Journal List > J Korean Acad Community Health Nurs > v.28(4) > 1058490

Lee: Effects of Working Environment and Socioeconomic Status on Health Status in Elderly Workers: A Comparison with Non-Elderly Workers

Abstract

Purpose

The purpose of this study were to compare working condition, socioeconomic status, and health status between elderly and non-elderly workers and to examine the influencing factors of health status according to age groups.

Methods

This study is a secondary analysis of data extracted from the 2014 Korean Working Conditions Survey. For the present analysis, 15,980 elderly workers over the age of 55 and 32,037 non-elderly workers under the age of 55 were selected.

Results

The prevalence of subjective unhealthy status and poor mental health were significantly higher among the elderly workers than the non-elderly workers. The elderly workers were more likely to have lower level of education and income than the non-elderly workers. They also reported less support from colleagues and managers, however, have more decision authority. Among the elderly workers, long working hours, awkward posture, physical environmental risks, quantitative demand, decision authority, social support, age discrimination, education level, and income level were significant predictors of subjective health status or mental health.

Conclusion

For keeping elderly workers healthy and productive, work environment needs to become more age-friendly. An age-friendly workplace may include: accommodative support, workers’ participation, minimization of environment risk, etc.

References

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Table 1.
Differences in General Characteristics & Socioeconomic Conditions by Age of Subjects
Variables Categories <55 (n=32,037) ≥55 (n=15,980) x2 (p)
n (%) n (%)
Age Range (Min~Max) 16~54 55~98
M±SE 40.3±0.10 63.6±0.52
Gender Male 15,920 (49.4) 8,209 (51.6) 20.13 (.148)
Female 16,117 (50.6) 7,771 (48.4)
Occupation Managers Professionals 770 (2.6) 2,603 (8.9) 309 (2.5) 234 (1.8) 12,085.75 (<.001)
Technicians and associate professionals 1,688 (5.7) 219 (1.7)
Clerks 7,003 (26.3) 497 (4.3)
Service workers 5,707 (16.3) 2,388 (15.5)
Sales workers Skilled agricultural and fishery workers 6,584 (17.4) 739 (1.2) 2,315 (13.3) 4,644 (17.6)
Craft and related trades workers 2,985 (9.4) 1,024 (7.8)
Plant and machine operators and assemblers 1,910 (5.8) 815 (6.0)
Elementary workers 1,957 (6.3) 3,531 (29.4)
Armed forces 75 (0.2) 0 (0.0)
Employment type Permanent 17,901 (63.6) 3,016 (26.5) 5,431.47 (<.001)
Temporary 4,905 (15.6) 3,271 (27.7)
Others 9,231 (20.8) 9,693 (45.8)
Education level ≤Elementary school 232 (0.6) 5,502 (28.3) 13,729.79 (<.001)
Middle or high school 14,961 (43.3) 8,830 (60.0)
≥Community college 16,598 (56.1) 1,505 (11.6)
Income level (10,000 won) <100 2,803 (8.1) 5,591 (32.9) 5,424.51 (<.001)
100~<200 200~<300 10,006 (31.4) 9,283 (31.1) 5,246 (36.6) 2,279 (15.7)
≥300 8,671 (29.4) 1,942 (14.8)

Unweighted number, weighted percent, weighted mean.

Table 2.
Differences in Working Conditions by Age of Subjects
Variables Categories <55 (n=32,037) ≥55 (n=15,980) x2 (p)
n (%) n (%)
Work schedule Night work 2,692 (8.0) 1,342 (10.4) 68.36 (.002)
Shift work 2,394 (7.7) 962 (8.8) 16.01 (.180)
Long working hours 9,164 (25.4) 5,012 (31.9) 200.18 (<.001)
Working posture risks Tiring/painful positions 9,311 (28.3) 6,458 (38.7) 485.01 (<.001)
Carrying/moving heavy loads 5,675 (16.4) 4,120 (24.4) 407.57 (<.001)
Physical environmental risks 13,917 (41.8) 9,375 (56.5) 838.46 (<.001)
Work intensity High speed 7,778 (24.4) 3,114 (20.6) 80.13 (<.001)
Tight deadline 7,370 (23.8) 2,666 (19.0) 128.17 (<.001)
Quantitative demand 17,016 (58.2) 7,541 (55.7) 22.51 (.017)
Decision authority 14,668 (44.9) 8,622 (50.3) 110.07 (.001)
Social support 14,216 (62.6) 3,040 (47.6) 448.50 (<.001)
Psychosocial risks Handing angry clients 2,346 (7.3) 756 (5.2) 66.54 (<.001)
Job stress 7,616 (26.0) 2,831 (20.1) 164.66 (<.001)
Demands for hiding emotions 7,901 (26.7) 2,812 (21.0) 154.13 (<.001)
Workplace violence Physical violence 155 (0.5) 48 (0.4) 4.15 (.139)
Sexual harassment 149 (0.5) 33 (0.2) 15.73 (.001)
Bullying 45 (0.2) 16 (0.1) 1.24 (.305)
Age discrimination 1,279 (4.8) 763 (6.5) 60.34 (<.001)

Number and proportion of exposure workers, unweighted number, weighted percent.

Table 3.
Differences in Health Status by Age of Subjects
Variables Categories <55 (n=32,037) ≥55 (n=15,980) x2 (p)
n (%) n (%)
Subjective health status Healthy 24,113 (77.5) 7,150 (48.5) 3,755.18 (<.001)
Unhealthy 7,476 (22.5) 8,504 (51.5)
Mental health Good 17,939 (56.8) 6,766 (44.0) 624.12 (<.001)
Poor 13,815 (43.2) 9,052 (56.0)

Unweighted number, weighted percent.

Table 4.
Results from a Multiple Logistic Regression Analysis
Variables Subjective health status Mental health
<55 ≥55 <55 ≥55
AOR 95%CI AOR 95%CI AOR 95%CI AOR 95%CI
Night work (ref: no) 1.20 1.05~1.36 1.28 0.94~1.73 1.06 0.92~1.22 0.85 0.66~1.09
Shift work (ref: no) 1.00 0.84~1.19 1.12 0.92~1.38 1.06 0.93~1.22 1.11 0.82~1.49
Long working hours (ref: no) 1.20 1.04~1.38 0.98 0.82~1.17 1.31 1.16~1.48 1.30 1.08~1.57
Tiring/painful positions (ref: no) 1.88 1.65~2.13 1.48 1.25~1.75 1.07 0.95~1.20 0.85 0.70~1.03
Carrying/moving heavy loads (ref: no) 1.03 0.92~1.16 1.02 0.83~1.25 0.99 0.87~1.13 1.02 0.84~1.24
Physical environmental risks (ref: no) 1.16 1.03~1.30 1.17 0.98~1.39 1.07 0.93~1.23 1.21 1.03~1.43
High speed (ref: no) 0.96 0.81~1.13 1.17 0.90~1.52 0.91 0.79~1.05 0.98 0.73~1.33
Tight deadline (ref: no) 0.97 0.84~1.11 0.79 0.62~1.03 0.85 0.74~0.98 0.81 0.59~1.11
Quantitative demand (ref: no) 1.21 1.08~1.35 1.19 1.05~1.35 1.57 1.34~1.82 1.66 1.42~1.95
Decision authority (ref: no) 0.92 0.80~1.06 0.87 0.78~0.96 0.92 0.83~1.02 1.03 0.89~1.20
Social support (ref: strong) 0.89 0.79~1.01 0.83 0.71~0.96 0.62 0.52~0.73 0.54 0.44~0.67
Handing angry clients (ref: no) 1.07 0.86~1.33 1.10 0.80~1.51 1.18 0.93~1.50 0.87 0.64~1.18
Job stress (ref: no) 1.23 1.03~1.47 0.97 0.79~1.18 0.92 0.80~1.07 0.87 0.72~1.06
Demands for hiding emotions (ref: no) 1.13 0.96~1.32 0.98 0.81~1.19 1.14 0.93~1.39 0.90 0.72~1.14
Physical violence (ref: no) 1.12 0.59~2.11 0.50 0.21~1.22 1.93 1.08~3.44 1.28 0.49~3.31
Sexual harassment (ref: no) 2.08 1.29~3.36 0.76 0.24~2.44 1.84 0.71~4.79 1.41 0.67~2.99
Bullying (ref: no) 3.99 2.26~7.04 1.38 0.21~9.12 1.78 0.63~5.06 0.65 0.13~3.21
Age discrimination (ref: no) 1.55 1.29~1.87 1.54 1.19~2.00 1.32 1.03~1.68 1.29 1.03~1.61
Education level (ref:≥Bachelor's degree)
 ≤Elementary school 2.36 1.63~3.41 2.03 1.47~2.80 1.40 0.89~2.22 1.26 0.87~1.81
 Middle or high school 1.37 1.21~1.56 1.33 0.97~1.82 1.10 0.97~1.25 1.13 0.88~1.45
Income level (10,000 won) (ref:≥300)
 <100 0.88 0.70~1.12 2.06 1.48~2.88 0.91 0.75~1.11 1.28 0.97~1.68
 100~<200 0.97 0.83~1.13 1.47 1.15~1.86 1.12 0.99~1.27 1.16 0.92~1.46
 200~<300 0.91 0.79~1.05 1.01 0.80~1.28 1.01 0.89~1.13 1.14 0.87~1.48

Adjusted: gender, occupation, employment type; Dependent variable reference category: healthy, good; ref=reference; AOR=Adjusted odds ration; CI=Confidence interval.

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