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Toward Automatic Anxiety Detection in Autism: A Real-Time Algorithm for Detecting Physiological Arousal in the Presence of Motion

机译:朝着自闭症中的自动焦虑检测:一种用于在运动存在下检测生理唤醒的实时算法

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Objective: Anxiety is a significant clinical concern in autism spectrum disorder (ASD) due to its negative impact on physical and psychological health. Treatment of anxiety in ASD remains a challenge due to difficulties with self-awareness and communication of anxiety symptoms. To reduce these barriers to treatment, physiological markers of autonomic arousal, collected through wearable sensors, have been proposed as real-time, objective, and language-free measures of anxiety. A critical limitation of the existing anxiety detection systems is that physiological arousal is not specific to anxiety and can occur with other user states such as physical activity. This can result in false positives, which can hinder the operation of these systems in real-world situations. The objective of this paper was to address this challenge by proposing an approach for real-time detection and mitigation of physical activity effects. Methods: A novel multiple model Kalman-like filter is proposed to integrate heart rate and accelerometry signals. The filter tracks user heart rate under different motion assumptions and chooses the appropriate model for anxiety detection based on user motion conditions. Results: Evaluation of the algorithm using data from a sample of children with ASD shows a significant reduction in false positives compared to the state-of-the-art, and an overall arousal detection accuracy of 93%. Conclusion: The proposed method is able to reduce false detections due to user motion and effectively detect arousal states during movement periods. Significance: The results add to the growing evidence supporting the feasibility of wearable technologies for anxiety detection and management in naturalistic settings.
机译:目的:由于其对身体和心理健康的负面影响,焦虑是自闭症谱系障碍(ASD)的重要临床关注。由于具有自我意识和焦虑症状的沟通困难,亚斯达特焦虑的治疗仍然是一个挑战。为了减少这些治疗的障碍,通过可穿戴传感器收集的自主主义唤醒的生理标志,已被提出是实时,目标和无焦虑的无焦虑措施。对现有焦虑检测系统的关键限制是生理唤醒不是特异性的焦虑,并且可以与其他用户状态如身体活动发生。这可能导致误报,这可能阻碍了在现实世界中的这些系统的运行。本文的目的是通过提出实时检测和减轻身体活动效应的方法来解决这一挑战。方法:提出了一种新型多种模型卡尔曼样滤波器,以集成心率和加速度信号。滤波器在不同运动假设下跟踪用户心率,并根据用户运动条件选择适当的焦虑检测模型。结果:使用来自有ASD的儿童样本的数据评估算法显示出与现有技术相比的误报的显着降低,并且总体唤醒检测精度为93%。结论:所提出的方法能够减少由于用户运动的假检测,并有效地在移动时段期间检测唤醒状态。意义:结果增加了越来越多的证据,支持可携带焦虑技术的可行性,以便在自然化环境中进行焦虑检测和管理。

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