Internet Use for Health-Related Purposes among Older People in Thailand: An Analysis of Nationwide Cross-Sectional Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Sample
2.2. Dependent Variable
2.3. Independent Variables
2.4. Statistical Analysis
3. Results
3.1. Characteristics of Older Adults Based on Internet Use for Health Purposes
3.2. Comparative Analysis of Internet Use for Health Purposes: Older Adults vs. General Population
3.3. Comparison of Health-Related Internet Use with Other Online Activities among Older Adults
3.4. Analysis of Factors Influencing Health-Related Internet Use among Older People in Thailand
4. Discussion and Conclusions
4.1. Summary of the Findings
4.2. Policy Implications
- Enhancing digital literacy programs: Building on Thailand’s existing initiative of schools for the elderly, the government should consider expanding and refining these programs to specifically target health-related internet use. Given our findings on the significant influence of internet confidence, these programs should focus on building digital skills among older adults, especially those with lower educational backgrounds and income levels. Enhancements could include (1) incorporating health-specific modules on navigating online health resources and telemedicine platforms; (2) implementing peer-to-peer learning components where digitally confident older adults mentor their peers; (3) introducing intergenerational elements, similar to South Korea’s model, where younger individuals teach older adults about technology [47,48]; (4) deploying mobile learning units to reach rural areas; and (5) conducting regular assessments to adapt the curriculum based on feedback and emerging digital health trends. These enhancements can further empower older adults, reduce social isolation, and improve their engagement with digital health services;
- Bridging the urban–rural digital divide: Our study highlights a significant urban–rural divide in digital health engagement. To address this, policies should focus on enhancing digital infrastructure in rural areas by expanding broadband internet access, providing affordable services, and ensuring reliable connectivity. Establishing community digital hubs in rural areas can promote equitable access to digital health resources, offering internet access and assistance to older adults. However, these hubs must also ensure privacy and security for individuals accessing health-related information. Measures such as private cubicles and secure internet connections should be implemented to protect confidentiality. In addition, it is crucial to address the issue of hardware accessibility. Policies should include provisions for subsidizing or providing affordable smartphones and other digital devices to older adults, particularly those in low-income and rural areas. This approach will ensure that all individuals have the necessary tools to access online health services effectively. Thailand could draw inspiration and experiences from initiatives like India’s ‘Digital Village’ program [49], adapting it to the Thai context. Partnerships with telecommunications companies could be explored to incentivize rural infrastructure development through tax breaks or subsidies. Additionally, deploying mobile health clinics equipped with digital resources to remote areas could provide temporary access and training. This multi-faceted approach, combining infrastructure development, community hubs, and mobile solutions, can create a more inclusive digital health ecosystem for Thailand’s rural older population, reducing social inequalities in access to digital health resources;
- Implementing region-specific digital health strategies: Our findings reveal significant regional disparities in digital health engagement, with the northeastern region showing higher adoption rates. This indicates the potential success of regional initiatives such as The Khon Kaen Smart Health Project, implemented in the Northeastern province of Khon Kaen, which is a collaborative initiative involving local hospitals, businesses, and academia, with support from government agencies. This project aimed to develop a health-sensor platform for monitoring the health and behavior of household residents, particularly elderly individuals living alone [50]. This suggests the need for location-specific strategies that cater to the unique cultural, economic, and social contexts of each region. Policymakers should develop and implement tailored digital health programs in collaboration with local community leaders and organizations. These region-specific strategies should consider local social dynamics and support systems, ensuring that interventions are culturally appropriate and socially inclusive. The success factors in the northeastern region, such as the integration of home health monitoring with medical records and the use of smart technologies, could be studied and potentially adapted for other areas. Regional digital health ambassadors could be appointed to champion initiatives and provide localized support. Additionally, partnering with local healthcare providers and community centers can help integrate digital health resources into existing trusted networks;
- Addressing socioeconomic barriers to digital health access: Our study identifies income and education as critical determinants of health-related internet use among older adults. To ensure inclusive access to digital health services, policymakers should implement targeted measures to address these socioeconomic disparities. This could include subsidizing internet costs for low-income elderly households and providing affordable or subsidized digital devices tailored for older users. Developing simplified, user-friendly health platforms with intuitive interfaces can increase engagement among those with limited digital literacy. Additionally, online health information should be made available in multiple languages and formats, catering to diverse educational backgrounds and literacy levels. Collaborations with NGOs and tech companies could be established to create and distribute easy-to-understand digital health content. By implementing these measures, Thailand can work towards ensuring that all older adults, regardless of their financial or educational status, have equitable opportunities to benefit from digital health resources, thereby promoting better health outcomes across all socioeconomic groups;
- Leveraging occupational contexts for digital health promotion: Our findings reveal that individuals in skilled occupations are more likely to use the internet for health purposes compared to those in manual occupations. To extend digital health engagement across all occupational groups, policies should focus on integrating digital health resources into workplace wellness programs. Employers, particularly those with a higher proportion of manual workers, should be incentivized to provide digital health training and access to online health services as part of their employee wellness initiatives. Partnerships with industry associations, labor unions, and professional bodies can help disseminate digital health information more effectively. For retired individuals, collaborations with pensioners’ associations could be established to provide ongoing digital health education. These workplace and post-retirement interventions can support the health and well-being of older adults across various occupational backgrounds, promoting a culture of lifelong learning and health awareness. Such targeted approaches can help bridge the occupational divide in digital health engagement.
4.3. Limitations and Future Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Independent Variables | Categories/Operational Definitions |
---|---|
| 0: Female 1: Male |
| 1: Young old = 60–64 years old 2: Middle old = 65–74 years old 3: Very old = 75 years old and older |
| 1: Northern 2: Northeastern 3: Central 4: Southern 5: Western 6: Eastern |
| 0: Less than 15,000 THB 1: 15,000 THB and above |
| 0: Non-degree education (below primary school to high school/vocational certificate) 1: Degree education (associate degree and above) |
| 0: Manual occupation (farmers, general laborers or drivers, butlers or housekeepers) 1: Skilled occupation (public officials, private employees, business owners, freelancers, pensioners or retirees) |
| 0: Rural area 1: Urban area |
| 0: Not confident at all 1: Slightly confident 2: Very confident 3: Most confident |
Characteristics | All N = 4652 (100%) | Used Internet for Health Purposes N = 504 (10.83%) | Did Not Use Internet for Health Purposes N = 4148 (89.17%) | p-Value 1 |
---|---|---|---|---|
Gender | 0.757 | |||
Male | 2596 (55.80%) | 278 (5.98%) | 2318 (49.83%) | |
Female | 2056 (44.20%) | 226 (4.86%) | 1830 (39.34%) | |
Age | 0.328 | |||
60–64 (young old) | 2255 (48.47%) | 230 (4.94%) | 2025 (43.53%) | |
65–74 (middle old) | 2007 (43.14%) | 233 (5.01%) | 1774 (38.13%) | |
75+ (very old) | 390 (8.38%) | 41 (0.88%) | 349 (7.50%) | |
Region | <0.001 | |||
Northern | 476 (10.23%) | 45 (8.93%) | 431 (10.39%) | |
Northeastern | 1592 (34.22%) | 245 (48.61%) | 1347 (32.47%) | |
Central | 1344 (28.89%) | 130 (25.79%) | 1214 (29.27%) | |
Southern | 437 (9.39%) | 30 (5.95%) | 407 (9.81%) | |
Western | 415 (8.92%) | 36 (7.14%) | 379 (9.14%) | |
Eastern | 388 (8.34%) | 18 (3.57%) | 370 (8.92%) | |
Income | 0.035 | |||
Less than THB 15,000 | 3439 (73.93%) | 353 (7.59%) | 3086 (66.34%) | |
THB 15,000 and above | 1213 (26.07%) | 151 (3.25%) | 1062 (22.83%) | |
Education | <0.001 | |||
Non-degree education | 3891 (83.64%) | 366 (7.87%) | 3525 (75.77%) | |
Degree education | 761 (16.36%) | 138 (2.97%) | 623 (13.39%) | |
Occupation | <0.001 | |||
Manual occupation | 3369 (72.42%) | 284 (6.10%) | 3085 (66.32%) | |
Skilled occupation | 1283 (27.58%) | 220 (4.73%) | 1063 (22.85%) | |
Residence | <0.001 | |||
Rural | 2794 (68.63%) | 177 (4.35%) | 2617 (64.28%) | |
Urban | 1858 (39.94%) | 327 (7.03%) | 1531 (32.91%) | |
Degree of Confidence in Using the Internet | <0.001 | |||
Not confident at all | 319 (6.86%) | 14 (0.30%) | 305 (6.56%) | |
Slightly confident | 1258 (27.04%) | 83 (1.78%) | 1175 (25.26%) | |
Very confident | 1555 (33.43%) | 212 (4.56%) | 1343 (28.87%) | |
Most confident | 1520 (32.67%) | 195 (4.19%) | 1325 (28.48%) |
Variables | Adjusted Odds Ratio (Robust SE) | 95% CI | p-Value | Sig. |
---|---|---|---|---|
Gender | ||||
Female (ref.) | 1.00 | 1.00 | ||
Male | 1.064 (0.107) | 0.87–1.29 | 0.537 | |
Age | ||||
60–64 (young old) (ref.) | 1.00 | 1.00 | ||
65–74 (middle old) | 1.115 (0.117) | 0.91–1.37 | 0.297 | |
75+ (very old) | 0.898 (0.166) | 0.63–1.29 | 0.559 | |
Region | ||||
Northern (ref.) | 1.00 | 1.00 | ||
Northeastern | 2.249 (0.426) | 1.55–3.26 | <0.001 | *** |
Central | 0.739 (0.144) | 0.51–1.08 | 0.120 | |
Southern | 0.674 (0.182) | 0.40–1.14 | 0.144 | |
Western | 1.169 (0.292) | 0.72–1.91 | 0.533 | |
Eastern | 0.489 (0.147) | 0.27–0.88 | 0.018 | * |
Income | ||||
Less than THB 15,000 (ref.) | 1.00 | 1.00 | ||
THB 15,000 and above | 1.298 (0.156) | 1.03–1.64 | 0.030 | * |
Education | ||||
Non-degree education (ref.) | 1.00 | 1.00 | ||
Degree education | 1.814 (0.223) | 1.43–2.30 | <0.001 | *** |
Occupation | ||||
Manual occupation (ref.) | 1.00 | 1.00 | ||
Skilled occupation | 2.003 (0.222) | 1.61–2.49 | <0.001 | *** |
Residence | ||||
Rural (ref.) | 1.00 | 1.00 | ||
Urban | 3.006 (0.334) | 2.42–3.74 | <0.001 | *** |
Degree of Confidence in Using the Internet | ||||
Not confident at all (ref.) | 1.00 | 1.00 | ||
Slightly confident | 2.608 (0.767) | 1.46–4.64 | 0.001 | ** |
Very confident | 3.153 (0.917) | 1.78–5.57 | <0.001 | *** |
Most confident | 2.438 (0.706) | 1.38–4.30 | 0.002 | ** |
Pseudo R2 | 0.104 |
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Robru, K.; Setthasuravich, P.; Pukdeewut, A.; Wetchakama, S. Internet Use for Health-Related Purposes among Older People in Thailand: An Analysis of Nationwide Cross-Sectional Data. Informatics 2024, 11, 55. https://doi.org/10.3390/informatics11030055
Robru K, Setthasuravich P, Pukdeewut A, Wetchakama S. Internet Use for Health-Related Purposes among Older People in Thailand: An Analysis of Nationwide Cross-Sectional Data. Informatics. 2024; 11(3):55. https://doi.org/10.3390/informatics11030055
Chicago/Turabian StyleRobru, Kittisak, Prasongchai Setthasuravich, Aphisit Pukdeewut, and Suthiwat Wetchakama. 2024. "Internet Use for Health-Related Purposes among Older People in Thailand: An Analysis of Nationwide Cross-Sectional Data" Informatics 11, no. 3: 55. https://doi.org/10.3390/informatics11030055
APA StyleRobru, K., Setthasuravich, P., Pukdeewut, A., & Wetchakama, S. (2024). Internet Use for Health-Related Purposes among Older People in Thailand: An Analysis of Nationwide Cross-Sectional Data. Informatics, 11(3), 55. https://doi.org/10.3390/informatics11030055