Personal Cell Phones among Children: Parental Perception of Content-Related Threats and Attempts to Control Them in a Lithuanian Sample
Abstract
:1. Introduction
2. Materials and Methods
2.1. Characterization of the Data Collection Procedure
2.2. Description of the Questionnaire
2.3. Statistical Analysis
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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1. Questions about threats associated with personal mobile phone usage among children | |
Question | Answer options |
Who, in your opinion, do children (not necessarily yours) get messages from? | From friends/From classmates/From teachers/From family members/From strangers * |
If you think that children (not necessarily yours) get messages from strangers, do you think that children communicate with them? | Yes */No |
In your opinion, what content of messages do children (not necessarily yours) receive by phone? | Informational content/Friendly content/Offensive content */Promotional content/Sexual content * |
In your opinion, could mobile phones be dangerous for children’s (not necessarily yours) health? | Yes/No * |
When did your child start to use his/her personal mobile phone? | An open-ended question was categorized into the range under 6 years old * and 6 years old or older |
If your child uses social networks, how did he/she start to use them? | We helped to register*/Other family members helped to register/Friends helped to register/Registered by himself (herself) |
In your opinion, does your child actively use functions of social networks (e.g., sharing photos, videos, sends textual messages)? | Yes/No * |
2. Measures applied by parents in order to control mobile phone usage among their children | |
Questions | Answer options |
Does your child talk to you about the mobile phone functions he/she uses? | Yes, we frequently talk about it/No, we do not talk about it**/I am not interested** |
Do you control your child’s usage of his/her personal mobile phone? | Yes, we control the time our child spends using the phone/Yes, we restrict an internet access/Yes, we have strict rules/No, we do not interfere ** |
What is the average time your child uses his/her personal mobile phone per day? | Less than 1 h/1–2 h/3–4 h **/5–6 h **/7 h and more ** |
Do you control who your child communicates with? | Yes/No ** |
Threats | Cases | Relative Frequency |
---|---|---|
Thinking that children do not receive messages from strangers | 569 | 91.9% |
Thinking that children do not communicate with strangers | 606 | 97.9% |
Thinking that children do not receive offensive content messages | 526 | 85.0% |
Thinking that children do not receive sexual content messages | 589 | 95.2% |
Thinking that mobile phones are not harmful to children’s health | 125 | 20.2% |
Using a personal mobile phone under 6 years old | 73 | 11.8% |
Helping children to register to social networks | 158 | 25.5% |
Thinking that children are active users in social networks | 264 | 42.6% |
Variable | Low Awareness of Threats | High Awareness of Threats | p-Value |
---|---|---|---|
Does your child talk to you about the mobile phone functions he/she uses? | |||
Yes we frequently talk about it | 45.5% | 54.5% | 0.553 |
No, we do not talk about it/I am not interested | 41.4% | 58.6% | |
Do you control your child’s usage of his/her personal mobile phone? | |||
Yes (time control, restriction of internet access, or strict rules) | 46.6% | 53.4% | 0.009 * |
No, we do not interfere | 27.1% | 72.9% | |
What is the average time your child uses his/her personal mobile phone per day? | |||
2 h or less | 48.7% | 51.3% | 0.005 * |
3 h or more | 36.3% | 63.4% | |
Do you control who your child communicates with? | |||
Yes | 40.2% | 59.8% | <0.001 * |
No | 65.5% | 34.5% |
Variable | Low Awareness of Threats | High Awareness of Threats | p-Value | Fewer Control Measures | More Control Measures | p-Value |
---|---|---|---|---|---|---|
Gender | ||||||
Female | 44.3% | 55.7% | 0.329 | 49.3% | 50.7% | 0.032 * |
Male | 50.0% | 50.0% | 61.9% | 38.1% | ||
Age | ||||||
37 years old or younger | 45.0% | 55.0% | 0.948 | 49.6% | 50.4% | 0.405 |
38 years old or older | 45.2% | 54.8% | 52.9% | 47.1% | ||
Education | ||||||
Lower education | 49.0% | 51.0% | 0.021 * | 46.8% | 53.2% | 0.013 * |
Higher education | 39.7% | 60.3% | 56.9% | 43.1% | ||
Place of residence | ||||||
Medium-sized city | 47.7% | 52.3% | 0.208 | 49.0% | 51.0% | 0.322 |
Small town, village | 42.6% | 57.4% | 53.0% | 47.0% | ||
Marital status | ||||||
Married | 45.1% | 54.9% | 0.988 | 47.9% | 52.1% | 0.019 * |
Single | 45.0% | 55.0% | 58.1% | 41.9% | ||
Employment | ||||||
Employed | 46.6% | 53.4% | 0.214 | 48.6% | 51.4% | 0.041 * |
Unemployed | 41.0% | 59.0% | 57.8% | 42.2% | ||
Income | ||||||
300 EUR or less | 44.1% | 55.9% | 0.658 | 55.9% | 44.1% | 0.087 |
301 EUR or more | 46.0% | 54.0% | 48.4% | 51.6% | ||
Child’s gender | ||||||
Girl | 43.2% | 56.8% | 0.342 | 51.7% | 48.3% | 0.769 |
Boy | 47.0% | 53.0% | 50.5% | 49.5% | ||
Child’s age | ||||||
From 6 till 9 years old | 49.4% | 50.6% | 0.003* | 51.6% | 48.4% | 0.708 |
From 10 till 12 years old | 36.7% | 63.3% | 50.0% | 50.0% |
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Austys, D.; Sprudzanaitė, A.; Stukas, R. Personal Cell Phones among Children: Parental Perception of Content-Related Threats and Attempts to Control Them in a Lithuanian Sample. Behav. Sci. 2022, 12, 185. https://doi.org/10.3390/bs12060185
Austys D, Sprudzanaitė A, Stukas R. Personal Cell Phones among Children: Parental Perception of Content-Related Threats and Attempts to Control Them in a Lithuanian Sample. Behavioral Sciences. 2022; 12(6):185. https://doi.org/10.3390/bs12060185
Chicago/Turabian StyleAustys, Donatas, Ausma Sprudzanaitė, and Rimantas Stukas. 2022. "Personal Cell Phones among Children: Parental Perception of Content-Related Threats and Attempts to Control Them in a Lithuanian Sample" Behavioral Sciences 12, no. 6: 185. https://doi.org/10.3390/bs12060185
APA StyleAustys, D., Sprudzanaitė, A., & Stukas, R. (2022). Personal Cell Phones among Children: Parental Perception of Content-Related Threats and Attempts to Control Them in a Lithuanian Sample. Behavioral Sciences, 12(6), 185. https://doi.org/10.3390/bs12060185