| Literature DB >> 26799393 |
Sze Pui Pamela Tin1, Wendy W T Lam1, Sungwon Yoon1, Na Zhang1, Nan Xia1, Weiwei Zhang1, Ke Ma1, Richard Fielding1.
Abstract
OBJECTIVE: Health needs of different employee subgroups within an industry can differ. We report the results of a workplace cardiopulmonary risk assessment targeting workers and support staff in the construction industry.Entities:
Mesh:
Substances:
Year: 2016 PMID: 26799393 PMCID: PMC4723250 DOI: 10.1371/journal.pone.0146286
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Basic socio-demographic characteristics of participants, by occupation subgroup (n = 1765).
| Socio-demographic characteristic | Total | Construction workers | Office clerks/ professionals | p for difference between occupation groups |
|---|---|---|---|---|
| (n = 1765) | (n = 1443) | (n = 322) | ||
| n(%) | n(%) | n(%) | ||
| <0.001 | ||||
| Male | 1418 (81.0) | 1190 (83.2) | 228 (71.2) | |
| Female | 332 (19.0) | 240 (16.8) | 92 (28.8) | |
| <0.001 | ||||
| Mean, SD | 43.1 (11.9) | 44.9 (11.5) | 35.0 (10.7) | |
| <0.001 | ||||
| Chinese | 1424 (80.9) | 1134 (78.7) | 290 (90.9) | |
| Nepalese | 262 (14.9) | 257 (17.8) | 5 (1.6) | |
| Others | 74 (3.4) | 50 (3.5) | 24 (7.5) | |
| <0.001 | ||||
| Primary or below | 443 (25.2) | 437 (30.5) | 6 (1.8) | |
| Secondary | 991 (56.5) | 910 (63.4) | 81 (25.3) | |
| Tertiary or above | 321 (18.3) | 88 (6.1) | 233 (72.6) | |
| <0.001 | ||||
| <4,000 | 27 (1.6) | 21 (1.5) | 6 (1.9) | |
| 4,000- <8,000 | 33 (1.9) | 32 (2.3) | 1 (0.3) | |
| 8, 000- <15,000 | 329 (19.2) | 291 (20.8) | 38 (12.0) | |
| 15,000- <25,000 | 634 (36.9) | 575 (41.0) | 59 (18.6) | |
| 25,000- <40,000 | 466 (27.1) | 373 (26.6) | 93 (29.3) | |
| 40,000- <60,000 | 156 (9.1) | 83 (5.9) | 73 (23.0) | |
| ≥60, 000 | 73 (4.2) | 26 (1.9) | 47 (14.8) | |
| <0.001 | ||||
| Public rental housing | 900 (51.6) | 815 (57.1) | 85 (26.8) | |
| Subsidized sale flats | 180 (10.3) | 148 (10.4) | 32 (10.1) | |
| Private permanent housing | 462 (26.5) | 283 (19.8) | 179 (56.5) | |
| Others | 202 (11.6) | 181 (12.7) | 21 (6.6) | |
| <0.001 | ||||
| Never married | 377 (21.4) | 201 (14.0) | 176 (55.0) | |
| Cohabited/ Married | 1307 (74.3) | 1169 (81.3) | 138 (43.1) | |
| Widowed | 12 (0.7) | 11 (0.8) | 1 (0.3) | |
| Divorced/ Separated | 60 (3.4) | 55 (3.8) | 5 (1.6) | |
| Others | 2 (0.1) | 2 (0.1) | 0 (0.0) |
a) Chi-square test for categorical variables; students t-test used for continuous variables to test for statistical significance of differences observed between occupation groups (construction workers vs. office clerks/professionals) accounting for linear-by-linear association for ordinal variables
Lifestyle characteristics of participants, by occupation subgroup (n = 1765).
| Lifestyle behaviour | Total | Construction workers | Office clerks/ professionals |
|---|---|---|---|
| (n = 1765) | (n = 1443) | (n = 322) | |
| n(%) | n(%) | n(%) | |
| | 617 (35.3) | 559 (39.1) | 58 (18.2) |
| | 41 (2.3) | 34 (2.4) | 7 (2.2) |
| | 131 (7.5) | 103 (7.2) | 28 (8.8) |
| | 957 (54.8) | 732 (51.3) | 225 (70.8) |
| | 517 (30.0) | 422 (30.0) | 95 (30.2) |
| | 1204 (70.0) | 984 (70.0) | 220 (69.8) |
| | 271 (15.6) | 111 (7.8) | 160 (51.0) |
| | 1019 (58.5) | 893 (62.6) | 126 (40.1) |
| | 451 (25.9) | 423 (29.6) | 28 (8.9) |
| | 955 (55.3) | 819 (58.1) | 136 (42.6) |
| | 304 (17.6) | 229 (16.3) | 75 (23.5) |
| | 249 (14.4) | 183 (13.0) | 66 (20.7) |
| | 220 (12.7) | 178 (12.6) | 42 (13.2) |
| | 271 (15.4) | 209 (14.6) | 62 (19.5) |
| | 511 (29.2) | 412 (28.8) | 99 (31.0) |
| | 304 (17.4) | 237 (16.6) | 67 (21.0) |
| | 665 (38.0) | 574 (40.1) | 91 (28.5) |
| | 84 (4.8) | 69 (4.9) | 15 (4.7) |
| | 253 (14.5) | 201 (14.0) | 52 (16.3) |
| | 333 (19.0) | 249 (17.4) | 84 (26.3) |
| | 1080 (61.7) | 912 (63.7) | 168 (52.7) |
| | 344 (19.7) | 270 (18.9) | 74 (23.3) |
| | 1134 (64.9) | 924 (64.7) | 210 (66.0) |
| | 184 (10.5) | 161 (11.3) | 23 (7.2) |
| | 84 (4.8) | 73 (5.1) | 11 (3.5) |
| | 332 (19.0) | 289 (20.3) | 43 (13.5) |
| | 1079 (61.9) | 875 (61.4) | 204 (63.9) |
| | 232 (13.3) | 176 (12.4) | 56 (17.6) |
| | 101 (5.8) | 85 (6.0) | 16 (5.0) |
| | 201 (11.5) | 173 (12.1) | 28 (8.8) |
| | 547 (31.3) | 463 (32.4) | 84 (26.3) |
| | 393 (22.5) | 300 (21.0) | 93 (29.2) |
| | 608 (34.8) | 494 (34.5) | 114 (35.7) |
| | 1046 (60.5) | 911 (64.6) | 135 (42.3) |
| | 431 (24.9) | 310 (22.0) | 121 (37.9) |
| | 144 (8.3) | 102 (7.2) | 42 (13.2) |
| | 108 (6.2) | 87 (6.2) | 21 (6.6) |
a) Chi-square test to test for statistical significance of differences observed between occupation groups (construction workers vs. office clerks/professionals) accounting for linear-by-linear association for ordinal variables
*p<0.05;
** p<0.01;
*** p<0.001
Lifestyle risk groups, by occupation subgroup (n = 1765).
| Total | Construction workers | Office clerks/ professionals | |
|---|---|---|---|
| (n = 1765) | (n = 1443) | (n = 322) | |
| n(%) | n(%) | n(%) | |
| | 789 (45.2) | 696 (48.7) | 93 (29.2) |
| | 957 (54.8) | 732 (51.3) | 225 (70.8) |
| | 517 (30.0) | 422 (30.0) | 95 (30.2) |
| | 1204 (70.0) | 984 (70.0) | 220 (69.8) |
| | 271 (15.6) | 111 (7.8) | 160 (51.0) |
| | 1470 (84.4) | 1316 (92.2) | 154 (49.0) |
| | 1508 (87.3) | 1231 (87.4) | 277 (86.8) |
| | 220 (12.7) | 178 (12.6) | 42 (13.2) |
| | 1120 (64.0) | 887 (62.0) | 233 (73.0) |
| | 629 (36.0) | 543 (38.0) | 86 (27.0) |
| | 1577 (90.4) | 1296 (90.9) | 281 (88.1) |
| | 168 (9.6) | 130 (9.1) | 38 (11.9) |
| | 703 (40.6) | 519 (36.7) | 184 (58.2) |
| | 1027 (59.4) | 895 (63.3) | 132 (41.8) |
| | 252 (14.6) | 189 (13.4) | 63 (19.7) |
| | 1477 (85.4) | 1221 (86.6) | 256 (80.3) |
*p<0.05;
** p<0.01;
*** p<0.001
Health risk factors, by occupation subgroup (n = 1765).
| Total | Construction workers | Office clerks/professionals | |
|---|---|---|---|
| (n = 1765) | (n = 1443) | (n = 322) | |
| n(%) | n(%) | n(%) | |
| | 256 (14.7) | 189 (13.3) | 67 (21.0) |
| | 1117 (64.0) | 914 (64.1) | 203 (63.6) |
| | 371 (21.3) | 322 (22.6) | 49 (15.4) |
| | 1381 (80.5) | 1132 (80.6) | 249 (80.3) |
| | 261 (15.2) | 217 (15.4) | 44 (14.2) |
| | 73 (4.3) | 56 (4.0) | 17 (5.5) |
| | 694 (40.5) | 583 (41.6) | 111 (35.8) |
| | 641 (37.4) | 528 (37.6) | 113 (36.5) |
| | 378 (22.1) | 292 (20.8) | 86 (27.7) |
| | 1617 (92.3) | 1310 (92.4) | 307 (97.2) |
| | 50 (2.9) | 46 (3.2) | 4 (1.3) |
| | 66 (3.8) | 61 (4.3) | 5 (1.6) |
| | 31 (1.8) | 22 (1.5) | 9 (2.8) |
| | 505 (28.6) | 378 (26.2) | 127 (39.4) |
| | 401 (22.7) | 334 (23.1) | 67 (20.8) |
| | 807 (46.3) | 694 (48.6) | 113 (35.8) |
| | 867 (49.9) | 754 (53.1) | 113 (35.5) |
| | 872 (50.1) | 667 (46.9) | 205 (64.5) |
| | 742 (42.6) | 588 (41.2) | 154 (48.7) |
| | 1000 (57.4) | 838 (58.8) | 162 (51.3) |
| | 468 (27.2) | 397 (28.2) | 71 (22.5) |
| | 1255 (72.8) | 1011 (71.8) | 244 (77.5) |
*p<0.05;
** p<0.01;
*** p<0.001
Cross-sectional association between occupation subgroup and number of metabolic risk factors (n = 1765).
| Number of metabolic risk factors | ||||||
|---|---|---|---|---|---|---|
| Occupation subgroup | 1 (vs. 0) risk factor | 2 (vs. 0) risk factors | 3 (vs. 0) risk factor | 1 (vs. 0) risk factor | 2 (vs. 0) risk factors | 3 (vs. 0) risk factor |
| 1 | 1 | 1 | 1 | 1 | 1 | |
| 1.87 | 1.79 | 1.77 | 1.62 | 1.43 | 1.63 | |
| (1.33 to 2.63) | (1.25 to 2.55 | (1.12 to 2.80) | (1.03 to 2.56) | (0.89 to 2.30) | (0.89 to 2.99) | |
a) Model 1a adjusted for age and sex
b) Model 1b adjusted for variables in model 1a and additionally for educational attainment and marital status
*p<0.05;
** p<0.01;
*** p<0.001