预测帕金森病患者步态冻结的深度域适应

Vishwas G. Torvi, Aditya R. Bhattacharya, Shayok Chakraborty
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引用次数: 39

摘要

步态冻结(FoG)是晚期帕金森病(PD)患者常见的步态障碍,表现为开始或持续运动的突然困难。FoG经常导致跌倒,并对患者的生活质量产生负面影响。实时检测算法已经开发出来,它使用来自可穿戴传感器的信号来检测FoG事件。然而,在FoG实际发生之前预测它开启了先发制人的可能性,这可以潜在地避免(或减少)发作的强度和持续时间。此外,人类步态涉及重大的基于主体的可变性,并且在特定患者数据上训练的机器学习模型可能无法很好地推广到其他患者。在本文中,我们研究了先进的深度学习算法在短时间内预测雾霾事件的性能。我们进一步研究了领域自适应(或迁移学习)算法的性能,以解决来自不同主题的数据之间的领域差异,以便为特定主题开发更好的预测模型。据我们所知,这是第一次研究区域自适应算法来预测PD患者的FoG发作。我们对一个公开可用的数据集(收集自10名PD患者)进行了广泛的实证研究,证明了我们的算法在发病前准确识别FoG事件的潜力。我们相信这项研究将为PD患者开发更先进的FoG预测算法奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Domain Adaptation to Predict Freezing of Gait in Patients with Parkinson's Disease
Freezing of gait (FoG) is a common gait impairment in patients with advanced Parkinson's disease (PD), which manifests as sudden difficulties in starting or continuing locomotion. FoG often results in falls and negatively affect a patient's quality of life. Real-time detection algorithms have been developed, which detect FoG events using signals derived from wearable sensors. However, predicting FoG before it actually occurs opens the possibility of preemptive cueing, which can potentially avoid (or reduce the intensity and duration of) the episodes. Moreover, human gait involves significant subject-based variability and a machine learning model trained on a particular patient's data may not generalize well to other patients. In this paper, we study the performance of advanced deep learning algorithms to predict FoG events in short time durations before their occurrence. We further study the performance of domain adaptation (or transfer learning) algorithms to address the domain disparity between data from different subjects, in order to develop a better prediction model for a particular subject. To the best of our knowledge, this is the first research effort to study domain adaptation algorithms to predict FoG episodes in patients with PD. Our extensive empirical studies on a publicly available dataset (collected from 10 PD patients) demonstrate the potential of our algorithms to accurately identify FoG events before their onset. We believe this research will serve as a stepping stone toward the development of more advanced FoG prediction algorithms for patients with PD.
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