INTRODUCTION: Problematic over usage of smartphones has led to various deteriorating effects including poor sleep quality. Screen exposure, especially near bedtime, directly leads to poor sleep quality. We aimed to measure smartphone screen-time (ST) statistics of the participants directly using a smartphone application. Furthermore, we aimed to assess sleep quality using the Pittsburgh sleep quality index (PSQI), and to investigate the association between ST & PSQI. MATERIAL AND METHODS: This descriptive cohort study was conducted among 280 students of MBBS at Rawalpindi Medical University for a period of 1 month (30 days). Physically healthy students who owned Android smartphones were included in the study. Students with diagnosed sleep disorders and students taking sleep medication were excluded from the study. ST was recorded using a smartphone application. Sleep quality was assessed at the end of 30 days using the PSQI questionnaire. Data entry and analysis was done using SPSS v23.0. RESULTS: Total and mean ST were calculated for every participant. The mean screen time of 242 individuals was 147.50±51.09 hours. The mean PSQI score was 6.68±2.3. 65.70% of the participants had a poor sleep quality (PSQI>5). Pearson's correlation revealed that long total ST was associated with decreased sleep quality (R=0.356, p<0.001). CONCLUSION: Our findings are in accordance with previous scientific literature largely based on self-reported ST measurements and affirm that excessive ST deteriorates sleep quality and hence has numerous adverse physical and psychological manifestations.
INTRODUCTION: Problematic over usage of smartphones has led to various deteriorating effects including poor sleep quality. Screen exposure, especially near bedtime, directly leads to poor sleep quality. We aimed to measure smartphone screen-time (ST) statistics of the participants directly using a smartphone application. Furthermore, we aimed to assess sleep quality using the Pittsburgh sleep quality index (PSQI), and to investigate the association between ST & PSQI. MATERIAL AND METHODS: This descriptive cohort study was conducted among 280 students of MBBS at Rawalpindi Medical University for a period of 1 month (30 days). Physically healthy students who owned Android smartphones were included in the study. Students with diagnosed sleep disorders and students taking sleep medication were excluded from the study. ST was recorded using a smartphone application. Sleep quality was assessed at the end of 30 days using the PSQI questionnaire. Data entry and analysis was done using SPSS v23.0. RESULTS: Total and mean ST were calculated for every participant. The mean screen time of 242 individuals was 147.50±51.09 hours. The mean PSQI score was 6.68±2.3. 65.70% of the participants had a poor sleep quality (PSQI>5). Pearson's correlation revealed that long total ST was associated with decreased sleep quality (R=0.356, p<0.001). CONCLUSION: Our findings are in accordance with previous scientific literature largely based on self-reported ST measurements and affirm that excessive ST deteriorates sleep quality and hence has numerous adverse physical and psychological manifestations.
The advent of smartphones took the world by storm, and smartphones have nearly become
ubiquitous, especially in the developed and developing countries. This has led,
inevitably, to smartphone dependency and excessive usage. Problematic over usage of
smartphones has manifested as an array of deteriorating effects including poor sleep
quality. Smartphone usage, especially near bedtime, worsens one’s experience of
sleep and directly leads to poor sleep quality. The encyclopedia of behavioral
medicine defines sleep quality as one’s satisfaction of the sleep experience,
integrating aspects of sleep initiation, sleep maintenance, quantity, and
refreshment upon awakening[1].Smartphone screens emit blue light in the short wavelength region (380nm to 495nm).
This blue light is considered to be responsible for suppressing the production of
melatonin hormone, which is one of the key components in the regulation of the
sleep-wake cycle. This leads to sleep disturbances and contributes to poor sleep
quality[2].Sleep disturbances have drastic adverse effects on physical and mental health. Poor
sleep quality has been reported to increase the risk of weight gain, obesity,
metabolic syndrome, hypertension, glucose intolerance, and diabetes[3, 4, 5, 6]. Sleep
deprivation negatively affects cognitive functions[7] and can also lead to depression, stress, and
anxiety[8, 9].This study aimed to directly measure the duration for which a person uses the
smartphone, i.e., screen time (ST) and to find an association between ST and sleep
quality, quantitatively measured by Pittsburgh sleep quality index (PSQI). There is
a multitude of studies that have been conducted among students to explore the
prevalence of decreased sleep quality[10, 11, 12], but there is a scarcity of
studies investigating the direct associations between sleep quality and smartphone
usage.Thus, we aim to contribute to this knowledge gap. Recognizing the adverse effects of
excessive phone usage on sleep quality, and subsequently on the mental and physical
health of the subjects would necessitate the importance of timely interventions and
remedies.
MATERIAL AND METHODS
Participants’ recruitment and characteristics
This descriptive cohort study was conducted among 280 students of MBBS at
Rawalpindi Medical University, Rawalpindi, Pakistan, for a period of one month
from 8th July 2019 to 7th August 2019 (30 days). Ethical
approval was taken from the ethical review board prior to participant
recruitment and data collection. Participants were sampled using non-randomized
consecutive sampling. Physically healthy students who owned an android
smartphone were included in the study. Students with diagnosed insomnia or other
sleep disorders and students taking sleep medication were excluded from the
study. Consent was obtained from all participants and the aims and procedures of
the study were explained to them.
Study procedures and data collection: screen time
Participants were instructed to download and install an Android smartphone
application. This application tracked ST duration and reported it in the form of
a bar chart. The bar chart displayed daily usage statistics of seven days
separately at a given time. The usage duration data could also be exported as an
Excel Spreadsheet (.xlsx).The participants were approached once every week (for a total of 4 weeks) and
were instructed to send a screenshot of the bar chart along with the
Excel Spreadsheet. Data of two additional days were also
collected to make a total of 30 days. Participants for whom the complete data of
30 days was available were selected for entry and analysis. Participants with
missing or incomplete data were excluded.
Study procedures and data collection: sleep quality
Sleep quality was assessed at the end of 30 days using the Pittsburgh sleep
quality index (PSQI) questionnaire. Poor sleep quality was defined as a global
PSQI score>5. PSQI scores were entered as a scale variable while measuring
the association with ST. An online form version of the original questionnaire
was sent to the participants. Global PSQI score and total ST were assessed for
possible associations.
Analytic approach
Data entry and analysis was done using IBM SPSS Statistics for Windows, version
23.0 (IBM Corp., Armonk, N.Y., USA). Means and standard deviations were used to
report normally distributed variables. Pearson’s chi-square test, independent
samples T-test, Pearson’s correlation test, and linear regression were
performed.
RESULTS
The study included 280 participants, amongst which 48.93% (n=137) were males and
51.07% (n=143) were females. The mean age was 21.89±1.73 years. Complete data
was available for 242 participants (males: 47.93% (n=116), females: 52.06% (n=126)).
27 had missing data, 11 dropped out of the study for various reasons (change of
consent: 8, uninstalled the application: 3). For each of these 242 participants,
total and average ST were calculated. Global PSQI scores were also entered for each
participant.
Prevalence of poor sleep quality:
65.70% (n=159) of participants had poor sleep quality (PSQI>5) and 34.29%
(n=83) had good sleep quality. The mean PSQI score was 6.68±2.3. Mean
PSQI scores in participants with poor and good sleep qualities were
7.98±1.66 and 4.18±0.76, respectively
(p≤0.001).Males were prone to have poorer sleep quality than females. This difference was
elicited by chi-square test. 72.41% (n=84) of the males had poor sleep quality.
In contrast, 59.52% (n=75) females had poor sleep quality (p=
0.042).
Screen-time statistics
The mean ST of 30 days was 147.50±51.09 hours. The maximum ST was 247.03
hours and the minimum ST was 22.50 hours.. There was a significant difference in
the mean ST between the genders, as shown in Table 1. Mean ST for females (140.38±49.38) was lesser than
for males (155.23±51.99) (p=0.024).
Table 1
Demographics, screen-time and PSQI statistics.
Males
Females
p-value
No. of
participantsa (%)
116 (47.9%)
126 (52.1%)
Mean age
(years)
21.79±1.76
21.85±1.67
21.73±1.83
0.611
Mean screen-time
(hours)
147.50±51.09
155.23±51.99
140.38±49.38
0.024*
Mean PSQI
score
6.68±2.3
6.80±2.16
6.57±2.42
0.438
Mean PSQI score
in
Poor sleep quality
PSQI>5)
7.98±1.66
<0.001*
Good sleep quality
(PSQI≤5)
4.18±0.76
Sleep
quality
Poor sleep quality
PSQI>5)
84 (72.41%b)
75 (59.52%c)
0.042*
Good sleep quality
(PSQI≤5)
32 (27.59%b)
51 (40.48%c)
Mean screen-time
in
Poor sleep quality
PSQI>5)
152.63±56.74
0.030*
Good sleep quality
(PSQI≤5)
137.67±36.34
a After excluding those with missing data;
b % of males;
c % of females;
*Significant (p<0.05).
Demographics, screen-time and PSQI statistics.a After excluding those with missing data;b % of males;c % of females;*Significant (p<0.05).Mean ST for participants with poor sleep quality was 152.63±56.74, while
for those with good sleep quality was 137.67±36.34
(p=0.030). These results described above have been summarized
in Table 1.
Association of screen time and sleep quality
Pearson’s correlation and simple linear regression revealed a strong positive
association of ST and PSQI score (R=0.356, p≤0.001).
R-squared change of 0.127 showed that 12.7% of the variance in sleep quality can
be attributed to ST. These results are represented in Table 2.
Table 2
Correlation and linear regression results.
R
R Squared Change
PSQI Score Standardized Beta Coefficient
F Change
P Value
Total Screen-time
0.356*
0.127
0.356*
34.86
<0.0010*
* Significant (p<0.001)
Correlation and linear regression results.* Significant (p<0.001)
DISCUSSION
Sleep is crucial for maintaining an adequate and healthy lifestyle. It can be
considered as a maintenance and repair period of the body during which the
metabolites that have accumulated throughout the day are cleared, and mental stress
and anxiety are relieved. Hence it goes without saying that anything that disturbs
the sleep pattern impairs these protective and repair functions, and leads to
physical as well as mental manifestations[13, 14].The regulation of sleep is a multi-factorial process. The pineal gland, and its
hormone melatonin, play a major role in the regulation of the circadian rhythm and
sleep initiation. Melatonin is produced at night in a dark environment.
Short-wavelength blue light (380-495nm) is known to adversely affect melatonin
production[2, 15]. This dose-dependent suppression
of melatonin production in turn leads to sleep disruption[2]. Poor sleep quality has been associated with
excessive weight gain and obesity[3, 4, 16]. Poor
sleep quality may also be associated with negative academic performance[17]. Insufficient sleep has also been
linked with an increased risk of developing metabolic syndrome[5] and diabetes mellitus[18]. Shorter sleep duration is
associated with an increased risk for hypertension, especially in individuals under
the age of 65[6]. It also negatively
affects attention, working memory, and other cognitive functions[7]. Various studies have also reported
an association of poor sleep quality with depression and anxiety[8, 9].Pittsburgh sleep quality index (PSQI) is a reliable and validated self-administered
questionnaire, which assesses sleep quality over a period of thirty (30) days. It
defines poor sleep quality as a global PSQI score>5 (89.6% sensitivity and 86.5%
specificity). In accordance with this, the major proportion of our participants had
poor sleep quality (65.70%, n=159). This indicates a high prevalence of poor sleep
quality. Many similar studies conducted among students have shown this trend. A 2015
study conducted among medical students of Karachi, Pakistan, reported that 39.5% of
its subjects had poor sleep quality[10]. In another study conducted in 2018 across 11 educational
institutions of Pakistan, 59.03% of the subjects were found out to have poor sleep
quality[11].The mean ST of the participants was 147.50±51.90 hours and the maximum ST
recorded was 247.03 hours. To put these two numbers into perspective, these equate
to 6.15 and 10.29 days per month of phone usage, respectively. Indeed, these numbers
are alarmingly high. Furthermore, ST came out to be strongly positively correlated
with the PSQI score. PSQI score for the maximum-recorded ST was 11, indicating a
poor sleep quality. Results reveal that at least a 12.7% variance in sleep quality
is explained by ST.A self-reported questionnaire-based study conducted among Chinese medical students
reported that excessive ST was significantly associated with poor sleep quality. The
participants, which included 4,915 college students, reported time spent on
computers and watching TV/video games. This ST was categorized as ≤2
hours/day and >2 hours/day. Data analysis revealed that participants in the
latter category had poorer sleep quality (OR=1.32, 95% CI: 1.06-1.65)[19].Another study conducted at Wuhan University also used similar methods to find out the
association between ST with sleep quality, while investigating other factors too.
This study also used self-reported ST categorized as ≤2 hours/day and >2
hours/day and found that participants in the former category were less likely to
have poor sleep quality (OR=1.11, 95% CI: 0.77-1.58)[20].A cross-sectional study conducted on 1,674 US adults investigated the association of
sedentary time and ST with sleep outcomes. It categorized participants’
self-reported ST into 4 categories: ≤2.0h/day; 2.1-4.0h/day; 4.1-6.0h/day;
>6h/day. Statistical analysis revealed that participants in category 4 (>6h/
day) had 3.1-fold higher odds of reporting sleep difficulties compared to those in
the first category[21].All three of these studies confirm the findings of our study. However, these studies
utilize self-reported ST statistics, which can be different from actual usage
duration. People tend to under-report their usage times, as observed by a study
conducted among university students in Taiwan, in 2015, which found out that their
participants grossly underestimated their smartphone usage duration[22]. Our study, therefore, removes
this participant bias of under or overreporting their ST by directly measuring it as
a continuous variable.Another study conducted among US adults also measured ST directly using an android
smartphone application. This study also found out that poor sleep quality
(PSQI>5) and longer ST were significantly associated with each other. However,
this particular observation was based on the data of 56 participants (out of 653
participants that had completed the core survey) that had complete ST and PSQI
data[23]. Our study
incorporates a relatively larger number of participants (n=242) to establish this
association.Our findings highlight the necessity of curbing excessive smartphone usage as well as
exploring remedies to ameliorate poor sleep quality. Using blue light filters for
screens can attenuate the harmful effects of blue light on sleep[24]. Bedtime phone usage restriction
has also been found beneficial to increase sleep duration[25]. The use of melatonin supplements is proposed to
increase sleep duration and decrease sleep latency[26].This study successfully concludes, in accordance with previous studies done on the
subject, that excessive smartphone usage is one of the factors contributing to
adverse sleep quality. To evaluate the remaining variance in decreased sleep quality
was beyond the scope of this study. The remaining variance in sleep quality may be
attributed to other factors such as anxiety and emotional stress, as reported by
other studies[27, 28].It is also important to state that these results alone are not enough to establish
causation. Further researches and experimental study designs are needed to establish
temporality and cause-effect relationships. The Bradford Hill criteria can be used
as a guideline in this regard[29].
Furthermore, we could not account for ST other than smartphones, which includes
laptops and television screens. A multivariate analysis accounting for ST across all
devices as well as taking into account other factors that infuence sleep quality
would provide a more inclusive and comprehensive overview.
CONCLUSIONS
The findings of our study are in accordance with past researches done on the subject
and reaffirm that young adults spend a significant amount of time using smartphones,
which directly leads to decreased sleep quality. This subsequently predisposes them
to multiple adverse physical as well as psychological health outcomes. It is
therefore recommended to take measures to decrease ST, particularly in the hours
prior to sleeping. The use of blue light filters for screens should be advised,
since blue light decreases sleep quality.
Authors: Matthew A Christensen; Laura Bettencourt; Leanne Kaye; Sai T Moturu; Kaylin T Nguyen; Jeffrey E Olgin; Mark J Pletcher; Gregory M Marcus Journal: PLoS One Date: 2016-11-09 Impact factor: 3.240