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Combining Multifactorial Assessment Tools and Dimensionality Reduction Analysis for Fall Risk Classification in Community-Dwelling Older Adults

机译:社区住宅较老年人跌落风险分类的多因素评估工具和维度降低分析

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Background and Purpose: Optimal approaches in fall risk assessment involve interdisciplinary collaboration of assessment. This current work aimed at screening the fall risk characteristics from the objective balance and mobility tests between older fallers and nonfallers and further assessing the feasibility of 2 statistical dimensionality reduction models, Linear Discriminant Analysis (LDA) and Generalized Discriminant Analysis (GDA) for discriminating older nonspecific fallers. We hypothesized that the high-dimensionality objective sensor-based parameters, followed by a feature selection and dimensionality reduction process, would be able to discriminate older nonspecific fallers. Methods: Thirty-one community-living older individuals who were older than 60 years (faller: n = 15; nonfaller: n = 16) were recruited. The measurements include gait, balance, and ankle proprioception performances. LDA and GDA were further applied to obtain more discriminative feature space. Receiver-operating characteristic (ROC) curves were constructed to compare the classification quality in all the features. Results: Although some features in single objective measure reached statistical significance, the original features still resulted in high within-class and low between-class variances in the feature space. By further applying LDA and GDA on the original features, the performance of LDA in the feature space was improved. The area under the curve of ROC was GDA dimensionality reduction feature (1), LDA dimensionality reduction feature (0.99), proprioception (0.752), inertial measurement unit (0.745), and center of pressure (0.72), respectively. Conclusions: Experimental results showed the GDA feature has the best classification quality and the additional advantage in combination of interdisciplinary multifactorial fall risk assessment.
机译:背景和目的:秋季风险评估中的最佳方法涉及跨学科的评估合作。目前的工作旨在筛查来自较衰龄和非降低人员之间的客观平衡和流动性测试的秋季风险特征,进一步评估了2个统计维度降低模型的可行性,线性判别分析(LDA)和广义判别分析(GDA)以辨别老年人非特异性枯萎病。我们假设基于高度的客观传感器的参数,其次是特征选择和维数减少过程,将能够区分较旧的非特异性衰退。方法:招募了三十一位社区生活老年人(跌倒:N = 15;非降落者:N = 16)被招募。测量值包括步态,平衡和踝部预防性性能。进一步应用LDA和GDA以获得更多辨别特征空间。构建接收器操作特征(ROC)曲线以比较所有功能中的分类质量。结果:虽然单一客观措施中的一些特征达到统计学意义,但原始特征仍然导致特征空间中的课堂内和课堂级别低。通过进一步应用LDA和GDA对原始特征,提高了特征空间中LDA的性能。 ROC曲线下的面积为GDA维度降低特征(1),LDA维度降低特征(0.99),丙型型(0.752),惯性测量单元(0.745)和压力中心(0.72)。结论:实验结果表明,GDA特征具有最佳的分类质量和跨学科多学科秋季风险评估的结合组合的额外优势。

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    Department of Family Medicine Changhua Christian Hospital Department of Family Medicine Asia;

    Department of Family Medicine Changhua Christian Hospital Department of Family Medicine Asia;

    Department of Family Medicine Changhua Christian Hospital Department of Family Medicine Asia;

    Department of Family Medicine Changhua Christian Hospital Department of Family Medicine Asia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 老年病学;
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  • 入库时间 2022-08-20 07:39:09

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