引入新的自动评分系统,迈向康复电子健康

T. Lee, J. G. Lim, K. Leo, S. Sanei, P. Y. Lew, E. Chew, L. Zhao
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引用次数: 1

摘要

智能手机和平板电脑等具有广泛连接能力的消费设备的全球采用,导致了其支持基础设施的改进。这使得康复电子卫生系统完全可行。目前对患者状况的评估可能是主观的和不一致的,因为重复性任务的单调性降低了警觉性。我们提出了一个系统,以自动评分过程的病人的状态。这是通过将广泛可用的传感器(如加速度计传感器)嵌入康复评估中使用的物体来实现的。这些传感器引入信号畸变,如漂移和噪声,需要数据驱动滤波,因为人体运动轨迹在统计上是非平稳的。在之前工作的基础上,我们通过对信号使用样条和奇异谱分析来比较运动信号的时间和变换域处理的使用,并使用数据分析技术来获得良好的评估分数。这些构成了以证据为基础的电子卫生系统的基础,并为提高效率和更高水平的卫生保健提供了基础。
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Towards rehabilitative e-Health by introducing a new automatic scoring system
The global adoption of consumer devices capable of wide connectivity like smartphones and tablets have led to improvements in their support infrastructure. These make e-health systems for rehabilitation entirely feasible. Current assessments of patient condition can be subjective and inconsistent as the monotony of repetitious tasks lowers alertness. We propose a system to automate the scoring process for the patient's state. This is performed by embedding widely available sensors such as accelerometers sensors into the objects used in a rehabilitative assessment. These sensors introduce signal distortions such as drift and noise which require data driven filtering as the trajectories of human motion are statistically nonstationary. Building on previous work, we compare the use of time and transform domain processing of motion signals by using splines and singular spectrum analysis on the signals and use data analytic techniques for deriving the assessment scores with good results. These form the basis of an e-health system which is evidence-based, and provides the basis for gains in efficiency and a higher level of healthcare.
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