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Classification between non-multiple fallers and multiple fallers using a triaxial accelerometry-based system

机译:使用基于三轴加速度的系统进行非多个衰落和多个衰落的分类

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Falls are a prominent problem facing older adults and a common cause of hospitalized injuries. Accurate falls-risk assessment and classification of falls-risk levels will provide useful information for the prevention of future falls. This study presents a triaxial accelerometer (TA) based two-class classifier, which discriminates between multiple fallers and non-multiple fallers, using a directed-routine (DR) movement test. One-hundred-and-twenty-six features were extracted from the accelerometry signals, recorded during the DR tests using a waist mounted TA, from 68 subjects. A linear multiple regression model was employed to map a subset of these features to an estimate of the number of previous falls experienced in the preceding twelve months. A simple threshold is applied to this estimated number of falls to create a basic linear discriminant classifier to separate multiple from non-multiple fallers. The system attained an accuracy of 71% in classifying the exact number of falls experienced in the last 12 months and 97% in identifying multiple fallers.
机译:瀑布是老年人面临着突出的问题,以及住院伤害的常见原因。准确的下降风险评估和跌倒风险水平的分类将为预防未来跌倒提供有用的信息。本研究介绍了一种基于三轴加速度计(TA)的两类分类器,其使用定向例程(DR)运动测试在多个衰落和非多个衰退之间辨别。从加速度信号中提取了一百个和二十六个特征,从68个受试者中使用腰部安装在DR测试期间记录。使用线性多元回归模型来映射这些特征的子集,以估计前12个月的前一瀑布的数量。将简单的阈值应用于该估计的跌倒,以创建基本的线性判别分类器以与非多个衰退分离多个。系统在分类​​过去12个月内经历的确切数量和97%时,该系统达到了71%的准确性,而在识别多个衰落方面则为97%。

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