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Continuous support for rehabilitation using machine learning

机译:使用机器学习持续支持康复

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Providing a suitable rehabilitation at home after an acute episode or a chronic disease is a major issue as it helps people to live independently and enhance their quality of life. However, as the rehabilitation period usually lasts some months, the continuity of care is often interrupted in the transition from the hospital to the home. Relieving the healthcare system and personalizing the care or even bringing care to the patients’ home to a greater extent is, in consequence, the superior need. This is why we propose to make use of information technology to come to participatory design driven by users needs and the personalisation of the care pathways enabled by technology. To allow this, patient rehabilitation at home needs to be supported by automatic decision-making, as physicians cannot constantly supervise the rehabilitation process. Thus, we need computer-assisted patient rehabilitation, which monitors the fitness of the current patient plan to detect sub-optimality, proposes personalised changes for a patient and eventually generalizes over patients and proposes better initial plans. Therefore, we will explain the use case of patient rehabilitation at home, the basic challenges in this field and machine learning applications that could address these challenges by technical means.
机译:在急性发作或慢性病之后在家提供合适的康复是一个主要问题,因为它有助于人们独立生活,并提高他们的生活质量。然而,随着康复期通常持续几个月,护理的连续性通常在从医院到家庭的过渡中被中断。削弱医疗保健系统,在更大的需求中,对患者的家庭进行个性化,甚至为患者的家庭提供护理。这就是为什么我们建议利用信息技术来实现由用户所需的参与式设计以及通过技术实现的护理途径的个性化。为了允许这一点,需要通过自动决策支持家庭的患者康复,因为医生不能不断监督康复过程。因此,我们需要计算机辅助的患者康复,其监测当前患者计划的适应性来检测次级,提出对患者的个性化变化,最终概括为患者并提出更好的初始计划。因此,我们将解释家庭患者康复的用例,这一领域的基本挑战和机器学习应用程序可以通过技术手段解决这些挑战。

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