痴呆症患者日常生活活动的大数据分析

Dorin Moldovan, Adrian Olosutean, V. Chifu, C. Pop, T. Cioara, I. Anghel, I. Salomie
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引用次数: 2

摘要

如今,痴呆症仍然是一种无法治愈的疾病,影响着很大一部分人口。它影响着全世界数百万人,预计在未来几十年里,这一数字将显著增加。痴呆症患者由于运动障碍、协调能力差和记忆力丧失,在进行日常生活活动方面面临困难,他们需要家庭成员或保健专业人员的支持。本文探讨了几种大数据技术,用于分析痴呆症患者的dla,以识别行为模式。特别是本文:(1)介绍了如何使用K-Means聚类算法来识别痴呆症患者在一天内执行的DLAs类型的数量;(2)介绍了如何应用协同过滤算法来预测DLAs的频率;(3)比较了几种分类和回归算法,用于识别与基线相关的异常天数,并使用内部开发的原型来预测痴呆症患者的DLAs持续时间。实验中使用的两个数据集来自文献,第三个数据集来自先前的一个数据集并用作模拟数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big Data Analytics for the Daily Living Activities of the People with Dementia
Dementia is still an incurable disease that affects a big part of the population nowadays. It affects millions of people worldwide and the number is expected to increase significantly in the next decades. The persons with dementia face difficulties in performing the daily living activities (DLAs) due to movement disorders, poor coordination and memory loss and they need support from family members or health care professionals. In this paper several Big Data techniques are explored for the analysis of the DLAs of the people that have dementia in order to identify behavioral patterns. In particular this paper: (1) presents how the K-Means Clustering algorithm can be used for the identification of the number of types of DLAs performed by a person with dementia in a day, (2) presents how to apply the Collaborative Filtering algorithm for the prediction of the frequency of the DLAs and (3) compares several classification and regression algorithms for the identification of the days with anomalies with respect to a baseline and for the prediction of the durations of the DLAs of the people with dementia using a prototype developed in-house. Two datasets used in the experiments are taken from literature and a third dataset is derived from one of the previous datasets and used as simulated data.
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