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Alzheimer's Disease Distinction Based On Gait Feature Analysis

机译:阿尔茨海默氏症的疾病区分基于步态特征分析

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Alzheimer's disease(AD) is a neurodegenerative disease that progresses slowly but worsens gradually, also, the most common kinds of dementia. Clinically, the diagnosis of AD is mainly based on rating scales and neuroimaging technology which is invasive, costly and time-consuming. Other than that, the clinical pathology has become irreversible when neuroimaging characteristics appear. It is imperative to develop new noninvasive methods for early diagnosis of AD. Several studies indicated the probable association of cognitive decline with gait changes might shed light on potential features for distinction of AD. This paper aims to exploit the feasibility of gait features for early diagnosis of mild cognitive impairment(MCI) and AD by using machine learning methods. A device-free AD detection system is built, with a natural undisturbed gait collecting system and a well-performed Long Short-Term Memory(LSTM) based model, in this article. Moreover, it can serve as a simplified, non-invasive, and highly accurate clinical auxiliary tool for early diagnosis and distinction of AD. Experimental results showed a 90.48%, 92.00%, and 88.24% in accuracy, sensitivity, and specificity respectively for distinguishing AD by using the method with LSTM based model. Furthermore, the gait cycle and stride length in MCI or AD were more variable than in healthy controls through redefining and calculating the gait features with skeleton data obtained by Kinect devices.
机译:阿尔茨海默病(Ad)是一种慢慢进展的神经变性疾病,但逐渐恶化,也是最常见的痴呆。临床上,广告的诊断主要基于评级尺度和神经影像系统,这是侵入性,昂贵和耗时的。除此之外,临床病理学在出现神经影像学特征时变得不可逆转。为早期诊断开发新的非侵入性方法。几项研究表明可能性与步态变化的认知下降协会可能揭示了广告的区别的潜在特征。本文旨在利用机器学习方法利用高度认知障碍(MCI)和广告的早期诊断的步态特征的可行性。构建了一种无设备的广告检测系统,具有自然未受干扰的步态收集系统和本文中的基于良好的长短短期存储器(LSTM)的模型。此外,它可以作为简化,无侵入性和高度准确的临床辅助工具,用于早期诊断和广告的区别。实验结果分别显示了通过使用基于LSTM的模型的方法来区分AD的精度,灵敏度和特异性的90.48%,92.00%和88.24%。此外,通过重新定义和计算具有通过Kinect器件获得的骨架数据的步态特征,MCI或AD中的步态周期和步伐比在健康控制中更具变量。

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