Recurrent Neural Network based Prediction of Transition to Mild Cognitive Impairment Using Unobtrusive Sensor Data

Rajaram Narasimhan, G. Muthukumaran, Kingshuk Dey, Anantha Ramakrishnan
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引用次数: 1

Abstract

Alzheimer’s disease (AD) is the most common neurodegenerative disease among older adults. Mild Cognitive Impairment (MCI) is a transitional stage where older adults begin to exhibit symptoms that could be precursors to AD progression. Detecting the MCI stage early can help prevent or delay the onset of an advanced stage in AD and thus enhance the quality of life among older adults. This neurodegeneration process resonates with the inherent temporal nature of this disease progression. Patterns/trends in daily activities/routine measured over time are better indicators of the disease progression and help detect the transitional stage, MCI. This paper aims to leverage the activity patterns derived through unobtrusive sensors at historical time points and investigate the effect of these activity trends in predicting the progression at a future time point. This study proposes a prediction model leveraging Long short-term memory recurrent neural networks (RNN). From the daily activity/routine standpoint, walk and sleep-related measures are used as input features to the model along with the diagnostic label derived from neuropsychological assessment data, and the transition to MCI is predicted at a future time point. The initial experiment and results show that the study approach proposed in this paper can predict the progression yielding an 82 percent overall prediction accuracy and 90 percent accuracy in predicting degenerating cases. These results encourage future experiments with other extended activity features and further fine-tuned RNN model.
基于递归神经网络的轻度认知障碍过渡预测
阿尔茨海默病(AD)是老年人最常见的神经退行性疾病。轻度认知障碍(MCI)是一个过渡阶段,老年人开始表现出可能是阿尔茨海默病进展前兆的症状。早期发现轻度认知障碍阶段可以帮助预防或延缓阿尔茨海默病晚期的发作,从而提高老年人的生活质量。这种神经退行性变过程与这种疾病进展的固有时间性质相一致。随着时间的推移,日常活动/日常活动的模式/趋势是疾病进展的更好指标,有助于检测过渡阶段MCI。本文旨在利用在历史时间点通过不引人注目的传感器得出的活动模式,并研究这些活动趋势在预测未来时间点的进展方面的影响。本研究提出一种利用长短期记忆递归神经网络(RNN)的预测模型。从日常活动/日常生活的角度来看,步行和睡眠相关的措施被用作模型的输入特征,以及来自神经心理学评估数据的诊断标签,并在未来的时间点预测向轻度认知障碍的过渡。初步实验和结果表明,本文提出的研究方法可以预测进展,总体预测准确率为82%,预测退化病例的准确率为90%。这些结果鼓励未来对其他扩展活动特征和进一步微调RNN模型进行实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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