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A deep learning approach for pressure ulcer prevention using wearable computing

机译:使用可穿戴计算技术预防压疮的深度学习方法

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In recent years, statistics have confirmed that the number of elderly people is increasing. Aging always has a strong impact on the health of a human being; from a biological of point view, this process usually leads to several types of diseases mainly due to the impairment of the organism. In such a context, healthcare plays an important role in the healing process, trying to address these problems. One of the consequences of aging is the formation of pressure ulcers (PUs), which have a negative impact on the life quality of patients in the hospital, not only from a healthiness perspective but also psychologically. In this sense, e-health proposes several approaches to deal with this problem, however, these are not always very accurate and capable to prevent issues of this kind efficiently. Moreover, the proposed solutions are usually expensive and invasive. In this paper we were able to collect data coming from inertial sensors with the aim, in line with the Human-centric Computing (HC) paradigm, to design and implement a non-invasive system of wearable sensors for the prevention of PUs through deep learning techniques. In particular, using inertial sensors we are able to estimate the positions of the patients, and send an alert signal when he/she remains in the same position for too long a period of time. To train our system we built a dataset by monitoring the positions of a set of patients during their period of hospitalization, and we show here the results, demonstrating the feasibility of this technique and the level of accuracy we were able to reach, comparing our model with other popular machine learning approaches.
机译:近年来,统计数字已经证实,老年人的数量正在增加。衰老总是对人类健康产生重大影响;从生物学的观点来看,该过程通常导致几种类型的疾病,主要是由于生物体的损害。在这种情况下,医疗保健在治愈过程中扮演着重要角色,试图解决这些问题。衰老的后果之一是形成了压疮(PU),不仅从健康的角度而且从心理上来讲,它们都对医院患者的生活质量产生负面影响。从这个意义上讲,电子医疗提出了几种解决此问题的方法,但是,这些方法并不总是很准确,并且能够有效地防止此类问题。而且,所提出的解决方案通常是昂贵的并且具有侵入性。在本文中,我们能够收集来自惯性传感器的数据,旨在符合以人为中心的计算(HC)范式,以设计和实现可穿戴式传感器的非侵入性系统,以通过深度学习来预防PU技术。特别是,使用惯性传感器,我们能够估计患者的位置,并在患者停留在同一位置的时间过长时发送警报信号。为了训练我们的系统,我们通过监控一组患者住院期间的位置来建立数据集,并在此处显示结果,证明了该技术的可行性以及我们能够达到的准确性水平,并比较了我们的模型与其他流行的机器学习方法。

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