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A Behaviour Patterns Extraction Method for Recognizing Generalized Anxiety Disorder

机译:一种识别广义焦虑症的行为模式提取方法

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Generalized anxiety disorder (GAD), as one of the most common chronic anxiety disorders, faces difficulties in clinical diagnosis. With the rapid development and wide application of smartphones in recent years, smartphones have a vivid application prospect in the field of mental disease monitoring and diagnosis. Based on WeChat applet platform on smartphones, an APP that integrates scale testing and inertial sensor data collection is developed to study the detection of subjects with GAD in task state. A behavior patterns extraction method is proposed using sliding windows to split behavior data, and processing data segments for clustering. Distribution information are extracted from the subjects' behavior patterns and are combined with the descriptive statistical features of the sample to identify GAD. The results show that this method has an accuracy of 66.44% for female subjects and 71.43% for male subjects in GAD recognition.
机译:广义焦虑症(GAD)是最常见的慢性焦虑障碍之一,面临临床诊断的困难。 随着近年来智能手机的快速发展和广泛应用,智能手机在精神疾病监测和诊断领域具有生动的应用前景。 基于智能手机上的微信Applet平台,开发了一个集成规模测试和惯性传感器数据收集的应用,以研究任务状态的GAD检测对象。 使用滑动窗口来分割行为数据的提出行为模式提取方法,以及用于聚类的数据段。 从受试者的行为模式中提取分发信息,并与样本的描述性统计特征组合以识别GAD。 结果表明,这种方法对女性受试者的准确性为66.44%,男性受试者中的男性受试者的识别率为71.43%。

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