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Multivariate Analyses and Classification of Inertial Sensor Data to Identify Aging Effects on the Timed-Up-and-Go Test

机译:惯性传感器数据的多元分析和分类以识别时效测试中的老化效应

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摘要

Many tests can crudely quantify age-related mobility decrease but instrumented versions of mobility tests could increase their specificity and sensitivity. The Timed-up-and-Go (TUG) test includes several elements that people use in daily life. The test has different transition phases: rise from a chair, walk, 180° turn, walk back, turn, and sit-down on a chair. For this reason the TUG is an often used test to evaluate in a standardized way possible decline in balance and walking ability due to age and or pathology. Using inertial sensors, qualitative information about the performance of the sub-phases can provide more specific information about a decline in balance and walking ability. The first aim of our study was to identify variables extracted from the instrumented timed-up-and-go (iTUG) that most effectively distinguished performance differences across age (age 18–75). Second, we determined the discriminative ability of those identified variables to classify a younger (age 18–45) and older age group (age 46–75). From healthy adults (n = 59), trunk accelerations and angular velocities were recorded during iTUG performance. iTUG phases were detected with wavelet-analysis. Using a Partial Least Square (PLS) model, from the 72-iTUG variables calculated across phases, those that explained most of the covariance between variables and age were extracted. Subsequently, a PLS-discriminant analysis (DA) assessed classification power of the identified iTUG variables to discriminate the age groups. 27 variables, related to turning, walking and the stand-to-sit movement explained 71% of the variation in age. The PLS-DA with these 27 variables showed a sensitivity and specificity of 90% and 85%. Based on this model, the iTUG can accurately distinguish young and older adults. Such data can serve as a reference for pathological aging with respect to a widely used mobility test. Mobility tests like the TUG supplemented with smart technology could be used in clinical practice.
机译:许多测试可以粗略地量化与年龄相关的移动性下降,但是仪器化版本的移动性测试可以提高其特异性和敏感性。定时走(TUG)测试包括人们在日常生活中使用的几个元素。该测试具有不同的过渡阶段:从椅子上抬起,步行,180°转弯,向后走,转弯和坐在椅子上坐下。因此,TUG是一种常用的测试,以标准化的方式评估由于年龄和/或病理原因而导致的平衡能力和行走能力下降的情况。使用惯性传感器,有关子阶段性能的定性信息可以提供有关平衡和步行能力下降的更具体的信息。我们研究的首要目标是确定从仪器化的​​定时移动(iTUG)中提取的变量,这些变量可以最有效地区分不同年龄段(18-75岁)的性能差异。其次,我们确定了这些识别出的变量对年轻人(18-45岁)和年龄较大(46-75岁)的分类能力。在iTUG表现期间,从健康成年人(n = 59)中记录了躯干加速度和角速度。小波分析检测iTUG阶段。使用偏最小二乘(PLS)模型,从跨阶段计算的72-iTUG变量中,提取出解释变量与年龄之间大多数协方差的变量。随后,PLS判别分析(DA)评估了所识别iTUG变量的分类能力,以区分年龄组。与转弯,步行和站立运动有关的27个变量解释了年龄变化的71%。具有这27个变量的PLS-DA的敏感性和特异性分别为90%和85%。基于此模型,iTUG可以准确地区分年轻人和老年人。相对于广泛使用的迁移率测试,此类数据可作为病理性衰老的参考。诸如TUG并辅以智能技术的移动性测试可用于临床实践。

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