Ensemble Learning-based Smartbed System for Enhanced Patient Care

IF 1.7 Q2 REHABILITATION
Mohamed Maddeh, S. Ayouni, Shaha T. Al-Otaibi, M. Alazzam, Nazik Alturki, Fahima Hajjej
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引用次数: 0

Abstract

A growing number of feature learning methods, particularly those based on deep learning, have been investigated to derive useful feature representations from large quantities of data. However, applying each model in real time for various research requirements can be challenging. With the common use of smartphones equipped with sensors, ensemble learning has become an area of interest among researchers. By obtaining knowledge of a patient’s mobility, a wide range of services can be provided. Therefore, in this research work, the authors endeavor to detect a patient’s state using sensors attached to the patient’s smartbed. The authors specifically create an ensemble network for greater precision and improved accuracy. This paper is based on using ensemble learning techniques to determine a patient’s state of mobility, and data are gathered from integrated devices in the smartbed. In this study, the authors use ensemble learning to distinguish between various forms of transit, including sleeping, standing, sitting, walking, and emergency states. The authors propose an ensemble network model based on deep learning to enhance the performance and resolve issues that may arise in a singular network. The characteristics generated by the neural networks are merged and relearned in this model. The data used in the trials are taken from the sensors attached to the patient and their smartbed.
基于集成学习的智能床系统,用于增强患者护理
越来越多的特征学习方法,特别是那些基于深度学习的方法,已经被研究从大量数据中获得有用的特征表示。然而,将每个模型实时应用于各种研究需求可能具有挑战性。随着配备传感器的智能手机的普遍使用,集成学习已经成为研究人员感兴趣的领域。通过了解病人的行动能力,可以提供广泛的服务。因此,在这项研究工作中,作者试图通过连接在患者智能床上的传感器来检测患者的状态。作者特别创建了一个集成网络,以提高精度和准确性。本文基于使用集成学习技术来确定患者的活动状态,并从智能床中的集成设备收集数据。在这项研究中,作者使用集合学习来区分各种形式的交通,包括睡觉、站立、坐着、步行和紧急状态。作者提出了一种基于深度学习的集成网络模型,以提高性能并解决单一网络中可能出现的问题。该模型对神经网络产生的特征进行合并和再学习。试验中使用的数据来自附着在患者及其智能床上的传感器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
13
审稿时长
16 weeks
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