Dementia Sign Detection System Using Digital Twin

Toru Kobayashi, K. Fukae, Tetsuo Imai, Kenichi Arai
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引用次数: 2

Abstract

Currently, the most common way to detect signs of dementia is an interview that mainly focuses on whether there is “cognitive function disorder.” However, detecting its signs more accurately, it is necessary to evaluate changes of behaviors related to “life function disorder.” Conventionally, an interview has also been the mainstream to determine whether there is “life function disorder.” It is conducted with an elderly person and family members living with the elderly. Therefore, in this study, we propose a system that detects signs of dementia so that we do not have to rely on interviews. The system is achieved by digitally transforming a subject's behaviors and configuring the subject's digital twin. We installed a communication robot and ambient sensors at each of their houses and, in addition, utilizing a wearable device. This enabled us to digitally transform their behaviors inside and outside houses and configure their digital twins. Using digital twins, we performed detection of signs of dementia targeting both “cognitive function disorder” and “life function disorder.” We evaluated the system in experiments conducted at Nagasaki University Hospital and an ordinary person's home in Nagasaki City. As the result, we confirmed that we were able to configure subjects' digital twins for detection of signs of dementia by comparing their actual behavioral histories.
基于数字孪生的痴呆征兆检测系统
目前,检测痴呆症迹象最常见的方法是面谈,主要关注是否存在“认知功能障碍”。然而,为了更准确地发现其迹象,有必要评估与“生活功能障碍”相关的行为变化。传统上,面谈也是确定是否存在“生活功能障碍”的主流方法。调查对象为一名长者及与长者同住的家庭成员。因此,在这项研究中,我们提出了一个检测痴呆症迹象的系统,这样我们就不必依赖于访谈。该系统是通过数字化转换受试者的行为和配置受试者的数字孪生来实现的。我们在每个家庭安装了一个通信机器人和环境传感器,此外,我们还使用了可穿戴设备。这使我们能够数字化地改变他们在房子内外的行为,并配置他们的数字双胞胎。利用数字双胞胎,我们针对“认知功能障碍”和“生活功能障碍”进行了痴呆症迹象的检测。我们在长崎大学医院和长崎市的一个普通家庭进行了实验,对该系统进行了评估。结果,我们证实,我们能够通过比较受试者的实际行为历史,配置他们的数字双胞胎来检测痴呆症的迹象。
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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