通过智能手机打字动态预测情绪障碍的认知功能。

IF 3.1 Q2 PSYCHIATRY
Emma Ning,Ryne Estabrook,Theja Tulabandhula,John Zulueta,Mindy K Ross,Sarah Kabir,Faraz Hussain,Scott A Langenecker,Olusola Ajilore,Alex Leow,Alexander P Demos
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引用次数: 0

摘要

心境障碍(MDs),如重度抑郁症和双相情感障碍与显著的功能障碍有关,特别是在认知方面,这可能对日常功能和社会互动产生不利影响。本研究旨在利用智能手机打字动态的被动数据预测MDs患者的认知功能。在大约28天的时间里,参与者(N = 127)使用了BiAffect键盘,该键盘在打字过程中捕获打字元数据,如按键时间戳和加速度计数据,同时还进行了两次实验室神经心理学评估(间隔至少14天)。本研究将主成分分析应用于键盘特征,随后将成分得分用于结构方程建模来预测NIH Toolbox认知测试和track - making Test, Part b的表现。结果表明,只有在健康对照中,较慢的打字速度预示着较差的NIH Toolbox表现,这表明MDs之间的关系较弱或变数较多。然而,对于Trail-Making Test, Part B,击键动力学对各组表现的预测是相同的。这些发现突出了击键动力学作为一种生态有效的、被动的认知功能测量方法的潜力,同时也强调了其根据评估的认知领域和研究的人群而变化的效用。(PsycInfo Database Record (c) 2025 APA,版权所有)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting cognitive functioning in mood disorders through smartphone typing dynamics.
Mood disorders (MDs) such as major depressive disorder and bipolar disorder are associated with significant functional impairments, particularly in cognition, which can adversely affect daily functioning and social interactions. This study aims to predict cognitive functioning prospectively in individuals with MDs using passive data from smartphone typing dynamics. Over a period of approximately 28 days, participants (N = 127) utilized the BiAffect keyboard, which captured typing metadata such as keystroke timestamps and accelerometer data during typing sessions, while also undergoing in-lab neuropsychological assessments twice (at least 14 days apart). Principal component analysis was applied to keyboard features, and the component scores were subsequently used in structural equation modeling to predict performance on the NIH Toolbox cognitive tests and the Trail-Making Test, Part B. The results showed that slower typing speeds predicted worse NIH Toolbox performance only in healthy controls, suggesting a weaker or more variable relationship in MDs. However, for the Trail-Making Test, Part B, keystroke dynamics predicted performance equally across groups. These findings highlight the potential of keystroke dynamics as an ecologically valid, passive measure of cognitive function, while also underscoring its varying utility depending on the cognitive domain assessed and the population studied. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
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