1Department of Clinical Research, Sun Yat-sen University Cancer Center, Guangzhou, 510060, P.R. China.
2State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Guangzhou 510060, P. R. China.
J Behav Addict. 2020 Aug 21;9(3):698-708. doi: 10.1556/2006.2020.00047. Print 2020 Oct 12.
Problematic online social networking use is prevalent among adolescents, but consensus about the instruments and their optimal cut-off points is lacking. This study derived an optimal cut-off point for the validated Online Social Networking Addiction (OSNA) scale to identify probable OSNA cases among Chinese adolescents.
A survey recruited 4,951 adolescent online social networking users. Latent profile analysis (LPA) and receiver operating characteristic curve (ROC) analyses were applied to the validated 8-item OSNA scale to determine its optimal cut-off point.
The 3-class model was selected by multiple criteria, and validated in a randomly split-half subsample. Accordingly, participants were categorized into the low risk (36.4%), average risk (50.4%), and high risk (13.2%) groups. The highest risk group was regarded as "cases" and the rest as "non-cases", serving as the reference standard in ROC analysis, which identified an optimal cut-off point of 23 (sensitivity: 97.2%, specificity: 95.2%). The cut-off point was used to classify participants into positive (probable case: 17:0%) and negative groups according to their OSNA scores. The positive group (probable cases) reported significantly longer duration and higher intensity of online social networking use, and higher prevalence of Internet addiction than the negative group.
The classification strategy and results are potentially useful for future research that measure problematic online social networking use and its impact on health among adolescents. The approach can facilitate research that requires cut-off points of screening tools but gold standards are unavailable.
问题性网络社交使用在青少年中普遍存在,但关于工具及其最佳截断点的共识尚未达成。本研究旨在为经过验证的网络社交成瘾量表(OSNA)确定一个最佳截断点,以识别中国青少年中可能存在的网络社交成瘾病例。
一项调查共招募了 4951 名青少年网络社交用户。采用潜在剖面分析(LPA)和受试者工作特征曲线(ROC)分析对经过验证的 8 项 OSNA 量表进行分析,以确定其最佳截断点。
多项标准选择了 3 类模型,并在随机分割的子样本中进行了验证。据此,参与者被分为低风险(36.4%)、中风险(50.4%)和高风险(13.2%)组。高风险组被视为“病例”,其余为“非病例”,作为 ROC 分析的参考标准,确定了 23 分的最佳截断点(灵敏度:97.2%,特异性:95.2%)。该截断点用于根据 OSNA 得分将参与者分为阳性(可能病例:17:0%)和阴性组。阳性组(可能病例)报告的在线社交网络使用时间更长、强度更高,且互联网成瘾的患病率也高于阴性组。
该分类策略和结果可能对未来研究青少年中问题性网络社交使用及其对健康影响的研究有用。该方法可促进需要筛选工具截断点但缺乏金标准的研究。