Prevalence of Computer Vision Syndrome among School-Age Children during the COVID-19 Pandemic, Saudi Arabia: A Cross-Sectional Survey
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design and Setting
2.2. Sampling Procedure
2.3. Data Collection and Study Tools
2.4. Data Analysis
2.5. Ethics and Confidentiality
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variables | N | % | |
---|---|---|---|
Gender | Girls | 209 | 51.4% |
Boys | 198 | 48.6% | |
Age | 6 to 12 years old | 102 | 25% |
13 to 15 years | 112 | 27.5% | |
16 to 18 years old | 193 | 47.4% | |
Education level | High school | 186 | 45.7% |
Middle school | 120 | 29.5% | |
Primary stage | 101 | 24.8% | |
Education department | Jazan Education Department | 128 | 31.4% |
Sabya Education Department | 279 | 68.6% | |
City/village | City | 253 | 62.2% |
Village | 154 | 37.8% | |
Mother’s education level | Bachelor’s/associate degree | 210 | 51.6% |
Primary | 69 | 17.0% | |
Secondary | 78 | 19.2% | |
Uneducated | 50 | 12.3% | |
Father’s education level | Bachelor’s/associate degree | 206 | 50.6% |
Primary | 53 | 13.0% | |
Secondary | 114 | 28.0% | |
Uneducated | 34 | 8.4% | |
Mother’s job | An employee in the government sector | 141 | 34.6% |
An employee in the private sector | 13 | 3.2% | |
Housewife | 233 | 57.2% | |
Retired | 20 | 4.9% | |
Father’s job | An employee in the government sector | 214 | 52.6% |
An employee in the private sector | 54 | 13.3% | |
Retired | 105 | 25.8% | |
Unemployed | 34 | 8.4% | |
Chronic disease suffered | Asthma | 17 | 4% |
Diabetes | 17 | 4% | |
Hereditary blood disease | 6 | 2% | |
Other | 16 | 4% | |
Do not have any chronic disease | 355 | 87% | |
Asthma | 17 | 4% | |
Total | 407 | 100 |
Variables | Computer Vision Syndrome | p-Value | ||
---|---|---|---|---|
Presence of CVS | Absence of CVS | |||
Age | 13 to 15 years | 30.4% | 69.6% | 0.020 |
16 to 18 years | 54.1% | 45.9% | ||
6 to 12 years | 32.0% | 68.0% | ||
Gender | Female | 40.2% | 59.8% | 0.037 |
Male | 30.3% | 69.7% | ||
School level | High school | 43.0% | 57.0% | 0.011 |
Middle School | 27.5% | 72.5% | ||
Primary school | 30.7% | 69.3% | ||
City/village | City | 35.6% | 64.4% | 0.917 |
Village | 35.1% | 64.9% | ||
Mother’s job | Government sector | 37.6% | 62.4% | 0.424 |
Private sector | 15.4% | 84.6% | ||
Housewife | 34.8% | 65.2% | ||
Retired | 40.0% | 60.0% | ||
Father’s job | Government sector | 37.9% | 62.1% | 0.107 |
Private sector | 35.2% | 64.8% | ||
Retired | 26.7% | 73.3% | ||
Unemployed | 47.1% | 52.9% | ||
Suffered from chronic disease | No | 35.3% | 64.7% | 0.962 |
Yes | 35.7% | 64.3% | ||
Experienced symptoms before COVID | No | 23.9% | 76.1% | 0.000 |
Yes | 53.1% | 46.9% | ||
The severity of symptoms increased with COVID | No | 18.8% | 81.2% | 0.000 |
Yes | 64.8% | 35.2% | ||
Overall prevalence | 35.4% | 64.6% |
Factors | Logistic Regression Model | |||
---|---|---|---|---|
p-Value | ||||
Lower | Upper | |||
Gender | ||||
Male | Ref | 1 | ||
Female | 0.038 | 1.5 | 1.0 | 2.3 |
Age groups | ||||
13 to 15 years | Ref | 1 | ||
16 to 17 years | 0.003 | 2.7 | 1.4 | 5.2 |
6 to 12 years | 0.009 | 2.3 | 1.2 | 4.2 |
School Level | ||||
Primary | Ref | 1 | ||
Intermediate | 0.006 | 2.0 | 1.2 | 3.3 |
High School | 0.042 | 1.7 | 1.0 | 2.8 |
Experienced symptoms before COVID | ||||
No | Ref | 1 | ||
Yes | <0.001 | 3.6 | 2.4 | 5.5 |
The severity of symptoms increased with COVID | ||||
No | Ref | 1 | ||
Yes | <0.001 | 7.8 | 4.9 | 12.4 |
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Abuallut, I.; Ajeebi, R.E.; Bahari, A.Y.; Abudeyah, M.A.; Alyamani, A.A.; Zurayyir, A.J.; Alharbi, A.H.; Al Faqih, A.A.; Suwaydi, A.Z.; Alqasemi, M.I.; et al. Prevalence of Computer Vision Syndrome among School-Age Children during the COVID-19 Pandemic, Saudi Arabia: A Cross-Sectional Survey. Children 2022, 9, 1718. https://doi.org/10.3390/children9111718
Abuallut I, Ajeebi RE, Bahari AY, Abudeyah MA, Alyamani AA, Zurayyir AJ, Alharbi AH, Al Faqih AA, Suwaydi AZ, Alqasemi MI, et al. Prevalence of Computer Vision Syndrome among School-Age Children during the COVID-19 Pandemic, Saudi Arabia: A Cross-Sectional Survey. Children. 2022; 9(11):1718. https://doi.org/10.3390/children9111718
Chicago/Turabian StyleAbuallut, Ismail, Reham E. Ajeebi, Alanoud Y. Bahari, Manal A. Abudeyah, Atheer A. Alyamani, Atyaf J. Zurayyir, Abdulkareem H. Alharbi, Abdullah A. Al Faqih, Abdullatif Z. Suwaydi, Maram I. Alqasemi, and et al. 2022. "Prevalence of Computer Vision Syndrome among School-Age Children during the COVID-19 Pandemic, Saudi Arabia: A Cross-Sectional Survey" Children 9, no. 11: 1718. https://doi.org/10.3390/children9111718
APA StyleAbuallut, I., Ajeebi, R. E., Bahari, A. Y., Abudeyah, M. A., Alyamani, A. A., Zurayyir, A. J., Alharbi, A. H., Al Faqih, A. A., Suwaydi, A. Z., Alqasemi, M. I., Alnami, B. A., & Al Zahrani, K. J. (2022). Prevalence of Computer Vision Syndrome among School-Age Children during the COVID-19 Pandemic, Saudi Arabia: A Cross-Sectional Survey. Children, 9(11), 1718. https://doi.org/10.3390/children9111718