Panhwarr Yasmeen Naz, Naghdy Fazel, Stirling David, Naghdy Golshah, Potter Janette
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:4233-4238. doi: 10.1109/EMBC44109.2020.9175799.
Frailty is a prevailing phenomena in older people. It is an age related syndrome that can increase the risk of fall in elderly. The people with age above 65 suffers from various functional decline and cognitive impairments. Such deficiencies are conventionally measured subjectively by geriatrics using questionnaire-based methods and clinical tests. Activities of daily living are also assessed in clinical settings by analysing simple tasks performed by the subject such as sit to stand and walking some distances. The clinical methods used to assess frailty and analyse the activity of daily living are subjective in nature and prone to human error. An objective method is proposed to quantitatively measure frailty using inertial sensor mounted on healthy, frail and nonfrail subjects while performing the sit to stand test (SiSt). An artificial neural networks based algorithm is developed to classify the frailty by extracting a unique set of features from 2D -Centre of Mass (CoM) trajectories derived from SiSt clinical test. The results indicate that the proposed algorithms provides an objective assessment of frailty that can be used by geriatrics in turn to make a more objective judgement of frailty status of older people.
衰弱是老年人中普遍存在的现象。它是一种与年龄相关的综合征,会增加老年人跌倒的风险。65岁以上的人会出现各种功能衰退和认知障碍。传统上,老年医学专家使用基于问卷的方法和临床测试对这些缺陷进行主观评估。在临床环境中,也通过分析受试者执行的简单任务(如从坐到站和行走一段距离)来评估日常生活活动能力。用于评估衰弱和分析日常生活活动能力的临床方法本质上是主观的,容易出现人为误差。本文提出了一种客观方法,通过在健康、衰弱和非衰弱受试者进行从坐到站测试(SiSt)时佩戴惯性传感器,对衰弱进行定量测量。开发了一种基于人工神经网络的算法,通过从SiSt临床测试得出的二维质心(CoM)轨迹中提取一组独特的特征来对衰弱进行分类。结果表明,所提出的算法提供了一种对衰弱的客观评估,老年医学专家可以利用它对老年人的衰弱状态做出更客观的判断。