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Sequentiality of Daily Life Physiology: An Automatized Segmentation Approach

机译:日常生活生理学的顺序性:自动分割方法

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Based on the hypotheses that (1) a physiological organization exists inside each activity of daily life and (2) the pattern of evolution of physiological variables is characteristic of each activity, pattern changes should be detected on daily life physiological recordings. The present study aims at investigating whether a simple segmentation method can be set up to detect pattern changes on physiological recordings carried out during daily life. Heart and breathing rates and skin temperature have been non-invasively recorded in volunteers following scenarios made of “daily life” steps (13 records). An observer, undergoing the scenario, wrote down annotations during the recording time. Two segmentation procedures have been compared to the annotations, a visual inspection of the signals and an automatic program based on a trends detection algorithm applied to one physiological signal (skin temperature). The annotations resulted in a total number of 213 segments defined on the 13 records, the best visual inspection detected less segments (120) than the automatic program (194). If evaluated in terms of the number of correspondences between the times marks given by annotations and those resulting from both physiologically based segmentations, the automatic program was better than the visual inspection. The mean time lags between annotation and program time marks remain <60 s (the precision of annotation times marks). We conclude that physiological variables time series recorded in common life conditions exhibit different successive patterns that can be detected by a simple trends detection algorithm. Theses sequences are coherent with the corresponding annotated activity.
机译:基于以下假设:(1)日常生活的每种活动中都存在生理组织,并且(2)生理变量的演变模式是每种活动的特征,因此应在日常生活的生理记录中检测出模式变化。本研究旨在调查是否可以设置一种简单的分割方法来检测日常生活中进行的生理记录上的模式变化。在“日常生活”步骤的情景下,自愿者无创记录了心率,呼吸率和皮肤温度(13条记录)。观察者在场景中在录制期间写下了注释。已经将两种分割程序与注释进行了比较,对信号进行了目视检查,并且基于对一种生理信号(皮肤温度)应用趋势检测算法的自动程序。注释导致在13条记录上定义的总数为213个分段,最佳视觉检查检测到的分段(120)少于自动程序(194)。如果根据注释给出的时间标记与基于生理学的分割产生的时间标记之间的对应关系数量进行评估,则自动程序要好于视觉检查。注释和节目时间标记之间的平均时滞保持<60秒(注释时间标记的精度)。我们得出的结论是,在常见生活条件下记录的生理变量时间序列表现出不同的连续模式,这些模式可以通过简单的趋势检测算法来检测。这些序列与相应的注释活动是一致的。

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