| Literature DB >> 30809270 |
Nagisa Sugaya1, Tomohiro Shirasaka2, Kenzo Takahashi3, Hideyuki Kanda4.
Abstract
Previous large-scale studies suggest that internet gaming disorder (IGD) among children and adolescents has become an important public concern. Minors are known to be particularly susceptible to problematic internet gaming use owing to age-related underdevelopment of cognitive control. It has been shown that precursors of addictions appear during adolescence; therefore, prevention efforts must be established targeting minors who have their first experience with addictive substances and behaviors during pubescence. Since the DSM-5 classification of IGD in 2013, studies on IGD have drastically increased in number. Thus, we performed an updated review of studies of IGD in children and adolescents to assess the clinical implications of IGD. The search included all publication years, using PubMed, MEDLINE, and PsycINFO. Across studies, the presence of IGD had a negative effect on sleep and schoolwork in minors. Additionally, family factors, including the quality of parent-child relationships, were important social factors in minors with IGD. Brain imaging studies indicate that impaired cognitive control in minors with IGD is associated with abnormal function in the prefrontal cortex and striatum. Persistent pathological online game use from childhood may aggravate abnormal brain function; therefore, preventive care and early intervention are increasingly important. Although extant research supports the effectiveness of cognitive behavioral therapy for minors with IGD, effective psychological intervention for minors with IGD is an urgent issue that requires further research. This review, which presents updated findings of IGD in minors, is expected to contribute to the development of future research and be useful in clinical practice in the field of child and adolescent psychiatry.Entities:
Keywords: Adolescents; Children; Internet gaming disorder
Year: 2019 PMID: 30809270 PMCID: PMC6374886 DOI: 10.1186/s13030-019-0144-5
Source DB: PubMed Journal: Biopsychosoc Med ISSN: 1751-0759
Diagnostic criteria of IGD in DSM-5
| Repetitive use of internet-based games, often with other players, that leads to significant issues with functioning. Five of the following criteria must be met within 1 year: | |
| A. Preoccupation or obsession with internet games. | |
| B. Withdrawal symptoms when not playing internet games. | |
| C. A build-up of tolerance – more time needs to be spent playing the games. | |
| D. The person has tried to stop or curb playing internet games, but has failed to do so. | |
| E. The person has had a loss of interest in other life activities, such as hobbies. | |
| F. The person has had continued overuse of internet games even with the knowledge of how much they impact a person’s life. | |
| G. The person lied to others about his or her internet game usage. | |
| H. The person uses internet games to relieve anxiety or guilt – it is a way to escape. | |
| I. The person has lost or put at risk an opportunity or relationship because of internet games. |
Fig. 1Summary of the search and inclusion process. * Regarding PsycINFO, the database search was narrowed to include only research articles written in English and including participants aged 28 or younger
Prevalence of IGD
| Author (year) | N of participants | Prevalence of IGD | Diagnostic criteria | Mean age of participants | Country | ||
|---|---|---|---|---|---|---|---|
| Total | Boys | Girls | |||||
| Wartberg et al. (2017) [ | 1095 | 2.4% | – | – | DSM-5 | 13.0 (SD = 0.8) | Germany |
| Yu et al. (2016) [ | 2024 | 5.9% | 10.4% | 1.2% | DSM-5 | 14.5 (SD = 0.5) | South Korea |
| King et al. (2016) [ | 824 | 3.1% | 5.7% | 0.7% | DSM-5 | 14.1~14.5 (SD = 1.2~1.5) | Australia |
| Pontes et al. (2016) [ | 1071 | 2.4% | – | – | DSM-5 | 13.4 (SD = 0.6) | Slovenia |
| Rehbein et al. (2015) [ | 11,003 | 1.2% | 2.0% | 0.3% | DSM-5 | 14.9 (range = 13–18) | Germany |
| Johansson et al. (2004) [ | 3237 | 2.7% | 4.2% | 1.1% | Young Diagnostic Questionnaire | 12~18 | Norway |
| Strittmatter et al. (2015) [ | 8807 | 3.6% | – | – | Young Diagnostic Questionnaire | 15.0 (SD = 1.3) | Estonia, Germany, Italy, Romania and Spain |
| Müller et al. (2015) [ | 112,938 | 1.6% | 3.1% | 0.3% | Assessment of Internet and Computer game Addiction -Gaming Module | 15.8 (SD = 0.7) | Germany, Greece, Iceland, the Netherlands, Poland, Romania, and Spain |
| Vadlin et al. (2015) [ | 1814 | 1.3% *2.4% | – | – | Gaming Addiction Identification Test and its parent version | 13~15 | Sweden |
| Kiraly et al. (2014) [ | 4875 | 4.3% | – | – | 12-item Problematic Online Gaming Questionnaire Short-Form | 16.4 (SD = 0.9) | Hungary |
| Pápay et al. (2013) [ | 5045 | 4.6% | – | – | 12-item Problematic Online Gaming Questionnaire Short-Form | 16.4 (SD = 0.9) | Hungary |
| Van Rooij et al. (2011) [ | 1572 | 3.6% | – | – | Compulsive Internet Use Scale | 14.4 (SD = 1.2) | the Netherlands |
* rated by adolescents’ parents
Characteristics of resting state brain imaging data in individuals with IGD
| Author (year) | Participants | Diagnostic criteria | Brain imaging methods | Results |
|---|---|---|---|---|
| Han et al. (2017) [ | IGD group: | 1) Excessive online game play time (more than 4 h per day/30 h per week); 2) IAT scores > 50; 3) Irritable, anxious and aggressive behavior when forced to stop online game play; 4) Impaired behaviors or distress, economic crisis and maladaptive regular life patterns including disrupted diurnal rhythms, irregular meals, failure to maintain personal hygiene and school refusal. | Method: fMRI (functional connectivity) | IGD group showed increased functional connectivity between seven pairs of regions; left frontal eye field to dorsal anterior cingulate, left frontal eye field to right anterior insula, left DLPFC to left TPJ, right DLPFC to right TPJ, right auditory cortex to right motor cortex, right auditory cortex to supplementary motor area, and right auditory cortex to dorsal anterior cingulate. |
| Park et al. (2017) [ | IGA group: N = 19 (boys) 13.6 ± 1.0 years. | Korean Internet Addiction Proneness Scale | Method: fMRI | 1) Brain functional networks in IGA group showed higher global efficiency and lower local efficiency relative to the controls; IGA induced brain functional networks to shift toward a random topological architecture. |
| Jin et al. (2016) [ | IGD group: | DSM-5 | Method: VBM and fMRI (functional connectivity) | IGD group showed: |
| Du et al. (2016) [ | IGD group: | [ | Method: VBM | Region-of-interest analysis revealed that gray matter volume in the right dmPFC, bilateral insula and OFC, right amygdala, and left fusiform gyrus showed significant positive correlations with impulsivity in the control group, while no significant correlation was found in the IGD group. |
| Wang et al. (2015) [ | IGD group: N = 17 (13 boys and 4 girls), 16.9 ± 2.7 years. | Modified YDQ for internet addiction criteria (answered “yes” to questions 1 through 5 and at least any one of the remaining three questions). | Method: fMRI | IGD group showed decreased voxel-mirrored homotopic connectivity (VMHC) between the left and right superior frontal gyrus (orbital part), inferior frontal gyrus (orbital part), middle frontal gyrus, and superior frontal gyrus. |
| Wang et al. (2015) [ | IGD group: N = 28 (18 boys and 10 girls), 18.8 (1.33) years. | Modified YDQ for internet addiction criteria | Method: VBM | IGD group showed: |
| Hong et al. (2015) [ | IGD group: | IAT score ≥ 50 | Method: fMRI | IGD group showed: |
| Xing et al. (2014) [ | IGD group: | IAT score ≥ 50 | Method: fMRI (functional connectivity) and diffusion tensor imaging (DTI) tractography methods | IGD group showed: |
| Feng et al. (2013) [ | IGA group: | Modified YDQ for internet addiction criteria | Method: fMRI | IGA group showed: |
| Ding et al. (2013) [ | IGA group: | Modified YDQ for internet addiction criteria | Method: fMRI | IGA group showed: |
ACC anterior cingulate cortex
CBF cerebral blood flow
DLPFC dorsolateral prefrontal cortex
dmPFC dorsomedial prefrontal cortex
NAc nucleus accumbens
OFC orbitofrontal cortex
PCC posterior cingulate cortex
PFC prefrontal cortex
SMA supplementary motor area
TPJ temporoparietal junction
VBM voxel-based morphometric
IAT Internet Addiction Test
YDQ Young Diagnostic Questionnaire
IGD Internet Gaming Disorder
OGA Online Gaming Addiction
Characteristics of task-related brain imaging data in individuals with IGD
| Author (year) | Participants | Diagnostic criteria | Brain imaging methods | Results |
|---|---|---|---|---|
| Cai et al. (2016) [ | IGD group: N = 27 (23 boys and 4 girls), 17.1 ± 0.9 years. | DSM-5 | Method: MRI | IGD group showed: |
| Chun et al. (2015) [ | IGD group: | Korean Internet Addiction | Method: fMRI | IGD group showed: |
| Qi et al. (2015) [ | IGD group: | [ | Method: fMRI | IGD group showed: |
| Ding et al. (2014) [ | IGD group: | Modified YDQ for internet addiction criteria | Method: fMRI | IGD group showed: |
| Kim et al. (2012) [ | Excessive online game playing group: | 1) IAT (≥50) | Method: fMRI | Excessive online game playing group showed: |
| Han et al. (2012) [ | OGA: | 1) Game playing time greater than 4 h per day and 30 h per week; 2) IAT ≥50; 3) impaired behaviors or distress due to excessive on-line game play which are modified from DSM-IV criteria for substance abuse | Method: fMRI | OGA group showed: |
VBM voxel-based morphometric
PFC prefrontal cortex
DLPFC dorsolateral prefrontal cortex
OFC orbitofrontal cortex
ACC anterior cingulate cortex
SMA supplementary motor area
NAc nucleus accumbens
PCC posterior cingulate cortex
CBF cerebral blood flow
IAT Internet Addiction Test
YDQ Young Diagnostic Questionnaire
IGD Internet Gaming Disorder
OGA Online Gaming Addiction