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Real-Time Patient Adaptivity for Freezing of Gait Classification Through Semi-Supervised Neural Networks

机译:通过半监督神经网络对步态分类进行冻结的实时患者适应性

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Freezing of gait (FoG) is a sudden and episodic inability to generate effective stepping among Parkinson's disease patients. It poses a risk for falls and deteriorates a patient's quality of life. Aid is sought after by the implementation of wearable systems that detect FoG and provide biofeedback cues in real-time. Detection is predominantly attempted with patient-independent classifiers which have difficulties to account for some patient's inimitable walking styles. Such gait peculiarities can be addressed with patient-adaptive classifiers. However, the patient-specific adaptations proposed thus far are retrospective and require a patient's labeled data. We propose to provide patient adaptivity in real-time through semi-supervised neural networks which exploit the stream of unlabeled data generated during usage. Using supervised learning, a patient-independent neural network is designed to serve as a base model. Upon a new patient's utilization of the system, the base model's parameters are adapted in real-time through unsupervised learning from the generated stream of unlabeled data. On average, patient adaptivity augmented sensitivity by 4.58% for the price of 0.59% in specificity. Moreover, it accounted for inimitable walking styles of patients that had been inadequately classified by the patient-independent base model. For such patients, sensitivity increased up to 42.01%. The overall patient-adaptive classifier resulted in 95.90% and 93.05% in sensitivity and specificity, respectively.
机译:步态冻结(FoG)是帕金森氏病患者突然无法发作的有效步伐。这会导致跌倒的风险,并降低患者的生活质量。通过实现可检测FoG并实时提供生物反馈提示的可穿戴系统来寻求帮助。主要尝试使用与患者无关的分类器进行检测,这些分类器很难解释某些患者独特的步行方式。此类步态特殊性可以通过患者适应性分类器解决。然而,迄今为止提出的针对患者的适应性是回顾性的,并且需要患者标记的数据。我们建议通过半监督神经网络实时提供患者适应性,该网络利用在使用过程中生成的未标记数据流。使用监督学习,将独立于患者的神经网络设计为基础模型。在新患者使用系统后,可通过从生成的未标记数据流中进行无监督学习来实时调整基本模型的参数。平均而言,患者适应性以0.59%的特异性价格提高了4.58%的敏感性。此外,它解释了由独立于患者的基本模型未充分分类的患者独特的行走方式。对于此类患者,敏感性提高至42.01 \%。总体上,患者自适应分类器的敏感性和特异性分别为95.90%和93.05%。

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