| Literature DB >> 31234490 |
Eva María Artime Ríos1, Fernando Sánchez Lasheras2, Ana Suarez Sánchez3, Francisco J Iglesias-Rodríguez4, María Del Mar Seguí Crespo5.
Abstract
One of the major consequences of the digital revolution has been the increase in the use of electronic devices in health services. Despite their remarkable advantages, though, the use of computers and other visual display terminals for a prolonged time may have negative effects on vision, leading to a greater risk of Computer Vision Syndrome (CVS) among their users. In this study, the importance of ocular and visual symptoms related to CVS was evaluated, and the factors associated with CVS were studied, with the help of an algorithm based on regression trees and genetic algorithms. The performance of this proposed model was also tested to check its ability to predict how prone a worker is to suffering from CVS. The findings of the present research confirm a high prevalence of CVS in healthcare workers, and associate CVS with a longer duration of occupation and higher daily computer usage.Entities:
Keywords: computer vision syndrome; genetic algorithms; health personnel; occupational health; regression tree
Mesh:
Year: 2019 PMID: 31234490 PMCID: PMC6630344 DOI: 10.3390/s19122800
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Algorithm diagram.
Characteristics of the sample and prevalence of Computer Vision Syndrome (CVS).
| Variables | No. of Subjects | No. with CVS | |
|---|---|---|---|
| Sex | |||
| male | 78 (22.7%) | 37 (47.4%) | 0.056 |
| female | 265 (77.3%) | 158 (59.6%) | |
| Age (years) | |||
| ≤30 | 32 (9.3%) | 16 (50.0%) | 0.062 |
| 31–40 | 73 (21.3%) | 42 (57.5%) | |
| 41–50 | 93 (27.1%) | 62 (66.7%) | |
| 51–60 | 107 (31.2%) | 60 (56.1%) | |
| >60 | 38 (11.1%) | 15 (39.5%) | |
| Hospital | |||
| HMN | 141 (41.1%) | 85 (60.3%) | 0.284 |
| HUCA | 202 (58.9%) | 110 (54.5%) | |
| Ophthalmic lens wearers | |||
| no | 101 (29.4%) | 49 (48.5%) | 0.044 |
| yes | 242 (70.6%) | 146 (60.3%) | |
| Contact lens wearers | |||
| no | 290 (84.5%) | 155 (53.4%) | 0.003 |
| yes | 53 (15.5%) | 40 (75.5%) | |
| Ocular Surgery | |||
| no | 309 (90.1%) | 173 (56.0%) | 0.330 |
| yes | 34 (9.9%) | 22 (64.7%) | |
| Occupational groups | |||
| physicians and surgeons, including residents | 128 (37.3%) | 63 (49.2%) | 0.056 |
| nurses and nurse specialists, including those in training | 164 (47.8%) | 104 (63.4%) | |
| nursing assistants | 51 (14.9%) | 28 (54.9%) | |
| Work schedule | |||
| morning shifts | 133 (38.8%) | 71 (53.4%) | 0.075 |
| evening shifts | 3 (0.9%) | 0 (0.0%) | |
| rotating shifts, without nights | 24 (7.0%) | 14 (58.3%) | |
| rotating shifts, including nights | 100 (29.2%) | 66 (66.0%) | |
| morning shifts plus on-call | 83 (24.2%) | 44 (53.0% | |
| Easy software application | |||
| no | 74 (21.6%) | 39 (52.7%) | 0.416 |
| yes | 269 (78.4%) | 156 (58.0%) | |
| Use of visual display terminals (VDT) at work (hour per day) | |||
| <2 | 27 (7.9%) | 13 (48.1%) | 0.534 |
| 2–4 | 112 (32.7%) | 67 (59.8%) | |
| >4 | 204 (59.5%) | 115 (56.4%) | |
| Use of computer outside work | |||
| no | 55 (16.0%) | 24 (43.6%) | 0.031 |
| yes | 288 (84.0%) | 171 (59.4%) |
Figure 2Evolution of the root-mean-square error (RMSE) value by the number of iterations.
Percentage of regression trees in which each variable is included.
| Variables | Percentage of Models |
|---|---|
| Occupational seniority (years) | 97.20% |
| Use of VDT at work (hours per day) | 96.90% |
| Hospital units’ seniority (years) | 96.30% |
| Past history of conjunctivitis | 88.50% |
| Current use of eye drops | 79.80% |
| Rotating Shifts (including nights) | 74.60% |
| Refractive surgery | 74.20% |
| Time as VDT worker (>2 years) | 74.10% |
| Ocular surgery | 69.40% |
| Ophthalmic lens wearers | 64.10% |
| Geriatric department | 60.70% |
| Use of VDT outside work (hours per day) | 60.60% |
| Total VDT use (hours per day) | 60.10% |
| Morning shifts plus on-call | 57.20% |
| Sterilization unit | 53.40% |
| Contact lens wearers | 50.30% |
| Surgery unit | 48.60% |
| Past history of ocular herpes | 46.10% |
| Age | 42.40% |
| Blood bank department | 41.10% |
| Anatomical pathology department | 40.90% |
| Endocrinology unit | 40.70% |
| Morning shifts | 40.50% |
| Sex | 40.20% |
| Traumatology unit | 39.90% |
| Nephrology unit | 39.70% |
| Easy software application | 39.60% |
| Past history of keratitis | 39.30% |
| Anesthesiology department | 34.60% |
| Evening shifts | 34.20% |
Figure 3Example of regression tree obtained with the proposed algorithm.
Figure 4Cumulative distribution function of the difference in CVS score.
Average differences in absolute value of the real CVS value and the forecast.
| CVS Value | Avg. Difference | |
|---|---|---|
| 0 | 5.224 | 19 |
| 1 | 4.356 | 24 |
| 2 | 3.855 | 16 |
| 3 | 3.558 | 17 |
| 4 | 2.351 | 38 |
| 5 | 1.587 | 34 |
| 6 | 1.21 | 27 |
| 7 | 0.991 | 27 |
| 8 | 1.671 | 31 |
| 9 | 2.313 | 20 |
| 10 | 2.499 | 24 |
| 11 | 3.27 | 21 |
| 12 | 3.899 | 14 |
| 13 | 5.647 | 8 |
| 14 | 5.204 | 8 |
| 15 | 6.127 | 3 |
| 16 | 9.386 | 7 |
| 17 | 8.816 | 2 |
| 19 | 9.667 | 1 |
| 20 | 9.75 | 1 |