Abstract
Background
Addiction to smartphone usage is a common worldwide problem among adults, which might negatively affect their wellbeing. This study investigated the prevalence and factors associated with smartphone addiction and depression among a Middle Eastern population.
Methods
This cross-sectional study was conducted in 2017 using a web-based questionnaire distributed via social media. Responses to the Smartphone Addiction Scale - Short version (10-items) were rated on a 6-point Likert scale, and their percentage mean score (PMS) was commuted. Responses to Beck’s Depression Inventory (20-items) were summated (range 0–60); their mean score (MS) was commuted and categorized. Higher scores indicated higher levels of addiction and depression. Factors associated with these outcomes were identified using descriptive and regression analyses. Statistical significance was set at P < 0.05.
Results
Complete questionnaires were 935/1120 (83.5%), of which 619 (66.2%) were females and 316 (33.8%) were males. The mean ± standard deviation of their age was 31.7 ± 11 years. Majority of participants obtained university education 766 (81.9%), while 169 (18.1%) had school education. The PMS of addiction was 50.2 ± 20.3, and MS of depression was 13.6 ± 10.0. A significant positive linear relationship was present between smart phone addiction and depression (y = 39.2 + 0.8×; P < 0.001). Significantly higher smartphone addiction scores were associated with younger age users, (β = − 0.203, adj. P = 0.004). Factors associated with higher depression scores were school educated users (β = − 2.03, adj. P = 0.01) compared to the university educated group and users with higher smart phone addiction scores (β =0.194, adj. P < 0.001).
Conclusions
The positive correlation between smartphone addiction and depression is alarming. Reasonable usage of smart phones is advised, especially among younger adults and less educated users who could be at higher risk of depression.
Electronic supplementary material
The online version of this article (10.1186/s12888-018-1745-4) contains supplementary material, which is available to authorized users.
Keywords: Smartphone addiction, Depression, Age, Education, Middle East
Background
Addiction to smartphone usage is a common problem among adults worldwide. It manifests itself in the excessive usage of their phones, while engaged in other activities such as studying, driving, social gatherings and even sleeping [1]. However, many people fail to realize that addiction to smartphone usage is a serious issue that can have a negative effect on the person’s thoughts, behavior, tendencies, feelings, and sense of well-being [2]. In particular, it can be a risk factor for depression, loneliness, anxiety and sleep disturbances [3]. As per the Mental Health Foundation in the United Kingdom, people with depression experience an unhappy mood, loss of interest or pleasure, feelings of guilt or low self-worth, disturbed sleep or appetite, low energy, and poor concentration. Depressive and anxiety disorders are two main common disorders that are highly prevalent globally, as over 300 million people are estimated to suffer from depression, which is equivalent to 4.4% of the world’s population [4]. It is speculated that not only addiction to smartphone usage can affect one’s mental and behavioral status, but also that those with mood disorders are more likely to become addicted to using their smartphones [5].
Numerous tools have been utilized in literature to assess the same phenomenon, but with different terms such as excessive smart phone usage, smartphone addiction, dependency on smart phones, internet addiction, problematic mobile phone usage, and so on. Remarkably, there was a tendency to use a non-pathological terminology, such as “Problematic Smartphone Use,” rather than the term smartphone addiction [6]. Addiction manifests itself in various forms such as preoccupation, tolerance, lack of control, withdrawal, mood modification, conflict, lies, excessive use and loss of interest [7]. Several studies have found that women are more likely to develop an addiction to smartphone usage than men [8]. This was viewed as a positive way for people to stay connected in social relationships. One study clarified that women like to show affection to their families using their smartphones while men use phones for efficiency and practicality [3, 8]. Though there are several studies on this topic, no study has proven this connection so far. Smartphone addiction has been found to be correlated with various physical and psychological issues, as indicated in a number of studies that tested this relationship among various age groups. For example, one study found that people with depression, social anxiety and loneliness had different uses for their smartphones compared to others [9]. People with social anxiety made fewer outgoing calls, as well as, fewer text messages than those without social anxiety [9]. It was reported that high levels of smartphone addiction were correlated with low self-esteem, loneliness, depression and shyness [10].
Depression is a general reflection of the psychological wellbeing that is thought to be highly correlated with addiction to smartphone usage. The majority of studies on this issue revealed that there is a relationship between these two variables; however, all these studies were conducted in specific populations. In Turkey, females were more likely to develop an addiction to smartphone usage compared to males [11], while in Austria chronic stress, low emotional stability, female gender, young age and depression were associated with problematic mobile usage [12]. In Taiwan, adolescents with significant depression were more likely to have four or more symptoms of problematic cell phone usage [13]. Depression and anxiety disorders were reported around 18% among adults in Saudi Arabia [14]. Each community is unique in terms of its norms, practices, behaviors and traditions. Even within a single Middle Eastern setting, ethno-national affiliations may influence how people associate between insights and self-stigma [15]. Those residing in the Middle Eastern region consist of heterogeneous systems of social differentiation based on ethnic, linguistic, sectarian, familial, tribal, regional, socioeconomic, and national identities. Ethnic Arab people likewise follow more than one faith tradition. It is worth mentioning that Western cultural norms have been disseminated into the Arab world, but this effect has been experienced differently in communities and across societies [16]. The aim of this study was to investigate the relationship between addiction to smartphone usage and self-reported depression among a Middle Eastern population to better understand this relationship in such a region. This was fulfilled by presenting the prevalence of smart phone addiction and depression, describing the sample characteristics and identifying factors associated with both smartphone addiction and depression.
Methods
A cross-sectional study was conducted in 2017 by distributing a pre-validated web-based questionnaire through common social media networks, among the Saudi Arabian population. The usage of social networking channels guaranteed maximum distribution throughout various geographical regions and boosted the representativeness of the sample. A brief description of the study objectives was presented, and by convenience, those who agreed to respond to the questionnaire confirmed their agreement electronically. Incomplete questionnaires were dropped out. Participants were requested to report their nationality, age and region upon submission. Participants below 18 years of age were excluded. The data retrieved were stored in a private institutional server. This study was approved by the Institutional Review Board of the Saudi Ministry of National Guard Health Affairs (MNG-HA), Riyadh, Saudi Arabia (Rss 17/003). Participation was voluntary with assurance about the confidentiality of their information, as no identifiers or personal information were collected.
The data collection tool comprised of three sections, namely the participants’ characteristics, the smart phone addiction assessment tool and the self-reported depression scale. These tools have been widely used in literature [11, 17]. Participants’ characteristics were nationality, sex, age (years), level of education (school vs. university level), place of residence (region) and financial income level (<$1500 vs. ≥$1500). Participants with school educational level were those who stopped their education prior enrollment in university, while those with university educational levels were those either currently enrolled or have graduated from university. The level of smartphone addiction was assessed using the Smartphone Addiction Scale-Short Version (SAS-SV), which is a validated scale developed from the original Smartphone Addiction Scale (SAS) by Kwon 2013. It is a self-reported scale containing 10-items, each rated on a 6- point Likert scale from one “strongly disagree” to six “strongly agree”. The total scores were summated, then converted to percentage mean scores (PMS), where higher scores indicated higher levels of smartphone addiction. In the original scale of SAS, the cut-off point was not reported [18]. A cutoff point at of 31/60 in males and 33/60 in females was utilized in the short version SAS by one Spanish-Belgium study [19]. Since no gender differences were reported between these cut off points [19], a cut-off point of score 32/60 or PMS = 53.3% was accounted in this study with subjects having PMS > 53% classified as excessive users or probably addicts. The concurrent validity and internal consistency were obtained for SAS-SV (Cronbach’s alpha: 0.91) [18].
The Beck’s Depression Inventory (BDI II) second edition is a tool used to assess the severity of depressive symptoms and to objectively quantify depression signs, but it’s not a diagnostic tool. The BDI II consists of 20 items rated on a 4-point scale. The total score ranges from 0 to 60, as higher scores indicated higher levels of depression. Participants with scores 0–9 were classified as “having ups and downs but considered normal”, 10–15 classified as “having mild mood disturbance”, 16–19 classified as “borderline clinical depression”, 20–29 classified as “having moderate depression”, 30–39 classified with “severe depression” and ≥ 40 as having “extreme depression”. This tool showed a Cronbach’s alpha reliability coefficient of 0.89 [20]. The Arabic version that was used in this study was previously translated by another researcher with a coefficients alpha of 0.82 [21].
Data were analyzed using SPSS; IBM (version 24). Descriptive statistics including mean, standard deviation, frequency and percentages were used to present the participants’ demographics and outcomes. The smart phone addiction and self-reported depression scores were analyzed as continuous variables and categorized qualitatively. Independent student t- test and one way ANOVA were used for bivariate analysis. Pearson’s correlation was used to determine the nature and significance of relationship between the two outcome measures. Factors significantly associated with smart phone addiction and depression were presented after controlling for any possible confounder using two linear regression models.
Results
Sample characteristics
Response rate was 935/1120 (83.5%). The younger age group (18–35 years) were 609 (65.1%), followed by middle age group (36–54 years) 303 (32.4%) and older age group (≥55 years) 23 (2.5%), with a mean of age ± standard deviation 31.7 ± 11 years. Catchment areas varied between all regions of the Kingdom, with highest response in Central region 668 (71.5%) and least in Northern region 5(0.6%). Females comprised 619 (66.2%) and males 16 (33.8%) of the sample. The income of 418 (44.7%) was <$1300, while 517 (55.3%) was ≥$1300. Majority of sample 766 (81.9%) were university educated, while 169 (18.1%) were school educated, Table 1.
Table 1.
N = 935 (100%) | |
---|---|
Age (years) | |
Young (18–35) | 609 (65.1) |
Middle (36–54) | 303 (32.4) |
Old (≥55) | 23 (2.5) |
x ± SD | 31.7 ± 10.98 |
Gender | |
Male | 316 (33.8) |
Female | 619 (66.2) |
Income | |
Less than $1300 | 418 (44.7) |
Between $1300 & $3700 | 316 (33.8) |
More than $3700 | 201 (21.5) |
Educational level | |
School | 169 (18.1) |
University | 766 (81.9) |
Regional distribution | |
North | 5 (0.6) |
South | 47 (5.0) |
Eastern | 74 (7.9) |
Western | 121 (12.9) |
Central | 668 (71.5) |
Others | 20 (2.1) |
Abbreviations: x mean, SD standard deviation
Smartphone addiction and Beck depression
The overall percentage mean score (PMS) of Smartphone Addiction scale (SAS-SV) was 50.2 ± 20.25, while the mean score of Beck depression scale was 13.6 ± 10.0. The responses to Beck Depression Scale and Smartphone Addiction Scale individual statments are enlisted in suppliment Additional file 1: Tables S1 and Additional file 2: Tables S2 respectively. Almost 19% can considered as non-addicted to smartphone usage (PMS = 0–30), 64% can considered as slightly addicted to smartphone usage (PMS = 31–70) and 17% as probably addicted to its usage (PMS = 71–100). In regards of depression, those classified as ups/downs to be normal were 39% (score 0–9), mild mood disturbance 25% (score 10–15), borderline clinical depression 12% (score 16–19), moderate depression 15% (score20–29), severe depression 7% (score 30–39) and extreme depression 1% (score ≥ 40). Qualitative characteristics of SAS-SV and Beck depression are illustrated in Figs. 1 and 2. A significant positive relation was observed between addiction and depression scores y = 39.2 ± 0.81×, P < 0.001, Fig. 3.
Initial bivariate analysis showed that the younger age group (PMS = 51.3 ± 20.5) had significantly the highest addiction scores compared to the older age group, P = 0.014. Smartphone users with school education (PMS = 15.7 ± 11.3), those with income <$1300 (PMS = 14.6 ± 10.2) and younger age group (PMS = 14.2 ± 10.2) were significantly more depressed than their counter groups (P = 0.003, P = 0.015 and P = 0.006 respectively), Table 2.
Table 2.
Smart phone addiction (0–100) | Beck depression (1–60) | |
---|---|---|
%mean score ± SD | Mean score ± SD | |
50.2 ± 20.25 | 13.6 ± 10.0 | |
Gender | ||
Male | 50.9 ± 22.2 | 13.3 ± 10.5 |
Female | 49.9 ± 19.2 | 13.8 ± 9.8 |
t = 0.672, P = 0.502 | t = − 0.806, P = 0.420 | |
Age | ||
Young (18–35) | 51.3 ± 20.5 | 14.2 ± 10.2 |
Middle (36–54) | 48.9 ± 19.6 | 12.9 ± 9.5 |
Old (≥55) | 40.2 ± 18.6 | 8.4 ± 8.96 |
F = 4.301, df = 2, P = 0.014* | F = 5.167, df = 2, P = 0.006* | |
Educational level | ||
School | 51.4 ± 20.9 | 15.7 ± 11.3 |
University | 49.9 ± 20.1 | 13.2 ± 9.6 |
t = 0.724, P = 0.395 | t = 8.786, P = 0.003* | |
Income | ||
Less than $1300 | 50.2 ± 20.6 | 14.6 ± 10.2 |
Between $1300 & $3700 | 50.96 ± 19.8 | 13.4 ± 9.9 |
More than $3700 | 49.1 ± 20.3 | 12.1 ± 9.5 |
F = 0.522, df = 2, P = 0.594 | F = 4.221, df = 2, P = 0.015* |
t = Student’s t-test; F = one-way ANOVA
Abbreviations: ANOVA analysis of variance, SD standard deviation, df degree of freedom
P-value = statistically significant at < 0.05, % = percentage
Two linear regression models were constructed and revealed that the factors that were significantly associated with higher smartphone addiction scores were: a) younger age (β = − 0.203, adj. P = 0.004) compared to older age smartphone users. Significant factors associated with higher depression scores were: a) School educated users (β = − 2.034, adj. P = 0.010) compared to university educated users; b) Users with higher smartphone addiction scores (β = 0.194, adj. P < 0.001) compared to users with less addiction scores, Table 3.
Table 3.
Variables | Smart phone addiction | Beck depression |
---|---|---|
β (t) | β (t) | |
Adj P-value | Adj P-value | |
Gender | ||
Femalea | 0.675 (0.461) | −0.355(−0.536) |
Maleb | Adj P = 0.645 | Adj P = 0.592 |
Age | −0.203 (−2.892) | −0.050(−1.582) |
(Years) | Adj P = 0.004* | Adj P = 0.114 |
Educational level | ||
Schoola | −1.878 (− 1.077) | − 2.034(− 2.579) |
Universityb | Adj P = 0.282 | Adj P = 0.010* |
Income | ||
< $1300a | 2.285 (1.398) | −0.781(−1.058) |
≥ $1300b | Adj P = 0.162 | Adj P = 0.291 |
Smart Phone Addiction | 0.194 (13.119) | |
(%mean score) | – | Adj P < 0.001* |
Constant | 56.729 (22.33) | 7.703 (5.414) |
Adj P < 0.001* | Adj P < 0.001* |
t = Student’s t-test; a: reference group,b: compared group
Abbreviations: β coefficient of determination, Adj adjusted
*Statistically significant at P < 0.05
Discussion
The association between smartphone addiction and depression has been discussed in previous studies, but which preceded the other remains debatable. In this study, there was a strong positive relationship between smartphone addiction and depression. A systematic review of 23 peer reviewed papers reported that depression was consistently related to problematic smartphone usage [22]. Depression in Lebanese and Austrian university students was also significantly associated with smartphone addiction [12, 23] or problematic mobile phone usage [13] respectively. In fact, one of the predisposing factors of smart phone addiction is increased stress levels followed by a decrease in self-control, which eventually leads to the over usage of smartphones [24]. It is worth mentioning, that no relationship between smartphone ownership and symptoms of depression were reported by one study, which entails that addiction is related to self-control rather than the possession of the phone itself [25]. However, a negative association between smartphone addiction and depression was reported by another study [26]. Furthermore, another study stated that familial social support was a significant predictor of smartphone addiction, as this addiction increased as individuals’ familial support decreased [27]. There is no doubt that social relationships have been severely affected with the introduction of various social networks, and this phenomenon is commonly reported by the older generation who lived in the era before the introduction of smart phone technology. Unfortunately, there are gaps in literature on the probable association between smartphone addiction and social support [27]. Over usage of smartphones causes problems with attention and focusing, as these people are more likely to show more functional impairments that interfere with school, work and family life [28]. Young adults with personality type A who experience high stress level may lack positive stress coping mechanisms which makes them highly susceptible to smartphone addiction [8].
Observing the relationship between depression and smart phone addiction from an opposite perspective is also valid. Smartphone addiction can be a predisposing factor to depression, either indirectly or through a mediating effect. An association between smart phone addiction and altered lifestyle habits was found, with higher tendency among smart phone addicts to skip meals, to eat unhealthy diets, to gain weight, and to experience sleep disorders compared to less addicted smartphone users. These can be accounted as predisposing factors to depression [29]. Late night smartphone users indeed reported feeling tired (35.9%) and complained of less sleep quality (35.8%) [8]. This was confirmed by one Saudi study stating that higher problematic mobile usage scores were correlated with various unhealthy sleep hygiene, physical inactivity, dietary style and others [30]. One study reported that people with lower levels of self-perceived emotional or health conditions were more likely to exhibit an over usage of smartphones [31]. This indicates that these people are stuck in a vicious cycle. They are stressed from a certain emotional or health deficit, and then try to compensate or overcome this stress with on over usage of smart phones without realizing that this addiction itself leaves a negative impact on their social, emotional and physical wellbeing. On the other hand, an experimental study tried to determine the impact of not using a smart phone for 2 days. An alarming finding in this study was suggestive of an association between emotional dysregulation (suppression and decreased use of cognitive appraisal) and the psychopathology (depression, stress and anxiety) from social media loss [32]. Another study had claimed that neuroticism is linked in a chain-mediating effect with smartphone addiction and depression, all important variables that worsen the quality of life [33].
This study showed that the level of smart phone addiction was moderate, with 31.3% of subjects who can be accounted as addicts to smart phone usage. A meta-analysis paper claimed that the prevalence of smart phone addiction ranged between 39 and 40% [34]. One study proved that the fear of missing out was related to problematic smartphone usage [35]. Almost 60.9% of subjects in this study agreed to a certain degree that they constantly check their phones so as not to miss conversations between other people. Over usage of smartphones can actually impair the hand function by causing pain in the thumb and lowering the pinch strength [36]. Almost 33.8% of subjects in this study complained of physical pain in the wrist, back or neck. All these striking conclusions reveal that there is a clear association between smartphone usage addictions and various degrees of physical problems [37].
Younger individuals were more likely to be addicted than older individuals. A study from Turkey found that younger age groups had higher levels of smartphone overuse [12]. Generally, adolescents have a higher risk of smartphone addiction compared to adults, as they are more susceptible to accept new technologies than older generation groups [18]. Gender differences were not observed in this study, whether in relation to addiction or depression which was comparable to some studies in literature [19]. It was reported that males tend to use the internet mainly for online gaming, while females tend to use the internet for sending messages, chatting and blogging [26, 38]. Adults with higher educational level were less likely to have symptoms of depression, which was similar to results of a study conducted in 10 European countries [39]. A significant relationship between income and depression was noted as the people with lower income were more depressed. This was similar to findings of a Canadian study that found depression was less prevalent in those with a high income than those with a low income [23]. Younger adults seem to be more depressed than the older adults. This was consistent with findings in previous studies which can be attributed to the fact that younger adults are more susceptible to stressors such as social conflicts, marital relationships, raising children and others [40, 41].
Limitations
Few limitations have been observed in this study, mainly due to the retrospective nature of the study design and the method of data collection. Recall bias is expected to be minimal as smartphone usage is experienced on daily bases and participants won’t have any difficulty recalling its influence on their various life aspects. Web-based surveys are usually linked to incentives, which make them prone to frauds. In this study, participation was both anonymous and free. The variable of marital status contracted errors during the extraction of data, and therefore was dropped out. There might be an association between marital status and the outcomes measured which could be investigated in future studies. Participation was not restricted to Saudi citizens and the job market in Saudi Arabia accommodates expatriate workers from all over the world, so the data collected is not only representative of the country itself. Generalizing the findings might not be self-limited to Saudi Arabia, as smart phone addiction is invading populations all over the world. Environmental and social characteristic of Saudi Arabia might be considered unique compared to other countries, but no studies have investigated the association between smart phone addiction and setting characteristics. The SAS-SV self-reported surveys grants researchers a reliable and valid assessment tool to identify addiction, yet a more accurate diagnosis is confirmed by a face to face assessment conducted by a clinical or behavioral expert. Depression is a sensitive outcome that cannot be linked exclusively to smartphone addiction; therefore the term “association” was used as a more conservative description of this relationship.
Conclusions
The positive correlation between smartphone addiction and depression is alarming. Reasonable usage of smart phones is advised, especially among younger adults and less educated users who could be at higher risk of depression. The relationship between depression and smartphone addiction is an escalating global concern that necessitates future studies to investigate further on this aspect.
Key points
Depression is a mood disorder that is thought to be highly correlated with addiction to smart phone usage.
An alarming positive correlation between addiction to smart phone usage and depression was found.
Reasonable usage of smart phones is advised, especially among younger adults and less educated users who could be at higher risk of depression.
Additional files
Acknowledgements
This study was approved and monitored by King Abdullah International Medical Research Center, King Saud bin Abdulaziz University for Health Sciences, Riyadh, Saudi Arabia. The authors would like to thank the Research Office and the Institutional Review Board for their tremendous support.
Availability of data and materials
The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.
Abbreviations
- BDI II
Beck’s depression inventory
- MNG-HA
Ministry of National Guard Health Affairs
- MS
Mean score
- PMS
Percentage mean score
- SAS
Smartphone Addiction Scale
- SAS-SV
Smartphone addiction scale-short version
- WHO
World Health Organization
Authors’ contributions
All authors conceptualized and designed the study. AFM supervised the conduct of the study and data collection. AAA, EMA, NWT and RAA undertook the recruitment of subjects and managed the data. AFM and MS were accounted for the quality control. MS provided statistical advice on study design, data analysis and responded to reviewers’ comments. All authors drafted the manuscript, and contributed substantially to its revision as submitted and agree to be accountable for all aspects of the work. All authors read and approved the final manuscript.
Ethics approval and consent to participate
A self-explanatory letter of invitation to participate was presented electronically to each of the participants. All participants had given informed consents for their participation in the research presented in this manuscript with full knowledge of the possible risks and benefits of participation. Participants consented by ticking “agree”, indicating their agreement to provide their feedback for this research study. Study was approved by the Institutional Review Board of the Saudi Ministry of National Guard Health Affairs, Riyadh, Saudi Arabia (Protocol # RSS 17/003). Studies conducted followed the recommendations of the International Conference on Harmonization for Good Clinical Practice (ICH-GCP).
Competing interests
The authors declare that they have no competing interests.
Publisher’s Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Footnotes
Electronic supplementary material
The online version of this article (10.1186/s12888-018-1745-4) contains supplementary material, which is available to authorized users.
Contributor Information
Aljohara A. Alhassan, Email: johara-alhassan@hotmail.com
Ethar M. Alqadhib, Email: ethar.m.q@gmail.com
Nada W. Taha, Email: nada.w.t95@gmail.com
Raneem A. Alahmari, Email: raneem.a@live.com
Mahmoud Salam, Phone: 00966534284644, Email: salamma@ngha.med.sa.
Adel F. Almutairi, Email: almutairiad1@ngha.med.sa
References
- 1.Harwood J, Dooley J, Scott A, Joiner R. Constantly connected – the effects of smart-devices on mental health. Comput Hum Behav. 2014;34:267–272. doi: 10.1016/j.chb.2014.02.006. [DOI] [Google Scholar]
- 2.Edition F. Diagnostic and statistical manual of mental disorders. Arlington: American Psychiatric Publishing; 2013. [Google Scholar]
- 3.Gao Y, Li A, Zhu T, Liu X, Liu X. How smartphone usage correlates with social anxiety and loneliness. Peerj. 2016;4:e2197. doi: 10.7717/peerj.2197. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 4.World Health Organization. Depression and other common mental disorders: global health estimates.
- 5.Zhang KZ, Chen C, Lee MK. Understanding the Role of Motives in smartphone Addiction. InPACIS. 2014. p. 131.
- 6.Bae SM. Smartphone addiction of adolescents, not a smart choice. J Korean Med Sci. 2017;32(10):1563–1564. doi: 10.3346/jkms.2017.32.10.1563. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 7.Lee H, Kim JW, Choi TY. Risk factors for smartphone addiction in Korean adolescents: smartphone use patterns. J Korean Med Sci. 2017;32(10):1674–1679. doi: 10.3346/jkms.2017.32.10.1674. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 8.Park N, Lee H. Nature of youth smartphone addiction in Korea: diverse dimensions of smartphone use and individual traits. J Commun Res. 2014;51(1):100–132. doi: 10.22174/jcr.2014.51.1.100. [DOI] [Google Scholar]
- 9.Wei R, Lo VH. Staying connected while on the move: cell phone use and social connectedness. New Media Soc. 2006;8(1):53–72. doi: 10.1177/1461444806059870. [DOI] [Google Scholar]
- 10.Bian M, Leung L. Linking loneliness, shyness, smartphone addiction symptoms, and patterns of smartphone use to social capital. Soc Sci Comput Rev. 2015;33(1):61–79. doi: 10.1177/0894439314528779. [DOI] [Google Scholar]
- 11.Demirci K, Akgönül M, Akpinar A. Relationship of smartphone use severity with sleep quality, depression, and anxiety in university students. J Behav Addict. 2015;4(2):85–92. doi: 10.1556/2006.4.2015.010. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 12.Augner C, Hacker G. Associations between problematic mobile phone use and psychological parameters in young adults. Int J Public Health. 2011;57(2):437–441. doi: 10.1007/s00038-011-0234-z. [DOI] [PubMed] [Google Scholar]
- 13.Yen C, Tang T, Yen J, Lin H, Huang C, Liu S, et al. Symptoms of problematic cellular phone use, functional impairment and its association with depression among adolescents in southern Taiwan. J Adolesc. 2009;32(4):863–873. doi: 10.1016/j.adolescence.2008.10.006. [DOI] [PubMed] [Google Scholar]
- 14.Al-Khathami AD, Ogbeide DO. Prevalence of mental illness among Saudi adult primary-care patients in Central Saudi Arabia. Saudi Med J. 2002;23(6):721–724. [PubMed] [Google Scholar]
- 15.Zisman-Ilani Y, Hasson-Ohayon I, Levy-Frank I, Tuval-Mashiach R, Roe D. Self-stigma, insight, and family burden among Israeli mothers of people with serious mental illness: ethno-national considerations. Transcult Psychiatry. 2017;54(3):423–441. doi: 10.1177/1363461517703022. [DOI] [PubMed] [Google Scholar]
- 16.Al-Krenawi A, Graham JR. Culturally sensitive social work practice with Arab clients in mental health settings. Health Soc Work. 2000;25(1):9–22. doi: 10.1093/hsw/25.1.9. [DOI] [PubMed] [Google Scholar]
- 17.Güzeller C, Coşguner T. Development of a problematic mobile phone use scale for Turkish adolescents. Cyberpsychol Behav Soc Netw. 2012;15(4):205–211. doi: 10.1089/cyber.2011.0210. [DOI] [PubMed] [Google Scholar]
- 18.Kwon M, Kim DJ, Cho H, Yang S. The smartphone addiction scale: development and validation of a short version for adolescents. PLoS One. 2013;8(12):e83558. doi: 10.1371/journal.pone.0083558. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 19.Lopez-Fernandez O. Short version of the smartphone addiction scale adapted to Spanish and French: towards a cross-cultural research in problematic mobile phone use. Addict Behav. 2017;64:275–280. doi: 10.1016/j.addbeh.2015.11.013. [DOI] [PubMed] [Google Scholar]
- 20.Lee E, Lee S, Hwang S, Hong S, Kim J. Reliability and validity of the Beck depression inventory-II among Korean adolescents. Psychiatry Investig. 2017;14(1):30. doi: 10.4306/pi.2017.14.1.30. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 21.Alansari BM. Internal consistency of an Arabic adaptation of the Beck depression inventory-II with college students in eighteen Arab countries. Soc Behav Personal Int J. 2006;34(4):425–430. doi: 10.2224/sbp.2006.34.4.425. [DOI] [Google Scholar]
- 22.Elhai JD, Dvorak RD, Levine JC, Hall BJ. Problematic smartphone use: a conceptual overview and systematic review of relations with anxiety and depression psychopathology. J Affect Disord. 2017;207:251–259. doi: 10.1016/j.jad.2016.08.030. [DOI] [PubMed] [Google Scholar]
- 23.Matar Boumosleh J, Jaalouk D. Depression, anxiety, and smartphone addiction in university students- a cross sectional study. PLoS One. 2017;12(8):e0182239. doi: 10.1371/journal.pone.0182239. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 24.Cho HY, Kim DJ, Park JW. Stress and adult smartphone addiction: Mediation by self‐control, neuroticism, and extraversion. Stress and Health. 2017;33(5):624–30. [DOI] [PubMed]
- 25.Lemola S, Perkinson-Gloor N, Brand S, Dewald-Kaufmann J, Grob A. Adolescents’ electronic media use at night, sleep disturbance, and depressive symptoms in the smartphone age. J Youth Adolesc. 2014;44(2):405–418. doi: 10.1007/s10964-014-0176-x. [DOI] [PubMed] [Google Scholar]
- 26.Choi S, Kim D, Choi J, Ahn H, Choi E, Song W, et al. Comparison of risk and protective factors associated with smartphone addiction and internet addiction. J Behav Addict. 2015;4(4):308–314. doi: 10.1556/2006.4.2015.043. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 27.Aker S, Sahin MK, Sezgin S, Oguz G. Psychosocial factors affecting smartphone addiction in university students. J Addict Nurs. 2017;28(4):215–219. doi: 10.1097/JAN.0000000000000197. [DOI] [PubMed] [Google Scholar]
- 28.Collier R. Mental health in the smartphone era. CMAJ. 2016;188(16):1141–1142. doi: 10.1503/cmaj.109-5336. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 29.Kim Y, Lee N, Lim Y. Gender differences in the association of smartphone addiction with food group consumption among Korean adolescents. Public Health. 2017;145:132–135. doi: 10.1016/j.puhe.2016.12.026. [DOI] [PubMed] [Google Scholar]
- 30.Alosaimi FD, Alyahya H, Alshahwan H, Al Mahyijari N, Shaik SA. Smartphone addiction among university students in Riyadh, Saudi Arabia. Saudi Med J. 2016;37(6):675. doi: 10.15537/smj.2016.6.14430. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 31.Kim HJ, Min JY, Kim HJ, Min KB. Association between psychological and self-assessed health status and smartphone overuse among Korean college students. J Ment Health. 2017:1–6. [DOI] [PubMed]
- 32.Elhai JD, Hall BJ, Erwin MC. Emotion regulation’s relationships with depression, anxiety and stress due to imagined smartphone and social media loss. Psychiatry Res. 2018;261:28–34. doi: 10.1016/j.psychres.2017.12.045. [DOI] [PubMed] [Google Scholar]
- 33.Gao T, Xiang YT, Zhang H, Zhang Z, Mei S. Neuroticism and quality of life: multiple mediating effects of smartphone addiction and depression. Psychiatry Res. 2017;258:457–461. doi: 10.1016/j.psychres.2017.08.074. [DOI] [PubMed] [Google Scholar]
- 34.Davey S, Davey A. Assessment of smartphone addiction in Indian adolescents: a mixed method study by systematic-review and meta-analysis approach. Int J Prev Med. 2014;5(12):1500. [PMC free article] [PubMed] [Google Scholar]
- 35.Liu Q, Zhou Z, Yang X, Kong F, Niu G, Fan C. Mobile phone addiction and sleep quality among Chinese adolescents: a moderated mediation model. Comput Hum Behav. 2017;72:108–114. doi: 10.1016/j.chb.2017.02.042. [DOI] [Google Scholar]
- 36.İNal EE, Çetİntürk A, Akgönül M, Savaş S. Effects of smartphone overuse on hand function, pinch strength, and the median nerve. Muscle Nerve. 2015;52(2):183–188. doi: 10.1002/mus.24695. [DOI] [PubMed] [Google Scholar]
- 37.AlAbdulwahab SS, Kachanathu SJ, AlMotairi MS. Smartphone use addiction can cause neck disability. Musculoskeletal Care. 2017;15(1):10–12. doi: 10.1002/msc.1170. [DOI] [PubMed] [Google Scholar]
- 38.Heo J, Oh J, Subramanian S, Kim Y, Kawachi I. Addictive internet use among Korean adolescents: a National Survey. PLoS One. 2014;9(2):e87819. doi: 10.1371/journal.pone.0087819. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 39.Ladin K. Risk of late-life depression across 10 European Union countries: deconstructing the education effect. J Aging Health. 2008;20(6):653–670. doi: 10.1177/0898264308321002. [DOI] [PubMed] [Google Scholar]
- 40.Streiner D, Cairney J, Veldhuizen S. The epidemiology of psychological problems in the elderly. Can J Psychiatry. 2006;51(3):185–191. doi: 10.1177/070674370605100309. [DOI] [PubMed] [Google Scholar]
- 41.Wade TJ, Cairney J. The effect of Sociodemographics, social stressors, health status and psychosocial resources on the age depression relationship. Can J Public Health Canadienne De Sante Publique. 2000;91(4):307–312. doi: 10.1007/BF03404295. [DOI] [PMC free article] [PubMed] [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data Availability Statement
The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.