Moonyoung Jang, Youngeun Cho, Do Hyung Kim, Sunghyun Park, Seonghyeon Park, Ji-Won Hur, Minah Kim, Kwangsu Cho, Chang-Gun Lee, Jun Soo Kwon
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引用次数: 0
摘要
背景:青少年经常会出现抑郁症状,如果不及早干预,这种症状可能会持续存在。然而,青少年往往很难识别抑郁症状,即使他们意识到这些症状,也不一定会立即寻求帮助。本研究旨在探讨被动收集的数字数据(特别是通过移动设备收集的击键和触控笔数据)与抑郁症状表现之间的关系:方法:共有 927 名来自首尔学校的初中一年级学生解决了韩语和数学问题。在整个研究过程中,共收集了 77 种按键和手写笔数据,包括按键次数、点击压力、划动速度和划动加速度等参数。抑郁症状采用患者健康自评量表-9(PHQ-9)进行测量:多元回归分析结果表明,按键长度、速度和加速度、平均 Y 坐标、敲击压力和错误答案数量与 PHQ-9 分数的关系十分显著。按键和触控笔元数据能够反映有抑郁症状的青少年的情绪、精力、认知能力和精神运动症状:这项研究证明了在学校考试或上课期间自动收集数据,用于早期筛查学生临床抑郁症状的潜力。这项研究有望成为开发早期检测青少年抑郁症状的数字数据框架的基石。
Associations between keystroke and stylus metadata and depressive symptoms in adolescents.
Background: Adolescents often experience a heightened incidence of depressive symptoms, which can persist without early intervention. However, adolescents often struggle to identify depressive symptoms, and even when they are aware of these symptoms, seeking help is not always their immediate response. This study aimed to explore the relationship between passively collected digital data, specifically keystroke and stylus data collected via mobile devices, and the manifestation of depressive symptoms.
Methods: A total of 927 first-year middle school students from schools in Seoul solved Korean language and math problems. Throughout this study, 77 types of keystroke and stylus data were collected, including parameters such as the number of key presses, tap pressure, stroke speed, and stroke acceleration. Depressive symptoms were measured using the self-rated Patient Health Questionnaire-9 (PHQ-9).
Results: Multiple regression analysis highlighted the significance of stroke length, speed, and acceleration, the average y-coordinate, the tap pressure, and the number of incorrect answers in relation to PHQ-9 scores. The keystroke and stylus metadata were able to reflect mood, energy, cognitive abilities, and psychomotor symptoms among adolescents with depressive symptoms.
Conclusions: This study demonstrates the potential of automatically collected data during school exams or classes for the early screening of clinical depressive symptoms in students. This study has the potential to serve as a cornerstone in the development of digital data frameworks for the early detection of depressive symptoms in adolescents.
期刊介绍:
Now in its fifth decade of publication, Psychological Medicine is a leading international journal in the fields of psychiatry, related aspects of psychology and basic sciences. From 2014, there are 16 issues a year, each featuring original articles reporting key research being undertaken worldwide, together with shorter editorials by distinguished scholars and an important book review section. The journal''s success is clearly demonstrated by a consistently high impact factor.