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A Framework for Prediction of Cramps during Activities of Daily Living in Elderly

机译:老年人日常生活活动中抽筋的预测框架

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A framework to predict cramps during Activities of Daily Living (ADL) to contribute towards assisted living and healthy aging of the constantly increasing elderly population, in the future of Internet of Things (IoT)-based interconnected living environments, for instance Smart Homes and Smart Cities is proposed in this paper. The framework leverages the immense potential at the intersection of IoT, Big Data, Human Computer Interaction, Artificial Intelligence and their interrelated disciplines. Leg cramps are known to be associated with all age groups but studies [1], [2] have shown that cramps are more frequent in older adults and have a multitude of risks and associated impacts, both temporary and permanent, which affect their quality of life and their abilities to perform ADL – which are essential for one’s sustenance. The challenge in this field is to predict cramps to minimize their effects on the performance of older adults during ADL, with an aim to improve their quality of life in the future of living environments. Addressing this challenge through development of a framework for Ambient Assisted Living (AAL) of elderly in Smart Homes serves as the main motivation for this work. To evaluate the efficacy of this proposed approach it has been tested on a dataset of ADL and the performance characteristics are discussed. A case study has also been performed where performance characteristics of various learning models are compared to deduce the best learning model for development of this framework. The results presented uphold the relevance and immense potential of this work for contributing towards AAL of the elderly population in Smart Homes through accurate prediction of cramps during ADL.
机译:一个框架,用于预测日常生活活动(ADL)期间的抽筋,有助于在未来基于物联网(IoT)的互联生活环境(例如智能家居和智能生活)中,为不断增长的老年人口的辅助生活和健康老龄化做出贡献本文提出了城市。该框架利用了物联网,大数据,人机交互,人工智能及其相关学科交叉领域的巨大潜力。已知腿抽筋与所有年龄段都有关系,但研究[1],[2]显示,老年人中抽筋更为常见,并且有多种风险和相关影响,包括暂时的和永久的,影响其质量。生活及其执行ADL的能力-这对维持生命至关重要。该领域的挑战是预测抽筋,以最大程度地减少抽搐对ADL期间老年人的表现的影响,以期改善他们在未来生活环境中的生活质量。通过开发智能家居中老年人的环境辅助生活(AAL)框架来应对这一挑战,是这项工作的主要动力。为了评估此提议方法的有效性,已在ADL数据集上对其进行了测试,并讨论了性能特征。还进行了一个案例研究,其中将各种学习模型的性能特征进行比较,以得出开发此框架的最佳学习模型。结果表明,通过准确预测ADL期间的抽筋,这项工作对于为智能家居中的老年人口AAL做出贡献的相关性和巨大潜力。

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