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Automatic detection of wakefulness and rest intervals in actigraphic signals: A data-driven approach

机译:自动检测书法信号中的清醒和休息间隔:一种数据驱动的方法

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摘要

Actigraphy is an useful tool for evaluating the activity pattern of a subject; activity registries are usually processed by first splitting the signal into its wakefulness and rest intervals and then analyzing each one in isolation. Consequently, a preprocessing stage for such a splitting is needed. Several methods have been reported to this end but they rely on parameters and thresholds which are manually set based on previous knowledge of the signals or learned from training. This compromises the general applicability of this methods. In this paper we propose a new method in which thresholds are automatically set based solely on the specific registry to be analyzed. The method consists of two stages: (1) estimation of an initial classification mask by means of the expectation maximization algorithm and (2) estimation of a final refined mask through an iterative method which re-estimates both the mask and the classifier parameters at each iteration step. Results on real data show that our methodology outperforms those so far proposed and can be more effectively used to obtain derived sleep quality parameters from actigraphy registries. (C) 2014 IPEM. Published by Elsevier Ltd. All rights reserved.
机译:书法是评估受试者活动模式的有用工具。通常通过以下方式处理活动注册表:首先将信号分成其唤醒间隔和休息间隔,然后分别分析每个信号。因此,需要用于这种分割的预处理阶段。为此已经报道了几种方法,但是它们依赖于参数和阈值,这些参数和阈值是基于信号的先前知识或从训练中学到的。这损害了该方法的普遍适用性。在本文中,我们提出了一种新方法,其中仅根据要分析的特定注册表自动设置阈值。该方法包括两个阶段:(1)通过期望最大化算法估计初始分类掩码,以及(2)通过迭代方法估计最终的精炼掩码,该迭代方法重新估计每个掩码和分类器参数迭代步骤。真实数据的结果表明,我们的方法优于迄今为止提出的方法,可以更有效地用于从书法登记处获得派生的睡眠质量参数。 (C)2014年IPEM。由Elsevier Ltd.出版。保留所有权利。

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