论文标题
通过可穿戴传感器和深度学习迈向数据驱动的中风康复
Towards data-driven stroke rehabilitation via wearable sensors and deep learning
论文作者
论文摘要
中风后的恢复通常不完整,但是康复训练可能会通过吸引内源性神经可塑性来增强恢复。在中风的临床前模型中,需要高剂量的康复训练才能恢复动物受影响的肢体的功能运动。然而,在人类中,尚不清楚培训以增强恢复的必要剂量。这种无知源于缺乏客观的,务实的方法来测量康复活动中的训练剂量。在这里,为了开发一种测量方法,我们采取了关键的第一步,即自动识别功能基原始人,这是活动的基本构建基础。四十八名慢性中风的人在穿着惯性测量单元(IMU)时进行了多种康复活动,以捕捉上身运动。原语是由人类标记鉴定的,它们标记并分割了相关的IMU数据。我们使用机器学习对这些原语进行了自动分类。我们设计了一个超过现有方法的卷积神经网络模型。该模型包括一个初始模块,以计算传感器数据中不同物理量的单独嵌入。此外,它替代了批准(基于从培训数据计算出的统计数据执行归一化)用实例归一化(使用从测试数据计算出的统计数据)。将方法应用于新患者时,这会增加对分布变化的鲁棒性。通过这种方法,我们达到了平均分类精度为70%。因此,使用基于IMU的运动捕获和深度学习的组合,我们能够自动识别原语。这种方法旨在基于客观测量的康复训练,使能够识别和计算训练剂量的功能基原始人。
Recovery after stroke is often incomplete, but rehabilitation training may potentiate recovery by engaging endogenous neuroplasticity. In preclinical models of stroke, high doses of rehabilitation training are required to restore functional movement to the affected limbs of animals. In humans, however, the necessary dose of training to potentiate recovery is not known. This ignorance stems from the lack of objective, pragmatic approaches for measuring training doses in rehabilitation activities. Here, to develop a measurement approach, we took the critical first step of automatically identifying functional primitives, the basic building block of activities. Forty-eight individuals with chronic stroke performed a variety of rehabilitation activities while wearing inertial measurement units (IMUs) to capture upper body motion. Primitives were identified by human labelers, who labeled and segmented the associated IMU data. We performed automatic classification of these primitives using machine learning. We designed a convolutional neural network model that outperformed existing methods. The model includes an initial module to compute separate embeddings of different physical quantities in the sensor data. In addition, it replaces batch normalization (which performs normalization based on statistics computed from the training data) with instance normalization (which uses statistics computed from the test data). This increases robustness to possible distributional shifts when applying the method to new patients. With this approach, we attained an average classification accuracy of 70%. Thus, using a combination of IMU-based motion capture and deep learning, we were able to identify primitives automatically. This approach builds towards objectively-measured rehabilitation training, enabling the identification and counting of functional primitives that accrues to a training dose.