论文标题
来自多源的被动感知数据的异质隐藏马尔可夫模型识别睡眠活动的模型
Heterogeneous Hidden Markov Models for Sleep Activity Recognition from Multi-Source Passively Sensed Data
论文作者
论文摘要
精神病患者的被动活动监测对于实时检测行为转移至关重要,该工具包括一种工具,该工具可以帮助临床医生监督患者随着时间的流逝并增强相关治疗的结果。通常,睡眠障碍和心理健康恶化密切相关,因为心理健康状况恶化会导致患者的昼夜节律变化。因此,睡眠活动识别构成了描绘患者活动周期并检测其行为变化的行为标记。此外,由于这些设备的无处不在,可从智能手机捕获的移动被动感知的数据构成了Profile患者生物节律的绝佳替代方法。 在这项工作中,我们旨在根据被动感应的数据确定重大睡眠发作。为此,提出了一个异质的隐藏马尔可夫模型,以建模与睡眠活动识别任务相关的离散潜在变量过程。我们根据临床测试的可穿戴设备报告的睡眠指标验证了结果,证明了拟议方法的有效性。
Psychiatric patients' passive activity monitoring is crucial to detect behavioural shifts in real-time, comprising a tool that helps clinicians supervise patients' evolution over time and enhance the associated treatments' outcomes. Frequently, sleep disturbances and mental health deterioration are closely related, as mental health condition worsening regularly entails shifts in the patients' circadian rhythms. Therefore, Sleep Activity Recognition constitutes a behavioural marker to portray patients' activity cycles and to detect behavioural changes among them. Moreover, mobile passively sensed data captured from smartphones, thanks to these devices' ubiquity, constitute an excellent alternative to profile patients' biorhythm. In this work, we aim to identify major sleep episodes based on passively sensed data. To do so, a Heterogeneous Hidden Markov Model is proposed to model a discrete latent variable process associated with the Sleep Activity Recognition task in a self-supervised way. We validate our results against sleep metrics reported by clinically tested wearables, proving the effectiveness of the proposed approach.