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Data Augmentation of Kinematic Time-Series From Rehabilitation Exercises Using GANs

机译:使用GANS的康复练习的运动时间序列的数据增强

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Machine learning, especially deep learning, offers great potential for medical applications. However, deep learning algorithms need a vast amount of training data. Especially in the medical domain, it is challenging to collect larger datasets. Access to patients can be limited, and data recording is mainly bound to laboratory settings requiring expertise from medical professionals. When involving a healthy control group, datasets are often unbalanced, with most data belonging to the control group. This paper proposes a data augmentation method to generate pose data of repetitive rehabilitation exercises trained on a specific population, e.g., a specific neurological disease. Our method is based on a generative adversarial network (GAN) that uses convolutional and long short-term memory (LSTM) layers. We evaluated our method using a dataset that contains rehabilitation exercises from stroke and Parkinson’s disease patients and a healthy control group. We demonstrated that a classifier trained using our augmentation method could distinguish between healthy, stroke, and Parkinson’s disease patients with an accuracy of 81%. In contrast, the same classifier achieved only 75% when using a standard resampling technique.
机译:机器学习,尤其是深度学习,为医疗应用提供了极大的潜力。但是,深度学习算法需要大量的训练数据。特别是在医学领域,收集更大的数据集是挑战性的。对患者的访问可以限制,数据记录主要绑定到实验室设置,要求医疗专业人员专业知识。当涉及健康的对照组时,数据集通常不平衡,大多数数据属于控制组。本文提出了一种数据增强方法,用于产生在特定群体上培训的重复康复锻炼的姿势数据,例如特异性神经疾病。我们的方法基于使用卷积和长短期存储器(LSTM)层的生成的对抗性网络(GAN)。我们使用包含中风和帕金森病患者和健康对照组的康复练习的数据集进行了评估了我们的方法。我们证明,使用我们的增强方法培训的分类器可以区分健康,中风和帕金森病的患者,精度为81%。相比之下,使用标准重采样技术时,相同的分类器仅实现了75%。

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