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Automatic Disability Categorisation based on ADLs among Older Adults in a Nationally Representative Population using Data Mining Methods

机译:基于ADL的全国代表人群中老年人的自动残疾分类数据挖掘方法

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The world’s ageing population is rapidly increasing but people’s healthspan is not being sustained. Activities of daily living and Montreal Cognitive Assessment scores from the first wave of a large nationally representative longitudinal study in ageing (TILDA) were analysed using multiple correspondence analysis, k-means clustering, network analysis and association rules mining, to find latent patterns in the data and categorise disability among older adults. It was observed that 6.2% of the population had a greater degree of frailty, specifically cognitive impairment. Additionally, the overall population showed difficulty in performing physically demanding activities. Thus, self-reported ADLs have a diagnostic importance as they indicate the level of cognitive and physical functional decline in the older population.
机译:世界人口老龄化迅速增长,但人们的健康状况却无法持续。使用多重对应分析,k均值聚类,网络分析和关联规则挖掘对来自全国性大型纵向老龄研究(TILDA)的第一波的日常生活活动和蒙特利尔认知评估得分进行分析,以找出潜在的模式。数据,并对老年人中的残疾进行分类。据观察,有6.2%的人口身体虚弱,尤其是认知障碍。另外,总人口显示出难以进行体力活动的能力。因此,自我报告的ADL具有诊断意义,因为它们表明老年人口的认知和身体功能下降水平。

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