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Development of Clustering Algorithms for Older Faller in Malaysia

机译:马来西亚较旧跌倒群体算法的开发

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Falls are serious problem which lead to negative consequences on the quality of life especially for older people. Most falls are caused by the interaction of multiple risk factors. However, manual analysis in fall data are time consuming and high processing cost. Therefore, this study purpose to develop a clustering-based fall risk algorithm which can provide assistances for clinician. The proposed algorithm consists of several stages included data pre-processing, feature selection, feature extraction, clustering and characteristic interpretation. This study employed Malaysian Elders Longitudinal Research (MELoR) dataset. A total of 1279 subjects and 9 variables are selected for clustering. The combination of t-Distributed Stochastic Neighbour Embedding (t-SNE) for feature extraction, and K-means clustering algorithm are chosen to cluster the subjects into Low (13%), Intermediate A (19%), Intermediate B (21%) and High (31%) fall risk group. In comparison, older people with higher fall risk have slower gait, imbalance, weaker muscle strength, with cardiovascular disorder, poor performance in cognitive test, and advancing age. To conclude, the proposed fall risk clustering algorithm is capable to group the subjects that have similar features. It presents a potential as assessment tool in management of falls.
机译:下降是严重的问题,这导致对老年人的生活质量的负面影响。大多数跌倒是由多种风险因素的相互作用引起的。但是,下降数据的手动分析是耗时和高处理成本。因此,本研究目的开发一种基于聚类的秋季风险算法,可以为临床医生提供辅助。所提出的算法包括多个阶段包括数据预处理,特征选择,特征提取,聚类和特征解释。本研究采用马来西亚长老纵向研究(Melor)数据集。共用1279个受试者和9个变量进行聚类。选择特征提取的T分布式随机邻居嵌入(T-SNE)和K-Means聚类算法的组合将受试者聚类为低(13%),中间A(19%),中间B(21%)高(31%)秋季风险组。相比之下,具有较高风险较高风险的老年人具有较慢的步态,不平衡,肌肉力量较弱,具有心血管障碍,认知测试性能不佳,以及推进年龄。为了得出结论,所提出的秋季风险聚类算法能够将具有相似特征的受试者分组。它提出了跌倒管理中的评估工具。

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