The Effects of Multifaceted Ergonomic Interventions on Musculoskeletal Complaints in Intensive Care Units
Abstract
:1. Introduction
2. Materials and Methods
2.1. Settings and Study Design
2.2. Data Collection
2.2.1. Questionnaire
- Regular exercise: Defined as doing physical activity at least three days a week or more (measured by Yes or No responses).
- Chronic disease: Defined diseases such as Diabetes Mellitus (DM) Hipertension (HT), Rheumatological diseases, etc. diagnosed by any doctor. (Please code as Yes or No and write details).
- Perceived ergonomic risk: Four items were developed based on the literature review to assess nurses ‘perceptions. Do you think there is a risk of heavy lifting/pushing-pulling/standing for long hours/bending down in your workplace? Please code as no risks/moderate risks/high risks.
- Visiting a doctor with any MSC: “Have you applied a doctor due to musculoskeletal complaints for the last six months?” (Measured by Yes or No responses).
- Use of medicine due to any MSD: “Have you used any medicine due to musculoskeletal complaints for the last six months? (Measured by Yes or No responses)
- Sick leave absence days: “Have you been absent in the last six months due to MSC?
- MSC: In the second part of the questionnaire, self-reported MSCs were evaluated by CMDQ. Questions of the scale were as follows: (1) How often did you encounter discomfort, pain, and/or aches when you were last at work? (Frequency score coded as 0/1.5/3.5/5/10), (2) How uncomfortable were you when you encountered such discomfort, and/or pain/aches? (discomfort/severity score coded 1/2/3). If you experienced this discomfort, pain, and/or aches, did you also experience any form of interference in your work? (Interference score coded 1/2/3). Lower back, shoulders, upper arms, upper back, neck, forearms, knees, hips, wrists, thighs, left lower leg, and right lower leg parts were evaluated separately. According to the recommendations of the developers of the scale, the total Cornell score was calculated by multiplying frequency score, discomfort score, and interference score for each body part. The total score was obtained by calculating each body part score. Higher Cornell score indicates a bad condition. There is no cut-off point of the Cornell scoring system. Cornell score differences between groups or longitudinal evaluation of the given group could also be evaluated [21]. Translation of the Cornell questionnaire, validity and reliability assessment, and cross-cultural adaptation into the Turkish language, was performed by Erdinc et al. Cornell neck, Cornell upper limb, Cornell back, and Cornell lower limb scores were calculated according to the REBA risk assessment [22].
2.2.2. ERGO Team
2.2.3. ERGO Program
2.2.4. Ergonomics Risk Assessment
2.3. Interventions
2.4. Statistics
2.5. Ethical Approval
3. Results
3.1. Initial Assessment of Nurses’ MSC and Ergonomic Risk Factor of ICUs
3.2. Nurses Participation in Study and Compliance with Continuity of Interventions
- Having only one device that needs to be carried and installed over and over again for each patient.
- Especially for the first time, taking too much time to install.
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Variables | IG N: 35 (%) | CG N: 29 (%) | p-Value |
---|---|---|---|
Age | |||
mean ± SD | 31.06 ± 5.5 | 33.6 ± 5.7 | 0.070 |
(min–max) | (23–45) | (26–49) | |
Gender | |||
Male | 7 (20.0) | 3 (10.3) | 0.327 * |
Female | 29 (80.0)) | 25 (89.7) | |
Smoking status | |||
Current smoker | 12 (34.3) | 18 (62.19 | 0.064 (χ2 5.48; df 2) |
Ex-smoker | 2 (5.7) | 2 (6.9) | |
Never smoked | 21 (60.0) | 9 (31.0) | |
Chronic diseases | |||
Yes | 6 (17.1) | 4 (13.8) | 0.722 (X2 0.12; df 1) Phi 0.80 |
No | 29 (82.9) | 25 (86.2) | |
Previous Ergonomics training | |||
Yes | 19 (54.3) | 9 (31.0) | 0.166 (χ2 1.92; df 1) (Phi 0.20) |
No | 16 (47.5) | 18 (62.1) | |
Working time in ICU (years) | |||
mean ± SD (min–max) | 6.23 ± 5.7 (<1–24) | 8.9 ± 5.9 (<1–28) | 0.136 |
Regular rest break use | |||
Yes | 6 (17.1) | 4 (13.8) | 0.722 (X2 0.12; df 1) Phi 0.80 |
No | 29 (82.9) | 25 (86.2) | |
Regular exercise | |||
Yes | 15 (42.9) | 6 (20.7) | 0.585 * |
No | 20 (57.1) | 23 (79.3) |
Variables | IG N: 35 (%) | CGN: 29 (%) | p-Value |
---|---|---|---|
Visiting a doctor with any MSC | |||
Yes No | 15 (42.9) 20 (57.1) | 14 (48.3) 15 (51.7) | 0.856 (X2 0.03 df 1) (Phi -0.54) |
Use medicine due to any MSD | |||
Yes No | 22 (62.9) 13 (37.1) | 19 (65.5) 10 (34.5) | 0.218 (X2 1.51 df 1) (Phi -0.18) |
Sick leave absence day | |||
Yes No | 6 (17.1) 29 (82.9) | 6 (20.7) 23 (79.3) | 0.968 (X2 0.002 df 1) (Phi -0.45) |
Number of sick leave absence day | |||
mean ± SD (min–max) | 9.8 ± 11.7 (2–30) | 16.6 ± 12.5 (3–30) | 0.237 |
Cornell score | 0.989 | ||
mean ± SD (min–max) | 141.9 ± 147.9 (0–638) | 176.1 ± 203.6 (0–808) | |
Cornell neck | 0.711 | ||
mean ± SD (min–max) | 69.0 ± 81.0 (0–244.0) | 10.3 ± 40.1 (0–60.0) | |
Cornell lower | 0.789 | ||
mean ± SD (min–max) | 69.0 ± 81.0 (0–244.0) | 73.8 ± 98.6 (0–410.0) | |
Cornell back | 0.978 | ||
mean ± SD (min–max) | 30.6 ± 42.5 (0–180.0) | 10.3 ± 15.7 (0–60.0) | |
Cornell upper | 0.533 | ||
mean ± SD (min–max) | 28.4 ± 44.9 (0–180.0) | 41.8 ± 59.3 (0–240.0) |
Variables | IG N: 35 (%) | CG N: 29 (%) | p-Value |
---|---|---|---|
REBA risk assessment | |||
Working with computer | |||
Mean ± SD (min–max) | 4.81 ± 4 2–10 | 6.11 ± 6 (3–8) | 0.972 |
Turning the patients | |||
Mean ± SD (min–max) | 8.7 ± 2.0 5–12 | 9.7 ± 1.6 (5–12) | 0.734 |
Self- risk assessment | |||
Heavy lifting | |||
No risk Moderate risk High risk | 1 (2.9) 5 (14.3) 29 (82.9) | 2 (6.9) 5 (17.2) 22 (75.9) | 0.330 (X2 3.42 df 3) |
Long-standing | |||
No risk Moderate risk High risk | 1 (2.9) 6 (17.1) 28 (80.0) | 2 (6.9) 4 (13.7) 23 (79.3) | 0.290 (X2 4.97 df 4) |
Bending down | |||
No risk Moderate risk High risk | 1 (2.9) 5 (14.3) 29 (82.9) | 2 (6.9) 2 (6.9) 21 (72.4) | 0.208 (X2 5.88 df 4) |
Pulling—pushing | |||
No risk Moderate risk High risk | 1 (2.9) 7 (20.0) 27 (77.1) | 3 (10.3) 5 (17.2) 21 (72.4) | 0.256 (X2 5.32 df 4) |
Variables | IG N: 27 (%) | p-Value | CG N: 23 (%) | p-Value | ||
---|---|---|---|---|---|---|
Initial | 18th | Initial | 18th | |||
Visiting a doctor with any MSC | ||||||
Yes No | 16 (59.3) 11 (40.7) | 13 (48.1) 14 (51.9) | 0.754 | 13 (56.5) 10 (43.5) | 6 (26.0) 17 (73.9) | 0.065 |
Use medicine due to any MSD | ||||||
Yes No | 16 (59.3) 11 (40.7) | 13 (48.1) 14 (51.9) | 0.549 | 15 (65.2) 8 (34.3) | 14 (60.9) 9 (39.1) | 1.0 |
Sick leave absence day | ||||||
Yes No | 6 (22.2) 21 (77.8) | 5 (18.5) 22 (81.5) | 1.0 | 4 (17.4) 19 (82.6) | 2 (8.7) 21 (91.3) | 0.625 |
Number of sick leave absence day | ||||||
mean ± SD (min–max) | 8.83 ± 10.7 (2–30) | 8.0 ± 12.3 (2–30) | 1.0 | 18.0 ± 14.2 (2–30) | 2.0 ± 0 (2) | 0.317 |
IG N: 27 (%) | CG N: 23 (%) | p-Value | |
---|---|---|---|
Visiting a doctor with any MSC | |||
Yes No | 13 (48.1) 14(51.9) | 6 (26.1) 17 (73.9) | 0.190 (X2 1.71 df 1) |
Use medicine due to any MSD | |||
Yes No | 13 (48.1) 14 (51.9) | 14 (60.9) 9 (39.1) | 0.539 (X2 0.37 df 1) |
Sick leave absence day | |||
Yes No | 5 (18.5) 22 (81.5) | 2 (8.7) 21 (91.3) | 0.430 * |
Number of sick leave absence day | |||
mean ± SD (min–max) | 8.0 ± 12.3 (2–30) | 2.0 ± 0 (2) | 0.324 |
Self- risk assessment | |||
Heavy lifting | |||
No risk Moderate risk High risk | - 1(3.7) 26(96.3) | - 3(13.0) 20(87.0) | 0.322 * |
Long-standing | |||
No risk Moderate risk High risk | - 1(3.7) 26(96.3) | - 3(13.0) 20(87.0) | 0.588 * |
Bending down | |||
No risk Moderate risk High risk | - 1(3.7) 26(96.3) | - 3(13.0) 20(87.0) | 0.322 * |
Pulling—pushing | |||
No risk Moderate risk High risk | - 1(3.7) 26(96.3) | 1(4.3) 3(13.0) 19(82.6) | 0.248 (X2 2.78 df 2) |
Cornell Score | IG N: 27 | 95% CI | CG N: 23 | 95% CI | Between-Group Analysis p-Value |
---|---|---|---|---|---|
Initial (mean) (min–max) | 207.5 (0–790) | 119.6–295.5 | 222.1 (0–790) | 126.8–317.3 | Between groups: 0.641 Interaction: 0.992 |
18 th (mean) (min–max) | 292.3 (27–780) | 213.0–371.6 | 281.2 (84–752) | 195.3–367.1 | |
Within group analysis p-Value | <0.001 | <0.001 |
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Coskun Beyan, A.; Dilek, B.; Demiral, Y. The Effects of Multifaceted Ergonomic Interventions on Musculoskeletal Complaints in Intensive Care Units. Int. J. Environ. Res. Public Health 2020, 17, 3719. https://doi.org/10.3390/ijerph17103719
Coskun Beyan A, Dilek B, Demiral Y. The Effects of Multifaceted Ergonomic Interventions on Musculoskeletal Complaints in Intensive Care Units. International Journal of Environmental Research and Public Health. 2020; 17(10):3719. https://doi.org/10.3390/ijerph17103719
Chicago/Turabian StyleCoskun Beyan, Ayse, Banu Dilek, and Yucel Demiral. 2020. "The Effects of Multifaceted Ergonomic Interventions on Musculoskeletal Complaints in Intensive Care Units" International Journal of Environmental Research and Public Health 17, no. 10: 3719. https://doi.org/10.3390/ijerph17103719
APA StyleCoskun Beyan, A., Dilek, B., & Demiral, Y. (2020). The Effects of Multifaceted Ergonomic Interventions on Musculoskeletal Complaints in Intensive Care Units. International Journal of Environmental Research and Public Health, 17(10), 3719. https://doi.org/10.3390/ijerph17103719