- Key Laboratory of Human Genetics and Environmental Medicine, School of Public Health, Xuzhou Medical University, Xuzhou, China
Background: Cell phone addiction presents a widespread and severe physical and mental health concern, now recognized as a global public health issue. Among medical college students, the issue of poor sleep quality has become particularly prevalent. This study aimed to investigate the relationship between cell phone addiction and sleep disturbance in a population of medical college students, exploring the potential mediating role of psychological resilience and the moderating impact of gender.
Methods: A random cluster sampling method was employed to survey 5,048 students from four medical colleges in Jiangsu Province, China, utilizing the Mobile Phone Addiction Index (MPAI), Connor-Davidson Resilience Scale (CD-RISC), and Pittsburgh Sleep Quality Index (PSQI) for data collection. Statistical analyses were conducted using SPSS 26.0 and the PROCESS macro version 4.1. To assess mediation, Model 4 of the PROCESS macro was utilized, while Model 15 was employed to investigate the moderating effect of gender.
Results: The results revealed a significant positive correlation between cell phone addiction and sleep disturbance, with psychological resilience found to partially mediate this relationship. Moreover, gender was observed to significantly moderate the impact of cell phone addiction on sleep disturbance. Specifically, bootstrap analysis indicated a significant interaction between cell phone addiction and gender (Coeff. = -0.0215, P< 0.001), with a stronger relationship found in males (simple slope = 0.0616, t = 16.66, P< 0.001) compared to females (simple slope = 0.0401, t = 9.51, P< 0.001).
Conclusion: Ultimately, psychological resilience was identified as a partial mediator between cell phone addiction and sleep disturbance in medical students from Jiangsu Province, with gender playing a significant moderating role in this association.
Introduction
College students (1), particularly medical students (2), are confronted with escalating academic and social pressures that often result in substandard sleep quality. Research shows that poor sleep quality is a common issue among medical students globally (3–5), with females reporting poorer sleep (6, 7). With the advancement of science and technology, cell phones have become indispensable in our daily lives. Although these devices offer convenience for various tasks like online learning, socializing, and entertainment, excessive use can lead to issues like sleep disorders and mental health problems (8, 9), significantly impacting overall well-being of college students. Studies have established a strong link between symptoms of cell phone addiction and the adverse effects it has on physical and mental health, particularly within the college student population (10, 11). Additionally, research has shown a direct association between cell phone addiction and mental health issues, as well as the quality of sleep (12–14).
Young people exhibiting addictive behaviors often experience emotional dysregulation, impaired cognitive abilities, and mental overload (15). The use of cell phone can compromise privacy, resulting in social isolation and negative feedback. Managing harmful emotions and behaviors, along with dealing with disconnection from the phone, can be distressing (16). Poor sleep quality observed in medical college students with addictive behaviors and negative emotions raises concerns (3, 17). Psychological resilience, which acts as a shield against adversity, plays a pivotal role in preventing negative behaviors like depression and cell phone addiction (18). Existing research has shown a positive relationship between psychological resilience and sleep quality (19–21). However, the impact of psychological resilience on the adverse effects of cell phone addiction on sleep disturbance remains unclear.
Previous studies show gender disparities in sleep quality and cell phone usage among youth, with females exhibiting higher levels of excessive cell phone use (22), which is closely associated with poorer sleep quality (23). Studies conducted at Yale University suggest that females may be more susceptible to stress-related psychological effects, potentially making them more vulnerable (24). The I-PACE model posits that individual traits, including gender, can impact problematic behaviors, yet the role of gender in cell phone addiction effects remains unresolved (25). This study delves into the intermediary function of psychological resilience in the relationship between cell phone addiction and sleep disturbance among medical college students, while also exploring whether gender plays a moderating role in this association.
The study was conducted among medical college students in Jiangsu Province, China, aiming to determine whether preventing cell phone addiction could enhance sleep quality among medical college students and to further understand the mechanisms through which psychological resilience and gender influence the adverse effects of cell phone addiction on sleep quality. The conceptual model is shown in Figure 1.
Methods
Participants
From October 27 to November 27, 2022, an online questionnaire survey was conducted on students from four medical colleges in Jiangsu Province, China, using a random cluster sampling method. A total of 5,048 participants were included in the final analysis, with 2540 (50.32%) being male and 2508 (49.68%) female. The questionnaire gathered general personal details including gender, grade, major, family economic level, frequency of physical activity, only-child status, and academic stress.
Measures
Pittsburgh sleep quality index
The PSQI is used to assess the quality of sleep (26). It is a self-report scale consisting of 19 items (16 questions scored separately, excluding on bedtime and wake-up time) designed to collect a person's subjective perception of their sleep habits over a month. It assesses seven aspects of sleep quality, including “Subjective sleep quality”, “Sleep latency”, “Sleep duration”, “Habitual sleep efficiency”, “Sleep disturbance”, “Use of sleep medication”, and “daytime dysfunction”. Each item is scored from 0 to 3, with a total score ranging from 0 to 21, higher scores indicating more sleep disturbance. In this study, the Cronbach's alpha for the PSQI was 0.850 and the Kaiser-Meyer-Olkin value was 0.910.
Mobile phone addiction index
The mobile phone addiction index (MPAI) , revised by Leung (27), consists of 17 items scored from 1 to 5, assessing cell phone addiction among college students. It includes dimensions like “Inability to control craving”, “Anxiety and Feeling Lost”, “Withdrawal and escape” and “Productivity loss”. The higher total score, the greater level of cell phone addiction. In this study, the Cronbach's alpha for the MPAI was 0.918 and the Kaiser-Meyer-Olkin value was 0.903.
Connor-Davidson resilience scale
The Connor-Davidson Resilience Scale (CD-RISC) (28) is used to measure the ability to cope with stress and adversity. This study used a revised version (29) translated by Nan Xiao to measure the level of psychological resilience in college students. This scale contains 25 question entries divided into three dimensions of “Optimism”, “Self-improvement” and “Tenacity”, scored on a 5-point Likert scale: not true at all (0) to true almost all the time (4). The total score ranges from 0 to 100, with a higher total score indicating greater psychological resilience. In this study, the Cronbach's alpha for the CD-RISC was 0.968 and the Kaiser-Meyer-Olkin value was 0.975.
Statistical analysis
In order to mitigate the potential impact of common method biases, the study employed Harman's single-factor test. This approach entailed conducting an exploratory factor analysis on a combined set of items from three scales, totaling 60 items. The analysis is designed to identify the number of factors with eigenvalues greater than 1. To assess the presence of common method bias, the researchers compared the percentage of variance explained by the first factor against a threshold of 40%. If the variance explained by the first factor exceeded 40%, it indicated a significant common method bias; conversely, if it fell below 40%, it suggested minimal bias.
Different statistical analyses, including descriptive statistical analysis, t-test and Pearson's correlation analysis, were performed using IBM SPSS 26.0. Prior to analysis, all measurements were tested for normality to ensure they followed a normal distribution. The data presentation in the tables incorporated the use of N (%) for categorical variables and mean ± standard deviation (SD) for numerical variables. Pearson's correlation analysis was used to examine the relationship between cell phone addiction, psychological resilience and sleep disturbance. Model 4 (30) of PROCESS macro 4.1 of SPSS 26.0 was used to examine the mediating effect of psychological resilience, while Model 15 (31) was used to explore the moderating role of gender.
Model 4 is used to explore the mediation role of psychological resilience in the association between cell phone addiction and sleep disturbance. This involves analyzing the effect of cell phone addiction on psychological resilience, followed by an evaluation of how psychological resilience influenced sleep disturbance. The significance of the mediation effect was assessed by calculating the product of these effects and constructing confidence intervals for this product. A significant mediation effect was indicated by confidence intervals that did not include zero.
Model 15 was used to investigate the moderating role of gender on both the direct and indirect effects of cell phone addiction on sleep disturbance through psychological resilience. This model accounted for the direct impact of cell phone addiction on sleep disturbance, while also examining how psychological resilience acted as a mediator this relationship. Importantly, interaction terms were introduced to analyze how gender moderated the direct effect (Cell Phone Addiction x Gender interaction) as well as the mediating effect through psychological resilience (Psychological Resilience x Gender interaction). The hypothesis model is shown in Figure 1.
Results
Common method biases
The Harman's single-factor test was used to conduct exploratory factor analysis on 60 items across 3 scales. Of the total of 8 factors identified, those with an eigenvalue exceeding 1 were considered. Notably, the variance explained by the first factor was 27.399%, falling short of the critical criterion of 40% threshold, indicating an absence of substantial common method bias in this study.
Characterization analysis
Regarding participant demographics, information encompassed gender, grade, native place, only child or not, family economy, BMI, smoking status, drinking status, and physical exercise frequency. Notably, 59.1% of the participants hailed from urban areas, with a majority not being only (57.8%). Refer to Table 1 for a detailed analysis.
The overall mean MPAI score was 43.79 ± 13.84, while the mean CD-RISC score averaged at 61.72 ± 19.01, and the PSQI score at 5.15 ± 2.87. The primary focus of our inquiry pertained to gender difference, with descriptive analyses indicating that females registered significantly higher mean scores on both the MPAI and PSQI scales compared to males. Moreover, female scores were higher across all dimensions of the MPAI and PSQI scales, except for Sleep latency, Sleep duration and Use of sleep medication. The total CD-RISC score and its dimensions were significantly lower in females than in males (P< 0.05). Detailed information is shown in Table 2.
Correlation analysis
Controlling for gender, grade, BMI, native place and being only child or not, partial correlation analysis was used. Findings revealed a negative correlation between the total MPAI score and the total CD-RISC score (r=-0.099, P<0.001), alongside positive correlation with the total PSQI score (r=0.273, P<0.001) and gender (r=0.105, P<0.001). Furthermore, the total CD-RISC score was negatively correlated with total PSQI score (r=-0.203, P<0.001), gender (r=-0.057, P<0.001), native place (r=-0.079, P<0.001), only child or not (r=-0.056, P<0.001). Total PSQI scores were positively correlated with gender (r=0.061, P<0.001), grade (r=0.111, P<0.001), native place (r=0.046, P<0.01) and only child or not (r=0.047, P<0.01), while negatively correlating with BMI (r=-0.036, P<0.05) (Table 3).
Mediation effect analysis
Model 4 in SPSS Macro PROCESS 4.1 was used to examine the mediating effects. Controlling for grade, BMI, native place, and being only child or not, cell phone addiction was significantly negatively associated with psychological resilience (β= -0.132, P< 0.001). Cell phone addiction was found to be significantly positively associated with sleep disorder (β= 0.053, P< 0.001). Psychological resilience was significantly negatively associated with sleep disorder (β= -0.026, P< 0.001).
The results derived from the 5,000 bootstrap samples showed that all indirect effects were statistically significant, with the 95% confidence interval excluding 0. The total effect of cell phone addiction on sleep disturbance was estimated at 0.0560 (P< 0.001). The indirect effect of psychological resilience was scaled as 0.0034, with a 95% CI (0.0019,0.0052), accounting for 6.07% of the total effect (0.0034/0.0560). This analysis suggests that psychological resilience partially function as a mediator in the relationship between cell phone addiction and sleep disorder (Table 4 and Figure 2).
Figure 2 Effect of cell phone addition on sleep quality with the mediation of psychological resilience ***P< 0.001.
Table 4 Mediating effect test of psychological flexibility between cell phone addiction and sleep quality among college students.
Moderated mediation effect analysis
After controlling for grade, BMI, native place, and being only child or not, Model 15 of the SPSS Macro PROCESS was applied to evaluate the proposed moderating mediator model, with psychological resilience as the mediator and gender as the moderator. Specifically, gender was incorporated as a dummy variable (male = 0, female = 1). The results showed that gender moderated the direct path but not the second half of the mediated path, as shown in Table 5. Bootstrap test results showed that the interaction term between MPAI and gender significantly predicted PSQI (Coeff.= -0.0215, P<0.001), indicating that gender plays a moderating role in the relationship between MPAI and PSQI. Further simple slope analysis was performed, as shown in Figure 3. The level of cell phone dependence was positively correlated with the sleep disturbance in both males (simple slope = 0.0616, t = 16.66, P< 0 .001) and females (simple slope = 0.0401, t = 9.51, P< 0 .001), revealing that as cell phone dependence increased, sleep disturbance worsened for both genders.
Discussion
In this study, the total scores for sleep quality and cell phone addiction were significantly higher among female medical students compared to male medical students. Conversely, male medical students scored significantly higher than their female counterparts on the total score for psychological resilience. Our analysis of a mediation model and a moderating mediation model revealed that psychological resilience plays a crucial role in mitigating the adverse effects of cell phone addiction on sleep quality. Moreover, the research indicated that female medical students are more likely to experience poorer sleep quality due to cell phone addiction.
Our findings align with previous reports indicating that medical college students with higher levels of cell phone addiction tend to experience poorer sleep quality (14, 32). In the medical college student population, cell phone addiction can affect an individual's emotional self-control, emotional balance, and potentially leading to negative emotions such as anxiety or depression, all of which can impact sleep quality. Furthermore, the emission of blue light from cell phone screens inhibits melatonin secretion, ultimately contributing to reduced sleep quality from a physiological standpoint (33).
Psychological resilience partially mediates the relationship between cell phone addiction and poor sleep quality among medical college students. Individuals with higher levels of cell phone addiction may quickly recognize negative emotions, such as anxiety and loneliness, and have lower levels of psychological resilience. Conversely those with high psychological resilience do not routinely contemplate all potential stress-related implications in their daily lives, thereby experiencing better sleep compared to their counterparts with lower levels of psychological resilience (34).
The moderating mediator model suggests that gender moderates the relationship between cell phone addiction and sleep disturbance. Specifically, female medical students with cell phone addiction are more prone to experiencing poorer sleep quality. Data analysis revealed that female medical students exhibited lower psychological resilience scoresand higher cell phone addiction scores than their male counterparts. Although women reported better sleep quality in the study by Adams SK et al, their habit of answering phone calls before sleep may lead to mood fluctuations or sleep disturbances (35). We suggest that in comparison to male counterparts, female medical students might engage more in self-presentation through mobile social media to seek approval from others. This cognitive load of strategizing for approval, coupled with lower psychological resilience, could render female medical students more susceptible to sleep disturbances stemming from bedtime cognitive arousal (36).
Our study focuses on cell phone addiction and sleep disturbance among medical students within the context of a larger phenomenon. Cell phone addiction is closely linked to internet and social media addiction, which can impact various daily activities, including sleep. It is essential to acknowledge this intricate relationship to fully grasp its effect on sleep health. In conclusion, our results align with the "I-PACE" model, suggesting that disorders stemming from addictive behaviors result from interactions between core individual traits and various moderating and mediating factors (25).
Based on the findings of this study, it is recommended that educational institutions, families, and society prioritize addressing sleep disturbances among medical students by establishing proper support systems for sleep disorders. Furthermore, due to the adverse emotional consequences of mobile phone addiction, educational institutions should raise awareness about the potential harms of such addictions and their relationship with sleep disorders. They should guide medical students, particularly females, in developing a balanced approach to the use of cell phones and the internet to reduce addictive behaviors and promote emotional well-being, thus enhancing psychological resilience. Providing a conducive environment, interventions such as positive thinking training can be particularly beneficial for students experiencing sleep issues (37). Software developers could also assist by creating programs that remind users of their phone usage time or offer regular feedback on their usage habits to aid in understanding and managing phone addiction.
Our research emphasizes the significant impact of psychological resilience, cell phone addiction, and gender on the sleep patterns of medical students. We propose practical preventive measures and innovative technological solutions to enhance sleep quality and address cell phone addiction. Additionally, our study underscores the importance of fostering psychological resilience through targeted positive interventions. The findings advocate for a comprehensive approach combining educational strategies and technological advancements to enhance the quality of sleep among students. Such interventions not only benefit individual well-being but also positively influence medical students' academic performance and career preparedness.
Limitations and prospects
The current study has several limitations that need to be addressed. Firstly, the study only gathered questionnaires from medical college students in Jiangsu Province, China. To enhance the study's scope and generalizability, future research should consider expanding the survey to include a more diverse population. Secondly, the survey's reliance on personal subjective assessments may compromise the objectivity of the study results. Subsequent studies could benefit from incorporating objective assessment methods like clinician diagnosis and polysomnography (PSG) examination. Thirdly, the study did not thoroughly examine various sleep patterns such as onset latency or intermittent awakenings. To address this limitation, future research should conduct a comprehensive analysis of these aspects to deepen the understanding of factors affecting sleep quality in university students. Additionally, the online survey format hindered the accurate calculation of response rates, potentially biasing the sample toward individuals more inclined to complete the survey, thus affecting the generalizability of the findings, and we did not collect data on smoking status, alcohol and caffeine intake, and physical activity, all of which are important variables that may need to be adjusted. These factors could potentially have a significant impact on our study results. Despite these limitations, the results of this study remain significant. The findings reaffirm the pivotal role of cell phone addiction in predicting sleep disturbance among medical college students. Furthermore, the mediating effect analysis demonstrated that psychological resilience mitigated the impact of cell phone addiction on sleep disturbance. Additionally, the study elucidated the moderating role of gender as an individual characteristic in the relationship between cell phone addiction and sleep disturbance.
Data availability statement
The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.
Ethics statement
The studies involving humans were approved by The Ethics Committee of Xuzhou Medical University (approved number: xzhmu-2022079). The studies were conducted in accordance with the local legislation and institutional requirements. The participants provided their written informed consent to participate in this study.
Author contributions
BH: Investigation, Methodology, Writing – original draft. QW: Data curation, Investigation, Writing – original draft. YX: Investigation, Writing – review & editing. LG: Investigation, Writing – review & editing. DY: Conceptualization, Writing – review & editing, Methodology.
Funding
The author(s) declare that no financial support was received for the research, authorship, and/or publication of this article.
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher’s note
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.
Supplementary material
The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fpsyt.2024.1405139//full#supplementary-material
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Keywords: psychological resilience, cell phone addiction, sleep disturbance, medical student, gender
Citation: Hu B, Wu Q, Xie Y, Guo L and Yin D (2024) Cell phone addiction and sleep disturbance among medical students in Jiangsu Province, China: the mediating role of psychological resilience and the moderating role of gender. Front. Psychiatry 15:1405139. doi: 10.3389/fpsyt.2024.1405139
Received: 22 March 2024; Accepted: 06 May 2024;
Published: 15 May 2024.
Edited by:
Elisa Harumi Kozasa, Hospital Israelita Albert Einstein, BrazilReviewed by:
Gniewko Więckiewicz, Medical University of Silesia, PolandIzolde Bouloukaki, University of Crete, Greece
Shihua Sun, Karolinska Institutet (KI), Sweden
Copyright © 2024 Hu, Wu, Xie, Guo and Yin. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Bin Hu, eHptY2d3aGJAMTI2LmNvbQ==; Dehui Yin, eWluZGgxNkB4emhtdS5lZHUuY24=
†These authors have contributed equally to this work and share first authorship