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Deep Eye-CU (DECU): Summarization of Patient Motion in the ICU

机译:Deep Eye-CU(DECU):ICU中患者运动的概述

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Healthcare professionals speculate about the effects of poses and pose manipulation in healthcare. Anecdotal observations indicate that patient poses and motion affect recovery. Motion analysis using human observers puts strain on already taxed healthcare workforce requiring staff to record motion. Automated algorithms and systems are unable to monitor patients in hospital environments without disrupting patients or the existing standards of care. This work introduces the DECU framework, which tackles the problem of autonomous unobtrusive monitoring of patient motion in an Intensive Care Unit (ICU). DECU combines multimodal emissions from Hidden Markov Models (HMMs), key frame extraction from multiple sources, and deep features from multimodal multiview data to monitor patient motion. Performance is evaluated in ideal and non-ideal scenarios at two motion resolutions in both a mock-up and a real ICU.
机译:医疗保健专业人员推测姿势和姿势操纵在医疗保健中的影响。轶事观察表明,患者的姿势和动作会影响恢复。使用人类观察者进行运动分析会给已经征税的医疗保健人员带来压力,需要员工记录运动。自动化的算法和系统无法在不中断患者或现有护理标准的情况下在医院环境中监视患者。这项工作引入了DECU框架,该框架解决了重症监护病房(ICU)中患者运动的自主无障碍监视问题。 DECU结合了来自隐马尔可夫模型(HMM)的多模式排放,从多个来源提取关键帧以及来自多模式多视图数据的深层功能来监视患者的运动。在模拟和真实ICU中,在两种运动分辨率下,可以在理想和非理想情况下评估性能。

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