| Literature DB >> 33802530 |
Gábor Tóth1,2, Krisztian Kapus1, David Hesszenberger3, Marietta Pohl1, Gábor Kósa1, Julianna Kiss1, Gabriella Pusch4, Éva Fejes1,5, Antal Tibold1, Gergely Feher1,6.
Abstract
The extensive availability of internet has led to the the recognition of problematic internet use (so called internet addiction, IA) mostly involving adolescents. There is limited data about the prevalence of IA in adults. Here we present a study focusing on the prevalence and risk factors of internet addiction among high school teachers. Overall 2500 paper-based questionnaires were successfully delivered and 1817 responses received (response rate of 72.7%). In our study 1194 females (65.7%) and 623 males (34.3%) participated. In a multivariate analysis including of all factors (demographic data, internet habits, comorbidity etc.) age <35 years (OR: 6.098, CI: 5.09-7.08, p < 0.001), male gender (OR = 5.413, CI: 4.39-6.18, p = 0.002), surfing on the internet > 5 h daily (OR 2.568, CI: 2.03-3.39, p < 0.001), having no children (OR: 1.353, CI: 1.13-1.99, p = 0.0248), and having secondary employment (OR = 11.377, CI: 8.67-13.07, p = 0.001) were significantly associated with internet addiction. This is the first study from Hungary showing the prevalence and risk factors of internet addiction among high school teachers. A small, but significant proportion suffered from IA. Our study also draws attention to the risk factors of IA such as younger age, family status and working type.Entities:
Keywords: adult prevalence; internet addiction; risk factor; teacher
Year: 2021 PMID: 33802530 PMCID: PMC8000611 DOI: 10.3390/life11030194
Source DB: PubMed Journal: Life (Basel) ISSN: 2075-1729
Baseline characteristics of the study population (N = 1817).
|
| |
| Female | 1194 (65.7%) |
| Male | 623 (34.3%) |
|
| |
| 18–25 years | 46 (2.5%) |
| 26–35 years | 217(11.9%) |
| 36–45 years | 577 (31.8%) |
| 46–55 years | 602 (33.1%) |
| 56–62 years | 285 (15.7%) |
| more than 62 years | 90 (5.0%) |
|
| |
| single | 263 (14.5%) |
| relationship | 257 (14.1%) |
| married | 1082 (59.5%) |
| divorced/widow | 215 (11.9%) |
|
| |
| have no children | 419 (23.1%) |
| 1 child | 414 (22.8%) |
| 2 children | 706 (38.9%) |
| more than 3 children | 278 (15.2%) |
|
| |
| regular | 1735 (95.5%) |
| shifts | 82 (4.5%) |
|
| |
| elementary | 9 (0.5%) |
| secondary education | 105 (5.8%) |
| higher education | 1703 (93.7%) |
|
| |
| 1–12 months | 54 (2.9%) |
| 1–5 years | 205 (11.3%) |
| 6–10 years | 263 (14.5%) |
| 11–20 years | 584 (32.1%) |
| 21–30 years | 383 (21.1%) |
| 31–40 years | 288 (15.9%) |
| more than 40 years | 40 (2.2%) |
|
| |
| no | 1584 (87.2%) |
| yes | 233 (12.8%) |
Concomitant diseases, substance abuse, and internet use in the study population.
|
| |
| taking any medications regularly | 495 (27.2%) |
| smoker | 275 (15.1%) |
| taking alcohol | 93 (5.1%) |
| taking drugs | 52 (2.9%) |
| diabetes | 135 (7.4%) |
| hypertension | 414 (22.8%) |
| cardiovascular disease | 186 (10.2%) |
| musculoskeletal pain | 146 (8.0%) |
| history of depression | 27 (1.5%) |
|
| |
| 1 h | 696 (38.3%) |
| 2 h | 569 (31.3%) |
| 3 h | 287 (15.8%) |
| 4 h | 132 (7.9%) |
| 5 h | 54 (2.9%) |
| 6 h | 44 (2.4%) |
| >6 h | 35 (2.0%) |
|
| |
| between 0 and 3 a.m. | 186 (10.2%) |
| between 3 and 6 a.m. | 75 (4.1%) |
| between 6 and 9 a.m. | 233 (12.8%) |
| between 9 and 12 a.m. | 349 (19.2%) |
| 12–3 p.m. | 209 (11.5%) |
| 3–6 p.m. | 441 (24.3%) |
| 6–9 p.m. | 943 (51.9%) |
| 9–12 p.m. | 357 (19.6%) |
|
| |
| learning/working | 1689 (93.0%) |
| internet gaming | 159 (8.7%) |
| chat | 410 (22.6%) |
| community portal | 773 (42.5%) |
| matchmaking | 52 (2.9%) |
| movies | 328 (18.1%) |
| music | 539 (30.0%) |
| other | 196 (10.8%) |
Comparison of baseline characteristics of the study subgroups. ** p < 0.001; * p <0.05.
| Not Addicted to Internet ( | Internet Addiction | |
|---|---|---|
|
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| Male |
|
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| Female | 1158 (67.2%) | 36 (37.9%) |
|
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| 18–25 years |
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| 26–35 years |
|
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| 36–45 years | 543 (31.5%) | 34 (35.8%) |
| 46–55 years |
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| 56–62 years | 273 (15.8%) | 12 (12.6%) |
| more than 62 years | 86 (5%) | 4 (4.2%) |
|
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| single |
|
|
| relationship | 240 (14%) | 17 (17.9%) |
| married |
|
|
| divorced / widow | 202(11.7%) | 13 (13.7%) |
|
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| having no children |
|
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| 1 child | 390 (22.6%) | 24 (25.3%) |
| 2 children |
|
|
| more than 3 children | 263 (15.3%) | 15 (15.8%) |
|
| ||
| regular | 1643 (95.4%) | 92 (96.8%) |
| shifts | 79 (4.6%) | 3 (3.2%) |
|
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| elementary |
|
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| secondary education | 108 (6.3%) | 7 (7.4%) |
| higher education | 1618 (96.9%) | 85 (89.5%) |
|
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| 1–12 months |
|
|
| 1–5 years | 191 (11.1%) | 14 (14.7%) |
| 6–10 years | 246 (14.3%) | 17 (17.9%) |
| 11–20 years | 547 (31.8%) | 37 (38.9%) |
| 21–30 years |
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| 31–40 years |
|
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| more than 40 years | 37 (2.1%) | 3 (3.2%) |
|
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| no | 1503 (87.3%) | 14 (14.7%) |
|
|
|
|
Comparison of concomitant diseases, substance abuse, and internet use in the study subgroups.
| Not Addicted to Internet ( | Internet Addiction | |
|---|---|---|
|
| ||
| taking any medication regularly | 475 (27.6%) | 20 (21.1%) |
| smoker |
|
|
| taking alcohol |
|
|
| taking drugs |
|
|
| diabetes |
|
|
| hypertension | 387 (22.5%) | 27 (28.4%) |
| cardiovascular disease | 175 (10.2%) | 11 (11.6%) |
| musculoskeletal pain | 136 (7.9%) | 10 (10.5%) |
| history of depression |
|
|
|
| ||
| 1 h | 684 (39.7%) | 12 (12.6%) ** |
| 2 h | 552 (32.1%) | 17 (17.9%) * |
| 3 h | 265 (15.4%) | 22 (23.2%) * |
| 4 h | 114 (6.6%) | 18 (18.9%) * |
| 5 h | 46 (2.7%) | 14 (14.7%) ** |
| 6 h | 30 (1.7%) | 4 (4.2%) |
| >6 h | 31 (1.7%) | 8 (8.4%) ** |
|
| ||
| between 0 and 3 a.m. | 178 (10.3%) | 8 (8.4%) |
| between 3 and 6 a.m. | 69 (4%) | 6 (6.3%) |
| between 6 and 9 a.m. | 218 (12.7%) | 15 (15.8%) |
| between 9 and 12 a.m. | 335 (19.5%) | 14 (14.7%) |
| 12–3 p.m. | 196 (11.4%) | 13 (13.7%) |
| 3–6 p.m. | 410 (23.8%) | 31 (32.6%) |
| 6–9 p.m. | 894 (51.9%) | 49 (51.6%) |
| 9.12 p.m. | 332 (19.3%) | 25 (26.3%) |
|
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| learning/working | 1613 (93.7%) | 76 (80%) ** |
| internet gaming |
|
|
| chat |
|
|
| community portal | 724 (42%) | 49 (51.6%) |
| matchmaking |
|
|
| movies | 308 (17.9%) | 20 (21%) |
| music | 514 (29.8%) | 25 (26.3%) |
| other | 188 (10.9%) | 8 (8.4%) |
** p < 0.001; * p < 0.05.
Risk factors associated with internet addiction in a multivariate analysis.
| Risk Factor | OR | CI | |
|---|---|---|---|
| age < 35 years | 6.098 | 5.09–7.08 | <0.001 |
| male gender | 5.413 | 4.39–6.18 | 0.002 |
| >5 h daily internet use | 2.568 | 2.03–3.39 | <0.001 |
| having no children | 1.353 | 1.13–1.99 | 0.0248 |
| having secondary employment | 11.377 | 8.67–13.07 | 0.001 |