Risk factor analysis and predictive model development for problematic internet gaming disorder occurrence.

Q2 Medicine
Andrian Fajar Kusumadewi, Raihan Hananto, Arrum Putri Amalia, Muhammad Dicky Hertanto, Hermanuaji Sihageng, Muhammad Jordan Diandraputra
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引用次数: 0

Abstract

Aim: To examine several aspects, such as sociodemographic, psychological, personality, and parenting characteristics, that may contribute to the occurrence of problematic internet gaming disorder (PIGD) in Yogyakarta, Indonesia. Additionally, the study intends to create a model that can accurately predict people who are at high risk of developing PIGD.

Methods: A cross-sectional study was conducted on 350 participants aged 15-25 years in Yogyakarta. The data were gathered through the use of a questionnaire that consisted of demographic measures: the Internet Gaming Disorder Scale-Short Form (IGDS9-SF), the Depression Anxiety Stress Scale (DASS-21), the Big Five Inventory (BFI), and the Parenting Style Questionnaire. Multiple logistic regression was utilized for data analysis in order to identify relevant risk factors and construct a risk prediction model.

Results: The study revealed that certain sociodemographic characteristics (male and student), psychological factors (depression, anxiety, and stress), personality traits (high neuroticism, low conscientiousness), and authoritarian parenting style were all significant predictors of the occurrence of PIGD. These characteristics led to the creation of the risk prediction model, which demonstrated strong performance with an area under the curve (AUC) of 0.85 (95% CI 0.80-0.90).

Conclusion: Multifaceted issue and variety of risk factors influence PIGD. This study's risk prediction model can effectively identify individuals at a heightened risk of developing PIGD. This allows for early and targeted preventative and treatment interventions to be implemented.

问题性网络游戏障碍发生的风险因素分析及预测模型开发。
目的:研究几个方面,如社会人口学、心理、个性和父母特征,可能有助于在印度尼西亚日惹发生问题网络游戏障碍(PIGD)。此外,该研究打算建立一个模型,可以准确预测哪些人有患PIGD的高风险。方法:采用横断面研究方法,对日惹市年龄15-25岁的350名参与者进行研究。数据是通过使用一份由人口统计测量组成的问卷收集的:网络游戏障碍简易量表(IGDS9-SF)、抑郁焦虑压力量表(DASS-21)、大五量表(BFI)和父母教养方式问卷。利用多元逻辑回归对数据进行分析,识别相关危险因素,构建风险预测模型。结果:某些社会人口学特征(男性和学生)、心理因素(抑郁、焦虑和压力)、人格特征(高神经质、低责任心)和权威型父母方式均是PIGD发生的显著预测因子。这些特征导致了风险预测模型的创建,该模型表现出很强的性能,曲线下面积(AUC)为0.85 (95% CI 0.80-0.90)。结论:影响PIGD的危险因素多面性和多样性。本研究的风险预测模型可以有效地识别出发生PIGD的高风险个体。这样就可以实施早期和有针对性的预防和治疗干预措施。
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来源期刊
Medicinski Glasnik
Medicinski Glasnik 医学-医学:内科
CiteScore
2.30
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Medicinski Glasnik (MG) is the official publication (two times per year) of the Medical Association of Zenica-Doboj Canton. Manuscripts that present of original basic and applied research from all fields of medicine (general and clinical practice, and basic medical sciences) are invited.
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