Paraschiv-Ionescu A, Buchser E, Rutschmann B, Aminian K
Ecole Polytechnique Federale de Lausanne (EPFL), Laboratory of Movement Analysis and Measurement, Lausanne, Switzerland.
Phys Rev E Stat Nonlin Soft Matter Phys. 2008 Feb;77(2 Pt 1):021913. doi: 10.1103/PhysRevE.77.021913. Epub 2008 Feb 26.
The reliable and objective assessment of chronic disease state has been and still is a very significant challenge in clinical medicine. An essential feature of human behavior related to the health status, the functional capacity, and the quality of life is the physical activity during daily life. A common way to assess physical activity is to measure the quantity of body movement. Since human activity is controlled by various factors both extrinsic and intrinsic to the body, quantitative parameters only provide a partial assessment and do not allow for a clear distinction between normal and abnormal activity. In this paper, we propose a methodology for the analysis of human activity pattern based on the definition of different physical activity time series with the appropriate analysis methods. The temporal pattern of postures, movements, and transitions between postures was quantified using fractal analysis and symbolic dynamics statistics. The derived nonlinear metrics were able to discriminate patterns of daily activity generated from healthy and chronic pain states.
对慢性病状态进行可靠且客观的评估一直以来都是临床医学中一项极为重大的挑战。与健康状况、功能能力以及生活质量相关的人类行为的一个基本特征是日常生活中的身体活动。评估身体活动的一种常见方法是测量身体运动的量。由于人类活动受身体内外各种因素的控制,定量参数仅提供部分评估,无法明确区分正常活动和异常活动。在本文中,我们基于不同身体活动时间序列的定义及适当的分析方法,提出了一种分析人类活动模式的方法。使用分形分析和符号动力学统计对姿势、动作以及姿势之间的转换的时间模式进行了量化。所导出的非线性指标能够区分健康状态和慢性疼痛状态下产生的日常活动模式。