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Relationships between depression, health‑related behaviors, and internet addiction in female junior college students

  • Shang-Yu Yang,

    Roles Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Writing – original draft, Writing – review & editing

    Affiliations Department of Occupational Therapy, College of Medical and Health Science, Asia University, Taichung, Taiwan, Department of Healthcare Administration, College of Medical and Health Science, Asia University, Taichung, Taiwan

  • Shih-Hau Fu,

    Roles Conceptualization, Methodology, Writing – original draft, Writing – review & editing

    Affiliation Department of Acupressure Technology, Chung Hwa University of Medical Technology, Tainan, Taiwan

  • Kai-Li Chen,

    Roles Conceptualization, Formal analysis, Methodology, Writing – review & editing

    Affiliation Department of Nursing, College of Pharmacy and Health Care, Tajen University, Pingtung, Taiwan

  • Pei-Lun Hsieh,

    Roles Conceptualization, Formal analysis, Writing – review & editing

    Affiliation Department of Nursing, College of Health, National Taichung University of Science and Technology, Taichung, Taiwan

  • Pin-Hsuan Lin

    Roles Conceptualization, Data curation, Investigation, Methodology, Resources, Software, Supervision, Validation, Writing – review & editing

    pinhsuan12@ms.szmc.edu.tw

    Affiliation Department of Health and Beauty, Shu Zen Junior College of Medicine and Management, Kaohsiung, Taiwan

Abstract

Introduction

Depressive emotions can lead to subsequent unhealthy behaviors such as Internet addiction, especially in female adolescents; therefore, studies that examine the relationships among depression, health‑related behaviors, and Internet addiction in female adolescents are warranted.

Purpose

To examine (1) the relationship between depression and health-related behaviors and (2) the relationship between depression and Internet addiction.

Method

A cross-sectional study design was adopted using a structured questionnaire to measure depression, health-related behaviors, and Internet addiction in female adolescents. The data were collected from students of a junior college in southern Taiwan using convenience sampling to select the participants. The questionnaire was divided into four sections: demographics, the Center for Epidemiologic Studies Depression Scale (CES-D), the Health Promoting Lifestyle Profile (HPLP), and the Internet Addiction Test (IAT).

Results

The final sample comprised 503 female junior college students, with the participants mainly aged between 15 to 22 years (mean age = 17.30 years, SD = 1.34). Regarding the HPLP scores, the overall score, nutrition subscale score, and self-actualization subscale score were significantly and negatively associated with the CES-D depression score (p < 0.05–0.01). In other words, depression level was lower in students who exhibited more healthy behaviors, put more emphasis on dietary health, and had higher levels of self-admiration and confidence toward life. Regarding the IAT scores, the overall score and six domain scores were all positively associated (p < 0.01) to the CES-D depression score. In other words, the higher an individual’s Internet addiction score was, the higher her depression level was.

Conclusions

The results confirmed the relationship between depression, health-related behaviors, and Internet addiction. The cultivation of health-related behaviors may help in lowering depressive symptoms. Teenagers with depression have higher risks of developing Internet addiction, and such addiction is likely to affect their daily functioning.

Introduction

In Taiwan, 37.2% of the national adolescent population have experienced mood swings or episodes of depressive mood [1], and the number of adolescents affected by depression is increasing yearly [2]. During adolescence, in addition to the physical changes caused by puberty (e.g., hormonal changes), teens are faced with large-scale social and psychological developmental challenges (e.g., social relationships and school work). Accordingly, adolescence is a critical period for the development of depression and other psychiatric conditions [3, 4]. In addition to affecting physiology, psychology, social and familial relationships, and academic performance, depressive emotions can affect the health status of adolescents when they progress to adulthood [5, 6]. Previous studies have indicated that adolescent depression can result in the deterioration of sleep quality, daytime drowsiness, and increased obesity [7], and depression can develop into suicidal or self-harming ideation or behavior [8]. Teenagers with depressive tendencies also tend to have lower self-esteem, lower sense of well-being, and poorer social ability [9]; they are also more susceptible to developing addictions, including Internet addiction and substance abuse [10]. The negative effects of depressive emotions on adolescents, their families, and society are something that should not be overlooked. However, most studies on adolescent depression have only focused on understanding the roles of negative factors such as personal characteristics [11, 12] and family structures [13] in the development of teenage depression.

Some studies have indicated an association between health-related behaviors and depressive emotions in adolescents. For example, Kim, Yu [14] reported that drinking and smoking behaviors in adolescents are positively associated with depressive emotions. According to a past study [15], teenagers who have unhealthy dietary habits (e.g., frequently eating take-away food) are also more prone to developing depressive emotions. Teenagers with depressive emotions may have lower self-esteem [16], poorer interpersonal relationships, and poorer social ability [17]. Additionally, adolescents with depressive emotions are less willing to engage in physical activities such as participating in sports clubs or going to the gym [18]. However, research has also shown that the likelihood of adolescent depression occurrence can be lowered through education and cultivating health behaviors [19]. Health-promotion courses that were found to be effective in reducing the occurrence of adolescent depression include stress management courses, self-understanding courses, self-control courses, and interpersonal relationships courses [20, 21]. Therefore, to gain a more extensive understanding on the effects of health-related behaviors on depressive emotions, more research must be conducted that systematically examines the relationships between different health behavior dimensions and depressive emotions.

Due to the rapid development and popularization of the Internet in Asia, the prevalence of Internet addiction in the region has grown rapidly [22]. The results of research have also confirmed the relationship between Internet addiction and depressive emotions in Asian adolescents [16, 2325]. For example, the studies conducted by Wu, Li [24] on 9,518 Hong Kong adolescents and Ha, Kim [23] on 452 Korean adolescents reported that depressive symptoms were positively associated with Internet addiction in adolescents. Another study conducted by Li, Hou [26] on 1,545 Chinese adolescents also reported that depression positively predicted adolescent Internet addiction. However, Park [27] asserted that other crucial factors may influence the development of Internet addiction in adolescents, such as performance of health-related behaviors; thus, the effects of health-related behaviors as potential confounding factors in adolescent depression must be examined. In addition, there are still different viewpoints on the “gender” issue of Internet addiction. A previous study [28] showed no differences between males and females in Internet disorder/addiction, while a recent study [29] reported that males were more prone to the development of Internet addiction than females. On the other hand, females are more likely to have negative emotions than males [30]. Therefore, the current study aimed at investigating whether negative emotions can also affect females’ use of the Internet.

Gender differences exist in the development of depression, and these differences are especially prominent during adolescence. The development of depressive emotions occurs earlier in female adolescents than in male adolescents, and the magnitude of depressive emotions tend to be more severe in female adolescents than in male adolescents [30]. Compared with depressive emotions in male teenagers, depressive emotions in female teenagers are more likely to lead to health problems such as obesity [31] and eating disorders [32]; moreover, depressive emotions in female teenagers are more likely to result in the development of unhealthy behaviors, such as Internet addiction [33, 34]. The high degree of depressive emotions and loneliness has been shown to have a strong relationship with Internet addiction, contributing to negative or dysfunctional social behaviors [35]. To explain this phenomenon, scholars have provided a theoretical model termed “compensated internet use” in which individuals use the Internet to escape reality and mitigate negative emotions [36]. Additional dispositional factors, such as the tendency for individuals higher in negative emotions to appear distant and aloof during social interactions in real living, may lead them to pursue satisfying interpersonal interactions online [36]. Therefore, the present study sought to examine the relationships between depressive emotions, health-related behaviors, and Internet addiction to gain a deeper understanding of the effects of depression on female adolescents. Accordingly, this study examined (1) the relationship between depression and health-related behaviors and (2) the relationship between depression and Internet addiction. The results of this study can serve as a reference for education authorities and parents to help alleviate the negative effects of depressive emotions in female teenagers.

Methods

Study design and subject recruitment

A cross-sectional study design was adopted using a structured questionnaire to measure depression, health-related behaviors, and Internet addiction in female adolescents. The data were collected from a junior college in southern Taiwan using convenience sampling to select the participants. The data collection period was from September to November 2018. The inclusion criteria were as follows: those who (1) were female, (2) could communicate orally in Mandarin or Taiwanese, and (3) could complete the questionnaire in written Chinese. The exclusion criteria were as follows: those who (1) did not complete the questionnaire, (2) were pregnant or already had children, or (3) were diagnosed with psychiatric disorders by a physician. Regarding procedures, the research assistants first explained the purpose of the study to the students. If a student agreed to participate, she was asked to sign the participant consent form before the questionnaire was distributed by the research assistants. Ethical approval for the study was obtained from the National Cheng Kung University Human Research Ethics Committee (No. NCKU HREC-E-106-108-2). Parental or guardian consent was obtained for students under 18 years.

Research instruments

The questionnaire used in this study was divided into four sections: demographics, the Center for Epidemiologic Studies Depression Scale (CES-D), the Health Promoting Lifestyle Profile (HPLP), and the Internet Addiction Test (IAT). The demographics section collected participants’ age, body mass index (BMI), religion (i.e., whether the participant was religious), smoking status (i.e., whether the participant had smoked one or more cigarettes every day in the past 6 months), and alcohol drinking status (i.e., whether the participant had drunk alcohol every week in the past 6 months).

The CES-D that constituted the second section of the questionnaire was devised by Radloff in 1977. The tool was developed to measure depressive symptoms in the general population and to screen for populations at high risk for depression [37]. Currently, the CES-D is available in various languages [38]. The traditional Chinese version of the CES-D used in the current study was translated by Chien and Cheng [39]. The scale contains a total of 20 items, and the items measure the frequency of depressive symptoms in the past week. The scale adopts a 4-point Likert-type scoring system, with options ranging from 0 (less than 1 day) to 3 (5–7 days). The overall score ranges from 0 to 60, with a higher score indicating a higher level of depression. Typically, 16 points is taken as the cutoff point for depression; a score of 0–15 points indicates that the individual is not depressed, 16–20 points indicates that the individual is mildly depressed, 21–30 points indicates that the individual is moderately depressed, and a score higher than 30 points indicates that the individual is severely depressed [40]. One study [41] found that the Chinese version of the CES-D possesses good reliability and validity. In the present study, the Cronbach’s alpha coefficient for the overall CES-D score was .86.

The Chinese version of the HPLP was the third section of the questionnaire in this study. The HPLP was developed by Walker, Sechrist, and Pender in 1987 to evaluate the health-promotion lifestyle that an individual has exhibited in the past year. The scale contains 48 items spread over six behavioral domains. However, in the process of Chinese translation, the number of HPLP items was reduced to 40. One study found that the Chinese version of the HPLP possesses good reliability and validity [42]. The six behavioral domains of the Chinese version of the HPLP are as follows: (1) nutritional behavior (5 questions), evaluates whether the individual has healthy dietary habits and ideas; (2) health responsibility behavior (8 questions), examines whether the individual pays attention to his or her health, participates in health educational activities, and seeks professional help when necessary; (3) self-actualization (8 questions), evaluates whether the individual exhibits goal awareness, seeks personal development, and possesses a sense of self-awareness and self-fulfillment; (4) interpersonal support behavior (6 questions), examines whether the individual can achieve a sense of intimacy and closeness through meaningful interactions with family and close friends; (5) exercise behavior (4 questions), determines whether the individual performs physical activities that promote health; and (6) stress management behavior (9 questions), examines the individual’s understanding about the sources of stress and his or her ability to take stress-relieving actions. The scale adopts a 4-point Likert-type scoring system, with options ranging from 0 (never) to 3 (always); the total score ranges from 0 to 120, with a higher score indicating an individual exhibits more health-promotion behaviors. In the present study, the Cronbach’s alpha coefficient for the overall HPLP score was .95, and the scores for the six domains of nutrition, health responsibility, self-actualization, interpersonal support, exercise, stress management were .79, .88, .93, .94, .84 and .84, respectively.

The IAT used in the fourth section of the study questionnaire is a self-report inventory that was developed by Young (1998) to assess Internet addiction level. The IAT is available in various languages [43]. The scale contains 20 items, and six types of symptom complaint pattern can be identified based on the self-reported results: (1) Salience (5 items)—a higher score on salience-related items indicates that an individual is more likely to be preoccupied with the Internet and to exhibit less social interaction with others to the extent that he or she may lose interest in other activities and relationships in exchange for more online time. (2) Excessive use (5 items)—a higher score on excessive use-related items indicates that an individual is engaged in excessive Internet-use behaviors, and he or she is more likely to become depressed, panicked, or angry if Internet use is stopped. (3) Neglect work (3 items)—a higher score on neglect work-related items indicates that an individual views the Internet as an essential technology similar to a television or telephone, and his or her school or job performance and productivity will most likely be compromised due to the amount of time they spend online and their efforts in hiding their Internet usage from others. (4) Anticipation—a higher score on anticipation-related items indicates that an individual is likely to think about the things they would do when they are online again or anticipate being online again as soon as possible when they are not using the Internet. (5) Lack of control—a higher score on the lack of control-related items indicates that an individual is unable to manage his or her online time, and others may be unhappy or even complain about the amount of time the respondent spends online. (6) Neglect social life—a higher score on the neglect social life-related items indicates that the individual is likely to ignore social interactions in real life and in turn frequently use online relationships to cope with situational problems and reduce mental tension and stress. The scale adopts a 5-point Likert scoring system, with options ranging from 0 (not applicable) to 5 (always); the score ranges from 0 to 100, with a higher score indicating a higher level of Internet addiction. An overall score of 0–30 points reflects a normal level of Internet usage; a score of 31–49 points indicates a mild level of Internet addiction; a score of 50–79 points indicates a moderate level of Internet addiction; and a score of 80–100 points indicates a severe dependence upon the Internet. Psychometric studies have indicated that the IAT possesses good reliability and validity [43, 44]. In the present study, the Cronbach’s alpha coefficient for the overall IAT score was .93, and the scores for the six types of symptom of salience, excessive use, neglect work, anticipation, lack of control, neglect social life’s were .73, .79, .74, .78, .75, and .73, respectively.

Statistical analysis

SPSS for Mac version 22 (IBM Corp., Armonk, NY) was used for data analysis in this study. First, descriptive statistical analyses were conducted to present the demographic characteristics of the research participants and obtain the means and standard deviations (SDs) for the CES-D, HPLP, and IAT. Second, the Pearson’s correlation coefficient (r) was used to investigate the correlation between IAT overall and each subscale score, HPLP overall score and each subscale scores, and the CES-D depression score. Third, a regression analysis was performed to examine the relationship between the CES-D and HPLP results. While controlling for the influence of demographic characteristics (i.e., age, BMI, smoking status, alcohol drinking status, and religion), the CES-D depression score was set as the dependent variable, whereas the HPLP overall score and six HPLP subscale scores were set as the independent variables. Subsequently, analysis of variance (ANOVA) and chi-squared tests (Tukey post hoc tests) were performed to examine if the three Internet addiction severity groups exhibited significant differences in terms of demographic characteristics and CES-D depression score. Fourth, a regression analysis was conducted to examine the relationship between the CES-D and IAT scores. While controlling for the influence of demographic characteristics and the HPLP overall score, the CES-D depression score was set as the dependent variable for the regression model, whereas the IAT overall score and six IAT subscale scores were set as the independent variables of the regression model.

Results

Participant demographics

The final sample of this study comprised 503 female junior college students. Statistics related to the participants’ demographic characteristics, depression, health-related behaviors, and Internet depression are presented in Table 1. Most of the participants were aged between 15 and 22 years (mean age = 17.30 years, SD = 1.34). Regarding smoking and alcohol drinking status, the majority of the students did not engage in either smoking (95.8%) or alcohol drinking (96.4%). Almost half of the students in the study sample (48.7%) were religious. With regard to the CES-D depression score, 242 (48.1%) of the students scored more than 16 points and therefore exhibited depressive tendencies. For the HPLP score, the mean scores of each item on the HPLP subscale were as follows (arranged from highest to lowest): interpersonal support behavior = 2.15 (±0.70); self-actualization = 1.78 (±0.71); nutritional behavior = 1.67 (±0.64); stress management behavior = 1.63 (±0.57); exercise behavior = 0.93 (±0.70); and health responsibility behavior = 0.69 (±0.59). Finally, regarding the IAT score, the results revealed that 32.6% of the participants exhibited no signs of Internet addiction, 52.7% of the participants exhibited a mild level of Internet addiction, and 13.9% of the participants exhibited a moderate-to-severe level of Internet addiction.

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Table 1. Demographic, anthropometric, and lifestyle characteristics as well as scores on depression, Health Promoting Lifestyle Profile (HPLP) and level of Internet addiction.

https://doi.org/10.1371/journal.pone.0220784.t001

Relationship between depression and health-related behaviors

Pearson's correlation coefficient (r) between the CES-D depression scores and the HPLP overall and subscale scores were -0.11 (p = 0.01), -0.20 (p < 0.01), -0.02 (p = 0.71), -0.16 (p < 0.01), -0.06 (p = 0.19), -0.01 (p = 0.92), -0.06 (p = 0.15) for the overall scores, nutrition subscale score, health responsibility subscale score, self-actualization subscale score, interpersonal support subscale score, exercise subscale score, and stress management subscale score, respectively. The regression analysis results for the CES-D and HPLP are presented in Table 2. The regression results indicate that only the HPLP overall score, nutrition subscale score, and self-actualization subscale score were significantly negatively associated to the CES-D depression score (p < 0.05–0.01). In other words, depression was lower in the students who exhibited more healthy behaviors, placed more emphasis on dietary health, and had higher levels of self-admiration and confidence toward life.

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Table 2. Multiple regression analysis for identifying depression significantly related to health-related behaviors.

https://doi.org/10.1371/journal.pone.0220784.t002

Relationship between depression and Internet addiction

The data related to the demographic characteristics and CES-D depression scores of the three Internet addiction severity groups are presented in Table 3. The ANOVA results revealed that the three Internet addiction severity groups only differed significantly in terms of their CES-D depression scores (p < 0.01). According to the results of the Tukey post hoc tests, the moderate-to-severe Internet addiction group scored significantly higher on the CES-D depression score compared with the mild addiction group, and both the moderate-to-severe group and the mild group scored significantly higher on the CES-D depression score compared with the normal group.

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Table 3. The demographic, anthropometric, and lifestyle characteristics as well as scores on depression in students with different degrees of Internet addiction.

https://doi.org/10.1371/journal.pone.0220784.t003

Pearson's correlation coefficient (r) between the CES-D depression scores and the IAT overall and six domain scores were 0.41 (p < 0.01), 0.52 (p < 0.01), 0.37 (p < 0.01), 0.30 (p < 0.01), 0.27 (p < 0.01), 0.35 (p < 0.01), 0.31 (p < 0.01) for the overall scores, salience, excessive use, neglect of work, anticipation, lack of control, and neglect of social life, respectively. The full results of the CES-D and IAT regression analysis are presented in Table 4. The regression analysis results revealed that the IAT overall score and six domain scores were all positively associated (p < 0.01) to the CES-D depression score, with or without controlling for the HPLP overall score. In other words, the higher an individual’s Internet addiction score was, the higher her depression level was.

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Table 4. Multiple regression analysis for identifying depression significantly related to Internet addiction symptoms.

https://doi.org/10.1371/journal.pone.0220784.t004

Discussion

After controlling for possible confounding factors, the results of the present study revealed that (1) depression is significantly associated to two health-related behaviors and (2) depression is significantly related to Internet addiction (and the six patterns of Internet addiction symptoms). These results indicate the possibility of alleviating depression in female adolescents through the promotion of health-related behaviors. Additionally, they indicate that depression could possibly worsen Internet addiction behavior. The analysis results presented in Table 1 show that almost half of the Taiwanese female students in this study exhibited depressive tendencies (48.1% ≥ 16), which is higher than among Australian female adolescents (31.8% ≥ 16; [45] but lower than among female adolescents in Hong Kong (62.05% ≥ 16 [24]. This is possibly due to cultural differences between East Asian and Western countries. Compared with parents and teachers from Western countries, parents and teachers (especially Chinese parents and teachers) from East Asia (e.g., Hong Kong and Taiwan) generally emphasize learning and academic achievement. They are willing to invest large amounts of resources (be they financial or temporal resources), and they often emphasize the role of recitation in the learning process and believe it helps to develop higher order thinking skills [46]. However, such emphasis can heighten the emotional stress (i.e., the fear of performing poorly or making mistakes) experienced by East Asian students. According to a study [1], 64.8% of Taiwanese adolescents cited academic stress as their top source of stress. By contrast, parents from Western countries generally provide a relatively free learning environment for their adolescents, and teachers from Western countries encourage their students to cultivate their creativity and imagination [46]. Studies have reported that depressive emotions can affect the development of female adolescents negatively; in the short term, depressive emotions can lead to suicidal ideation or behavior [47], and in the long run, depressive emotions can lead to early marriage or marital problems [48]. Overall, the results of this study highlight the need to seriously consider the emotional problems of female teenagers, and more research should be conducted to examine related issues in depth.

Regarding health behavior performance, the results presented in Table 1 show that participants performed the best in terms of interpersonal support behaviors and performed the worst in terms of health responsibility behaviors; these results highlight the importance of interpersonal relationships for female adolescents. Compared with male adolescents, female adolescents may value interpersonal relationships (i.e. friends) more, and the quality of interpersonal support they receive can affect their psychological [49] and physiological health [50]. A longitudinal study [51] revealed that receiving high-quality social support can help to lower the risk of future suicidal ideation in female adolescents. By contrast, the female adolescent participants in this study performed relatively poorly in terms of health responsibility behaviors, which is consistent with the results of previous studies [52, 53]. A possible explanation for this is that the adolescent participants were still too young to worry about or pay attention to their health. Therefore, they were less likely to regularly perform health responsibility behaviors such as checking their blood pressure and cholesterol levels regularly, participating in health education courses, and avoiding eating foods laden with preservatives [54]. With regard to Internet addiction, the results presented in Table 1 show that more than half of the participants in this study exhibited at least a mild level of Internet addiction, indicating that the Internet has become an indispensable necessity for female adolescents in modern society. The Internet facilitates the transfer of large amounts of information in a short time and enables interaction between people around the world. For teenagers, it serves as a platform for expressing their feelings and stress relief; when they face difficulties or negative emotions in real life, the Internet can provide a space for them to engage in self-regulation [55, 56]. However, over indulgence in the Internet can easily lead to the development of negative emotions such as depression and anxiety [26] and negatively affect academic performance and family relationships [57].

The results of the multiple regression analysis presented in Table 2 revealed significant correlations between depression, nutritional behaviors, and self-actualization. Regular healthy dietary behaviors (e.g., eating breakfast regularly and consuming fruits and vegetables) are beneficial for promoting emotion regulation [58] and reducing negative emotions in adolescents [59, 60]. According to a systematic review [61], adolescents who exhibit healthy dietary behaviors or consume high-quality diet have lower levels of depression and better mental health. Emotional regulation is influenced by different neurochemical pathways (e.g., the dopamine pathway) in the human body, and each pathway requires various types of nutrients to produce the metabolites needed by the neurotransmitters involved in the emotional regulation process [62]. Several studies [63, 64] have suggested that ingesting enough nutrients (e.g., eicosapentaenoic acid, docosahexaenoic acid) from the daily diet is beneficial for emotional improvement. Nevertheless, negative emotions (e.g., depression) can affect adolescents’ emotional regulation ability and heighten their risk of becoming obese due to junk food consumption [58]. Because the present work was a cross-sectional study, the results cannot be used to explain causal relationships between variables. Further studies are therefore necessary to provide supporting evidence of the relationship between dietary behaviors and depression.

The results of the present study also revealed that depression levels were lower in adolescents with higher self-actualization scores, which is consistent with the results of previous studies [65]. Adolescents with high self-actualization are likely to possess higher levels of self-admiration, possess higher levels of self-confidence, be more optimistic, and feel that life is meaningful and full of fun and challenges [66]. These adolescents are also likely to achieve Maslow's hierarchy of needs [67]. Compared with their peers, such teenagers are likely to exhibit better functional performance in life tasks such as gaining higher social status, making friends, and looking for spouses [68]. One study [69] found that the self-actualization status of college students was related to their academic orientation. In other words, university students who exhibited higher levels of self-actualization also exhibited better performance in terms of creative expression, reading for pleasure, and academic efficacy. Additionally, studies have reported that students who exhibit higher levels of self-actualization have higher sleep quality [7072]. In short, a high level of self-actualization can possibly lower the occurrence of negative emotions. Adolescence is the peak onset period for clinical depression. Thus, reducing depression risk through health-related behaviors is a research direction worthy of further exploration.

The analysis results presented in Tables 3 and 4 confirmed the relationship between Internet addiction and depression. These results are consistent with the findings of past studies [16, 2325] that higher levels of Internet addiction are associated with higher levels of depression in adolescents. The results of the present study further revealed that all six patterns of symptom complaint in the IAT are significantly related to depression level. In other words, female adolescents with depression may also face social and life problems caused by their Internet usage. Adolescents with depressive moods typically have poorer social skills than those without such moods; additionally, they also typically harbor negative expectations while interacting with others, and they may interpret certain ‘micromessages’ as rejections [73]. These interaction tendencies may cause such adolescents to have difficulties in forming real-world relationships, and they subsequently may have less chances than others to learn social skills, forming a vicious cycle of poor social functioning and depressive mood [73]. Compared with face-to-face communication, online communication holds many advantages for adolescents, because it is generally anonymous, unrestricted by time and place, less focused on one’s outer appearance, and provides individuals with an area where they can lead social interactions [74, 75]. Additionally, adolescents believe that online communication protects them from “rejections” by others. The aforementioned reasons perhaps explain why adolescents can become addicted to the online world [55]. Depression has been reported to be related to unhealthy addictive behaviors; individuals may try to lower their anxiety and reduce their negative emotions though addictive behaviors [76]. For teenagers with depression, their attempts to regulate their emotions through Internet usage may increase the risks of developing Internet addiction [77]. However, excessive Internet use may disrupt daily functioning and produce various negative consequences, such as a lack of time management, difficulty in concentrating on academic tasks, poor emotional regulation, and a refusal to interact with others (Table 4). Because the Internet provides many stimulating activities, including online games, online shopping, and online communication; individuals with depression may fully engage themselves in the online to try and avoid negative emotions [55].

Although the influence of confounding factors was controlled for in this study, the study still had several limitations. First, measurement of depressive emotions was conducted using a self-report scale, namely the CES-D. Although the CES-D has been extensively used as a tool for measuring depressive emotions in adolescents and has been found to possess good reliability and validity [38], the results of the CES-D cannot be considered as a diagnosis of clinical depression. Second, this study was a cross-sectional study, and therefore the results cannot be taken as evidence of causal relationships between the variables. Further studies are required to examine the causal relationships between depression and health-related behaviors. Third, the possibility that the participants were facing academic-related stress during the data collection period cannot be discounted, and this could have affected the validity of the results. Lastly, all participants in this study were recruited from a single junior college in southern Taiwan, and this limits the generalizability of the findings. Nevertheless, even with these limitations, the results can still serve as a useful reference for parents and educators caring for female adolescents. Future studies recruiting both genders are warranted to explore the gender differences.

Conclusion

In conclusion, the results of the current study confirmed the relationships between depression, health-related behaviors, and Internet addiction, indicating that cultivation of health-related behaviors may help in lowering depressive symptoms. Teenagers with depression are at higher risk of developing Internet addiction, which can affect daily functioning. Therefore, developing effective strategies to alleviate depressive emotions in female adolescents is crucial.

Acknowledgments

The authors thank to Elizabeth Siren for proofreading this article.

References

  1. 1. John Tung Foundation Mental Health Center. Investigation on the application of campus mental health resources and the mood of depression among the high school students in six cities of Taiwan. 2018. Available from: http://www.etmh.org/CustomPage/HtmlEditorPage.aspx?MId=1346&ML=32018
  2. 2. Ministry of Health and Welfare. Antidepressant drug use statistics. 2018. Available from:https://dep.mohw.gov.tw/DOS/cp-1720-9734-113.html2018
  3. 3. Mills NT, Scott JG, Wray NR, Cohen‐Woods S, Baune BT. Research review: the role of cytokines in depression in adolescents: a systematic review. J Child Psychol Psychiatry. 2013;54(8):816–35. pmid:24027786
  4. 4. Van Beveren M-L, McIntosh K, Vandevivere E, Wante L, Vandeweghe L, Van Durme K, et al. Associations between temperament, emotion regulation, and depression in youth: The role of positive temperament. J Child Fam Stud. 2016;25(6):1954–68.
  5. 5. Finning K, Ukoumunne OC, Ford T, Danielsson-Waters E, Shaw L, De Jager IR, et al. The association between child and adolescent depression and poor attendance at school: A systematic review and meta-analysis. J Affect Disord. 2018.
  6. 6. McMahon EM, Corcoran P, O’Regan G, Keeley H, Cannon M, Carli V, et al. Physical activity in European adolescents and associations with anxiety, depression and well-being. European Child & Adolescent Psychiatry. 2017;26(1):111–22.
  7. 7. Chen T-Y, Chou Y-C, Tzeng N-S, Chang H-A, Kuo S-C, Pan P-Y, et al. Effects of a selective educational system on fatigue, sleep problems, daytime sleepiness, and depression among senior high school adolescents in Taiwan. Neuropsychiatr Dis Treat. 2015;11:741. pmid:25834449
  8. 8. Gijzen MW, Creemers DH, Rasing SP, Smit F, Engels RC. Evaluation of a multimodal school-based depression and suicide prevention program among Dutch adolescents: design of a cluster-randomized controlled trial. BMC Psychiatry. 2018;18(1):124. pmid:29747618
  9. 9. Derdikman‐Eiron R, Indredavik MS, Bratberg GH, Taraldsen G, Bakken IJ, Colton M. Gender differences in subjective well‐being, self‐esteem and psychosocial functioning in adolescents with symptoms of anxiety and depression: Findings from the Nord‐Trøndelag health study. Scand J Psychol. 2011;52(3):261–7. pmid:21265857
  10. 10. Chang F-C, Chiu C-H, Miao N-F, Chen P-H, Lee C-M, Chiang J-T, et al. The relationship between parental mediation and Internet addiction among adolescents, and the association with cyberbullying and depression. Comprehensive Psychiatry. 2015;57:21–8. pmid:25487108
  11. 11. Pikó B, Pinczés T. Impulsivity-aggression-depression: Study of adolescents' problem behavior in light of their personality traits. Psychiatria Hungarica: A Magyar Pszichiatriai Tarsasag Tudomanyos Folyoirata. 2014;29(1):48–55.
  12. 12. Wirback T, Möller J, Larsson J-O, Engström K. Social differences in diagnosed depression among adolescents in a Swedish population based cohort. BMC Psychiatry. 2018;18(1):216. pmid:29970041
  13. 13. Laukkanen M, Hakko H, Riipinen P, Riala K. Does family structure play a role in depression in adolescents admitted to psychiatric inpatient Care? Child Psychiatry & Human Development. 2016;47(6):918–24.
  14. 14. Kim MJ, Yu SY, Kim S, Won CW, Choi H, Kim BS. Health Behavior and Factors Associated with Depression in North Korean Adolescent Defectors in South Korea: The Korea Youth Risk Behavior Web-Based Survey, 2011–2014. Korean J Fam Med. 2017;38(5):256–62. pmid:29026485
  15. 15. Tajik E, Latiffah AL, Awang H, Nur’Asyura AS, Chin YS, Shah ABA, et al. Unhealthy diet practice and symptoms of stress and depression among adolescents in Pasir Gudang, Malaysia. Obesity research & clinical practice. 2016;10(2):114–23.
  16. 16. Lin HC, Tang TC, Yen JY, Ko CH, Huang CF, Liu SC, et al. Depression and its association with self‐esteem, family, peer and school factors in a population of 9586 adolescents in Southern Taiwan. Psychiatry and Clinical Neurosciences. 2008;62(4):412–20. pmid:18778438
  17. 17. O'Shea G, Spence SH, Donovan CL. Interpersonal factors associated with depression in adolescents: are these consistent with theories underpinning interpersonal psychotherapy? Clinical Psychology & Psychotherapy. 2014;21(6):548–58.
  18. 18. Tajik E, Abd Latiff L, Adznam SN, Awang H, Yit Siew C, Abu Bakar AS. A study on level of physical activity, depression, anxiety and stress symptoms among adolescents. J Sports Med Phys Fitness. 2017;57(10):1382–7. pmid:28004901
  19. 19. Bai S, Zeledon LR, D’amico EJ, Shoptaw S, Avina C, LaBorde AP, et al. Reducing health risk behaviors and improving depression in adolescents: a randomized controlled trial in primary care clinics. J Pediatr Psychol. 2018;43(9):1004–16. pmid:30016473
  20. 20. Aki A, Tomotake M. Changes of levels of depression and quality of life after short-term cognitive behavioral educational program for adolescent students in health class. J Med Invest. 2015;62(3.4):204–8. pmid:26399349
  21. 21. Ando M. An intervention program focused on self-understanding and interpersonal interactions to prevent psychosocial distress among Japanese university students. J Adolesc. 2011;34(5):929–40. pmid:21251704
  22. 22. Lin P-H, Lee Y-C, Chen K-L, Hsieh P-L, Yang S-Y, Lin Y-L. The Relationship Between Sleep Quality and Internet Addiction Among Female College Students. Front Neurosci. 2019;13.
  23. 23. Ha JH, Kim SY, Bae SC, Bae S, Kim H, Sim M, et al. Depression and Internet addiction in adolescents. Psychopathology. 2007;40(6):424–30. pmid:17709972
  24. 24. Wu AM, Li J, Lau JT, Mo PK, Lau MM. Potential impact of internet addiction and protective psychosocial factors onto depression among Hong Kong Chinese adolescents–direct, mediation and moderation effects. Comprehensive Psychiatry. 2016;70:41–52. pmid:27624422
  25. 25. Yang S-Y, Lin C-Y, Huang Y-C, Chang J-H. Gender differences in the association of smartphone use with the vitality and mental health of adolescent students. J Am Coll Health. 2018;66(7):693–701. pmid:29565784
  26. 26. Li G, Hou G, Yang D, Jian H, Wang W. Relationship between anxiety, depression, sex, obesity, and internet addiction in Chinese adolescents: A short-term longitudinal study. Addictive Behaviors. 2019;90:421–7. pmid:30553156
  27. 27. Park S. Associations of physical activity with sleep satisfaction, perceived stress, and problematic Internet use in Korean adolescents. BMC Public Health. 2014;14(1):1143.
  28. 28. Monacis L, Sinatra M, Griffiths MD, de Palo V. Assessment of the Italian version of the Internet Disorder Scale (IDS-15). Int J Ment Health Addict. 2018:1–12.
  29. 29. Su W, Han X, Jin C, Yan Y, Potenza MN. Are males more likely to be addicted to the internet than females? A meta-analysis involving 34 global jurisdictions. Comput Human Behav. 2019;99:86–100.
  30. 30. Hankin BL, Abramson LY. Development of gender differences in depression: An elaborated cognitive vulnerability–transactional stress theory. Psychol Bull. 2001;127(6):773. pmid:11726071
  31. 31. Mannan M, Mamun A, Doi S, Clavarino A. Prospective associations between depression and obesity for adolescent males and females-a systematic review and meta-analysis of longitudinal studies. PloS One. 2016;11(6):e0157240. pmid:27285386
  32. 32. Rodgers RF, Paxton SJ, Chabrol H. Depression as a moderator of sociocultural influences on eating disorder symptoms in adolescent females and males. J Youth Adolesc. 2010;39(4):393–402. pmid:20229229
  33. 33. Hoare E, Milton K, Foster C, Allender S. Depression, psychological distress and Internet use among community-based Australian adolescents: a cross-sectional study. BMC Public Health. 2017;17(1):365. pmid:28449667
  34. 34. Lawrence D, Johnson S, Hafekost J, Boterhoven de Haan K, Sawyer M, Ainley J, et al. The mental health of children and adolescents: Report on the second Australian child and adolescent survey of mental health and wellbeing. 2015.
  35. 35. Whang LS-M, Lee S, Chang G. Internet over-users' psychological profiles: a behavior sampling analysis on internet addiction. Cyberpsychology & Behavior. 2003;6(2):143–50.
  36. 36. Kardefelt-Winther D. A conceptual and methodological critique of internet addiction research: Towards a model of compensatory internet use. Comput Human Behav. 2014;31:351–4.
  37. 37. Radloff LS. The CES-D scale: a self-report depression scale for research in the general population. Applied Psychological Measurement. 1977;1(3):385–401.
  38. 38. Eaton WW, Smith C, Ybarra M, Muntaner C, Tien A. Center for Epidemiologic Studies Depression Scale: review and revision (CESD and CESD-R). In Maruish M. E. (Ed.), The use of psychological testing for treatment planning and outcomes assessment: Instruments for adults (pp. 363–377). Mahwah, NJ, US: Lawrence Erlbaum Associates Publishers.
  39. 39. Chien C, Cheng T. Depression in Taiwan: epidemiological survey utilizing CES-D. Psychiatrica et Neurologica Japonica. 87 (5). 1985:335–8.
  40. 40. Weissman MM, Sholomskas D, Pottenger M, Prusoff BA, Locke BZ. Assessing depressive symptoms in five psychiatric populations: a validation study. Am J Epidemiol. 1977;106(3):203–14. pmid:900119
  41. 41. Lee K-L, Ou Y-L, Chen S-H, Weng L-J. The Psychometric Properties of a Short Form of the CES-D used in the Taiwan Longitudinal Study on Aging. Formosa Journal of Mental Health. 2009;22(4):383–410.
  42. 42. Chen MY, Chou CC, Shiau HS, Wang EK, Chiou HJ, Liao JC. The development of Chinese version health promoting lifestyle profile. Chang Gung Nursing. 1997;8(1):14–24.
  43. 43. Widyanto L, McMurran M. The psychometric properties of the internet addiction test. Cyberpsychology & Behavior. 2004;7(4):443–50.
  44. 44. Lai C-M, Mak K-K, Watanabe H, Ang RP, Pang JS, Ho RC. Psychometric properties of the internet addiction test in Chinese adolescents. J Pediatr Psychol. 2013;38(7):794–807. pmid:23671059
  45. 45. Allison S, Allison S, Roeger L, Martin G, Keeves J. Gender Differences in the Relationship Between Depression and Suicidal Ideation in Young Adolescents. Aust N Z J Psychiatry. 2001;35(4):498–503. pmid:11531732
  46. 46. Kim KH. Learning From Each Other: Creativity in East Asian and American Education. Creativity Research Journal. 2005;17(4):337–47.
  47. 47. Lee E. Construction of a structural model about male and female adolescents' alienation, depression, and suicidal thoughts. J Korean Acad Nurs. 2007;37(4):576–85.
  48. 48. Gotlib IH, Lewinsohn PM, Seeley JR. Consequences of depression during adolescence: marital status and marital functioning in early adulthood. J Abnorm Psychol. 1998;107(4):686. pmid:9830257
  49. 49. Helgeson VS, Reynolds KA, Escobar O, Siminerio L, Becker D. The role of friendship in the lives of male and female adolescents: does diabetes make a difference? J Adolesc Health. 2007;40(1):36–43. pmid:17185204
  50. 50. Laird Y, Fawkner S, Kelly P, McNamee L, Niven A. The role of social support on physical activity behaviour in adolescent girls: a systematic review and meta-analysis. Int J Behav Nutr Phys Act. 2016;13(1):79.
  51. 51. Giletta M, Hastings PD, Rudolph KD, Bauer DJ, Nock MK, Prinstein MJ. Suicide ideation among high-risk adolescent females: Examining the interplay between parasympathetic regulation and friendship support. Dev Psychopathol. 2017;29(4):1161–75. pmid:28031059
  52. 52. Ardic A, Esin MN. Factors associated with healthy lifestyle behaviors in a sample of Turkish adolescents: a school-based study. J Transcult Nurs. 2016;27(6):583–92. pmid:26002620
  53. 53. Musavian AS, Pasha A, Rahebi S-M, Roushan ZA, Ghanbari A. Health promoting behaviors among adolescents: A cross-sectional study. Nursing and Midwifery Studies. 2014;3(1).
  54. 54. Raiyat A, Nourani N, Samiei Siboni F, Sadeghi T, Alimoradi Z. Health Improving Behaviors in students of Qazvin Secondary schools in 2011. Journal of Health. 2012;3(3):46–53.
  55. 55. McKenna KY, Bargh JA. Plan 9 from cyberspace: The implications of the Internet for personality and social psychology. Pers Soc Psychol Rev. 2000;4(1):57–75.
  56. 56. Morahan-Martin J, Schumacher P. Loneliness and social uses of the Internet. Comput Human Behav. 2003;19(6):659–71.
  57. 57. Xin M, Xing J, Pengfei W, Houru L, Mengcheng W, Hong Z. Online activities, prevalence of Internet addiction and risk factors related to family and school among adolescents in China. Addict Behav Rep. 2018;7:14–8. pmid:29450251
  58. 58. Isasi CR, Ostrovsky NW, Wills TA. The association of emotion regulation with lifestyle behaviors in inner-city adolescents. Eating Behaviors. 2013;14(4):518–21. pmid:24183148
  59. 59. Ferrer-Cascales R, Sánchez-SanSegundo M, Ruiz-Robledillo N, Albaladejo-Blázquez N, Laguna-Pérez A, Zaragoza-Martí A. Eat or skip breakfast? The important role of breakfast quality for health-related quality of life, stress and depression in Spanish adolescents. Int J Environ Res Public Health. 2018;15(8):1781.
  60. 60. Hoare E, Hockey M, Ruusunen A, Jacka FN. Does fruit and vegetable consumption during adolescence predict adult depression? A longitudinal study of US adolescents. Frontiers Psychiatry. 2018;9.
  61. 61. Khalid S, Williams CM, Reynolds SA. Is there an association between diet and depression in children and adolescents? A systematic review. Br J Nutr. 2016;116(12):2097–108. pmid:28093091
  62. 62. Webster-Gandy J, Madden A, Holdsworth M. Oxford handbook of nutrition and dietetics: OUP Oxford; 2011.
  63. 63. Rogers PJ, Appleton KM, Kessler D, Peters TJ, Gunnell D, Hayward RC, et al. No effect of n-3 long-chain polyunsaturated fatty acid (EPA and DHA) supplementation on depressed mood and cognitive function: a randomised controlled trial. Br J Nutr. 2008;99(2):421–31. pmid:17956647
  64. 64. Silvers KM, Woolley CC, Hedderley D. Dietary supplement use in people being treated for depression. Asia Pac J Clin Nutr. 2006;15(1):30. pmid:16500875
  65. 65. Berndt DJ, Kaiser CF, Van Aalst F. Depression and self‐actualization in gifted adolescents. J Clin Psychol. 1982;38(1):142–50. pmid:7056863
  66. 66. Walker SN, Sechrist KR, Pender NJ. The health-promoting lifestyle profile: development and psychometric characteristics. Nursing research. 1987.
  67. 67. McLeod S. Maslow's hierarchy of needs. Simply psychology. 2007;1. Available from: http://www.simplypsychology.org/maslow.html
  68. 68. Krems JA, Kenrick DT, Neel R. Individual perceptions of self-actualization: What functional motives are linked to fulfilling one’s full potential? Pers Soc Psychol Bull. 2017;43(9):1337–52. pmid:28903683
  69. 69. Davidson WB, Bromfield JM, Beck HP. Beneficial Academic Orientations and Self-Actualization of College Students. Psychol Rep. 2007;100(2):604–12. pmid:17564237
  70. 70. Lin P-H, Lin C-Y, Wang P-Y, Yang S-Y. Association between sleeping duration and health-related behaviors in college student. Social Health and Behavior. 2018;1(1):31–6.
  71. 71. Yang S-Y, Chen K-L, Lin P-H, Wang P-Y. Relationships among health-related behaviors, smartphone dependence, and sleep duration in female junior college students. Social Health and Behavior. 2019;2(1):26–31.
  72. 72. Wang P-Y, Chen K-L, Yang S-Y, Lin P-H. Relationship of sleep quality, smartphone dependence, and health-related behaviors in female junior college students. PloS One. 2019;14(4):e0214769. pmid:30943270
  73. 73. Nilsen W, Karevold EB, Kaasbøll J, Kjeldsen A. Nuancing the role of social skills–a longitudinal study of early maternal psychological distress and adolescent depressive symptoms. BMC Pediatrics. 2018;18(1):133. pmid:29636005
  74. 74. Ceyhan E, Boysan M, Kadak MT. Associations between online addiction attachment style, emotion regulation depression and anxiety in general population testing the proposed diagnostic criteria for internet addiction. Sleep Hypn. 2019; 21:123–139.
  75. 75. Monacis L, de Palo V, Griffiths MD, Sinatra M. Exploring individual differences in online addictions: The role of identity and attachment. Int J Ment Health Addict 2017;15(4):853–68. pmid:28798553
  76. 76. Young KS, Rogers RC. The relationship between depression and Internet addiction. Cyberpsychology & Behavior. 1998;1(1):25–8.
  77. 77. Tsai C-C, Lin SS. Internet addiction of adolescents in Taiwan: An interview study. CyberPsychology & Behavior. 2003;6(6):649–52.