Using Google Correlate Draw on a Mobile Device
Korean J Pain. 2021 Jan 1; 34(1): 72–81.
The relationship between smartphone addiction and musculoskeletal pain prevalence among young population: a cross-sectional study
Rustem Mustafaoglu
1Department of Physiotherapy and Rehabilitation, Division of Physiotherapy and Rehabilitation, Faculty of Health Sciences, Istanbul University-Cerrahpasa, Istanbul, Turkey
Zeynal Yasaci
2Department of Physiotherapy and Rehabilitation, Institute of Graduate Studies, Istanbul University-Cerrahpasa, Istanbul, Turkey
3Division of Physiotherapy and Rehabilitation, Faculty of Health Sciences, Harran University, Sanliurfa, Turkey
Emrah Zirek
2Department of Physiotherapy and Rehabilitation, Institute of Graduate Studies, Istanbul University-Cerrahpasa, Istanbul, Turkey
4Division of Physiotherapy and Rehabilitation, Faculty of Health Sciences, Bingol University, Bingol, Turkey
Mark D. Griffiths
5International Gaming Research Unit, Psychology Department, Nottingham Trent University, Nottingham, UK
Arzu Razak Ozdincler
6Division of Physiotherapy and Rehabilitation, Faculty of Health Sciences, Biruni University, Istanbul, Turkey
Received 2020 Jun 1; Revised 2020 Sep 18; Accepted 2020 Sep 21.
This article has been cited by other articles in PMC.
Abstract
Background
In the literature, there have been debates as to whether smartphone use has negative effects on physical and mental health. The present study investigated the extent to which smartphone addiction impacts on musculoskeletal pain prevalence among university students.
Methods
The questionnaire consisted of three sections demographic information, the Smartphone Addiction Scale (SAS), and the modified Nordic Musculoskeletal Questionnaire.
Results
A total of 249 participants were included in this cross-sectional study. The body parts that were reported with highest prevalence of musculoskeletal pain were the upper back (70.3%), neck (65.9%), and wrists/hands (68.7%). The SAS scores were correlated with duration of smartphone use on a typical day (P = 0.001), duration of owning a smartphone (P = 0.027), and musculoskeletal pain prevalence in the neck (P = 0.001), wrists/hands (P = 0.001), shoulders (P = 0.025), and upper back (P = 0.023). The SAS score was significantly associated with prevalence of musculoskeletal pain in the neck (odd ratio [OR], 1.08; 95% confidence interval [CI], 0.98-1.10; P = 0.002), wrists/hands (OR, 1.07; 95% CI, 0.97-1.09; P = 0.001), and upper back (OR, 1.10; 95% CI, 0.98-1.11; P = 0.033).
Conclusions
The findings indicated that the upper back, neck, and wrists/hands have a higher prevalence of musculoskeletal pain among smartphone users, particularly those with a smartphone addiction. Smartphone addiction scores were correlated with duration of smartphone use on a typical day, duration of owning smartphone, and musculoskeletal pain prevalence in the neck, wrists/hands, shoulders, and upper back.
Keywords: Behavior, Addictive; Chronic Pain; Cross-Sectional Studies; Mental Health; Musculoskeletal Pain; Prevalence; Smartphone; Surveys and Questionnaires
INTRODUCTION
Smartphones offer a range of mobile applications for communication, education, and entertainment and have become an essential part of everyday life. The smartphone is one of the most popular technological devices among many ages worldwide. A recent study showed that 79% of the population between the age 18-44 years have their smartphones with them almost all the time, with only two hours of their waking day spent without their smartphone in hand [1]. Innovations in smartphone models, including surfing the internet, social media apps, gaming apps, portable media players, compact digital cameras, and high-resolution touchscreens, have been a factor in the frequent use of and "addiction" to smartphones [2]. The number of smartphone users worldwide was estimated to be 3.5 billion at the end of 2019 and is expected to reach 3.8 billion by 2021 [3].
Addiction to smartphones can cause serious problems, especially for students. These problems, which now appear to start in childhood, can manifest as a social problem for a minority of individuals over time. These addictions have been identified as non-chemical behavioural addictions involving human-machine interaction, or so-called "technological addictions" [4]. "Gambling disorder" and "Internet gaming disorder" are currently the only non-substance-related disorders defined as behavioral addictions in the fifth edition of the Diagnostic and Statistical Manual of Mental Disorders (DSM-5) [5]. Smartphone addiction has a some similarities to DSM-5 substance-related disorders [6]. Consequently, in recent years, a number of psychometric scales have been developed to assess problematic smartphone use and/or smartphone addiction [2,6,7].
Because smartphones are now being used by individuals more frequently than computers every day, it is not surprising that various negative effects of excessive smartphone use have emerged. In daily life, smartphone users browse the internet, use social media, chat with other users, play games, gamble, listen to music, and perform many other activities on their smartphones [8,9]. During these tasks, individual may be engaged in one position for a long time without moving or making specific movements repeatedly leading to various musculoskeletal disorders [10-12]. Most smartphone tasks require users to stare sharply downwards or to hold their arms out in front of them to read the screen which makes their head move forward and can cause an excessive anterior curve in the lower cervical vertebrae and an excessive posterior curve in the upper thoracic vertebrae to maintain balance, which places stress on the cervical spine and the neck muscles [13]. Forward head posture is one of the most commonly recognized poor postures in the sagittal plane. Incorrect posture of the head and neck has been correlated with chronic musculoskeletal pain [14,15].
The incidence of musculoskeletal disorders of hand, wrist, forearm, arm, and neck has been increasing worldwide due to the prolonged, forceful, low amplitude, repetitive use of hand held devices. Continuous repetitive movements with the thumb and fingers have been identified as risk factors which may lead to disorders of the thumb and its musculature such as tendinosis of the extensor pollicis longus, or myofacial pain syndrome in the hand. In the literature, several studies have examined the impact of smartphone usage on the musculoskeletal system [14,16-19]. A retrospective study found that all the hand-held device user participants reported pain in the thumb and forearm with associated burning, numbness, and tingling around the thenar eminence of the hand [16]. Similar results were found among adolescents who use electronic devices where musculoskeletal pain (61%) and musculoskeletal pain syndrome (33%) were reported.
Although numerous studies conducted on smartphone addiction are generally focused on mental health (stress, academic performance, satisfaction with life, loneliness, depression, anxiety, etc.) [20-22], few studies have examined the musculoskeletal risks associated with problematic smartphone use. It is necessary to evaluate the physical changes that occur during the use of smartphones, especially during the repeated movements in the smartphone use, and to determine whether their use is a risk factor that can induce musculoskeletal disorders. To date, no comprehensive study (i.e., studies evaluating musculoskeletal problems using standardized assessment tools) has directly focused on the adverse musculoskeletal health effects of problematic smartphone use. Therefore, the aim of this study was to investigate smartphone addiction level and its impact on musculoskeletal pain prevalance among university students.
MATERIALS AND METHODS
1. Participants and settings
The present study used convenience sampling. To be included in the study, participants had to be aged between 18-25 years with a minimum of 25 text messages or emails per day, browsing the Internet and/or playing games for more than one hour a day using their smartphone. The exclusion criteria were any participants with neck, shoulder, upper back, lower back, elbow, or wrist-hand musculoskeletal trauma, and those with congenital deformities, serious surgical or neurological diseases, limb injuries, or limb pain in the prior six months. Before completing the survey, the purpose of the study was explained to the participants, and participants were assured that their data were anonymous and confidential. All procedures were performed in accordance with the Declaration of Helsinki, and ethical approval for this study was obtained from the Human Research Ethics Committee of Bakirkoy Dr. Sadi Konuk Training and Research Hospital (IRB: 2018-03-17).
2. Sample size
The sample size was calculated using G*Power 3.1 software (Heinrich-Heine-Universität Düsseldorf, Düsseldorf, Germany). The lowest sample size required for the present study was 232, which was estimated to enable the detection of an odds ratio (OR) of 1.6 with 80% power and an alpha probability of 0.05. This expected sample size was based on the OR reported by a longitudinal population-based cohort study with young adults on the risk of neck/upper back pain with texting on mobile phones [23]. With an expected drop-out rate of 30% due to possible non-responses or other reasons, a total sample of 300 students was initially planned to be included in the present study. Due to absence during the study period, incomplete questionnaires, or lack of interest in the study, a total of 249 university students' data remained for analysis.
3. Data collection instruments
1) Demographics
Age, sex, weight, height and body mass index (BMI), daily smartphone usage time, duration of owning a smartphone, and the purposes of smartphone use in a typical day, including: (1) talking (voice-to-voice), (2) text messaging, (3) listening to music, (4) watching videos, (5) social networking, (6) gaming, and (7) other.
2) Smartphone Addiction Scale (SAS)
The SAS is a 33-item scale in which responses to items are given on a six-point Likert-type scale from 1 (strongly disagree) to 6 (strongly agree) [2] . It is based on the Internet Addiction Test [24] and comprises six factors: daily-life disturbance, positive anticipation, withdrawal, cyberspace-oriented relationships, overuse, and tolerance. Higher scores indicate a higher risk of smartphone addiction. The total scores ranged from 33 to 198. A cut-off point for smartphone addiction was not reported in the original scale, with higher scores indicating a greater risk of being addicted to smartphones. A reliability and validity study of the Turkish version of the SAS was conducted by Demirci et al. [25], and the Cronbach's alpha was 0.94.
3) Modified Nordic Musculoskeletal Questionnaire (mNMQ)
In the present study, the mNMQ was used [26]. The mNMQ consists items relating to six body regions (neck, shoulders, upper back, lower back, elbow, and wrists-hands) from the original NMQ, and assesses upper body musculoskeletal symptoms related to any pain or numbness in the previous 12 months and last seven days. The mNMQ investigates pain and numbness in the body regions that are used most frequently during smartphone use, enabling participants to answer "yes" or "no" by using a simple body image. The participants were asked whether the pain that had developed with in the past year prevented them from doing normal work (at home or outside the home) or whether hospitalization was required due to this pain. The Turkish version of NMQ was used in the present study [27].
4. Statistical analysis
All statistical analyses were performed using SPSS version 22.0 (IBM Co., Armonk, NY). The one-sample Kolmogorov–Smirnov test was performed to check the normality of distribution of each continuous variable. Data are presented as mean ± standard deviation (SD), and frequencies. Because the data were normally distributed, Pearson's correlation tests were performed to assess the bivariate correlation between two continuous variables, and point-biserial correlations were used to test the correlation between one continuous and one dichotomous variable. In addition, an independent sample t-test was performed to establish whether there were any significant differences in mean SAS scores in relation to each type of body part pain experienced by participants. Logistic regression models were constructed to predict the body parts experiencing discomfort. Each mMNQ assessed musculoskeletal body part discomfort by using pain versus indolence as a dependent variable in the logistic regression model. Sex, duration of smartphone use on a typical day, duration of owning a smartphone, and SAS scores were considered as independent variables. The ORs and 95% confidence intervals (CIs) were reported. Statistical significance was based on P-values < 0.05.
RESULTS
1. Descriptive statistics
A total of 249 participants completed the questionnaire (67.5% females). The response rate was 83.0%. A total of 51 individuals were excluded from the study because they withdrew from the study and/or had missing data. Participants' mean age was 21.3 ± 1.9 (range 18-25) years and mean BMI was 22.1 ± 3.2 (range 17.1-40.8) kg/m2. It was also found that the most common uses by participants for their smartphone were making phone calls (98.4%) and social networking (96.0%). In addition, the average SAS score was 77.5 ± 23.9 (range 33-175). Table 1 presents general characteristics of the participants and their smartphone use attitude.
Table 1
General characteristics of the participants and smartphone use attitude
Characteristic | Value |
---|---|
Sex | |
Female | 168 (67.5) |
Male | 81 (32.5) |
Age (yr) | 21.3 ± 1.9 |
Weight (kg) | 63.1 ± 12.3 |
Height (cm) | 168.5 ± 9.1 |
Body mass index (kg/m2) | 22.1 ± 3.2 |
Purposes of smartphone use | |
Making phone calls | 245 (98.4) |
Text messaging | 220 (88.4) |
Gaming | 142 (57.0) |
Listening to music | 209 (83.9) |
Watching videos | 177 (71.1) |
Social networking | 239 (96.0) |
Other | 97 (39.0) |
Duration of smartphone use on a typical day (hr) | |
1-2 | 53 (21.3) |
3-4 | 104 (41.8) |
5-6 | 59 (23.7) |
> 6 | 33 (13.3) |
Duration of owning smartphone (yr) | |
1-3 | 20 (8.0) |
4-6 | 45 (18.1) |
7-9 | 106 (42.6) |
> 9 | 78 (31.3) |
SAS score | 77.5 ± 23.9 |
2. Musculoskeletal pain prevalence
Prevalence of musculoskeletal pain during past year and past week of the participants is shown in Table 2. Among the one-year musculoskeletal pain symptoms, upper back (70.3%), neck (65.9%), wrists/hands (68.7%), and shoulders (56.6%) were the body parts with the highest prevalence of pain. Similarly, among the past-week musculoskeletal pain symptoms, wrists/hands (58.2%), upper back (51.0%), and neck (45.4%) were the body parts with the highest prevalence of pain. Participants who experienced pain in the upper back (22.5%), lower back (18.5%), wrists/hands (18.5%), and neck (16.9%) reported that they were unable to perform routine work at home or their workplaces for a day or more. Apart from elbow (P = 0.104) and lower back pain (P = 0.221), SAS scores of individuals with pain in all other areas were significantly higher than those without pain (all P values < 0.05; see Table 3).
Table 2
Prevalence of musculoskeletal pain during past year and past week in participants by modified Nordic Musculoskeletal Questionnaire
Body part | Past-year musculoskeletal pain | Past-week musculoskeletal pain | Prevented you from doing your normal work (at home or away from home) during the past year |
---|---|---|---|
Neck | 164 (65.9) | 113 (45.4) | 42 (16.9) |
Shoulder | 141 (56.6) | 107 (43.0) | 37 (14.9) |
Elbow | 39 (15.7) | 29 (11.6) | 14 (5.6) |
Wrists/hands | 171 (68.7) | 145 (58.2) | 46 (18.5) |
Upper back | 175 (70.3) | 127 (51.0) | 56 (22.5) |
Lower back | 111 (44.6) | 79 (31.7) | 46 (18.5) |
Table 3
Comparison of SAS scores and presence or absence of pain in six body parts
Body part | Pain | SAS score | t-score | P valuea |
---|---|---|---|---|
Shoulder | (+) | 80.3 ± 25.9 | –2.255 | 0.025 |
(–) | 73.2 ± 19.7 | |||
Elbow | (+) | 76.4 ± 30.1 | 1.634 | 0.104 |
(–) | 73.2 ± 21.8 | |||
Wrists/hands | (+) | 88.5 ± 24.3 | –8.981 | 0.001 |
(–) | 64.4 ± 15.2 | |||
Neck | (+) | 85.6 ± 22.8 | –7.905 | 0.001 |
(–) | 62.9 ± 18.1 | |||
Upper back | (+) | 83.5 ± 23.4 | –6.391 | 0.001 |
(–) | 64.3 ± 19.1 | |||
Lower back | (+) | 73.9 ± 24.2 | 1.123 | 0.221 |
(–) | 72.1 ± 22.1 |
3. The correlations of SAS scores with participantsʼ characteristics, smartphone use, and musculoskeletal pain prevalence
Correlation coefficients for the study variables are presented in Table 4 and Fig. 1. The SAS scores were positively correlated with duration of smartphone use on a typical day (r = 0.681; P = 0.001), duration of owning a smartphone (r = 0.301; P = 0.027), musculoskeletal pain prevalence in the neck (r = 0.457; P = 0.001), shoulder (r = 0.145; P = 0.025), wrists/hands (r = 0.504; P = 0.001), and upper back (r = 0.148; P = 0.023). The findings demonstrated that smartphone addiction was associated with high musculoskeletal pain prevalence in the neck, wrists/hands, shoulders, and upper back.
Correlations between the Smartphone Addiction Scale (SAS) and presence of musculoskeletal pain in the body parts.
Table 4
The correlations between SAS scores and participants' characteristics, smartphone usage, and musculoskeletal pain prevalence of the body parts
Characteristic | SAS score | |
---|---|---|
| ||
r or rbp | P value | |
Age | 0.046 | 0.932a |
Sex | 0.041 | 0.529b |
Duration of smartphone use on a typical day | 0.681 | 0.001a |
Duration of owning smartphone | 0.301 | 0.027a |
Neck | 0.457 | 0.001b |
Shoulder | 0.145 | 0.025b |
Elbow | 0.108 | 0.104b |
Wrists/hands | 0.504 | 0.001b |
Upper back | 0.148 | 0.023b |
Lower back | 0.107 | 0.099b |
4. Factors associated with musculoskeletal pain in at least one body site at any time
The logistic regression analysis indicated that past year musculoskeletal pain prevalence in the neck (OR, 1.78; 95% CI, 0.98-3.23; P = 0.041), shoulders (OR, 2.59; 95% CI, 1.43-4.70; P = 0.002), wrists/hands (OR, 2.15; 95% CI, 1.15-3.90; P = 0.010), and upper back (OR, 2.83; 95% CI, 1.54-5.19; P = 0.001) was significantly less among males than females. Smartphone use of over six hours in a typical day was significantly associated with high musculoskeletal pain prevalence in the neck (OR, 1.68; 95% CI, 0.46-4.10; P = 0.031), shoulders (OR, 2.12; 95% CI, 0.68-5.88; P = 0.020), and wrists/hands (OR, 2.55; 95% CI, 0.53-7.51; P = 0.010) in comparison to the reference group (1-2 hr daily smartphone use). The subgroup which had owned a smartphone for over nine years was significantly associated musculoskeletal pain prevalence in the neck (OR, 3.94; 95% CI, 0.98-8.23; P = 0.001) and wrists/hands (OR, 5.55; 95% CI, 0.84-12.85; P = 0.001) compared to the reference group (1-3 yr owning a smartphone). SAS score was significantly associated with musculoskeletal pain prevalence in the neck (OR, 1.08; 95% CI, 0.98-1.10; P = 0.002), wrists/hands (OR, 1.07; 95% CI, 0.97-1.09; P = 0.001), and upper back (OR, 1.10; 95% CI, 0.98-1.11; P = 0.033) (Table 5).
Table 5
Predictors of musculoskeletal pain in body parts
Predictor | Neck | Upper back | Lower back | Shoulder | Elbow | Wrists/hands | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
| | | | | | |||||||
OR (95% CI) | P value | OR (95% CI) | P value | OR (95% CI) | P value | OR (95% CI) | P value | OR (95% CI) | P value | OR (95% CI) | P value | |
Sex | ||||||||||||
Female (Reference) | 1.78 (0.98-3.23) | 0.041* | 2.83 (1.54-5.19) | 0.001*** | 1.50 (0.81-2.75) | 0.187 | 2.59 (1.43-4.70) | 0.002** | 0.78 (0.39-1.56) | 0.481 | 2.15 (1.15-3.90) | 0.010** |
Duration of smartphone use on a typical day (hr) | ||||||||||||
1-2 (Reference) | ||||||||||||
3-4 | 1.07 (0.38-2.98) | 0.893 | 1.46 (0.49-4.33) | 0.495 | 2.01 (0.69-5.91) | 0.203 | 1.34 (0.48-3.70) | 0.573 | 0.98 (0.30-3.17) | 0.982 | 1.28 (0.65-4.90) | 0.261 |
5-6 | 0.91 (0.38-2.19) | 0.845 | 1.14 (0.44-2.94) | 0.785 | 1.25 (0.49-3.23) | 0.634 | 1.19 (0.49-2.83) | 0.692 | 1.07 (0.40-2.86) | 0.886 | 1.09 (0.88-3.94) | 0.547 |
> 6 | 1.68 (0.46-4.10) | 0.031* | 1.07 (0.32-3.62) | 0.903 | 2.71 (0.87-8.40) | 0.082 | 2.12 (0.68-5.88) | 0.020* | 0.89 (0.26-2.97) | 0.851 | 2.55 (0.53-7.51) | 0.010** |
Duration of owning smartphone (yr) | ||||||||||||
1-3 (Reference) | ||||||||||||
4-6 | 0.67 (0.15-2.91) | 0.593 | 1.62 (0.89-4.49) | 0.783 | 1.84 (0.87-6.87) | 0.277 | 0.87 (0.22-3.42) | 0.841 | 0.36 (0.08-1.55) | 0.172 | 1.68 (0.88-4.79) | 0.561 |
7-9 | 0.80 (0.98-3.23) | 0.584 | 1.20 (0.52-2.78) | 0.664 | 0.44 (0.19-1.02) | 0.061 | 0.52 (0.23-1.13) | 0.102 | 1.01 (0.38-2.65) | 0.976 | 1.31 (0.61-2.81) | 0.487 |
> 9 | 3.94 (0.98-8.23) | 0.001*** | 1.25 (0.52-2.78) | 0.513 | 0.81 (0.43-1.51) | 0.522 | 0.70 (0.38-1.30) | 0.264 | 0.90 (0.43-1.90) | 0.794 | 5.55 (0.84-12.85) | 0.001*** |
SAS score | 1.08 (0.98-1.10) | 0.002** | 1.10 (0.98-1.11) | 0.033* | 0.96 (0.89-1.02) | 0.101 | 0.98 (0.96-1.01) | 0.743 | 0.99 (0.93-1.03) | 0.102 | 1.07 (0.97-1.09) | 0.001*** |
DISCUSSION
According to the results of the present study, musculoskeletal pain symptoms in the past year and past week showed higher pain prevalence in the upper back, neck, and wrist/hands. Participants experienced pain in the upper back, waist, and wrists/hands, where they were unable to perform routine work in their homes or workplaces for a day or more. Smartphone addiction was associated with (1) duration of smartphone use on a typical day, (2) duration of owning a smartphone, and (3) musculoskeletal pain prevalence in the neck, wrists/hands, shoulders, and upper back. The logistic regression analysis showed that spending over six hours a day on a smartphone was significantly associated with high musculoskeletal pain prevalence in the neck, shoulders, and wrists/hands. Moreover, owning a smartphone for over nine years was also significantly associated with high musculoskeletal pain prevalence in the neck and wrists/hands. Smartphone addiction was significantly associated with musculoskeletal pain prevalence in the neck, wrists/hands, and upper back.
In the literature, a study in South Korea by Kwon et al. [2] reported SAS scores of 104.5 points for males and 112.7 points for females, and 110.02 for both groups combined, and there was no sex difference in SAS scores. On the other hand, in Turkey, Demirci et al. [28] reported that the mean SAS score was 75.68. In the present study, it was found that the SAS mean score was 77.5, and SAS scores were correlated with duration of smartphone use on a typical day, duration of owning a smartphone, and musculoskeletal pain prevalence in the neck, wrists/hands, shoulders, and upper back. The results also suggest that the most important indicators of smartphone addiction are the excessive use of the smartphone due to its ability to facilitate and host many different activities (online surfing, gaming, social networking, etc.). Although the results of the present study are similar to the results of Demirci et al. [28], the fact that SAS scores were lower than the results of Kwon et al. [2] is most probably due to cultural reasons.
The use of smartphones has grown rapidly over the past decade. This can lead to problemetic smartphone use for a minority of indivduals. Excessive use of a smartphones may cause various physical and psychological health problems for such individuals. In the literature, some studies have investigated the relationship between smartphone/mobile phone use and musculoskeletal symptoms and syndromes [14,16,26,29]. The findings showed that the upper back, neck, and wrists/hands were the most pain-reported body parts among the participants. Some participants experienced pain in the upper back, lower back, and wrists/hands, and were unable to perform routine work at home or workplaces for a day or more. The findings here echoed the research by Kim and Kim [17] who reported the most frequent musculoskeletal pain was in areas of the body related to smartphone use (i.e., shoulders and neck). The authors found that smartphone use was correlated with musculoskeletal pain. AlAbdulwahab et al. [14] reported that smartphone addiction can lead to a significant neck disability due to poor posture associated smartphone use. The authors suggested that individuals make efforts to reduce the time spent using smartphones and to maintain an appropriate posture while using them because prolonged smartphone use can lead to faulty postures such as a forward head posture. Sustaining this forward head posture can produce injuries to the cervical spine and cause cervical pain [30].
Pain of the cervical muscles is increased with prolonged smarthpone use, and this emphasizes the importance of long duration smartphone use as a risk factor in the development of ergonomic disorders. Consequently, it was suggested that correcting posture during use and break time for at least 20 minutes was required to avoid the negative effects of prolonged smartphone use [31]. According to the authors, pain in the musculoskeletal system can occur when smartphones are used continuously, without rest, and when poor posture persists for long periods of time. Repeated movements in a static position can lead to various problems, such as pain in the shoulder and neck. When using smartphones, the upper extremities and shoulders often perform repeated movements, while the upper back stabilizes the head and neck for best viewing. Yang et al. [26] showed that the (1) relationship between smartphone use and musculoskeletal symptoms was associated with the duration of the smartphone ancillary function use, and (2) hours spent talking on the phone was a predictor of upper back pain.
Hakala et al. [32] also reported that frequent use of mobile phones increased the risk of neck, shoulder, and lower back pain in adolescents. In a recent study, Toh et al. [33] reported that after adjusting for potential confounders, the number of hours a day spent on smartphones was associated with increased risk of neck/shoulder, upper back, arm, and wrist/hand discomfort. In another study, Hegazy et al. [29] reported (using an adjusted multiple logistic regression analysis) that excessive smartphone use was significantly associated with self-reported sleep disturbance, headache, fatigue, depression, nervousness, and musculoskeletal pain. Similarly, in our study, it was observed that high SAS scores, which are an indicator of excessive phone use, were associated with the presence of neck, shoulder, upper back, and wrist/hand pain symptoms. This is because, during phone use, sitting with the head bent forward, without supporting the arms, causes a static load on the neck and shoulder muscles, resulting in increased pain in the neck/upper back. In general, sustained muscle load and repetitive movements are considered to be risk factors for developing musculoskeletal disorders. Additionally, the present study found that past-year neck, shoulder, wrist/hand, and upper back musculoskeletal pain was significantly less in males than females. Similarly, Demirci et al. [28] reported that female sex and low age were independent predictors of excessive smartphone use and that female and young users may be vulnerable to excessive smartphone use or addiction. This may explain the higher prevalence among females than males in the present study, because there are differences in the purpose of smartphone use between males and females.
Studies have reported that females are more inclined to use smartphones for communication and social networking functions, which play prominent roles in their life, while males use smartphones to play games and watch videos, which is a more diversified type of usage [34]. Continuous muscle contractions in the neck and upper extremities can cause microscopic damage to the muscles during the performance of smartphone tasks. Neck disability among smartphone users may be associated with a frequent neck flexion posture that alters the natural curve of the cervical spine and increases the amount of stress on the cervical spine, causing irritation, spasm in the surrounding skeletal structures, and proprioception deficits in the cervical vertebra. Naturally, and as found in the present study, pain in these specific areas (neck, shoulders, and wrists/hands) has been associated with long-term smartphone use during the day and long-term smartphone ownership.
In the present study, there were some limitations. First, since the study was a cross-sectional study, cause-and-effect relationships cannot be determined, and the results are therefore somewhat limited. To confirm and expand on the results here, longitudinal or prospective experimental studies are needed. Secondly, all participants were university students (with a slight bias towards female students) and do not represent the total population of university students, therefore results cannot be generalized to other populations. Thirdly, the study did not assess and adjust for potential confounders (i.e., mental health and physical activity). Fourthly, all the data were self-reported and therefore were subject to well-known method biases. There are insufficient data to draw firm conclusions about the relationship between problematic smartphone usage and pain experience due to the various other possible factors, including biopsychosocial factors, that negatively effect the musculoskeletal system. Finally, the SAS does not provide any clinical diagnosis for smartphone addiction as it is a tool that was developed to provide an indication of those who might be at risk of smartphone addiction. This should be taken into account when interpreting any of the statistics related to SAS scores.
The results of the present study show that smartphone users experience musculoskeletal pain in their upper back, neck, and wrists/hands. High smartphone addiction scores were significantly correlated with duration of smartphone use on a typical day, duration of owning a smartphone, and musculoskeletal pain in the neck, wrists/hands, shoulders, and upper back. The duration of smartphone use on a typical day is associated with increased risk of neck, shoulder, and wrist/hand musculoskeletal pain. In addition, long-term smartphone ownership is associated with increased risk of neck and wrist/hand musculoskeletal pain. Further study needs to be carried out on a larger cohort for more generalizable results, representing the whole population. Furthermore, attention should be directed towards the safe use of technology and increasing public awareness of the hazards of excessive and potentially problematic smartphone use.
Footnotes
Contributed by
Author contributions: Rustem Mustafaoglu: Writing/manuscript preparation; Zeynal Yasaci: Investigation; Emrah Zirek: Investigation; Mark D. Griffiths: Writing/manuscript preparation; Arzu Razak Ozdincler: Writing/manuscript preparation.
CONFLICT OF INTEREST
No potential conflict of interest relevant to this article was reported.
FUNDING
No funding to declare.
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Using Google Correlate Draw on a Mobile Device
Source: https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7783853/