratio, CI confidence interval