Park Sang-Eon, Chung Jisu, Lee Jeonghyun, Kim Minwoo Jb, Kim Jinhee, Jeon Hong Jin, Kim Hyungsook, Woo Choongwan, Kim Hackjin, Lee Sang Ah
Department of Brain and Cognitive Sciences, Seoul National University, Seoul, Republic of Korea.
Department of Biomedical Engineering, Ulsan National Institute of Science and Technology, Ulsan, Republic of Korea.
PLOS Digit Health. 2024 Aug 29;3(8):e0000595. doi: 10.1371/journal.pdig.0000595. eCollection 2024 Aug.
With an increasing societal need for digital therapy solutions for poor mental health, we face a corresponding rise in demand for scientifically validated digital contents. In this study we aimed to lay a sound scientific foundation for the development of brain-based digital therapeutics to assess and monitor cognitive effects of social and emotional bias across diverse populations and age-ranges. First, we developed three computerized cognitive tasks using animated graphics: 1) an emotional flanker task designed to test attentional bias, 2) an emotional go-no-go task to measure bias in memory and executive function, and 3) an emotional social evaluation task to measure sensitivity to social judgments. Then, we confirmed the generalizability of our results in a wide range of samples (children (N = 50), young adults (N = 172), older adults (N = 39), online young adults (N=93), and depression patients (N = 41)) using touchscreen and online computer-based tasks, and devised a spontaneous thought generation task that was strongly associated with, and therefore could potentially serve as an alternative to, self-report scales. Using PCA, we extracted five components that represented different aspects of cognitive-affective function (emotional bias, emotional sensitivity, general accuracy, and general/social attention). Next, a gamified version of the above tasks was developed to test the feasibility of digital cognitive training over a 2-week period. A pilot training study utilizing this application showed decreases in emotional bias in the training group (that were not observed in the control group), which was correlated with a reduction in anxiety symptoms. Using a 2-channel wearable EEG system, we found that frontal alpha and gamma power were associated with both emotional bias and its reduction across the 2-week training period.
随着社会对针对心理健康不佳的数字疗法解决方案的需求不断增加,我们面临着对经过科学验证的数字内容的需求相应上升。在本研究中,我们旨在为基于大脑的数字疗法的开发奠定坚实的科学基础,以评估和监测不同人群和年龄范围内社会和情感偏见的认知影响。首先,我们使用动画图形开发了三项计算机化认知任务:1)一项旨在测试注意力偏差的情绪侧翼任务,2)一项用于测量记忆和执行功能偏差的情绪停止信号任务,以及3)一项用于测量对社会判断敏感性的情绪社会评价任务。然后,我们使用触摸屏和基于在线计算机的任务,在广泛的样本(儿童(N = 50)、年轻人(N = 172)、老年人(N = 39)、在线年轻人(N = 93)和抑郁症患者(N = 41))中证实了我们结果的普遍性,并设计了一项与自我报告量表密切相关、因此有可能作为替代方法的自发思维生成任务。使用主成分分析,我们提取了五个代表认知情感功能不同方面的成分(情绪偏差、情绪敏感性、总体准确性以及总体/社会注意力)。接下来,开发了上述任务的游戏化版本,以测试为期两周的数字认知训练的可行性。利用该应用程序进行的一项试点训练研究表明,训练组的情绪偏差有所降低(对照组未观察到),这与焦虑症状的减轻相关。使用双通道可穿戴脑电图系统,我们发现额叶α波和γ波功率在为期两周的训练期间与情绪偏差及其减少均相关。