一种量化焦虑、压力和注意力的算法:迈向精神状态的客观评估

R. Paraschiv, T. Paraschiv, C. Banica, Andrei Ignat, Oana-Isabela Ştirbu, F. Adochiei
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引用次数: 0

摘要

不同类型的脑电活动调查可能为理解精神状态提供有价值的信息。缺乏焦虑、压力和关注必须得到适当的解决,以发展一个健康的社会。根据目前的研究,不同心理状态之间的评估和区分仍然基于问卷调查,仍然没有标准的数字化工具来帮助诊断。与其他研究团队不同,我们研究神经变化,旨在通过脑电图(EEG)信号处理来识别和分类精神状态。因此,我们开发了一种算法来诊断焦虑、压力和注意力水平。该算法的基础是一个数学装置,它提供了三个指标来评估注意力、焦虑和压力水平。该算法可以作为支持工具为许多治疗做出贡献,例如神经反馈治疗、基于正念的干预、生物反馈治疗、认知重组治疗和认知行为治疗(CBT)。此外,我们的算法可以在其他相关领域如临床心理学、神经心理学、人机交互、教育、运动心理学等方面提供有价值的贡献。
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An Algorithm for Quantifying Anxiety, Stress, and Attention: Towards Objective Assessment of Mental States
Different types of brain electrical activity investigations may provide valuable information for understanding mental states. Lack of anxiety, stress, and attention must be addressed appropriately to develop a healthy society. According to current studies, the assessment and differentiation between different mental states are still based on questionnaires, and there are still no standard digitalized tools to help diagnose. Unlike other research teams, we studied neural changes and aimed to identify and classify mental states by performing electroencephalographic (EEG) signal processing. So, we developed an algorithm for diagnosing anxiety, stress, and attention levels. The algorithm's basis is a mathematical apparatus that provides three indexes to assess attention, anxiety, and stress levels. The algorithm could contribute to many therapies as a support tool, such as Neurofeedback therapy, Mindfulness-based interventions, Biofeedback therapy, Cognitive restructuring therapy, and Cognitive behavioral therapy (CBT). In addition, our algorithm can provide valuable contributions in other related domains such as Clinical psychology, Neuropsychology, Human-computer interaction, Education, Sports Psychology, etc.
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